Exemple #1
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    def __init__(self, s_size, a_size, random_seed):
        """Initialize an Agent object.
        
        Params
        ======
            s_size (int): dimension of each state (s)
            a_size (int): dimension of each action (a)
            random_seed (int): random seed
        """
        self.s_size = s_size
        self.a_size = a_size
        self.seed = random.seed(random_seed)

        # G: Generator (actor) Network (with Target Network)
        self.g = G(s_size, a_size, random_seed).to(device)
        self.g_target = G(s_size, a_size, random_seed).to(device)
        self.g_optimizer = optim.Adam(self.g.parameters(), lr=LR)

        # D: Discriminator (critic) or Decoder (predictor) Network (with Target Network)
        self.d = D(s_size, a_size, random_seed).to(device)
        self.d_target = D(s_size, a_size, random_seed).to(device)
        self.d_optimizer = optim.Adam(self.d.parameters(), lr=LR)

        # ReplayBuffer/ Memory
        self.memory = Memory(a_size, BUFFER_SIZE, BATCH_SIZE, random_seed)
Exemple #2
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def generate():

    device = torch.device(
        'cuda') if torch.cuda.is_available() else torch.device('cpu')

    netg, netd = G(DIM_NOISE, DIM_G).eval(), D(DIM_D).eval()
    noises = torch.randn(GEN_SEARCH_NUM, DIM_NOISE, 1,
                         1).normal_(GEN_MEAN, GEN_STD)
    noises = noises.to(device)

    map_location = lambda storage, loc: storage
    netd.load_state_dict(torch.load(netd_path, map_location=map_location))
    netg.load_state_dict(torch.load(netg_path, map_location=map_location))
    netd.to(device)
    netg.to(device)

    fake_img = netg(noises)
    scores = netd(fake_img).detach()

    # 挑选最好的某几张
    indexs = scores.topk(GEN_NUM)[1]
    result = []
    for ii in indexs:
        result.append(fake_img.data[ii])
    # 保存图片
    tv.utils.save_image(torch.stack(result),
                        "result.png",
                        normalize=True,
                        range=(-1, 1))

    print('Successfully generate avatars')
Exemple #3
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def predict_os_nd2_data():
    model_path_dir = '/home/zhangli_lab/zhuqingjie/prj/tunet_onesample/logdir_nd2_justunet/'
    # model_path_dir = '/home/zhangli_lab/zhuqingjie/prj/tunet_onesample/logdir_nd2_deeps/'

    flist = list(Path(model_path_dir).rglob('*.index'))
    key_fun = lambda x: int(x.stem.split('_')[1])
    flist = sorted(flist, key=key_fun)
    model_path_and_ind = str(Path(flist[-1].parent, flist[-1].stem))
    print(model_path_and_ind)
    # exit()

    # 保存文件夹,为了方便后续分析,保存在了tunet项目下的目录。
    saved_dir = '/home/zhangli_lab/zhuqingjie/prj/tunet/res_os_nd2/'

    # load datas
    test_datas = Datas_nd2.load_test_datas_512()
    test_datas = np.squeeze(test_datas)
    g = G(predict_flag=True)
    with tf.Session(graph=g.graph) as sess:
        saver = tf.train.Saver()
        # sess.run(tf.global_variables_initializer())
        saver.restore(sess, model_path_and_ind)
        # exit()

        # # 插入,,预测一张并保存
        # img = cv2.imread('/home/zhangli_lab/zhuqingjie/DATA/temp/4x.bmp', 0).astype(np.float) / 255
        # img = img[None, :, :, None]
        # res = sess.run([g.prd], feed_dict={g.x: img})
        # res = res[0][0, :, :, 0]
        # r_img = res * 255
        # r_img = np.round(r_img).astype(np.uint8)
        # cv2.imwrite(f'/home/zhangli_lab/zhuqingjie/DATA/temp/4x_output.bmp', r_img)
        # exit()

        for i, (x, y) in enumerate(test_datas):
            # # 先把x和y保存
            # x_img = x * 255
            # y_img = y * 255
            # x_img = np.round(x_img).astype(np.uint8)
            # y_img = np.round(y_img).astype(np.uint8)
            # cv2.imwrite(f'{saved_dir}{i}_0x.tif', x_img)
            # cv2.imwrite(f'{saved_dir}{i}_4y.tif', y_img)

            # 预测
            x = x[None, :, :, None]
            start_time = time.time()
            res = sess.run([g.prd], feed_dict={g.x: x})
            print(f'{i}/{len(test_datas)} time_use:{time.time() - start_time}')
            res = res[0][0, :, :, 0]
            # res_imgs.append(res)

            # 保存预测结果
            r_img = res * 255
            r_img = np.round(r_img).astype(np.uint8)
            cv2.imwrite(f'{saved_dir}{i}_2unet.tif', r_img)
Exemple #4
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    def __init__(self, config: dict):
        self.config = config

        self.gen = G().to(device)
        self.dis = D().to(device)

        self.gen_op = torch.optim.Adam(self.gen.parameters(), lr=config['lr'])
        self.dis_op = torch.optim.Adam(self.dis.parameters(), lr=config['lr'])

        self.lda = config['lda']
        self.epsilon = config['epsilon']
Exemple #5
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def construct_model(model_path, device):
    from model import G
    model = G(args.nframes)
    ckpt = torch.load(model_path)
    new_ckpt = {}
    for key in ckpt:
        if key.startswith('module'):
            new_key = key[7:]
        else:
            new_key = key
        new_ckpt[new_key] = ckpt[key]
    model = model.to(device)
    model.load_state_dict(new_ckpt)
    model.eval()
    return model
Exemple #6
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    def build_model(self):
        """Builds a generator and a discriminator."""
        self.g = G(conv_dim=self.g_conv_dim)
        self.d1 = D1(conv_dim=self.d_conv_dim)
        self.d2 = D2(conv_dim=self.d_conv_dim)

        g_params = list(self.g.parameters())
        d1_params = list(self.d1.parameters())
        d_params = list(self.d1.parameters()) + list(self.d2.parameters())
        self.gc_optimizer = optim.Adam(g_params, 0.001, [0.5, 0.999])
        self.g_optimizer = optim.Adam(g_params, self.lr, [0.5, self.beta2])
        self.d_optimizer = optim.Adam(d_params, self.lr, [0.5, self.beta2])

        if torch.cuda.is_available():
            self.g.cuda()
            self.d1.cuda()
            self.d2.cuda()
Exemple #7
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def test_all(g=None,
             path=os.path.join(os.getcwd(), 'output', 'result'),
             data='data/ino_24_17'):
    data_ir = prepare_data2(os.path.join(data, 'Test_ir'))
    data_vi = prepare_data2(os.path.join(data, 'Test_vi'))

    if g is None:
        g = G().to(device)
        g.load_state_dict(torch.load('output/final_generator.pth'))

    if not os.path.exists(path):
        os.makedirs(path)

    g.eval()
    sum_EN = 0
    sum_SD = 0
    sum_SF = 0
    with torch.no_grad():
        for i in range(len(data_ir)):
            start = time.time()
            train_data_ir, train_data_vi = input_setup2(data_vi, data_ir, i)
            train_data_ir = train_data_ir.transpose([0, 3, 1, 2])
            train_data_vi = train_data_vi.transpose([0, 3, 1, 2])

            train_data_ir = torch.tensor(train_data_ir).float().to(device)
            train_data_vi = torch.tensor(train_data_vi).float().to(device)

            result = g(train_data_ir, train_data_vi)
            result = np.squeeze(result.cpu().numpy() * 127.5 + 127.5).astype(
                np.uint8)
            clahe = cv2.createCLAHE(clipLimit=2.0, tileGridSize=(8, 8))
            result = clahe.apply(result)
            save_path = os.path.join(path, str(i + 1) + ".bmp")
            end = time.time()
            #
            imsave(result, save_path)
            print("Testing [%d] success,Testing time is [%f]" %
                  (i, end - start))
            # pass
            sum_EN += EN(result)
            sum_SD += SD(result)
            sum_SF += SF(result)
    print(
        "EN = %.3f, SD = %.3f, SF = %.3f" %
        (sum_EN / len(data_ir), sum_SD / len(data_ir), sum_SF / len(data_ir)))
Exemple #8
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            os.system(f'cp -p {src_path} {saved_path_x}')
            sess.close()
        dst_path = saved_path_y_tmp
        print_(f'dst_path: {dst_path}')
        info = 'success'
        break
        # except:
        #     status = 1
        #     info = 'inference error!'
        #     break

