Ejemplo n.º 1
0
def execute(gpu, exp_batch, exp_alias):

    os.environ["CUDA_VISIBLE_DEVICES"] = gpu
    merge_with_yaml(os.path.join('configs', exp_batch, exp_alias + '.yaml'))
    set_type_of_process('train')

    coil_logger.add_message('Loading', {'GPU': gpu})
    if not os.path.exists('_output_logs'):
        os.mkdir('_output_logs')
    sys.stdout = open(os.path.join(
        '_output_logs', g_conf.PROCESS_NAME + '_' + str(os.getpid()) + ".out"),
                      "a",
                      buffering=1)
    if monitorer.get_status(exp_batch, exp_alias + '.yaml',
                            g_conf.PROCESS_NAME)[0] == "Finished":
        return

    full_dataset = os.path.join(os.environ["COIL_DATASET_PATH"],
                                g_conf.TRAIN_DATASET_NAME)
    dataset = CoILDataset(full_dataset,
                          transform=transforms.Compose([transforms.ToTensor()
                                                        ]))

    sampler = BatchSequenceSampler(
        splitter.control_steer_split(dataset.measurements,
                                     dataset.meta_data), g_conf.BATCH_SIZE,
        g_conf.NUMBER_IMAGES_SEQUENCE, g_conf.SEQUENCE_STRIDE)
    data_loader = torch.utils.data.DataLoader(dataset,
                                              batch_sampler=sampler,
                                              shuffle=False,
                                              num_workers=6,
                                              pin_memory=True)

    l1weight = g_conf.L1_WEIGHT
    image_size = tuple([88, 200])

    if g_conf.TRAIN_TYPE == 'WGAN':
        clamp_value = g_conf.CLAMP
        n_critic = g_conf.N_CRITIC

    print("Configurations of ", exp_alias)
    print("GANMODEL_NAME", g_conf.GANMODEL_NAME)
    print("LOSS_FUNCTION", g_conf.LOSS_FUNCTION)
    print("LR_G, LR_D, LR", g_conf.LR_G, g_conf.LR_D, g_conf.LEARNING_RATE)
    print("SKIP", g_conf.SKIP)
    print("TYPE", g_conf.TYPE)
    print("L1 WEIGHT", g_conf.L1_WEIGHT)
    print("LAB SMOOTH", g_conf.LABSMOOTH)

    if g_conf.GANMODEL_NAME == 'LSDcontrol':
        netD = ganmodels._netD(loss=g_conf.LOSS_FUNCTION).cuda()
        netG = ganmodels._netG(loss=g_conf.LOSS_FUNCTION,
                               skip=g_conf.SKIP).cuda()
    elif g_conf.GANMODEL_NAME == 'LSDcontrol_nopatch':
        netD = ganmodels_nopatch._netD(loss=g_conf.LOSS_FUNCTION).cuda()
        netG = ganmodels_nopatch._netG(loss=g_conf.LOSS_FUNCTION).cuda()
    elif g_conf.GANMODEL_NAME == 'LSDcontrol_nopatch_smaller':
        netD = ganmodels_nopatch_smaller._netD(
            loss=g_conf.LOSS_FUNCTION).cuda()
        netG = ganmodels_nopatch_smaller._netG(
            loss=g_conf.LOSS_FUNCTION).cuda()

    elif g_conf.GANMODEL_NAME == 'LSDcontrol_task':
        netD = ganmodels_task._netD(loss=g_conf.LOSS_FUNCTION).cuda()
        netG = ganmodels_task._netG(loss=g_conf.LOSS_FUNCTION).cuda()
        netF = ganmodels_task._netF(loss=g_conf.LOSS_FUNCTION).cuda()

        if g_conf.PRETRAINED == 'RECON':
            netF_statedict = torch.load('netF_GAN_Pretrained.wts')
            netF.load_state_dict(netF_statedict)
        elif g_conf.PRETRAINED == 'IL':
            model_IL = torch.load('best_loss_20-06_EpicClearWeather.pth')
            model_IL_state_dict = model_IL['state_dict']

            netF_state_dict = netF.state_dict()
            for i, keys in enumerate(
                    zip(netF_state_dict.keys(), model_IL_state_dict.keys())):
                newkey, oldkey = keys
                if newkey.split('.')[0] == "branch" and oldkey.split(
                        '.')[0] == "branches":
                    print("No Transfer of ", newkey, " to ", oldkey)
                else:
                    print("Transferring ", newkey, " to ", oldkey)
                    netF_state_dict[newkey] = model_IL_state_dict[oldkey]
                netF.load_state_dict(netF_state_dict)

    init_weights(netD)
    init_weights(netG)
    #do init for netF also later but now it is in the model code itself

    print(netD)
    print(netF)
    print(netG)

    optimD = torch.optim.Adam(netD.parameters(),
                              lr=g_conf.LR_D,
                              betas=(0.5, 0.999))
    optimG = torch.optim.Adam(netG.parameters(),
                              lr=g_conf.LR_G,
                              betas=(0.5, 0.999))
    if g_conf.TYPE == 'task':
        optimF = torch.optim.Adam(netF.parameters(), lr=g_conf.LEARNING_RATE)
        Task_Loss = TaskLoss()

    if g_conf.LOSS_FUNCTION == 'LSGAN':
        Loss = torch.nn.MSELoss().cuda()
    elif g_conf.LOSS_FUNCTION == 'NORMAL':
        Loss = torch.nn.BCEWithLogitsLoss().cuda()

    L1_loss = torch.nn.L1Loss().cuda()

    iteration = 0
    best_loss_iter_F = 0
    best_loss_iter_G = 0
    best_lossF = 1000000.0
    best_lossD = 1000000.0
    best_lossG = 1000000.0
    accumulated_time = 0
    lossF = Variable(torch.Tensor([100.0]))

    lossG_adv = Variable(torch.Tensor([100.0]))
    lossG_smooth = Variable(torch.Tensor([100.0]))
    lossG = Variable(torch.Tensor([100.0]))

    netG.train()
    netD.train()
    netF.train()
    capture_time = time.time()

    if not os.path.exists('./imgs_' + exp_alias):
        os.mkdir('./imgs_' + exp_alias)

