Esempio n. 1
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def main(args):
    os.environ['CUDA_VISIBLE_DEVICES'] = args.device
    print('load the model from:   ' + args.save_path)
    exp_dir = os.path.join(args.save_path, args.dataset, args.dataset,
                           'img_model/ckpt_max.pth')
    train_tsfm, valid_tsfm = get_transform(args)

    valid_set = AttrDataset(args=args,
                            split=args.valid_split,
                            transform=valid_tsfm,
                            target_transform=None,
                            Type='val')

    valid_loader = DataLoader(
        dataset=valid_set,
        batch_size=args.batchsize,
        shuffle=False,
        num_workers=4,
        drop_last=True,
        pin_memory=True,
    )
    print('have generated dataset')

    if args.model_name == 'resnet18_conv':
        backbone = resnet18_conv()

    classifier = BaseClassifier(nattr=valid_set.attr_num)
    model = FeatClassifier(backbone, classifier)

    if torch.cuda.is_available():
        model = torch.nn.DataParallel(model).cuda()
    model.load_state_dict(torch.load(exp_dir)['state_dicts'])

    labels = valid_set.label
    sample_weight = labels.mean(0)
    criterion = CEL_Sigmoid(sample_weight)

    valid_loss, valid_gt, valid_probs = valid_trainer(
        model=model,
        valid_loader=valid_loader,
        criterion=criterion,
    )
    valid_result = get_pedestrian_metrics(valid_gt, valid_probs)

    #print result
    print(
        f'Evaluation on test set, \n',
        'ma: {:.4f},  pos_recall: {:.4f} , neg_recall: {:.4f} \n'.format(
            valid_result.ma, np.mean(valid_result.label_pos_recall),
            np.mean(valid_result.label_neg_recall)),
        'Acc: {:.4f}, Prec: {:.4f}, Rec: {:.4f}, F1: {:.4f}'.format(
            valid_result.instance_acc, valid_result.instance_prec,
            valid_result.instance_recall, valid_result.instance_f1))

    for index in range(len(valid_set.attr_name)):
        print(f'{valid_set.attr_name[index]}')
        print(
            f'pos recall: {valid_result.label_pos_recall[index]}  neg_recall: {valid_result.label_neg_recall[index]}  ma: {valid_result.label_ma[index]}'
        )
Esempio n. 2
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def get_dataloader():
    train_transform, valid_transform, _ = get_transform()
    data_path_rap = '/data1/zhengxiaoqiang/par_datasets/RAP/dataset.pkl'
    data_path_pa100k = '/data1/zhengxiaoqiang/par_datasets/PAK100/dataset.pkl'
    data_path_peta = '/data1/zhengxiaoqiang/par_datasets/PETA/peta-release/dataset.pkl'
    train_set = AttrDataset(split='trainval', transform=train_transform)
    train_dataloader = DataLoader(dataset=train_set,
                                  batch_size=100,
                                  shuffle=True,
                                  num_workers=4,
                                  pin_memory=True)
    valid_set = AttrDataset(split='test', transform=valid_transform)
    valid_dataloader = DataLoader(dataset=valid_set,
                                  batch_size=32,
                                  shuffle=False,
                                  num_workers=4,
                                  pin_memory=True)

    labels = train_set.label

    return train_dataloader, valid_dataloader, labels
Esempio n. 3
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def get_dataloader_new():
    train_transform, valid_transform, target_transform = get_transform()
    train_set = AttrDataset_for_newdataset(split='trainval',
                                           transform=train_transform,
                                           target_transform=target_transform)
    test_set = AttrDataset_for_newdataset(split='test',
                                          transform=train_transform)