    # return
    print_(f"\n\treturn:\n\tstatus: {status},\n\tinfo: {info},\n\tdst_path: {dst_path}")
    print_('done.')
    return json.dumps({
        'status': status,
        'info': info,
        'dst_path': dst_path,
    })


if __name__ == '__main__':
    from model import UNET_sr as G

    g = G(predict_flag=True, H=300, W=300)
    with tf.Session(graph=g.graph) as sess:
        var_list_G = tf.get_collection(tf.GraphKeys.TRAINABLE_VARIABLES, 'generator')
        saver = tf.train.Saver(var_list=var_list_G)
        saver.restore(sess, '/home/zhangli_lab/zhuqingjie/DATA/prj/tunet/logdir2/model')
        print()
Exemple #9
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def build_model(gpu, gpu_per_node, args):

    args.gpu = gpu
    if args.gpu is not None:
        print("Use GPU: {} for training".format(args.gpu))
        log.write("Use GPU: {} for training".format(args.gpu))
    if not opt.multiprocess_distributed:
        if torch.cuda.device_count() > 1:
            opt.world_size = torch.cuda.device_count()    #
            #args.gpu = gpu_per_node
    #else:
    #    if torch.cuda.device_count() > 1:
    #        gpu = None
    #        args.gpu = gpu_per_node
    device_G = None
    device_D = None
    device_G_id = None
    device_D_id = None

    if args.multiprocess_distributed:
        args.rank = args.rank * gpu_per_node + gpu

        dist.init_process_group(backend=args.dist_backend,world_size=args.world_size, rank=args.rank)
        
    
    print('=> Building model')
    
    if not opt.multiprocess_distributed:
        netG = G(opt.n_channel_input*4, opt.n_channel_output, opt.n_generator_filters)
        netD = D(opt.n_channel_input*4, opt.n_channel_output, opt.n_discriminator_filters)
    
    # specify gpus to use for data parallelism
    # setup devices for this process, split 1 uses GPUs [0, 1, 2, 3] and
    # rank 2 uses GPUs [4, 5, 6, 7].
    def split_gpu(devices, split):
        n = devices // args.world_size
        device_ids = list(range(split * n, (split + 1) * n))
        return device_ids
    
    
    device_G, device_D = [] , []
    if args.multiprocess_distributed:
        print("using multi process distributed training")
        print("taining with GPU: ", args.gpu)
        torch.cuda.set_device(args.gpu)
        
        #netG.cuda(args.gpu)
        #netD.cuda(args.gpu)#cuda(device_D)
        device_G_id = args.gpu
        #
        # strongly distributed
        #args.train_batch_size = int(args.train_batch_size / gpu_per_node)
        #args.test_batch_size = int(args.test_batch_size / gpu_per_node)
        #args.workers = int((args.workers + gpu_per_node - 1) / gpu_per_node)
        #
        args.workers = 0
        print("Let's use", torch.cuda.device_count(), "GPUs!")
        
        node_gpus = list(range( torch.cuda.device_count()))

        gan_process = torch.distributed.new_group(range(dist.get_world_size()))
        netG = torch.nn.parallel.DistributedDataParallel(G(opt.n_channel_input*4
                                                           , opt.n_channel_output
                                                           , opt.n_generator_filters) 
                                                         ,device_ids = [args.gpu] 
                                                         ,process_group = gan_process)

        dis_process = torch.distributed.new_group(range(dist.get_world_size()))
        netD = torch.nn.parallel.DistributedDataParallel(D(opt.n_channel_input*4
                                                            , opt.n_channel_output
                                                            , opt.n_discriminator_filters).cuda(args.gpu)
                                                          ,device_ids = [args.gpu]
                                                          ,process_group = dis_process)
        netG.cuda(args.gpu)
        netD.cuda(args.gpu)
    if gpu is not None:
        print("Setting to ", gpu, " GPU.")
        #torch.cuda.set_device(gpu)
        #model = model.cuda(args.gpu)
        device_G_id = gpu[0]
        args.gpu = gpu[0]
        netG = nn.DataParallel(netG).to(gpu[0])
        netD = nn.DataParallel(netD).to(gpu[0])
    else:
        if torch.cuda.device_count() > 1:
            opt.world_size = torch.cuda.device_count()
            device_G =  split_gpu(torch.cuda.device_count(), 1)
            device_D =  split_gpu(torch.cuda.device_count(), 2)
            print("Using non-distributed parallelized over device ",torch.cuda.device_count(), " GPU.")
            print("generative net on gpu ", device_G[0])
            print("descriminator on gpu ", device_D[0])
            device_G_id = device_G[0]
            device_D_id = device_D[0]
            #args.gpu = device_G[0]
            #netG.to(device_G[0])#cuda(device_G)                                
            #netD.to(device_G[0])
            #netG.features = torch.nn.DataParallel(netG.features)
            #netD.features = torch.nn.DataParallel(netD.features)
            netG = nn.DataParallel(netG, device_G+device_D).cuda(device_G[0])#.cuda()
            netD = nn.DataParallel(netD, device_G+device_D).cuda(device_G[0])#.cuda()
        else:
            print("Using device ",torch.cuda.device_count(), " GPU.")
            device_G_id = device
            args.gpu = device
            netG = nn.DataParallel(netG).to(device)
            netD = nn.DataParallel(netD).to(device)
    #netD.to(device)
    #netG.to(device)
    netG.apply(dynamic_weights_init)
    netD.apply(weights_init)
    
    criterion = nn.BCELoss()#.cuda(device_G_id)#args.gpu)
    criterion_l1 = nn.L1Loss()#.cuda(device_G_id)#args.gpu) # to use multiple gpu among multipl model

    #cuda auto-tuner to find best algorithm given hardware
    cudnn.benchmark = True
    
    print('=> Loading Data')

    root_dir = opt.dataset#"../PathTracer/build"
    conditional_names = ["outputs", "direct", "depth", "normals", "albedo"]
    
    # some higher resolution images
    proj_read_dir =  os.path.join(os.environ["PROJWORK"],"csc143","samlev","data")
    train_set = AdiosDataLoader( os.path.join(proj_read_dir, opt.dataset),split="train") #DataLoaderHelper(train_dir)
    val_set = AdiosDataLoader(  os.path.join(proj_read_dir, opt.dataset), split="val") #DataLoaderHelper(test_dir)
    test_set = AdiosDataLoader(  os.path.join(proj_read_dir, opt.dataset), split="test")
    
    batch_size = opt.train_batch_size
    n_epoch = opt.n_epoch
    args.workers = 0
    pin_memory = True
    # Change if used in paper!
    if opt.multiprocess_distributed:
        train_sampler = torch.utils.data.distributed.DistributedSampler(train_set)
        pin_memory = True
        #val_sampler = torch.utils.data.distributed.DistributedSampler(val_set)
        #test_sampler = torch.utils.data.distributed.DistributedSampler(test_set)
    else:
        train_sampler = None
        pin_memory = False
        
    train_data = DataLoader(dataset=train_set
                            , batch_size=args.train_batch_size
                            ,shuffle=(train_sampler is None)
                            ,num_workers=args.workers
                            , pin_memory=pin_memory
                            , sampler=train_sampler)
    val_data = DataLoader(dataset=val_set
                          ,num_workers = args.workers
                          , batch_size=opt.test_batch_size
                          , shuffle=False
                          ,pin_memory=pin_memory)
    test_data = DataLoader(dataset=test_set
                           , num_workers = args.workers
                           , batch_size=opt.test_batch_size
                           , shuffle=False
                           ,pin_memory=pin_memory)
    
    
    albedo = torch.FloatTensor(args.train_batch_size, opt.n_channel_input, 256, 256)
    direct = torch.FloatTensor(args.train_batch_size, opt.n_channel_input, 256, 256)
    normal = torch.FloatTensor(args.train_batch_size, opt.n_channel_input, 256, 256)
    depth = torch.FloatTensor(args.train_batch_size, opt.n_channel_input, 256, 256)
    
    gt = torch.FloatTensor(args.train_batch_size, opt.n_channel_output, 256, 256)
    
    label = torch.FloatTensor(args.train_batch_size)
    fake_label = 0.1#numpy.random.uniform(0. , 0.1)
    real_label = 0.9# numpy.random.uniform(0.9, 1.0)
    
    
    #for multigpu multimodel assign gpu to whole model
    # with model already assigned to gpu devices.
    # data parrallel later
    if (torch.cuda.device_count() == 1):# or ((not opt.multiprocess_distributed) and (torch.cuda.device_count() > 1)):
        print("assigning non threaded data")
        albedo = albedo.to(device_G_id)#.cuda()
        direct = direct.to(device_G_id)#.cuda()
        normal = normal.to(device_G_id)#.cuda()
        depth = depth.to(device_G_id)#.cuda()
        gt = gt.to(device_G_id)#.cuda()
        label = label.to(device_G_id)#.cuda()
        
        #albedo = Variable(albedo)
        #direct = Variable(direct)
        #normal = Variable(normal)
        #depth = Variable(depth)
        #gt = Variable(gt)
        #label = Variable(label)
    elif torch.cuda.device_count() > 1:
        print("assigning distributed data")
        albedo = albedo.to(device_G_id, non_blocking=True)#to(device)#.cuda()
        direct = direct.to(device_G_id, non_blocking=True)#.to(device)#.cuda()
        normal = normal.to(device_G_id, non_blocking=True)#.to(device)#.cuda()
        depth = depth.to(device_G_id, non_blocking=True)#.to(device)#.cuda()
        gt = gt.to(device_G_id, non_blocking=True)#.to(device)#.cuda()
        label = label.to(device_G_id, non_blocking=True)#.to(device)#.cuda()
        
    albedo = Variable(albedo)
    direct = Variable(direct)
    normal = Variable(normal)
    depth = Variable(depth)
    gt = Variable(gt)
    label = Variable(label)
    
    
    optimizerD = optim.Adam(netD.parameters(), lr=opt.lr, betas=(opt.beta1, 0.999))
    optimizerG = optim.Adam(netG.parameters(), lr=opt.lr, betas=(opt.beta1, 0.999))
    
    
    if opt.resume_G:
        if os.path.isfile(opt.resume_G):
            print("=> loading generator checkpoint '{}'".format(opt.resume_G))
            checkpoint = torch.load(opt.resume_G)
            lastEpoch = checkpoint['epoch']
            n_epoch = n_epoch - lastEpoch
            netG.load_state_dict(checkpoint['state_dict_G'])
            optimizerG.load_state_dict(checkpoint['optimizer_G'])
            print("=> loaded generator checkpoint '{}' (epoch {})".format(opt.resume_G, checkpoint['epoch']))
            
        else:
            print("=> no checkpoint found")

    if opt.resume_D:
        if os.path.isfile(opt.resume_D):
            print("=> loading discriminator checkpoint '{}'".format(opt.resume_D))
            checkpoint = torch.load(opt.resume_D)
            netD.load_state_dict(checkpoint['state_dict_D'])
            optimizerD.load_state_dict(checkpoint['optimizer_D'])
            print("=> loaded discriminator checkpoint '{}'".format(opt.resume_D))