    #TODO put family for losses

    fake_img_pool = ImagePool(50)

    for data in data_loader:

        set_requires_grad(netD, True)
        set_requires_grad(netF, True)
        set_requires_grad(netG, True)

        # print("ITERATION:", iteration)

        val = 0.0
        input_data, float_data = data
        inputs = input_data['rgb'].cuda()
        inputs = inputs.squeeze(1)
        inputs_in = inputs - val  #subtracted by 0.5

        #TODO: make sure the F network does not get optimized by G optim
        controls = float_data[:, dataset.controls_position(), :]
        embed, branches = netF(inputs_in,
                               dataset.extract_inputs(float_data).cuda())
        print("Branch Outputs:::", branches[0][0])

        embed_inputs = embed
        fake_inputs = netG(embed_inputs)
        fake_inputs_in = fake_inputs

        if iteration % 500 == 0:
            imgs_to_save = torch.cat(
                (inputs_in[:2] + val, fake_inputs_in[:2] + val), 0).cpu().data
            vutils.save_image(imgs_to_save,
                              './imgs_' + exp_alias + '/' + str(iteration) +
                              '_real_and_fake.png',
                              normalize=True)
            coil_logger.add_image("Images", imgs_to_save, iteration)

        ##--------------------Discriminator part!!!!!!!!!!-------------------##
        set_requires_grad(netD, True)
        set_requires_grad(netF, False)
        set_requires_grad(netG, False)
        optimD.zero_grad()

        ##fake
        # fake_inputs_forD = fake_img_pool.query(fake_inputs)
        outputsD_fake_forD = netD(fake_inputs)

        labsize = outputsD_fake_forD.size()
        labels_fake = torch.zeros(labsize)  #Fake labels
        label_fake_noise = torch.rand(
            labels_fake.size()) * 0.1  #Label smoothing

        if g_conf.LABSMOOTH == 1:
            labels_fake = labels_fake + label_fake_noise

        labels_fake = Variable(labels_fake).cuda()
        lossD_fake = torch.mean(
            outputsD_fake_forD)  #Loss(outputsD_fake_forD, labels_fake)

        ##real
        outputsD_real = netD(inputs_in)

        labsize = outputsD_real.size()
        labels_real = torch.ones(labsize)  #Real labels
        label_real_noise = torch.rand(
            labels_real.size()) * 0.1  #Label smoothing

        if g_conf.LABSMOOTH == 1:
            labels_real = labels_real - label_real_noise

        labels_real = Variable(labels_real).cuda()
        lossD_real = -1.0 * torch.mean(
            outputsD_real)  #Loss(outputsD_real, labels_real)

        ### Gradient Penalty ###
        gradient_penalty = calc_gradient_penalty(netD, inputs, fake_inputs)
        # alpha = torch.rand((g_conf.BATCH_SIZE, 1, 1, 1))
        # alpha = alpha.cuda()
        #
        # x_hat = alpha * inputs.data + (1 - alpha) * fake_inputs.data
        # x_hat.requires_grad = True
        #
        # pred_hat = netD(x_hat)
        # gradients = grad(outputs=pred_hat, inputs=x_hat, grad_outputs=torch.ones(pred_hat.size()).cuda(),
        #                 create_graph=True, retain_graph=True, only_inputs=True)[0]
        #
        # gradient_penalty = 10 * ((gradients.view(gradients.size()[0], -1).norm(2, 1) - 1) ** 2).mean()

        #Discriminator updates

        lossD = torch.mean(
            outputsD_fake_forD -
            outputsD_real) + gradient_penalty  #(lossD_real + lossD_fake) * 0.5
        # lossD /= len(inputs)
        print("Loss d", lossD)
        lossD.backward(retain_graph=True)
        optimD.step()

        # if g_conf.TRAIN_TYPE == 'WGAN':
        #     for p in netD.parameters():
        #         p.data.clamp_(-clamp_value, clamp_value)

        coil_logger.add_scalar('Total LossD', lossD.data, iteration)
        coil_logger.add_scalar('Real LossD', lossD_real.data / len(inputs),
                               iteration)
        coil_logger.add_scalar('Fake LossD', lossD_fake.data / len(inputs),
                               iteration)

        ##--------------------Generator part!!!!!!!!!!-----------------------##
        set_requires_grad(netD, False)
        set_requires_grad(netF, False)
        set_requires_grad(netG, True)

        if ((iteration + 1) % n_critic) == 0:
            optimG.zero_grad()
            outputsD_fake_forG = netD(fake_inputs)

            #Generator updates
            lossG_adv = -1.0 * torch.mean(
                outputsD_fake_forG)  #Loss(outputsD_fake_forG, labels_real)
            lossG_smooth = L1_loss(fake_inputs, inputs)
            lossG = (lossG_adv + l1weight * lossG_smooth) / (1.0 + l1weight)
            # lossG /= len(inputs)
            print(lossG)
            lossG.backward(retain_graph=True)
            optimG.step()

            #####Task network updates##########################
            set_requires_grad(netD, False)
            set_requires_grad(netF, True)
            set_requires_grad(netG, False)

            optimF.zero_grad()
            lossF = Variable(torch.Tensor())
            lossF = Task_Loss.MSELoss(
                branches,
                dataset.extract_targets(float_data).cuda(), controls.cuda(),
                dataset.extract_inputs(float_data).cuda())
            coil_logger.add_scalar('Task Loss', lossF.data, iteration)
            lossF.backward()
            optimF.step()

        coil_logger.add_scalar('Total LossG', lossG.data, iteration)
        coil_logger.add_scalar('Adv LossG', lossG_adv.data / len(inputs),
                               iteration)
        coil_logger.add_scalar('Smooth LossG', lossG_smooth.data / len(inputs),
                               iteration)