    # train_set, valid_set = data.random_split(train_set, [int(0.8*len(train_set)), len(train_set) - int(0.8*len(train_set))])
    train_dataloader = DataLoader(dataset=train_set,
                                  batch_size=200,
                                  shuffle=True,
                                  num_workers=8,
                                  pin_memory=True)
    # valid_set = AttrDataset(split='test', transform=valid_transform)
    valid_dataloader = DataLoader(dataset=test_set,
                                  batch_size=32,
                                  shuffle=False,
                                  num_workers=4,
                                  pin_memory=True)

    labels = train_set.label

    return train_dataloader, valid_dataloader, labels
Esempio n. 4
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def main(args):
    visenv_name = args.dataset
    exp_dir = os.path.join('exp_result', args.dataset)
    model_dir, log_dir = get_model_log_path(exp_dir, visenv_name)
    stdout_file = os.path.join(log_dir, f'stdout_{time_str()}.txt')

    if args.redirector:
        print('redirector stdout')
        ReDirectSTD(stdout_file, 'stdout', False)

    pprint.pprint(OrderedDict(args.__dict__))

    print('-' * 60)
    print(f'use GPU{args.device} for training')
    print(
        f'train set: {args.dataset} {args.train_split}, test set: {args.valid_split}'
    )

    train_tsfm, valid_tsfm = get_transform(args)
    print(train_tsfm)

    train_set = AttrDataset(args=args,
                            split=args.train_split,
                            transform=train_tsfm)

    train_loader = DataLoader(
        dataset=train_set,
        batch_size=args.batchsize,
        shuffle=True,
        num_workers=4,
        pin_memory=True,
    )

    valid_set = AttrDataset(args=args,
                            split=args.valid_split,
                            transform=valid_tsfm)

    valid_loader = DataLoader(
        dataset=valid_set,
        batch_size=args.batchsize,
        shuffle=False,
        num_workers=4,
        pin_memory=True,
    )

    print(f'{args.train_split} set: {len(train_loader.dataset)}, '
          f'{args.valid_split} set: {len(valid_loader.dataset)}, '
          f'attr_num : {train_set.attr_num}')

    backbone = resnet50()
    classifier = BaseClassifier(nattr=35)
    model = FeatClassifier(backbone, classifier)

    if torch.cuda.is_available():
        model = torch.nn.DataParallel(model).cuda()

    print("reloading pretrained models")

    exp_dir = os.path.join('exp_result', args.dataset)
    model_path = os.path.join(exp_dir, args.dataset, 'img_model')
    model.load_state_dict(
        torch.load(
            '/home/sohaibrabbani/PycharmProjects/Strong_Baseline_of_Pedestrian_Attribute_Recognition/pedestrian_model/rap2_ckpt_max.pth'
        )['state_dicts'])
    # model = get_reload_weight(model_path, model)

    model.eval()
    preds_probs = []
    gt_list = []
    with torch.no_grad():
        for step, (imgs, gt_label, imgname) in enumerate(tqdm(valid_loader)):
            imgs = imgs.cuda()
            gt_label = gt_label.cuda()
            gt_list.append(gt_label.cpu().numpy())
            gt_label[gt_label == -1] = 0
            valid_logits = model(imgs)
            valid_probs = torch.sigmoid(valid_logits)
            preds_probs.append(valid_probs.cpu().numpy())

    gt_label = np.concatenate(gt_list, axis=0)
    preds_probs = np.concatenate(preds_probs, axis=0)

    valid_result = get_pedestrian_metrics(gt_label, preds_probs)

    print(
        f'Evaluation on test set, \n',
        'ma: {:.4f},  pos_recall: {:.4f} , neg_recall: {:.4f} \n'.format(
            valid_result.ma, np.mean(valid_result.label_pos_recall),
            np.mean(valid_result.label_neg_recall)),
        'Acc: {:.4f}, Prec: {:.4f}, Rec: {:.4f}, F1: {:.4f}'.format(
            valid_result.instance_acc, valid_result.instance_prec,
            valid_result.instance_recall, valid_result.instance_f1))
    def __init__(self):
        device = torch.device('cpu')
        FORCE_TO_CPU = True
        parser = argument_parser()
        args = parser.parse_args(['PETA', '--model=dpn107'])

        visenv_name = 'PETA'
        exp_dir = os.path.join('exp_result', visenv_name)
        model_dir, log_dir = get_model_log_path(exp_dir, visenv_name)
        stdout_file = os.path.join(log_dir, f'stdout_{time_str()}.txt')
        save_model_path = os.path.join(
            model_dir, 'ckpt_max_e0384293_2020-09-17_18-35-21.pth')

        if args.redirector:
            print('redirector stdout')
            ReDirectSTD(stdout_file, 'stdout', False)

        pprint.pprint(OrderedDict(args.__dict__))

        print('-' * 60)
        print(f'use GPU{args.device} for training')