    #time profiling
    # time profiling                                                             
    # profiling and logging                                                      
    filename = 'time_profiling_'+run_name+'.txt'
    filename = os.path.join(proj_write_dir, filename)
    if os.path.exists(filename):
        append_write = 'a' # append if already exists                            
    else:
        append_write = 'w' # make a new file if not                              
    tlog = open(filename,append_write)
    time0 = time.time()
    tlog.write(str(time0))
    tlog.close()
    
    lastEpoch = 0
    
    # begin training
    for epoch in range(opt.n_epoch):
        train(epoch
              , train_data
              , albedo, direct, normal, depth, gt, label
              , netG, netD
              , criterion, criterion_l1
              , optimizerG, optimizerD)
        if epoch % 5 == 0:
            save_checkpoint(epoch+lastEpoch
              , train_data
              , val_data
              , albedo, direct, normal, depth, gt, label
              , netG, netD
              , criterion, criterion_l1
              , optimizerG, optimizerD)
            tlog = open(filename,append_write)
            tlog.write(str(time0 - time.time()))
            tlog.close()
Exemple #10
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def train(iterations=10000,
          batch_size=100,
          sample_interval=5,
          save_model_interval=100,
          train_D_iters=1,
          train_G_iters=3,
          D_lr=0.0001,
          G_lr=0.0001,
          betas=(0.5, 0.99),
          img_dir='./info_imgs',
          model_dir='./models'):

    imgs, digits, test_img, test_digits = load_mnist()
    dataset = Dataset(imgs, digits)
    loader = DataLoader(dataset, batch_size=batch_size, shuffle=True)
    #dataset = Dataset(test_img, test_digits)
    #test_loader = DataLoader(dataset,batch_size=batch_size, shuffle=False)

    if torch.cuda.is_available:
        print(f"Using GPU {torch.cuda.current_device()}")
        device = "cuda"
    else:
        print("Using CPU...")
        device = "cpu"

    generaotor, discriminator, front, qq, encoder = G(), D(), FrontEnd(), Q(
    ), E()
    generaotor = generaotor.to(device).apply(weights_init)
    discriminator = discriminator.to(device).apply(weights_init)
    qq = qq.to(device).apply(weights_init)
    encoder = encoder.to(device).apply(weights_init)
    front = front.to(device).apply(weights_init)

    opt_G = torch.optim.Adam([{
        "params": generaotor.parameters()
    }, {
        "params": qq.parameters()
    }, {
        "params": encoder.parameters()
    }],
                             lr=G_lr,
                             betas=betas)

    opt_D = torch.optim.Adam([{
        "params": discriminator.parameters()
    }, {
        "params": front.parameters()
    }],
                             lr=D_lr,
                             betas=betas)

    CELoss_D = nn.CrossEntropyLoss(
        weight=torch.FloatTensor([1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1])).to(device)
    CELoss_G = nn.CrossEntropyLoss(weight=torch.FloatTensor(
        [1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 20])).to(device)
    CELoss_Q = nn.CrossEntropyLoss().to(device)
    CosineLoss = nn.CosineEmbeddingLoss().to(device)

    real_x = torch.FloatTensor(batch_size, 1, 32, 32).to(device)
    trg = torch.LongTensor(batch_size).to(device)
    label = torch.FloatTensor(batch_size, 1).to(device)
    noise = torch.FloatTensor(batch_size, 54).to(device)
    c = torch.FloatTensor(batch_size, 10).to(device)
    v_target = torch.LongTensor(batch_size, 64).to(device)  # For Q

    real_x = Variable(real_x)
    noise = Variable(noise)
    c = Variable(c)
    trg = Variable(trg, requires_grad=False)
    label = Variable(label, requires_grad=False)
    v_target = Variable(v_target, requires_grad=False)

    for epoch in range(iterations):
        for step, [batch_x, batch_target] in enumerate(loader):

            bs = batch_x.size(0)

            # train D
            #==========
            # real
            opt_D.zero_grad()

            real_x.data.copy_(batch_x)
            trg.data.copy_(batch_target)

            fe1 = front(real_x)
            real_pred = discriminator(fe1)

            real_loss = CELoss_D(real_pred, trg)
            real_loss.backward()

            #fake
            real_x.data.copy_(batch_x)

            v = encoder(real_x)
            z, idx = noise_sample(c, noise, v, bs)

            fake_stroke = generaotor(z)
            fake_x = fake_stroke + real_x
            fake_x = fake_x.clamp(max=1, min=0)

            fe2 = front(fake_x.detach())
            fake_pred = discriminator(fe2)

            trg.data.fill_(10)
            if epoch > 0:
                ignore_rate = 0.01
            else:
                ignore_rate = 1

            fake_loss = CELoss_D(fake_pred, trg) * ignore_rate
            fake_loss.backward()
            D_loss = real_loss + fake_loss
            #D_loss.backward()
            opt_D.step()

            # train G, Q, E
            #===============
            #train G
            opt_G.zero_grad()
            fe = front(fake_x)
            fake_pred = discriminator(fe)

            trg.data.copy_(torch.LongTensor(idx))
            reconstruct_loss = CELoss_G(fake_pred, trg)

            # train Q
            c_out, v_out = qq(fe)

            class_ = torch.LongTensor(idx).to(device)
            target = Variable(class_)

            v_target.data.copy_(v)

            # GQ Loss
            q_c_loss = CELoss_Q(c_out, target)
            q_v_loss = CosineLoss(v_out, v_target, label.data.fill_(1))

            q_loss = q_c_loss + q_v_loss

            G_loss = reconstruct_loss + q_c_loss + q_v_loss
            G_loss.backward()
            opt_G.step()

            # accuracy

        print(
            f'Epoch: {epoch} | Dloss: {D_loss.data.cpu().numpy()} | QCloss: {q_c_loss.data.cpu().numpy()} | QVloss: {q_v_loss.data.cpu().numpy()} | reloss: {reconstruct_loss.data.cpu().numpy()}'
        )
        save_image(torch.cat((fake_x, fake_stroke, real_x), dim=0).data,
                   f'./{img_dir}/{epoch}.png',
                   nrow=20)
        print(f"fake pred {np.argmax(fake_pred.data.cpu().numpy(),axis=1)}")
        #print(f"Qpred {np.argmax(c_out[1].data.cpu().numpy())}")
        #print(f"Origin {batch_target[1].data.cpu().numpy()} ToBe: {idx[0]}")
        #save_image(real_x.data, f'./{img_dir}/{epoch}_R.png', nrow=10)
        """
Exemple #11
0
    def __init__(self, opt, root_dir):
        self.opt = opt
        print('=> Loading datasets')

        train_dir = join(root_dir + self.opt.dataset, "train")
        test_dir = join(root_dir + self.opt.dataset, "val")

        train_set = DataLoaderHelper(train_dir)
        val_set = DataLoaderHelper(test_dir)

        self.batch_size = self.opt.train_batch_size
        self.n_epoch = self.opt.n_epoch
        self.lastEpoch = 0

        # workers == 0, run main process, default 0
        self.train_data = DataLoader(dataset=train_set,
                                     num_workers=self.opt.workers,
                                     batch_size=self.opt.train_batch_size,
                                     shuffle=True)
        self.val_data = DataLoader(dataset=val_set,
                                   num_workers=self.opt.workers,
                                   batch_size=self.opt.test_batch_size,
                                   shuffle=False)