        #optimization for one iter done!

        position = random.randint(0, len(float_data) - 1)
        if lossD.data < best_lossD:
            best_lossD = lossD.data.tolist()
        # print (lossG.item(), best_lossG)
        if lossG.item() < best_lossG:
            best_lossG = lossG.item()
            best_loss_iter_G = iteration

        if lossF.item() < best_lossF:
            best_lossF = lossF.item()
            best_loss_iter_F = iteration

        accumulated_time += time.time() - capture_time
        capture_time = time.time()
        print("LossD", lossD.data.tolist(), "LossG", lossG.data.tolist(),
              "BestLossD", best_lossD, "BestLossG", best_lossG, "LossF", lossF,
              "BestLossF", best_lossF, "Iteration", iteration,
              "Best Loss Iteration G", best_loss_iter_G,
              "Best Loss Iteration F", best_loss_iter_F)

        coil_logger.add_message(
            'Iterating', {
                'Iteration':
                iteration,
                'LossD':
                lossD.data.tolist(),
                'LossG':
                lossG.data.tolist(),
                'Images/s': (iteration * g_conf.BATCH_SIZE) / accumulated_time,
                'BestLossD':
                best_lossD,
                'BestLossG':
                best_lossG,
                'BestLossIterationG':
                best_loss_iter_G,
                'BestLossF':
                best_lossF,
                'BestLossIterationF':
                best_loss_iter_F,
                'GroundTruth':
                dataset.extract_targets(float_data)[position].data.tolist(),
                'Inputs':
                dataset.extract_inputs(float_data)[position].data.tolist()
            }, iteration)

        if is_ready_to_save(iteration):

            state = {
                'iteration': iteration,
                'stateD_dict': netD.state_dict(),
                'stateG_dict': netG.state_dict(),
                'stateF_dict': netF.state_dict(),
                'best_lossD': best_lossD,
                'best_lossG': best_lossG,
                'total_time': accumulated_time,
                'best_loss_iter_G': best_loss_iter_G,
                'best_loss_iter_F': best_loss_iter_F
            }
            torch.save(
                state,
                os.path.join('/datatmp/Experiments/rohitgan/_logs', exp_batch,
                             exp_alias, 'checkpoints',
                             str(iteration) + '.pth'))
        if iteration == best_loss_iter_G and iteration > 10000:

            state = {
                'iteration': iteration,
                'stateD_dict': netD.state_dict(),
                'stateG_dict': netG.state_dict(),
                'stateF_dict': netF.state_dict(),
                'best_lossD': best_lossD,
                'best_lossG': best_lossG,
                'total_time': accumulated_time,
                'best_loss_iter_G': best_loss_iter_G
            }
            torch.save(
                state,
                os.path.join('/datatmp/Experiments/rohitgan/_logs', exp_batch,
                             exp_alias, 'best_modelG' + '.pth'))

        if iteration == best_loss_iter_F and iteration > 10000:

            state = {
                'iteration': iteration,
                'stateD_dict': netD.state_dict(),
                'stateG_dict': netG.state_dict(),
                'stateF_dict': netF.state_dict(),
                'best_lossD': best_lossD,
                'best_lossG': best_lossG,
                'best_lossF': best_lossF,
                'total_time': accumulated_time,
                'best_loss_iter_F': best_loss_iter_F
            }
            torch.save(
                state,
                os.path.join('/datatmp/Experiments/rohitgan/_logs', exp_batch,
                             exp_alias, 'best_modelF' + '.pth'))

        iteration += 1
Ejemplo n.º 2
0
def execute(gpu, exp_batch, exp_alias):

    os.environ["CUDA_VISIBLE_DEVICES"] = gpu
    merge_with_yaml(os.path.join('configs', exp_batch, exp_alias + '.yaml'))
    set_type_of_process('train')

    coil_logger.add_message('Loading', {'GPU': gpu})
    if not os.path.exists('_output_logs'):
        os.mkdir('_output_logs')
    sys.stdout = open(os.path.join(
        '_output_logs', g_conf.PROCESS_NAME + '_' + str(os.getpid()) + ".out"),
                      "a",
                      buffering=1)
    if monitorer.get_status(exp_batch, exp_alias + '.yaml',
                            g_conf.PROCESS_NAME)[0] == "Finished":
        return

    full_dataset = os.path.join(os.environ["COIL_DATASET_PATH"],
                                g_conf.TRAIN_DATASET_NAME)
    dataset = CoILDataset(full_dataset,
                          transform=transforms.Compose([transforms.ToTensor()
                                                        ]))

    sampler = BatchSequenceSampler(
        splitter.control_steer_split(dataset.measurements,
                                     dataset.meta_data), g_conf.BATCH_SIZE,
        g_conf.NUMBER_IMAGES_SEQUENCE, g_conf.SEQUENCE_STRIDE)
    data_loader = torch.utils.data.DataLoader(dataset,
                                              batch_sampler=sampler,
                                              shuffle=False,
                                              num_workers=6,
                                              pin_memory=True)

    l1weight = 1.0
    image_size = tuple([88, 200])
    testmode = 1

    modelG = coil_ganmodules_task._netG()
    modelF = coil_ganmodules_task._netF()

    fstd = torch.load('netF_GAN_Pretrained.wts')
    gstd = torch.load('netG_GAN_Pretrained.wts')
    print(fstd.keys())
    print("+++++++++")
    print(gstd.keys())
    print(modelG)

    modelF.load_state_dict(fstd)
    modelG.load_state_dict(gstd)

    print(modelF)
    print(modelG)
    # netG.eval()

    capture_time = time.time()
    for data in data_loader:

        val = 0.5
        input_data, float_data = data
        inputs = input_data['rgb'].cuda()
        inputs = inputs.squeeze(1)
        inputs_in = inputs - val  #subtracted by 0.5