        _, predict_tsfm = get_transform(args)

        valid_set = AttrDataset(args=args,
                                split=args.valid_split,
                                transform=predict_tsfm)

        args.att_list = valid_set.attr_id

        backbone = getattr(sys.modules[__name__], args.model)()

        if "dpn68" in args.model:
            net_parameter = 832
        elif "dpn" in args.model:
            net_parameter = 2688
        elif "densenet" in args.model:
            net_parameter = 1024
        else:
            net_parameter = 2048

        classifier = BaseClassifier(netpara=net_parameter,
                                    nattr=valid_set.attr_num)
        model = FeatClassifier(backbone, classifier)

        if torch.cuda.is_available() and not FORCE_TO_CPU:
            model = torch.nn.DataParallel(model).cuda()
            ckpt = torch.load(save_model_path)
            print(f'Model is served with GPU ')
        else:
            model = torch.nn.DataParallel(model)
            ckpt = torch.load(save_model_path,
                              map_location=torch.device('cpu'))
            print(f'Model is served with CPU ')

        model.load_state_dict(ckpt['state_dicts'])
        model.eval()

        # from torchsummary import summary
        # summary(model, input_size=(3, 256, 192))

        print('Total number of parameters: ',
              sum(p.numel() for p in model.parameters() if p.requires_grad))

        self.args = args
        self.predict_tsfm = predict_tsfm
        self.model = model
Esempio n. 6
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        'dpn68',
        'dpn68b',
        'densenet121']

parser = argument_parser()

df = pd.DataFrame()
data = []

for trained_model in models:
    save_model_path = os.path.join('backbone_model', trained_model+'.pth')
    args = parser.parse_args(['PETA', '--model='+trained_model])
    print(save_model_path)
    print(args)

    _, predict_tsfm = get_transform(args)
    valid_set = AttrDataset(args=args, split=args.valid_split, transform=predict_tsfm)
    
    args.att_list = valid_set.attr_id
    
    backbone = getattr(sys.modules[__name__], args.model)()
    if "dpn68" in args.model:
        net_parameter = 832
    elif "dpn" in args.model:
        net_parameter = 2688
    elif "densenet" in args.model:
        net_parameter = 1024
    else:
        net_parameter = 2048
        
    classifier = BaseClassifier(netpara=net_parameter, nattr=valid_set.attr_num)
Esempio n. 7
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def main(args):
    visenv_name = args.dataset
    exp_dir = os.path.join(args.save_path, args.dataset)
    model_dir, log_dir = get_model_log_path(exp_dir, visenv_name)
    stdout_file = os.path.join(log_dir, f'stdout_{time_str()}.txt')
    save_model_path = os.path.join(model_dir, 'ckpt_max.pth')
    os.environ['CUDA_VISIBLE_DEVICES'] = args.device
    if args.redirector:
        print('redirector stdout')
        ReDirectSTD(stdout_file, 'stdout', False)

    pprint.pprint(OrderedDict(args.__dict__))

    print('-' * 60)
    print(f'use GPU{args.device} for training')
    print(f'train set: {args.dataset} {args.train_split}, test set: {args.valid_split}')

    #train_tsfm, valid_tsfm = get_transform(args)
    train_tsfm, valid_tsfm = get_transform(args)
    print(train_tsfm)