        # debug
        """
        for (i, images) in enumerate(self.train_data):
            (albedo_cpu, direct_cpu, normal_cpu, depth_cpu, gt_cpu) = (images[0], images[1], images[2], images[3], images[4])
            # debug (1,3,256,256)
            debug_albedo = albedo_cpu[0]
            debug_albedo = debug_albedo.add_(1).div_(2)
            debug_albedo = debug_albedo.numpy()
            print(debug_albedo.shape)
            debug_albedo *= 255.0
            debug_albedo = debug_albedo.clip(0, 255)
            debug_albedo = np.transpose(debug_albedo, (1, 2, 0)) # (width, height, channels)
            debug_albedo = debug_albedo.astype(np.uint8)
            plt.imshow(debug_albedo)
            plt.show()
            print(debug_albedo.shape)
        """
        print('=> Building model')

        self.netG = G(self.opt.n_channel_input * 4, self.opt.n_channel_output,
                      self.opt.n_generator_filters)
        self.netG.apply(weights_init)
        self.netD = D(self.opt.n_channel_input * 4, self.opt.n_channel_output,
                      self.opt.n_discriminator_filters)
        self.netD.apply(weights_init)

        self.criterion = nn.BCELoss()
        self.criterion_l1 = nn.L1Loss()

        self.label = torch.FloatTensor(self.opt.train_batch_size)
        self.real_label = 1
        self.fake_label = 0

        self.albedo = torch.FloatTensor(self.opt.train_batch_size,
                                        self.opt.n_channel_input, 256, 256)
        self.direct = torch.FloatTensor(self.opt.train_batch_size,
                                        self.opt.n_channel_input, 256, 256)
        self.normal = torch.FloatTensor(self.opt.train_batch_size,
                                        self.opt.n_channel_input, 256, 256)
        self.depth = torch.FloatTensor(self.opt.train_batch_size,
                                       self.opt.n_channel_input, 256, 256)
        self.gt = torch.FloatTensor(self.opt.train_batch_size,
                                    self.opt.n_channel_output, 256, 256)

        # GPU
        self.netD = self.netD.cuda()
        self.netG = self.netG.cuda()
        self.criterion = self.criterion.cuda()
        self.criterion_l1 = self.criterion_l1.cuda()

        self.albedo = self.albedo.cuda()
        self.direct = self.direct.cuda()
        self.normal = self.normal.cuda()
        self.depth = self.depth.cuda()
        self.gt = self.gt.cuda()
        self.label = self.label.cuda()

        # Derivative
        self.albedo = Variable(self.albedo)
        self.direct = Variable(self.direct)
        self.normal = Variable(self.normal)
        self.depth = Variable(self.depth)
        self.gt = Variable(self.gt)
        self.label = Variable(self.label)

        # Optimizer
        self.optimizerD = optim.Adam(self.netD.parameters(),
                                     lr=self.opt.lr,
                                     betas=(self.opt.beta1, 0.999))
        self.optimizerG = optim.Adam(self.netG.parameters(),
                                     lr=self.opt.lr,
                                     betas=(self.opt.beta1, 0.999))

        if self.opt.resume_G:
            if os.path.isfile(self.opt.resume_G):
                print("=> loading generator checkpoint '{}'".format(
                    self.opt.resume_G))
                checkpoint = torch.load(self.opt.resume_G)
                self.lastEpoch = checkpoint['epoch']
                self.n_epoch = self.n_epoch - self.lastEpoch
                self.netG.load_state_dict(checkpoint['state_dict_G'])
                self.optimizerG.load_state_dict(checkpoint['optimizer_G'])
                print("=> loaded generator checkpoint '{}' (epoch {})".format(
                    self.opt.resume_G, checkpoint['epoch']))

            else:
                print("=> no checkpoint found")

        if self.opt.resume_D:
            if os.path.isfile(self.opt.resume_D):
                print("=> loading discriminator checkpoint '{}'".format(
                    self.opt.resume_D))
                checkpoint = torch.load(self.opt.resume_D)
                self.netD.load_state_dict(checkpoint['state_dict_D'])
                self.optimizerD.load_state_dict(checkpoint['optimizer_D'])
                print("=> loaded discriminator checkpoint '{}'".format(
                    self.opt.resume_D))
Exemple #12
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from train import train_model
from tensorboardX import SummaryWriter
from dataset import DataLoader
from torch.optim.lr_scheduler import ExponentialLR

import torch
import torch.backends.cudnn as cudnn

#training code
if args.phase=='train':
    dataloaders = data.DataLoader(DataLoader(args), batch_size=args.batch_size, shuffle=True, num_workers=args.workers, pin_memory=True)
    
    device = torch.device("cuda:0")
    
    print("constructing model ....")
    model = G(args.nframes)
    if args.resume:
        ckpt = torch.load(args.model_path)
#         new_ckpt  = {}
#         for key in ckpt:
#             if not key.startswith('module'):
#                 new_key  = 'module.' + key
#             else:
#                 new_key = key
#             new_ckpt[new_key] = ckpt[key]
        model.load_state_dict(ckpt,strict = False)
        
    model = nn.DataParallel(model.to(device), gpuids)
    
    
    print("model constructed")
Exemple #13
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def train():
    # img图像是从1开始的,而不是0
    labelimgs = load_labelimg()
    labelimgs_ = load_labelimg()

    g = G()

    # launch tensorboard
    os.system('/usr/sbin/fuser -k -n tcp 5005')
    # os.system(f'rm {config.logdir}/checkpoint')
    os.system(f'rm {config.logdir}/event*')
    os.system(f'rm {config.logdir}/model_*')
    os.system(f'rm {config.logdir}/v/event*')
    time.sleep(1)
    os.system(
        f'nohup /home/zhuqingjie/env/py3_tf_low/bin/tensorboard --logdir={config.logdir} --port=5005&'
    )

    # 备份一份model.py
    os.system(f"cp -p {config.workdir}model.py {config.logdir}/")

    # train
    with tf.Session(graph=g.graph) as sess:
        var_list_G = tf.get_collection(tf.GraphKeys.TRAINABLE_VARIABLES,
                                       'generator')
        saver = tf.train.Saver(max_to_keep=1, var_list=var_list_G)
        # saver = tf.train.Saver(max_to_keep=1)
        summary_writer = tf.summary.FileWriter(logdir=config.logdir)
        summary_writer_v = tf.summary.FileWriter(
            logdir=os.path.join(config.logdir, 'v'))
        if config.restore_model:
            print('restore_model')
            print(f'{config.restore_path}last_random_ind.txt')
            files_t_x, files_t_y, files_v_x, files_v_y = \
                get_alldatapath_big()
            flist = os.listdir(config.restore_path)
            for f in flist:
                if "model_" in f:
                    model_ind = f.split('.')[0]
                    sess.run(tf.global_variables_initializer())
                    saver.restore(sess,
                                  os.path.join(config.restore_path, model_ind))
                    break
        else:
            files_t_x, files_t_y, files_v_x, files_v_y = get_alldatapath_big()
            sess.run(tf.global_variables_initializer())
        try:
            time_use = []
            time_use2 = []
            begin_ind = 0
            while True:
                xt_batchs, yt_batchs, xv_batchs, yv_batchs = \
                    batch_datas_random(files_t_x, files_t_y, files_v_x, files_v_y)
                for batch_xs, batch_ys in zip(xt_batchs, yt_batchs):
                    time_start = time.time()
                    xs, ys, x_zs, inds = load_datas_npy(batch_xs, batch_ys)
                    lbimgs = np.array([labelimgs[lbi] for lbi in inds])
                    time_end = time.time()
                    hot_params = config.read_hot_config()
                    assert 'learning_rate' in hot_params and 'prec_loss_w' in hot_params, \
                        'learning_rate or prec_loss_w not in hot_config'
                    _, _, summary, abs_error, gs = sess.run(
                        [
                            g.train_op_G, g.train_op_D, g.mergeall,
                            g.abs_error, g.global_step
                        ],
                        feed_dict={
                            g.x: xs,
                            g.y: ys,
                            g.x_z: x_zs,
                            g.labelimg: lbimgs,
                            g.learning_rate:
                            float(hot_params['learning_rate']),
                            g.loss_prec_w: float(hot_params['prec_loss_w']),
                            g.loss_d_w: float(hot_params['loss_d_w']),
                            g.loss_mse_w: float(hot_params['loss_mse_w']),
                            g.loss_ms_w: float(hot_params['loss_ms_w']),
                        })
                    time_end2 = time.time()
                    time_use.append(time_end - time_start)
                    time_use2.append(time_end2 - time_start)
                    summary_writer.add_summary(summary, gs)
                    # val
                    if gs % 10 == 0:
                        index = random.randint(0, len(xv_batchs) - 1)
                        xs_, ys_, x_zs_, inds_ = load_datas_npy(
                            xv_batchs[index], yv_batchs[index])
                        lbimgs_ = np.array([labelimgs_[lbi] for lbi in inds_])
                        summary_, gs_ = sess.run(
                            [g.mergeall, g.global_step],
                            feed_dict={
                                g.x: xs_,
                                g.y: ys_,
                                g.x_z: x_zs_,
                                g.labelimg: lbimgs_,
                                g.learning_rate:
                                float(hot_params['learning_rate']),
                                g.loss_prec_w:
                                float(hot_params['prec_loss_w']),
                                g.loss_d_w: float(hot_params['loss_d_w']),
                                g.loss_mse_w: float(hot_params['loss_mse_w']),
                                g.loss_ms_w: float(hot_params['loss_ms_w']),
                            })
                        summary_writer_v.add_summary(summary_, gs_)
                        print(
                            f'---------------'
                            f'avg_time_use:{np.mean(np.array(time_use)):.3f} {np.mean(np.array(time_use2)):.3f}'
                        )
                        print('gs / data_len, gs, loss, abs_error')
                        time_use = []
                        time_use2 = []
                    # save
                    if gs % 100 == 0:
                        saver.save(sess, f'{config.logdir}/model_{gs}')
                    begin_ind += 1
                    ep = begin_ind / len(xt_batchs)
                    print(
                        f'{ep:.2f} -- {gs} --  [params:learning_rate,{hot_params["learning_rate"]};prec_loss_w,'
                        f'{hot_params["prec_loss_w"]}] -- {abs_error:.4f}')
                    if ep > epochs: raise BreakAll
        except BreakAll:
            print('BreakAll')
            pass
Exemple #14
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def main():

    checkpoint = torch.load(args.model_path)
    encoder = Encoder()
    generator = G()
    encoder.load_state_dict(checkpoint['encoder_state_dict'])
    generator.load_state_dict(checkpoint['generator_state_dict'])
    encoder.cuda()
    generator.cuda()