        #forward pass
        embeds, branches = modelF(inputs)
        fake_inputs = modelG(embeds)

        imgs_to_save = torch.cat((inputs_in[:2] + val, fake_inputs_in[:2]),
                                 0).cpu().data
        vutils.save_image(imgs_to_save,
                          './imgs' + '/' + str(iteration) +
                          '_real_and_fake.png',
                          normalize=True)
        coil_logger.add_image("Images", imgs_to_save, iteration)
Ejemplo n.º 3
0
def execute(gpu, exp_batch, exp_alias):

    from time import gmtime, strftime

    manualSeed = g_conf.SEED
    torch.cuda.manual_seed(manualSeed)
    os.environ["CUDA_VISIBLE_DEVICES"] = gpu
    merge_with_yaml(os.path.join('configs', exp_batch, exp_alias + '.yaml'))
    set_type_of_process('train')

    coil_logger.add_message('Loading', {'GPU': gpu})
    if not os.path.exists('_output_logs'):
        os.mkdir('_output_logs')
    sys.stdout = open(os.path.join(
        '_output_logs', g_conf.PROCESS_NAME + '_' + str(os.getpid()) + ".out"),
                      "a",
                      buffering=1)
    if monitorer.get_status(exp_batch, exp_alias + '.yaml',
                            g_conf.PROCESS_NAME)[0] == "Finished":
        return

    full_dataset = os.path.join(os.environ["COIL_DATASET_PATH"],
                                g_conf.TRAIN_DATASET_NAME)
    real_dataset = g_conf.TARGET_DOMAIN_PATH
    # real_dataset = os.path.join(os.environ["COIL_DATASET_PATH"], "FinalRealWorldDataset")

    #main data loader
    dataset = CoILDataset(full_dataset,
                          real_dataset,
                          transform=transforms.Compose([transforms.ToTensor()
                                                        ]))

    sampler = BatchSequenceSampler(
        splitter.control_steer_split(dataset.measurements,
                                     dataset.meta_data), g_conf.BATCH_SIZE,
        g_conf.NUMBER_IMAGES_SEQUENCE, g_conf.SEQUENCE_STRIDE)
    data_loader = torch.utils.data.DataLoader(dataset,
                                              batch_sampler=sampler,
                                              shuffle=False,
                                              num_workers=6,
                                              pin_memory=True)

    st = lambda aug: iag.Sometimes(aug, 0.4)
    oc = lambda aug: iag.Sometimes(aug, 0.3)
    rl = lambda aug: iag.Sometimes(aug, 0.09)
    augmenter = iag.Augmenter([iag.ToGPU()] + [
        rl(iag.GaussianBlur(
            (0, 1.5))),  # blur images with a sigma between 0 and 1.5
        rl(iag.AdditiveGaussianNoise(loc=0, scale=(
            0.0, 0.05), per_channel=0.5)),  # add gaussian noise to images
        oc(iag.Dropout((0.0, 0.10), per_channel=0.5)
           ),  # randomly remove up to X% of the pixels
        oc(
            iag.CoarseDropout(
                (0.0, 0.10), size_percent=(0.08, 0.2),
                per_channel=0.5)),  # randomly remove up to X% of the pixels
        oc(iag.Add((-40, 40), per_channel=0.5)
           ),  # change brightness of images (by -X to Y of original value)
        st(iag.Multiply((0.10, 2), per_channel=0.2)
           ),  # change brightness of images (X-Y% of original value)
        rl(iag.ContrastNormalization(
            (0.5, 1.5), per_channel=0.5)),  # improve or worsen the contrast
        rl(iag.Grayscale((0.0, 1))),  # put grayscale
    ]  # do all of the above in random order
                              )

    l1weight = g_conf.L1_WEIGHT
    task_adv_weight = g_conf.TASK_ADV_WEIGHT
    image_size = tuple([88, 200])

    print(strftime("%Y-%m-%d %H:%M:%S", gmtime()))
    print("Configurations of ", exp_alias)
    print("GANMODEL_NAME", g_conf.GANMODEL_NAME)
    print("LOSS_FUNCTION", g_conf.LOSS_FUNCTION)
    print("LR_G, LR_D, LR", g_conf.LR_G, g_conf.LR_D, g_conf.LEARNING_RATE)
    print("SKIP", g_conf.SKIP)
    print("TYPE", g_conf.TYPE)
    print("L1 WEIGHT", g_conf.L1_WEIGHT)
    print("TASK ADV WEIGHT", g_conf.TASK_ADV_WEIGHT)
    print("LAB SMOOTH", g_conf.LABSMOOTH)

    if g_conf.GANMODEL_NAME == 'LSDcontrol':
        netD = ganmodels._netD(loss=g_conf.LOSS_FUNCTION).cuda()
        netG = ganmodels._netG(loss=g_conf.LOSS_FUNCTION,
                               skip=g_conf.SKIP).cuda()
    elif g_conf.GANMODEL_NAME == 'LSDcontrol_nopatch':
        netD = ganmodels_nopatch._netD(loss=g_conf.LOSS_FUNCTION).cuda()
        netG = ganmodels_nopatch._netG(loss=g_conf.LOSS_FUNCTION).cuda()
    elif g_conf.GANMODEL_NAME == 'LSDcontrol_nopatch_smaller':
        netD = ganmodels_nopatch_smaller._netD(
            loss=g_conf.LOSS_FUNCTION).cuda()
        netG = ganmodels_nopatch_smaller._netG(
            loss=g_conf.LOSS_FUNCTION).cuda()

    elif g_conf.GANMODEL_NAME == 'LSDcontrol_task':
        netD = ganmodels_task._netD(loss=g_conf.LOSS_FUNCTION).cuda()
        netG = ganmodels_task._netG(loss=g_conf.LOSS_FUNCTION).cuda()
        netF = ganmodels_task._netF(loss=g_conf.LOSS_FUNCTION).cuda()

        if g_conf.PRETRAINED == 'RECON':
            netF_statedict = torch.load('netF_GAN_Pretrained.wts')
            netF.load_state_dict(netF_statedict)