    #train_set = AttrDataset(args=args, split=args.train_split, transform=train_tsfm)
    train_set = AttrDataset(args=args, split=args.train_split, transform=train_tsfm, target_transform=None, Type='train' )
    
    train_loader = DataLoader(
        dataset=train_set,
        batch_size=args.batchsize,
        shuffle=True,
        num_workers=4,
        drop_last=True,
        pin_memory=True,
    )
    #valid_set = AttrDataset(args=args, split=args.valid_split, transform=valid_tsfm)
    valid_set = AttrDataset(args=args, split=args.valid_split, transform=valid_tsfm, target_transform=None, Type='val')
    
    valid_loader = DataLoader(
        dataset=valid_set,
        batch_size=args.batchsize,
        shuffle=False,
        num_workers=4,
        drop_last=True,
        pin_memory=True,
    )

    print(f'{args.train_split} set: {len(train_loader.dataset)}, '
          f'{args.valid_split} set: {len(valid_loader.dataset)}, '
          f'attr_num : {train_set.attr_num}')

    labels = train_set.label
    sample_weight = labels.mean(0)

    #backbone = resnet50()
    if args.model_name == 'resnet50':
        backbone = resnet50()
    if args.model_name == 'resnet18':
        backbone = resnet18()
    if args.model_name == 'resnet18_stn':
        backbone = resnet18_stn()       
    if args.model_name == 'resnet_depth':
        backbone = resnet_depth()
    if args.model_name == 'resnet18_transformer':
        backbone = resnet18_transformer()        
    if args.model_name == 'resnet50_dynamic_se':
        backbone = resnet50_dynamic_se()
    if args.model_name == 'resnet18_dynamic_se':
        backbone = resnet18_dynamic_se()
    if args.model_name == 'resnet18_replace_se':
        backbone = resnet18_replace_se()
    if args.model_name == 'resnet18_se':
        backbone = resnet18_se()
    if args.model_name == 'resnet34':
        backbone = resnet34()
    if args.model_name == 'resnet18_group_se':
        backbone = resnet18_group_se()
    if args.model_name == 'resnet18_vit':
        backbone = resnet18_vit()
    if args.model_name == 'resnet18_vit_v2':
        backbone = resnet18_vit_v2()
    if args.model_name == 'resnet18_vit_v3':
        backbone = resnet18_vit_v3()
    if args.model_name == 'resnet18_vit_v5':
        backbone = resnet18_vit_v5()
    if args.model_name == 'resnet18_energy_vit':
        backbone = resnet18_energy_vit()
    if args.model_name == 'resnet18_vit_split':
        backbone = resnet18_vit_split(num_classes = train_set.attr_num)
    if args.model_name == 'inception_self':
        backbone = inception_self()  
    if args.model_name == 'spatial_modulator':
        backbone = spatial_modulator()
    if args.model_name == 'fusion_concat':
        backbone = fusion_concat()         
    print('have generated the model')    
    classifier = BaseClassifier(nattr=train_set.attr_num)
    model = FeatClassifier(backbone, classifier)
    
    print('Number of model parameters: {}'.format(
        sum([p.data.nelement() for p in model.parameters()])))
    print('')
    
    #if torch.cuda.is_available():
    model = torch.nn.DataParallel(model).cuda()
    #for k, v in model.state_dict().items():
    #    print(k)
    '''
    model_dict = {}
    state_dict = model.state_dict()
    pretrain_dict = torch.load('/home/pengqy/paper/resnet18_2/PETA/PETA/img_model/ckpt_max.pth')['state_dicts']
    for k, v in pretrain_dict.items():
        # print('%%%%% ', k)
        if k in state_dict:
            if k.startswith('module.backbone.conv1'):
                #pdb.set_trace()
                model_dict[k] = v       
            elif k.startswith('module.backbone.bn1'):
                model_dict[k] = v          
            elif k.startswith('module.backbone.layer'):
                model_dict[k] = v
            elif k.startswith('module.classifier'):
                model_dict[k] = v
            