    FS = 16000
    SPEAKERS = list()
    with open(args.speaker_list) as fp:
        SPEAKERS = [l.strip() for l in fp.readlines()]

    normalizer = Tanhize(
        xmax=np.fromfile('./etc/{}_xmax.npf'.format(args.corpus_name)),
        xmin=np.fromfile('./etc/{}_xmin.npf'.format(args.corpus_name)),
    )

    total_sp_speaker = []
    total_speaker = []

    total_features = read_whole_features(args.file_pattern.format(args.src))
    for features in total_features:

        x = normalizer.forward_process(features['sp'])
        x = nh_to_nchw(x)
        y_s = features['speaker']
        #print('????',SPEAKERS.index(args.trg))

        #y_t_id = tf.placeholder(dtype=tf.int64, shape=[1,])
        #y_t = y_t_id * torch.ones(shape=[x.shape[0],], dtype=torch.int64)
        #print(y_t)
        x = Variable(torch.FloatTensor(x).cuda(), requires_grad=False)

        y_t = torch.ones((x.shape[0])).view(-1, 1) * (SPEAKERS.index(args.trg))

        z, _ = encoder(x)
        x_t, _ = generator(z, y_t)  # NOTE: the API yields NHWC format
        x_t = torch.squeeze(x_t)
        #print('x_t.shape',x_t.shape)
        x_t = normalizer.backward_process(x_t)
        #print('backward_process.finish')

        x_s, _ = generator(z, y_s)
        x_s = torch.squeeze(x_s)
        x_s = normalizer.backward_process(x_s)

        f0_s = features['f0']
        #print(f0_s.shape)
        f0_t = convert_f0(f0_s, args.src, args.trg)

        #output_dir = get_default_output(args.output_dir)
        output_dir = args.output_dir
        features['sp'] = x_t.cpu().data.numpy()
        features['f0'] = f0_t
        #print('=-=-=-=-=-=')
        y = pw2wav(features)

        oFilename = make_output_wav_name(output_dir, features['filename'])
        print(f'\r Processing {oFilename}', end=' ')

        if not os.path.exists(os.path.dirname(oFilename)):
            try:
                os.makedirs(os.path.dirname(oFilename))
            except OSError as exc:  # Guard against race condition
                print('error')
                pass

        sf.write(oFilename, y, FS)
        #print('2: ',features['sp'].shape)
        #print('3: ',features['f0'].shape)

    print('\n==finish==')
Exemple #15
0
def train():
    data = Datas_nd2()

    g = G(predict_flag=False, H=256, W=256)

    # # launch tensorboard
    # os.system('/usr/sbin/fuser -k -n tcp 5005')
    # # os.system(f'rm {config.logdir}/checkpoint')
    # os.system(f'rm {config.logdir}/event*')
    # os.system(f'rm {config.logdir}/model_*')
    # os.system(f'rm {config.logdir}/v/event*')
    # time.sleep(1)
    # os.system(f'nohup /home/zhuqingjie/env/py3_tf_low/bin/tensorboard --logdir={config.logdir} --port=5005&')
    #
    # # 备份一份model.py
    # os.system(f"cp -p {config.workdir}model.py {config.logdir}/")

    # train
    with tf.Session(graph=g.graph) as sess:
        var_list_G = tf.get_collection(tf.GraphKeys.TRAINABLE_VARIABLES, 'generator')
        g_list = tf.global_variables()
        bn_moving_vars = [g for g in g_list if 'moving_mean' in g.name]
        bn_moving_vars += [g for g in g_list if 'moving_variance' in g.name]
        bn_moving_vars = [g for g in bn_moving_vars if 'generator' in g.name]
        saver = tf.train.Saver(max_to_keep=1, var_list=var_list_G + bn_moving_vars)
        summary_writer = tf.summary.FileWriter(logdir=config.logdir)
        Path(config.logdir, 'v').mkdir(exist_ok=True)
        summary_writer_v = tf.summary.FileWriter(logdir=os.path.join(config.logdir, 'v'))
        sess.run(tf.global_variables_initializer())
        if config.restore_model:
            print('restore_model')
            saver_temp = tf.train.Saver(var_list=var_list_G)
            saver_temp.restore(sess, config.restore_path)

        time_use = []
        for step in range(STEPS):
            time_start = time.time()
            xs, ys = data.get_batch()
            _, _, summary, abs_error, gs = sess.run(
                [g.train_op_G, g.train_op_D, g.mergeall, g.abs_error, g.global_step],
                feed_dict={g.x: xs, g.y: ys})
            # _, summary, abs_error, gs = sess.run(
            #     [g.train_op_G, g.mergeall, g.abs_error, g.global_step],
            #     feed_dict={g.x: xs, g.y: ys})
            time_end = time.time()
            time_use.append(time_end - time_start)
            summary_writer.add_summary(summary, gs)
            print(f'{step}/{STEPS} abs_error:{abs_error * 255:.2f}')

            # val
            if gs % 10 == 0:
                xs, ys = data.get_batch_test()
                summary_, abs_error_ = sess.run(
                    [g.mergeall, g.abs_error],
                    feed_dict={g.x: xs, g.y: ys})
                summary_writer_v.add_summary(summary_, gs)
                print(f'-----------------------------------'
                      f'avg_time_use: {np.mean(np.array(time_use)):.3f}'
                      f'-----------------------------------')
                time_use = []

            # save
            if gs % 300 == 0:
                print(f'saved: {config.logdir}/model_{gs:0>6d}')
                saver.save(sess, f'{config.logdir}/model_{gs:0>6d}')
Exemple #16
0
def train(userid, sr_or_os, s, epochs=cf.epoch, batch_size=cf.batch_size):
    '''
    userid是一个关键的参数,利用它判断训练数据在哪以及生产的模型要保存的地方,
    所以该函数不需要传入数据路径以及不需要返回模型地址
    :param userid:
    :param epochs:
    :return:
    '''

    # 选择模型拓扑结构
    if sr_or_os == 'sr':
        from model import UNET_sr as G
        model_path = somecf.Release_model_path_sr
    elif sr_or_os == 'os':
        from model import UNET_os as G
        model_path = somecf.Release_model_path_os
    else:
        print('train.py: line 42, [sr_or_os] must be "sr" or "os".')
        exit()

    # 读取训练数据
    data_dir = f'/home/zhangli_lab/zhuqingjie/DATA/Small_cluster_data/dataset_saved/tunet_onesample/{sr_or_os}/users/data_temp'
    datas_x = np.load(os.path.join(data_dir, f'{userid}_x.npy'))
    datas_y = np.load(os.path.join(data_dir, f'{userid}_y.npy'))
    print_(f'train datas_x.shape:{datas_x.shape}')
    print_(f'train datas_y.shape:{datas_y.shape}')

    # get model path
    flist = os.listdir(model_path)
    for f in flist:
        if ".meta" in f:
            model_ind = f.split('.')[0]
            break
    checkpoint_path = os.path.join(model_path, model_ind)

    # train
    h, w = datas_y.shape[1:3]
    g = G(H=h, W=w)
    config = tf.ConfigProto()
    config.gpu_options.per_process_gpu_memory_fraction = 0.33333
    # config.gpu_options.allow_growth = True
    with tf.Session(graph=g.graph, config=config) as sess:
        var_list_G = tf.get_collection(tf.GraphKeys.TRAINABLE_VARIABLES,
                                       'generator')
        g_list = tf.global_variables()
        bn_moving_vars = [g for g in g_list if 'moving_mean' in g.name]
        bn_moving_vars += [g for g in g_list if 'moving_variance' in g.name]
        bn_moving_vars = [g for g in bn_moving_vars if 'generator' in g.name]
        saver = tf.train.Saver(max_to_keep=1,
                               var_list=var_list_G + bn_moving_vars)
        sess.run(tf.global_variables_initializer())
        saver.restore(sess, checkpoint_path)