        elif g_conf.PRETRAINED == 'IL':
            print("Loading IL")
            model_IL = torch.load('best_loss_20-06_EpicClearWeather.pth')
            model_IL_state_dict = model_IL['state_dict']

            netF_state_dict = netF.state_dict()

            print(len(netF_state_dict.keys()), len(model_IL_state_dict.keys()))
            for i, keys in enumerate(
                    zip(netF_state_dict.keys(), model_IL_state_dict.keys())):
                newkey, oldkey = keys
                # if newkey.split('.')[0] == "branch" and oldkey.split('.')[0] == "branches":
                #     print("No Transfer of ",  newkey, " to ", oldkey)
                # else:
                print("Transferring ", newkey, " to ", oldkey)
                netF_state_dict[newkey] = model_IL_state_dict[oldkey]

            netF.load_state_dict(netF_state_dict)
            print("IL Model Loaded!")

    elif g_conf.GANMODEL_NAME == 'LSDcontrol_task_2d':
        netD = ganmodels_taskAC_shared._netD().cuda()
        netG = ganmodels_taskAC_shared._netG().cuda()
        netF = ganmodels_taskAC_shared._netF().cuda()

        if g_conf.PRETRAINED == 'IL':
            print("Loading IL")
            model_IL = torch.load(g_conf.IL_AGENT_PATH)
            model_IL_state_dict = model_IL['state_dict']

            netF_state_dict = netF.state_dict()

            print(len(netF_state_dict.keys()), len(model_IL_state_dict.keys()))
            for i, keys in enumerate(
                    zip(netF_state_dict.keys(), model_IL_state_dict.keys())):
                newkey, oldkey = keys
                print("Transferring ", newkey, " to ", oldkey)
                netF_state_dict[newkey] = model_IL_state_dict[oldkey]

            netF.load_state_dict(netF_state_dict)
            print("IL Model Loaded!")

            #####
            if g_conf.IF_AUG:
                print("Loading Aug Decoder")
                model_dec = torch.load(g_conf.DECODER_RECON_PATH)
            else:
                print("Loading Decoder")
                model_dec = torch.load(g_conf.DECODER_RECON_PATH)
            model_dec_state_dict = model_dec['stateG_dict']

            netG_state_dict = netG.state_dict()

            print(len(netG_state_dict.keys()),
                  len(model_dec_state_dict.keys()))
            for i, keys in enumerate(
                    zip(netG_state_dict.keys(), model_dec_state_dict.keys())):
                newkey, oldkey = keys
                print("Transferring ", newkey, " to ", oldkey)
                netG_state_dict[newkey] = model_dec_state_dict[oldkey]

            netG.load_state_dict(netG_state_dict)
            print("Decoder Model Loaded!")

    init_weights(netD)

    print(netD)
    print(netF)
    print(netG)

    optimD = torch.optim.Adam(netD.parameters(),
                              lr=g_conf.LR_D,
                              betas=(0.5, 0.999))
    optimG = torch.optim.Adam(netG.parameters(),
                              lr=g_conf.LR_G,
                              betas=(0.5, 0.999))
    if g_conf.TYPE == 'task':
        optimF = torch.optim.Adam(netF.parameters(), lr=g_conf.LEARNING_RATE)
        Task_Loss = TaskLoss()

    if g_conf.GANMODEL_NAME == 'LSDcontrol_task_2d':
        print("Using cross entropy!")
        Loss = torch.nn.CrossEntropyLoss().cuda()

    L1_loss = torch.nn.L1Loss().cuda()

    iteration = 0
    best_loss_iter_F = 0
    best_loss_iter_G = 0
    best_lossF = 1000000.0
    best_lossD = 1000000.0
    best_lossG = 1000000.0
    accumulated_time = 0
    n_critic = g_conf.N_CRITIC

    lossF = Variable(torch.Tensor([100.0]))
    lossG_adv = Variable(torch.Tensor([100.0]))
    lossG_smooth = Variable(torch.Tensor([100.0]))
    lossG = Variable(torch.Tensor([100.0]))

    netG.train()
    netD.train()
    netF.train()
    capture_time = time.time()

    if not os.path.exists('./imgs_' + exp_alias):
        os.mkdir('./imgs_' + exp_alias)

    fake_img_pool_src = ImagePool(50)
    fake_img_pool_tgt = ImagePool(50)

    for data in data_loader:

        set_requires_grad(netD, True)
        set_requires_grad(netF, True)
        set_requires_grad(netG, True)

        # print("ITERATION:", iteration)

        val = 0.0
        input_data, float_data, tgt_imgs = data

        if g_conf.IF_AUG:
            inputs = augmenter(0, input_data['rgb'])
            # tgt_imgs = augmenter(0, tgt_imgs)
        else:
            inputs = input_data['rgb'].cuda()
            # tgt_imgs = tgt_imgs.cuda()

        tgt_imgs = tgt_imgs.cuda()

        inputs = inputs.squeeze(1)
        inputs = inputs - val  #subtracted by 0.5
        tgt_imgs = tgt_imgs - val  #subtracted by 0.5

        controls = float_data[:, dataset.controls_position(), :]

        src_embed_inputs, src_branches = netF(
            inputs,
            dataset.extract_inputs(float_data).cuda())
        tgt_embed_inputs = netF(tgt_imgs, None)

        src_fake_inputs = netG(src_embed_inputs.detach())
        tgt_fake_inputs = netG(tgt_embed_inputs.detach())

        if iteration % 100 == 0:
            imgs_to_save = torch.cat(
                (inputs[:1] + val, src_fake_inputs[:1] + val,
                 tgt_imgs[:1] + val, tgt_fake_inputs[:1] + val), 0).cpu().data
            coil_logger.add_image("Images", imgs_to_save, iteration)
            imgs_to_save = imgs_to_save.clamp(0.0, 1.0)
            vutils.save_image(imgs_to_save,
                              './imgs_' + exp_alias + '/' + str(iteration) +
                              '_real_and_fake.png',
                              normalize=False)