        for ep in range(epochs):
            bxs, bys = get_batch(datas_x, datas_y)
            print_(f'get_batch bxs.shape:{bxs.shape}')
            print_(f'get_batch bys.shape:{bys.shape}')
            for batch_xs, batch_ys in zip(bxs, bys):
                _, _, gs = sess.run(
                    [g.train_op_G, g.train_op_D, g.global_step],
                    feed_dict={
                        g.x: batch_xs,
                        g.y: batch_ys
                    })
            print_(f'epoch:{ep}/{cf.epoch}')
        saver_path = f'/home/zhangli_lab/zhuqingjie/DATA/Small_cluster_data/dataset_saved/tunet_onesample/{sr_or_os}/users/model_temp/{userid}'
        os.mkdir(saver_path)
        saver.save(sess, f'{saver_path}/model')
    print_('train finished.')
    sess.close()
    s.in_training = False
    pass
Exemple #17
0
def train(config):
    face_M_dataset = CusDataset(csv_file=config.csv_dir,
                                root_dir=config.root_dir,
                                Wem=0,
                                transform=transforms.Compose([
                                    transforms.ToTensor(),
                                    transforms.Normalize((0.5, 0.5, 0.5),
                                                         (0.5, 0.5, 0.5))
                                ]))
    face_W_dataset = CusDataset(csv_file=config.csv_dir,
                                root_dir=config.root_dir,
                                Wem=1,
                                transform=transforms.Compose([
                                    transforms.ToTensor(),
                                    transforms.Normalize((0.5, 0.5, 0.5),
                                                         (0.5, 0.5, 0.5))
                                ]))
    M_loader = DataLoader(face_M_dataset,
                          batch_size=config.batch_size,
                          shuffle=True,
                          num_workers=4)
    W_loader = DataLoader(face_W_dataset,
                          batch_size=config.batch_size,
                          shuffle=True,
                          num_workers=4)
    Dw = D()
    Dm = D()
    Gwm = G()
    Gmw = G()
    if torch.cuda.is_available():
        print('cuda')
        Dw = Dw.cuda()
        Dm = Dm.cuda()
        Gwm = Gwm.cuda()
        Gmw = Gmw.cuda()
    g_params = list(Gwm.parameters()) + list(Gmw.parameters())
    d_params = list(Dw.parameters()) + list(Dm.parameters())
    #print(d_params)
    g_optimer = optim.Adam(g_params, lr=config.lr)
    d_optimer = optim.Adam(d_params, lr=config.lr)

    criterion = torch.nn.CrossEntropyLoss()

    writer = SummaryWriter()
    global_step = 0
    for i in range(config.epoch):
        M_data = iter(M_loader)
        W_data = iter(W_loader)
        while True:
            try:
                M_batched = M_data.__next__()
                W_batched = W_data.__next__()
            except StopIteration:
                break
            M_image = M_batched['imagename'].type(torch.cuda.FloatTensor)
            M_label = M_batched['age'].type(torch.cuda.LongTensor).squeeze()
            W_image = W_batched['imagename'].type(torch.cuda.FloatTensor)
            W_label = W_batched['age'].type(torch.cuda.LongTensor).squeeze()

            if W_label.size(0) != M_label.size(0):
                break
            fake_label = np.zeros([W_label.size(0)])
            fake_label[:] = 10
            #fake_label[:,10] = 1
            fake_label = torch.from_numpy(fake_label)
            fake_label = fake_label.type(torch.cuda.LongTensor)
            #print(M_label.type())
            '''print(fake_label.size())
            print("\n{}".format(W_label.view(W_label.size(0)*10)))
            '''
            #-----------------------------train D---------------------------
            #-------------train real----------
            g_optimer.zero_grad()
            d_optimer.zero_grad()

            dm_real_loss = criterion(Dm(M_image), M_label)
            dw_real_loss = criterion(Dw(W_image), W_label)
            d_real_loss = dm_real_loss + dw_real_loss
            d_real_loss.backward()
            d_optimer.step()
            #-------------train fake-----------
            g_optimer.zero_grad()
            d_optimer.zero_grad()

            dm_fake_loss = criterion(Dm(Gwm(W_image)), fake_label)
            dw_fake_loss = criterion(Dw(Gmw(M_image)), fake_label)
            d_fake_loss = dm_fake_loss + dw_fake_loss
            d_fake_loss.backward()
            d_optimer.step()
            #-----------------------------train G-----------------------------
            #----------------train--W-M-W-Cycle-------------
            g_optimer.zero_grad()
            d_optimer.zero_grad()

            fake_m_image = Gwm(W_image)
            g_WMW_loss = criterion(Dm(fake_m_image), M_label) + torch.mean(
                ((W_image - Gmw(fake_m_image))**2))
            g_WMW_loss.backward()
            g_optimer.step()
            #----------------train--M-W-M-Cycle-------------
            g_optimer.zero_grad()
            d_optimer.zero_grad()

            fake_w_image = Gmw(M_image)
            g_MWM_loss = criterion(Dw(fake_w_image), W_label) + torch.mean(
                ((M_image - Gwm(fake_w_image))**2))
            g_MWM_loss.backward()
            g_optimer.step()
            fake_w_image = vutils.make_grid(fake_w_image,
                                            normalize=False,
                                            scale_each=False)
            fake_m_image = vutils.make_grid(fake_m_image,
                                            normalize=False,
                                            scale_each=False)
            M_image = vutils.make_grid(M_image,
                                       normalize=False,
                                       scale_each=False)
            writer.add_scalar(tag='loss/g_MWM_loss',
                              scalar_value=g_MWM_loss,
                              global_step=global_step)
            writer.add_scalar(tag='loss/g_WMW_loss',
                              scalar_value=g_WMW_loss,
                              global_step=global_step)
            writer.add_scalar(tag='loss/d_fake_loss',
                              scalar_value=d_fake_loss,
                              global_step=global_step)
            writer.add_scalar(tag='loss/d_real_loss',
                              scalar_value=d_real_loss,
                              global_step=global_step)
            writer.add_image('image/fake_w_image', fake_w_image, global_step)
            writer.add_image('image/fake_m_image', fake_m_image, global_step)
            writer.add_image('image/M_image', M_image, global_step)

            print("{}\n".format(global_step))
            global_step += 1
    writer.close()
    '''for i_batch,sample_batched in enumerate(dataloader):
Exemple #18
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#=============== Load the images from the folder==============
print('===> Loading datasets')
root_path = "dataset/"
train_set = get_training_set(root_path + opt.dataset)
test_set = get_test_set(root_path + opt.dataset)
training_data_loader = DataLoader(dataset=train_set,
                                  num_workers=opt.threads,
                                  batch_size=opt.batchSize,
                                  shuffle=True)
testing_data_loader = DataLoader(dataset=test_set,
                                 num_workers=opt.threads,
                                 batch_size=opt.testBatchSize,
                                 shuffle=False)
# ======= Load the Generator and Discriminator ===============
print('===> Building model')
netG = G(opt.input_nc, opt.output_nc, opt.ngf)
pytorch_total_params = sum(p.numel() for p in netG.parameters()
                           if p.requires_grad)
print("\nTrainable parameters", pytorch_total_params)
netD = D(opt.input_nc, opt.output_nc, opt.ndf)
#========Loss Function==========
criterion = nn.BCELoss()
criterion_l1 = nn.L1Loss()
criterion_mse = nn.MSELoss()
#================================
real_A = torch.FloatTensor(opt.batchSize, opt.input_nc, 128, 128)
real_B = torch.FloatTensor(opt.batchSize, opt.output_nc, 128, 128)
label = torch.FloatTensor(opt.batchSize)
real_label = 1
fake_label = 0
# instantiate PyTorch dataloaders with AdiosDataLoader
train_data = DataLoader(dataset=train_set, num_workers=...,
                        batch_size=..., shuffle=True)
val_data = DataLoader(dataset=val_set, num_workers=...,
                      batch_size=..., shuffle=False)
test_data = DataLoader(dataset=test_set,...)
# cast loaded VTK-m data to PyTorch tensors
gt = torch.FloatTensor(train_batch_size,
                        n_channel_input,
                        256, 256)
direct, albedo, depth, normal =  torch.FloatTensor(...)
                                 , ... , ... , ...
# ground truth labels
label = torch.FloatTensor(train_batch_size)
# instantiate generator and descriminator
netG = G(n_channel_input*4, n_channel_output,
         n_generator_filters)
netD = D(n_channel_input*4, n_channel_output,
         n_discriminator_filters)
# assign to GPU
netD, netG = netD.cuda(),  netG.cuda()
# loss functions:
# Binary Cross Entropy and L1 Loss
criterion, criterion_l1 = nn.BCELoss(), nn.L1Loss()
# Cuda placement
criterion = criterion.cuda()
criterion_l1 = criterion_l1.cuda()
albedo = albedo.cuda()
gt, direct = gt.cuda(), direct.cuda()
depth, normal = depth.cuda(), normal.cuda()
label = label.cuda()
# instantiate PyTorch variables of VTK-m renderings
    c_2 = np.zeros((bs, 2))
    c_2[range(bs), idx_2] = 1.0
    # print('c_2: ', c_2)

    dis_c.data.copy_(torch.Tensor(c))
    con_c.data.copy_(torch.Tensor(c_2))
    noise.data.uniform_(-1.0, 1.0)
    print('noise: ', noise.shape)
    z = torch.cat([noise, dis_c, con_c], 1).view(-1, 74, 1, 1)

    return z, idx, idx_2


model_Q = Q().to(device)
model_FE = FrontEnd().to(device)
model_G = G().to(device)
model_D = D().to(device)

model_Q.load_state_dict(
    torch.load(model_path + '/model_Q.pytorch', map_location='cpu'))
model_D.load_state_dict(
    torch.load(model_path + '/model_D.pytorch', map_location='cpu'))
model_FE.load_state_dict(
    torch.load(model_path + '/model_FE.pytorch', map_location='cpu'))
model_G.load_state_dict(
    torch.load(model_path + '/model_G.pytorch', map_location='cpu'))

model_Q.eval()
model_D.eval()
model_FE.eval()
model_G.eval()
def train(config):