        ##--------------------Discriminator part!!!!!!!!!!-------------------##

        ##source fake
        if g_conf.IF_POOL:
            src_fake_inputs_forD = fake_img_pool_src.query(src_fake_inputs)
            tgt_fake_inputs_forD = fake_img_pool_tgt.query(tgt_fake_inputs)
        else:
            src_fake_inputs_forD = src_fake_inputs
            tgt_fake_inputs_forD = tgt_fake_inputs

        set_requires_grad(netD, True)
        set_requires_grad(netF, False)
        set_requires_grad(netG, False)
        optimD.zero_grad()

        outputsD_fake_src_bin, __ = netD(src_fake_inputs_forD.detach())
        outputsD_fake_tgt_bin, __ = netD(tgt_fake_inputs_forD.detach())

        outputsD_real_src_bin, __ = netD(inputs)
        outputsD_real_tgt_bin, __ = netD(tgt_imgs)

        gradient_penalty_src = calc_gradient_penalty(netD, inputs,
                                                     src_fake_inputs_forD,
                                                     "recon")
        lossD_bin_src = torch.mean(
            outputsD_fake_src_bin -
            outputsD_real_src_bin) + gradient_penalty_src

        gradient_penalty_tgt = calc_gradient_penalty(netD, tgt_imgs,
                                                     tgt_fake_inputs_forD,
                                                     "recon")
        lossD_bin_tgt = torch.mean(
            outputsD_fake_tgt_bin -
            outputsD_real_tgt_bin) + gradient_penalty_tgt

        lossD = (lossD_bin_src + lossD_bin_tgt) * 0.5
        lossD.backward(retain_graph=True)
        optimD.step()

        coil_logger.add_scalar('Total LossD Bin', lossD.data, iteration)
        coil_logger.add_scalar('Src LossD Bin', lossD_bin_src.data, iteration)
        coil_logger.add_scalar('Tgt LossD Bin', lossD_bin_tgt.data, iteration)

        ##--------------------Generator part!!!!!!!!!!-----------------------##
        set_requires_grad(netD, False)
        set_requires_grad(netF, False)
        set_requires_grad(netG, True)
        optimG.zero_grad()

        #fake outputs for bin
        outputsD_bin_src_fake_forG, __ = netD(src_fake_inputs)
        outputsD_bin_tgt_fake_forG, __ = netD(tgt_fake_inputs)

        #Generator updates

        if ((iteration + 1) % n_critic) == 0:
            #for netD_bin

            optimG.zero_grad()
            outputsD_bin_fake_forG = netD(tgt_imgs)

            #Generator updates
            lossG_src_smooth = L1_loss(
                src_fake_inputs, inputs)  # L1 loss with real domain image
            lossG_tgt_smooth = L1_loss(
                tgt_fake_inputs, tgt_imgs)  # L1 loss with real domain image

            lossG_src_adv_bin = -1.0 * torch.mean(outputsD_bin_src_fake_forG)
            lossG_tgt_adv_bin = -1.0 * torch.mean(outputsD_bin_tgt_fake_forG)

            lossG_adv_bin = 0.5 * (lossG_src_adv_bin + lossG_tgt_adv_bin)

            lossG_Adv = lossG_adv_bin
            lossG_L1 = 0.5 * (lossG_src_smooth + lossG_tgt_smooth)

            lossG = (lossG_Adv + l1weight * lossG_L1) / (1.0 + l1weight)

            lossG.backward(retain_graph=True)
            optimG.step()

            coil_logger.add_scalar('Total LossG', lossG.data, iteration)
            coil_logger.add_scalar('LossG Adv', lossG_Adv.data, iteration)
            coil_logger.add_scalar('Adv Bin LossG', lossG_adv_bin.data,
                                   iteration)
            coil_logger.add_scalar('Smooth LossG', lossG_L1.data, iteration)

            #####Task network updates##########################
            set_requires_grad(netD, False)
            set_requires_grad(netF, True)
            set_requires_grad(netG, False)

            optimF.zero_grad()
            lossF_task = Task_Loss.MSELoss(
                src_branches,
                dataset.extract_targets(float_data).cuda(), controls.cuda(),
                dataset.extract_inputs(float_data).cuda())

            __, outputsD_fake_src_da = netD(src_fake_inputs_forD.detach())
            __, outputsD_real_tgt_da = netD(tgt_imgs)

            __, outputsD_fake_tgt_da = netD(tgt_fake_inputs_forD.detach())
            __, outputsD_real_src_da = netD(inputs)

            gradient_penalty_da_1 = calc_gradient_penalty(
                netD, tgt_imgs, src_fake_inputs_forD, "da")
            lossF_da_1 = torch.mean(outputsD_fake_src_da - outputsD_real_tgt_da
                                    ) + gradient_penalty_da_1

            gradient_penalty_da_2 = calc_gradient_penalty(
                netD, inputs, tgt_fake_inputs_forD, "da")
            lossF_da_2 = torch.mean(outputsD_fake_tgt_da - outputsD_real_src_da
                                    ) + gradient_penalty_da_2

            lossF_da = 0.5 * (lossF_da_1 + lossF_da_2)
            lossF = (lossF_task +
                     task_adv_weight * lossF_da) / (1.0 + task_adv_weight)

            coil_logger.add_scalar('Total Task Loss', lossF.data, iteration)
            coil_logger.add_scalar('Adv Task Loss', lossF_da.data, iteration)
            coil_logger.add_scalar('Only Task Loss', lossF_task.data,
                                   iteration)
            lossF.backward(retain_graph=True)
            optimF.step()

            if lossG.data < best_lossG:
                best_lossG = lossG.data.tolist()
                best_loss_iter_G = iteration

            if lossF.data < best_lossF:
                best_lossF = lossF.data.tolist()
                best_loss_iter_F = iteration

        #optimization for one iter done!

        position = random.randint(0, len(float_data) - 1)

        if lossD.data < best_lossD:
            best_lossD = lossD.data.tolist()

        accumulated_time += time.time() - capture_time
        capture_time = time.time()

        if is_ready_to_save(iteration):

            state = {
                'iteration': iteration,
                'stateD_dict': netD.state_dict(),
                'stateG_dict': netG.state_dict(),
                'stateF_dict': netF.state_dict(),
                'best_lossD': best_lossD,
                'best_lossG': best_lossG,
                'total_time': accumulated_time,
                'best_loss_iter_G': best_loss_iter_G,
                'best_loss_iter_F': best_loss_iter_F
            }
            torch.save(
                state,
                os.path.join('/datatmp/Experiments/rohitgan/_logs', exp_batch,
                             exp_alias, 'checkpoints',
                             str(iteration) + '.pth'))

        if iteration == best_loss_iter_F and iteration > 10000:

            state = {
                'iteration': iteration,
                'stateD_dict': netD.state_dict(),
                'stateG_dict': netG.state_dict(),
                'stateF_dict': netF.state_dict(),
                'best_lossD': best_lossD,
                'best_lossG': best_lossG,
                'best_lossF': best_lossF,
                'total_time': accumulated_time,
                'best_loss_iter_F': best_loss_iter_F
            }
            torch.save(
                state,
                os.path.join('/datatmp/Experiments/rohitgan/_logs', exp_batch,
                             exp_alias, 'best_modelF' + '.pth'))

        iteration += 1
Ejemplo n.º 4
0
def execute(gpu, exp_batch, exp_alias):

    os.environ["CUDA_VISIBLE_DEVICES"] = gpu
    merge_with_yaml(os.path.join('configs', exp_batch, exp_alias + '.yaml'))
    set_type_of_process('train')

    coil_logger.add_message('Loading', {'GPU': gpu})
    if not os.path.exists('_output_logs'):
        os.mkdir('_output_logs')
    sys.stdout = open(os.path.join(
        '_output_logs', g_conf.PROCESS_NAME + '_' + str(os.getpid()) + ".out"),
                      "a",
                      buffering=1)
    if monitorer.get_status(exp_batch, exp_alias + '.yaml',
                            g_conf.PROCESS_NAME)[0] == "Finished":
        return

    full_dataset = os.path.join(os.environ["COIL_DATASET_PATH"],
                                g_conf.TRAIN_DATASET_NAME)
    dataset = CoILDataset(full_dataset,
                          transform=transforms.Compose([transforms.ToTensor()
                                                        ]))

    sampler = BatchSequenceSampler(
        splitter.control_steer_split(dataset.measurements,
                                     dataset.meta_data), g_conf.BATCH_SIZE,
        g_conf.NUMBER_IMAGES_SEQUENCE, g_conf.SEQUENCE_STRIDE)
    data_loader = torch.utils.data.DataLoader(dataset,
                                              batch_sampler=sampler,
                                              shuffle=False,
                                              num_workers=6,
                                              pin_memory=True)

    l1weight = g_conf.L1_WEIGHT
    image_size = tuple([88, 200])

    print("Configurations of ", exp_alias)
    print("GANMODEL_NAME", g_conf.GANMODEL_NAME)
    print("LOSS_FUNCTION", g_conf.LOSS_FUNCTION)
    print("LR_G, LR_D, LR", g_conf.LR_G, g_conf.LR_D, g_conf.LEARNING_RATE)
    print("SKIP", g_conf.SKIP)
    print("TYPE", g_conf.TYPE)
    print("L1 WEIGHT", g_conf.L1_WEIGHT)
    print("LAB SMOOTH", g_conf.LABSMOOTH)

    if g_conf.GANMODEL_NAME == 'LSDcontrol':
        netD = ganmodels._netD(loss=g_conf.LOSS_FUNCTION).cuda()
        netG = ganmodels._netG(loss=g_conf.LOSS_FUNCTION,
                               skip=g_conf.SKIP).cuda()
    elif g_conf.GANMODEL_NAME == 'LSDcontrol_nopatch':
        netD = ganmodels_nopatch._netD(loss=g_conf.LOSS_FUNCTION).cuda()
        netG = ganmodels_nopatch._netG(loss=g_conf.LOSS_FUNCTION).cuda()
    elif g_conf.GANMODEL_NAME == 'LSDcontrol_nopatch_smaller':
        netD = ganmodels_nopatch_smaller._netD(
            loss=g_conf.LOSS_FUNCTION).cuda()
        netG = ganmodels_nopatch_smaller._netG(
            loss=g_conf.LOSS_FUNCTION).cuda()

    elif g_conf.GANMODEL_NAME == 'LSDcontrol_task':
        netD = ganmodels_task._netD(loss=g_conf.LOSS_FUNCTION).cuda()
        netG = ganmodels_task._netG(loss=g_conf.LOSS_FUNCTION).cuda()
        netF = ganmodels_task._netG(loss=g_conf.LOSS_FUNCTION).cuda()

    init_weights(netD)
    init_weights(netG)

    print(netD)
    print(netG)

    optimD = torch.optim.Adam(netD.parameters(),
                              lr=g_conf.LR_D,
                              betas=(0.7, 0.999))
    optimG = torch.optim.Adam(netG.parameters(),
                              lr=g_conf.LR_G,
                              betas=(0.7, 0.999))
    if g_conf.TYPE == 'task':
        optimF = torch.optim.Adam(netG.parameters(),
                                  lr=g_conf.LEARNING_RATE,
                                  betas=(0.7, 0.999))
        Task_Loss = TaskLoss()

    if g_conf.LOSS_FUNCTION == 'LSGAN':
        Loss = torch.nn.MSELoss().cuda()
    elif g_conf.LOSS_FUNCTION == 'NORMAL':
        Loss = torch.nn.BCELoss().cuda()