    ################################### Model Initalization ####################################

    dataset = Dataset(config['dir_csv']
                      )  # Class declaraction --> Runs ___init___ with Dataset
    dataloader = DataLoader(dataset,
                            batch_size=1)  # Built-in class within Pytorch
    '''
    Save Ground Truth Plots
    '''
    if True:

        Path('ground_truths').mkdir(parents=True, exist_ok=True)
        for data in dataloader:

            real_data = data['real_data']
            basename = data['basename'][0]

            save_intermediate_results(
                os.path.join('ground_truths', basename + '.jpg'), real_data)

    gen = G().to(config['device'])
    dsc = D().to(config['device'])

    optimizer_G = torch.optim.Adam(gen.parameters(), lr=config['lr'])
    optimizer_D = torch.optim.Adam(dsc.parameters(), lr=config['lr'])

    real_label = torch.tensor(1.0).view(1, -1).to(
        config['device'])  # Tensor of shape (1, 1)
    fake_label = torch.tensor(0.0).view(1, -1).to(
        config['device'])  # Tensor of shape (1, 1)

    criterion = nn.BCELoss()  # Binary Cross Entropy Loss

    fixed_noise = torch.rand((1, 100)).to(config['device'])

    for epoch in range(config['n_epoch']):

        for data in dataloader:

            real_data = data['real_data'].to(config['device'])

            ##################### Optimize for Generator ##########################

            optimizer_G.zero_grad()

            fake_data = gen(fixed_noise)  # (1, 100) -> (1, 1, 800)
            pred = dsc(fake_data)  # (1, 1, 800) -> (1, 1)
            G_loss = criterion(
                pred,
                real_label)  # Train the generator to fool the discriminator
            '''
            Optimize
            '''
            G_loss.backward()
            optimizer_G.step()

            ##################### Optimize for Discriminator ######################

            optimizer_D.zero_grad()
            '''
            Real Input
            '''
            pred = dsc(real_data)  # (1, 1, 800) -> (1, 1)
            D_loss_real = criterion(
                pred, real_label
            )  # Train the discriminator to distinguish between real and fake data
            '''
            Fake Input
            '''
            pred = dsc(fake_data.detach())  # (1, 1, 800) -> (1, 1)
            D_loss_fake = criterion(
                pred, fake_label
            )  # Train the discriminator to distinguish between real and fake data
            '''
            Optimize
            '''
            D_loss_total = (D_loss_real + D_loss_fake) / 2
            D_loss_total.backward()
            optimizer_D.step()

        if (((epoch + 1) % config['val_epoch']) == 0):

            Path('results').mkdir(parents=True, exist_ok=True)
            save_intermediate_results(
                os.path.join('results', 'epoch_%d.jpg' % (epoch + 1)),
                fake_data.detach().cpu())

        print('[Epoch] %d / %d' % (epoch + 1, config['n_epoch']), end='\r')
Exemple #22
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def train():
    device = torch.device('cuda') if torch.cuda.is_available() else 'cpu'

    transforms = tv.transforms.Compose([
        tv.transforms.Resize(IMG_SIZE),
        tv.transforms.CenterCrop(IMG_SIZE),
        tv.transforms.ToTensor(),
        tv.transforms.Normalize((0.5, 0.5, 0.5), (0.5, 0.5, 0.5))
    ])

    vis = Visualizer(env)

    # drop_last: retain data that cannot suffice a batch
    dataset = tv.datasets.ImageFolder(DATA_PATH, transforms)
    dataloader = data.DataLoader(dataset,
                                 batch_size=BATCH_SIZE,
                                 shuffle=True,
                                 num_workers=4,
                                 drop_last=True)

    netG, netD = G(DIM_NOISE, DIM_G), D(DIM_D)

    netG.to(device)
    netD.to(device)

    # Optimizers and Loss functions
    optimizer_G = torch.optim.Adam(netG.parameters(),
                                   lr=LR_G,
                                   betas=(0.5, 0.999))
    optimizer_D = torch.optim.Adam(netG.parameters(),
                                   lr=LR_D,
                                   betas=(0.5, 0.999))
    criterion = nn.BCELoss().to(device)

    noises = torch.randn(BATCH_SIZE, DIM_NOISE, 1, 1).to(device)

    errord_meter = AverageValueMeter()
    errorg_meter = AverageValueMeter()

    # Real imgs have 0 loss; fake imgs have 1
    true_labels = torch.ones(BATCH_SIZE).to(device)
    fake_labels = torch.zeros(BATCH_SIZE).to(device)

    max_epoch_G, max_epoch_D = 0, 0
    # Load pretrained network with greatest number of training epochs
    pretrained_root_g = MODEL_SAVE_PATH + 'G/'
    if PRETRAINED and os.path.exists(pretrained_root_g):
        file_list = [
            file for file in os.listdir(pretrained_root_g)
            if file.endswith('.pth')
        ]
        if file_list != []:
            index_list = [
                int(file.split('.pth')[0].split('_')[2]) for file in file_list
            ]
            max_epoch_G = max(index_list)
            model_name = 'model_g_%s.pth' % max_epoch_G
            print('Using mode:', model_name)
            netG.load_state_dict(torch.load(pretrained_root_g + model_name))
            netG.to(device)
        else:
            print('Generator train from Step 0')

    pretrained_root_d = MODEL_SAVE_PATH + 'D/'
    if PRETRAINED and os.path.exists(pretrained_root_d):
        file_list = [
            file for file in os.listdir(pretrained_root_d)
            if file.endswith('.pth')
        ]
        if file_list != []:
            index_list = [
                int(file.split('.pth')[0].split('_')[2]) for file in file_list
            ]
            max_epoch_D = max(index_list)
            model_name = 'model_d_%s.pth' % max_epoch_D
            print('Using mode:', model_name)
            netD.load_state_dict(torch.load(pretrained_root_d + model_name))
            netD.to(device)
        else:
            print('Discriminator train from Epoch 0')

    for epoch in range(EPOCHS):
        time_start = time.time()
        for step, (img, _) in enumerate(dataloader):
            # Skip former steps if using pretrained models

            real_img = img.to(device)
            if step <= max_epoch_G and step <= max_epoch_D:
                continue

            # Train generator
            if step % GENERATE_EVERY == 0 and step > max_epoch_G:
                print('G - Epoch:', epoch, '| Step:', step)
                optimizer_G.zero_grad()
                noises.data.copy_(
                    torch.randn(BATCH_SIZE, DIM_NOISE, 1, 1)
                )  # TODO: Why not noises=(torch.randn(BATCH_SIZE, DIM_NOISE, 1, 1))
                fake_img = netG(noises)
                output_g = netD(fake_img)
                loss_g = criterion(output_g, true_labels)
                loss_g.backward()
                optimizer_G.step()
                errorg_meter.add(loss_g.item())

            if step % DISCRIMINATE_EVERY == 0 and step > max_epoch_D:
                # Identify real images
                print('D - Epoch:', epoch, '| Step:', step)
                output_d = netD(real_img)
                loss_real = criterion(output_d, true_labels)
                loss_real.backward()

                # Identify fake images
                optimizer_D.zero_grad()
                noises.data.copy_(torch.randn(BATCH_SIZE, DIM_NOISE, 1, 1))
                fake_img = netG(noises)
                output_d = netD(fake_img)
                loss_fake = criterion(output_d, fake_labels)
                loss_fake.backward()
                optimizer_D.step()

                loss_d = loss_real + loss_fake
                errord_meter.add(loss_d.item())
                #fake_img = fake_img.detach()

            if (step + 1) % PLOT_EVERY:
                fix_fake_imgs = netG(noises)
                vis.images(fix_fake_imgs.detach().cpu().numpy()[:64] * 0.5 +
                           0.5,
                           win='fixfake')
                vis.images(real_img.data.cpu().numpy()[:64] * 0.5 + 0.5,
                           win='real')
                vis.plot('errord', errord_meter.value()[0])
                vis.plot('errorg', errorg_meter.value()[0])

        time_end = time.time()
        print('Total time for epoch ', epoch, ' is ', (time_end - time_start))
        if epoch and epoch % SAVE_EVERY == 0:
            torch.save(netG.state_dict(),
                       MODEL_SAVE_PATH + 'G/model_g_%s.pth' % step)
            torch.save(netD.state_dict(),
                       MODEL_SAVE_PATH + 'D/model_d_%s.pth' % step)
            errord_meter.reset()
            errorg_meter.reset()
Exemple #23
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parser.add_argument('--n_channel_input',
                    type=int,
                    default=3,
                    help='input channel')
parser.add_argument('--n_channel_output',
                    type=int,
                    default=3,
                    help='output channel')
parser.add_argument('--n_generator_filters',
                    type=int,
                    default=64,
                    help="number of generator filters")
opt = parser.parse_args()

netG_model = torch.load(opt.model)
netG = G(opt.n_channel_input * 4, opt.n_channel_output,
         opt.n_generator_filters)
netG.load_state_dict(netG_model['state_dict_G'])
root_dir = 'dataset/{}/test/'.format(opt.dataset)
image_dir = 'dataset/{}/test/albedo'.format(opt.dataset)
image_filenames = [x for x in os.listdir(image_dir) if is_image(x)]

for image_name in image_filenames:
    albedo_image = load_image(root_dir + 'albedo/' + image_name)
    direct_image = load_image(root_dir + 'direct/' + image_name)
    normal_image = load_image(root_dir + 'normal/' + image_name)
    depth_image = load_image(root_dir + 'depth/' + image_name)
    gt_image = load_image(root_dir + 'gt/' + image_name)

    albedo = Variable(albedo_image).view(1, -1, 256, 256).cuda()
    direct = Variable(direct_image).view(1, -1, 256, 256).cuda()
    normal = Variable(normal_image).view(1, -1, 256, 256).cuda()
Exemple #24
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def handle(dic_url, model_path, saved_dir, sr_or_os):
    if sr_or_os == 'sr':
        from model import UNET_sr as G
    elif sr_or_os == 'os':
        from model import UNET_os as G
    else:
        print('inference.py: line 25, [sr_or_os] must be "sr" or "os".')
        exit()

    print('\n')
    print('-' * 50)
    print(time.strftime('%Y-%m-%d %H:%M:%S', time.localtime(time.time())))