    L1_loss = torch.nn.L1Loss().cuda()

    iteration = 0
    best_loss_iter = 0
    best_lossD = 1000000.0
    best_lossG = 1000000.0
    accumulated_time = 0

    netG.train()
    netD.train()
    capture_time = time.time()

    if not os.path.exists('./imgs_' + exp_alias):
        os.mkdir('./imgs_' + exp_alias)

    #TODO add image queue
    #TODO add auxiliary regression loss for steering
    #TODO put family for losses

    fake_img_pool = ImagePool(50)

    for data in data_loader:

        val = 0.5
        input_data, float_data = data
        inputs = input_data['rgb'].cuda()
        inputs = inputs.squeeze(1)
        inputs_in = inputs - val

        fake_inputs = netG(inputs_in)  #subtracted by 0.5
        fake_inputs_in = fake_inputs

        if iteration % 200 == 0:
            imgs_to_save = torch.cat((inputs_in[:2] + val, fake_inputs_in[:2]),
                                     0).cpu().data
            vutils.save_image(imgs_to_save,
                              './imgs_' + exp_alias + '/' + str(iteration) +
                              '_real_and_fake.png',
                              normalize=True)
            coil_logger.add_image("Images", imgs_to_save, iteration)

        ##--------------------Discriminator part!!!!!!!!!!-------------------##
        set_requires_grad(netD, True)
        optimD.zero_grad()

        ##fake
        fake_inputs_forD = fake_img_pool.query(fake_inputs)
        outputsD_fake_forD = netD(fake_inputs_forD.detach())

        labsize = outputsD_fake_forD.size()
        labels_fake = torch.zeros(labsize)  #Fake labels
        label_fake_noise = torch.rand(
            labels_fake.size()) * 0.05 - 0.025  #Label smoothing

        if g_conf.LABSMOOTH == 1:
            labels_fake = labels_fake + labels_fake_noise

        labels_fake = Variable(labels_fake).cuda()
        lossD_fake = Loss(outputsD_fake_forD, labels_fake)

        ##real
        outputsD_real = netD(inputs)
        print("some d outputs", outputsD_real[0])

        labsize = outputsD_real.size()
        labels_real = torch.ones(labsize)  #Real labels
        label_real_noise = torch.rand(
            labels_real.size()) * 0.05 - 0.025  #Label smoothing

        if g_conf.LABSMOOTH == 1:
            labels_real = labels_real + labels_real_noise

        labels_real = Variable(labels_real).cuda()
        lossD_real = Loss(outputsD_real, labels_real)

        #Discriminator updates

        lossD = (lossD_real + lossD_fake) * 0.5
        # lossD /= len(inputs)
        lossD.backward()
        optimD.step()

        coil_logger.add_scalar('Total LossD', lossD.data, iteration)
        coil_logger.add_scalar('Real LossD', lossD_real.data, iteration)
        coil_logger.add_scalar('Fake LossD', lossD_fake.data, iteration)

        ##--------------------Generator part!!!!!!!!!!-----------------------

        set_requires_grad(netD, False)
        optimG.zero_grad()
        outputsD_fake_forG = netD(fake_inputs)
        #Generator updates

        lossG_adv = Loss(outputsD_fake_forG, labels_real)
        lossG_smooth = L1_loss(fake_inputs, inputs)
        lossG = (lossG_adv + l1weight * lossG_smooth) / (1.0 + l1weight)
        lossG

        lossG.backward()
        optimG.step()

        coil_logger.add_scalar('Total LossG', lossG.data, iteration)
        coil_logger.add_scalar('Adv LossG', lossG_adv.data, iteration)
        coil_logger.add_scalar('Smooth LossG', lossG_smooth.data, iteration)

        #optimization for one iter done!

        position = random.randint(0, len(float_data) - 1)
        if lossD.data < best_lossD:
            best_lossD = lossD.data.tolist()

        if lossG.data < best_lossG:
            best_lossG = lossG.data.tolist()
            best_loss_iter = iteration

        accumulated_time += time.time() - capture_time
        capture_time = time.time()
        print("LossD", lossD.data.tolist(), "LossG", lossG.data.tolist(),
              "BestLossD", best_lossD, "BestLossG", best_lossG, "Iteration",
              iteration, "Best Loss Iteration", best_loss_iter)

        coil_logger.add_message(
            'Iterating', {
                'Iteration':
                iteration,
                'LossD':
                lossD.data.tolist(),
                'LossG':
                lossG.data.tolist(),
                'Images/s': (iteration * g_conf.BATCH_SIZE) / accumulated_time,
                'BestLossD':
                best_lossD,
                'BestLossIteration':
                best_loss_iter,
                'BestLossG':
                best_lossG,
                'BestLossIteration':
                best_loss_iter,
                'GroundTruth':
                dataset.extract_targets(float_data)[position].data.tolist(),
                'Inputs':
                dataset.extract_inputs(float_data)[position].data.tolist()
            }, iteration)
        if is_ready_to_save(iteration):

            state = {
                'iteration': iteration,
                'stateD_dict': netD.state_dict(),
                'stateG_dict': netG.state_dict(),
                'best_lossD': best_lossD,
                'best_lossG': best_lossG,
                'total_time': accumulated_time,
                'best_loss_iter': best_loss_iter
            }
            torch.save(
                state,
                os.path.join('/datatmp/Experiments/rohitgan/_logs', exp_batch,
                             exp_alias, 'checkpoints',
                             str(iteration) + '.pth'))
        if iteration == best_loss_iter:

            state = {
                'iteration': iteration,
                'stateD_dict': netD.state_dict(),
                'stateG_dict': netG.state_dict(),
                'best_lossD': best_lossD,
                'best_lossG': best_lossG,
                'total_time': accumulated_time,
                'best_loss_iter': best_loss_iter
            }
            torch.save(
                state,
                os.path.join('/datatmp/Experiments/rohitgan/_logs', exp_batch,
                             exp_alias, 'best_modelG' + '.pth'))

        iteration += 1