    # 初始化输出信息
    status = 0
    info = 'initialization info'
    dst_path = 'null'

    # 这里是个假循环,只是为了利用break特性
    while True:
        # 读取参数
        error_param = 'error_param'
        src_path = dic_url.get('src_path', error_param)
        mode = dic_url.get('mode', error_param)
        donotsave = dic_url.get('donotsave', error_param)
        userID = dic_url.get('userID', error_param)
        print_(f'\n\tsrc_path: {src_path}\n\tmode: {mode}\n\tdonotsave: {donotsave}\n\tuserID: {userID}')
        if error_param in [src_path, mode, donotsave, userID]:
            status = -1
            info = 'params error!'
            break

        # 检测路径或参数是否合法
        if not os.path.exists(src_path):
            info = 'src_path is not exists!'
            status = -1
            break

        # 读取图像
        # img = cv2.imread(src_path, cv2.IMREAD_GRAYSCALE)
        img = cv2.imread(src_path)
        if img.shape[0] <= 70 or img.shape[1] <= 70:
            info = 'the shape of image must greater than 80!'
            status = -1
            break
        if img.shape[0] > 2000 or img.shape[1] > 2000:
            info = 'the shape of image must less than 2000!'
            status = -1
            break

        # 获取要保存的路径
        filename = os.path.basename(src_path)
        path_flag = ''
        if donotsave == '1':
            path_flag = '_undelegated'
        saved_path_x = os.path.join(saved_dir, f'x{path_flag}', filename)
        saved_path_y = os.path.join(saved_dir, f'y{path_flag}', filename)
        if os.path.exists(saved_path_x):
            fn1 = filename.split('.')[0]
            fn2 = filename.split('.')[1]
            ind = 0
            while True:
                if not os.path.exists(os.path.join(saved_dir, f'x{path_flag}', f"{fn1}_{ind}.{fn2}")):
                    saved_path_x = os.path.join(saved_dir, f'x{path_flag}', f"{fn1}_{ind}.{fn2}")
                    saved_path_y = os.path.join(saved_dir, f'y{path_flag}', f"{fn1}_{ind}.{fn2}")
                    break
                ind += 1
        # saved_path_y_tmp = os.path.join(src_path[:src_path.rfind('/')],
        #                                 f'{filename.split(".")[0]}_dst.{filename.split(".")[1]}')
        sp = Path(src_path)
        saved_path_y_tmp = str(Path(sp.parent, f'{sp.stem}_dst{sp.suffix}'))
        print_(f'\n\tsaved_path_x: {saved_path_x}\n\tsaved_path_y: {saved_path_y}')

        # 数据预处理
        H, W = img.shape[:2]
        img = img.astype(np.float32)
        img = img / img.max()
        if len(img.shape) == 3:
            img = np.transpose(img, [2, 0, 1])
            img = img[:, :, :, np.newaxis]
        else:
            img = img[np.newaxis, :, :, np.newaxis]

        # try:
        # 加载图,并推理
        flist = os.listdir(model_path)
        for f in flist:
            if ".meta" in f:
                model_ind = f.split('.')[0]
                break
        checkpoint_path = os.path.join(model_path, model_ind)
        g = G(predict_flag=True, H=H, W=W)
        with tf.Session(graph=g.graph) as sess:
            # var_list_G = tf.get_collection(tf.GraphKeys.TRAINABLE_VARIABLES, 'generator')
            # saver = tf.train.Saver(var_list=var_list_G)
            saver = tf.train.Saver()
            saver.restore(sess, checkpoint_path)

            prd = sess.run([g.prd], feed_dict={g.x: img})

            # print_('*********************** test time_uesd.')
            # for zqj in range(10):
            #     start_t = time.time()
            #     prd = sess.run([g.prd], feed_dict={g.x: img})
            #     print_(time.time() - start_t)

            dst = prd[0][:, :, :, 0]
            dst = np.transpose(dst, [1, 2, 0])
            dst = dst * 255
            dst = dst.astype(np.uint8)

            # save
            cv2.imwrite(saved_path_y_tmp, dst)
            # os.system(f'cp -p {saved_path_y_tmp} {saved_path_y}')
            os.system(f'cp -p {src_path} {saved_path_x}')
            sess.close()
        dst_path = saved_path_y_tmp
        print_(f'dst_path: {dst_path}')
        info = 'success'
        break
        # except:
        #     status = 1
        #     info = 'inference error!'
        #     break

    # return
    print_(f"\n\treturn:\n\tstatus: {status},\n\tinfo: {info},\n\tdst_path: {dst_path}")
    print_('done.')
    return json.dumps({
        'status': status,
        'info': info,
        'dst_path': dst_path,
    })
Exemple #25
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        dis_c.data.copy_(torch.Tensor(one_hot))
        print(np.shape(c1))
        con_c = Variable(torch.rand(con_c.size())).cuda()
        z = torch.cat([noise, dis_c, con_c], 1).view(-1, 74, 1, 1)
        x_save = self.G(z)
        save_image(x_save.data, os.path.join(args.path, 'generate.png'), nrow=10)

def parse():
    parser = argparse.ArgumentParser(description='VAE MNIST Example')
    parser.add_argument('--label', type=int, default=1, metavar='N',
                        help='The label you want to generate')
    parser.add_argument('--num', type=int, default=1, metavar='N',
                        help='The number of image you want to generate')
    args = parser.parse_args()
    args.cuda = torch.cuda.is_available()
    args.path = './infoGAN_result'
    return args

if __name__ == '__main__':
    args = parse()
    fe = FrontEnd()
    d = D()
    q = Q()
    g = G()

    for i in [fe, d, q, g]:
        i.cuda()

    tester = Tester(g, fe, d, q, args)
    tester.load()
    tester.generate()
Exemple #26
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nz = 100  # 白噪声向量的长度
imgSize = 32
batchSize = 16
criterion = nn.BCELoss()
device = torch.device("cuda" if cuda else "cpu")
path = '/run/media/why/DATA/why的程序测试/AI_Lab/Task/task_week6/img'
trainData = dSet.MNIST(root='/run/media/why/DATA/why的程序测试/AI_Lab/DataSet',
                       train=True,
                       transform=T.Compose([T.Resize(imgSize),
                                            T.ToTensor()]),
                       download=True)  # size = 28*28
trainLoader = torch.utils.data.DataLoader(dataset=trainData,
                                          batch_size=batchSize,
                                          shuffle=True)

gNet = G()
dNet = D()
if cuda:
    dNet = dNet.cuda()
    gNet = gNet.cuda()
D_optim = optim.Adam(dNet.parameters(), lr=lr, betas=(0.5, 0.999))
G_optim = optim.Adam(gNet.parameters(), lr=lr, betas=(0.5, 0.999))
fixed_noise = torch.randn(batchSize, nz, 1, 1).cuda()  # 用来生成假图片的噪声

for j in range(epoch):
    for i, (img, _) in enumerate(trainLoader, 0):
        # 训练识别器:
        dNet.zero_grad()  # 初始化所有梯度
        real = img.to(device)  # 训练集中抽取的真图片
        label = torch.full((batchSize, ), 1, device=device)  # 为所有真图片标记1
        output = dNet(real)
transform = transforms.Compose([
    transforms.Scale(img_size),
    transforms.ToTensor(),
    transforms.Normalize(mean=(0.5, 0.5, 0.5), std=(0.5, 0.5, 0.5))
])

train_dataset = dataset.MNIST(root='./data/',
                              train=True,
                              transform=transform,
                              download=True)

# choose generator type laplacian generator or common dcgan generator
if opt.gen_type == "LAPGAN":
    generator = lap_G()
else:
    generator = G()

if opt.gpu:
    generator.cuda()

g_optimizer = optim.Adam(generator.parameters(), lr)

# initialize z with pca
data_for_z = train_dataset.train_data.clone()
z = pca_feature(data_for_z.numpy(), 10)

for i in range(z.shape[0]):
    z[i] = z[i, :] / np.linalg.norm(z[i, :], 2)

z_in_ball = torch.FloatTensor(z).view(-1, batch_size, z_dim, 1, 1)
train_loader = torch.utils.data.DataLoader(dataset=train_dataset,
Exemple #28
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from model import G

data_path = 'items.json'

model = G(data_path)

model.main()