            #elif k.startswith('module.backbone.spa_conv_0'):
            #    model_dict[k] = v
            #elif k.startswith('module.backbone.spa_bn_0'):
            #    model_dict[k] = v 
            #elif k.startswith('module.classifier'):
            #    model_dict[k] = v
            #elif k.startswith('module.classifier'):
            #    model_dict[k] = v   
              
    #pdb.set_trace()       
         
    state_dict.update(model_dict) 
    model.load_state_dict(state_dict)
    '''
    criterion = CEL_Sigmoid(sample_weight)
   
  
    
    param_groups = [{'params': model.module.finetune_params(), 'lr':0.01},
                   {'params': model.module.fresh_params(), 'lr':0.1}]
    
    optimizer = torch.optim.SGD(param_groups, momentum=args.momentum, weight_decay=args.weight_decay, nesterov=False)
    lr_scheduler = ReduceLROnPlateau(optimizer, factor=0.1, patience=4)
    loss = args.loss
    best_metric, epoch = trainer(epoch=args.train_epoch,
                                 model=model,
                                 train_loader=train_loader,
                                 valid_loader=valid_loader,
                                 criterion=criterion,
                                 optimizer=optimizer,
                                 lr_scheduler=lr_scheduler,
                                 path=save_model_path,
                                 loss =loss)

    print(f'{visenv_name},  best_metrc : {best_metric} in epoch{epoch}')
Esempio n. 8
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def main(args):
    visenv_name = args.dataset
    exp_dir = os.path.join(args.save_path, args.dataset)
    model_dir, log_dir = get_model_log_path(exp_dir, visenv_name)
    stdout_file = os.path.join(log_dir, f'stdout_{time_str()}.txt')
    save_model_path = os.path.join(model_dir, 'ckpt_max.pth')
    os.environ['CUDA_VISIBLE_DEVICES'] = args.device
    if args.redirector:
        print('redirector stdout')
        ReDirectSTD(stdout_file, 'stdout', False)

    pprint.pprint(OrderedDict(args.__dict__))

    print('-' * 60)
    print(f'use GPU{args.device} for training')
    print(
        f'train set: {args.dataset} {args.train_split}, test set: {args.valid_split}'
    )

    train_tsfm, valid_tsfm = get_transform(args)
    print(train_tsfm)

    train_set = AttrDataset(args=args,
                            split=args.train_split,
                            transform=train_tsfm)

    train_loader = DataLoader(
        dataset=train_set,
        batch_size=args.batchsize,
        shuffle=True,
        num_workers=4,
        pin_memory=True,
    )
    valid_set = AttrDataset(args=args,
                            split=args.valid_split,
                            transform=valid_tsfm)

    valid_loader = DataLoader(
        dataset=valid_set,
        batch_size=args.batchsize,
        shuffle=False,
        num_workers=4,
        pin_memory=True,
    )

    print(f'{args.train_split} set: {len(train_loader.dataset)}, '
          f'{args.valid_split} set: {len(valid_loader.dataset)}, '
          f'attr_num : {train_set.attr_num}')

    labels = train_set.label
    sample_weight = labels.mean(0)

    if args.model_name == 'resnet18_vit_v5':
        model = resnet18_vit_v5(num_classes=train_set.attr_num)
    print('have generated the model')

    print('Number of model parameters: {}'.format(
        sum([p.data.nelement() for p in model.parameters()])))
    print('')

    if torch.cuda.is_available():
        model = torch.nn.DataParallel(model).cuda()

    criterion = CEL_Sigmoid(sample_weight)

    optimizer = torch.optim.SGD(model.parameters(),
                                lr=args.lr_ft,
                                momentum=args.momentum,
                                weight_decay=args.weight_decay,
                                nesterov=False)
    lr_scheduler = ReduceLROnPlateau(optimizer, factor=0.1, patience=4)
    print(optimizer)
    #pdb.set_trace()
    loss = args.loss
    best_metric, epoch = trainer(epoch=args.train_epoch,
                                 model=model,
                                 train_loader=train_loader,
                                 valid_loader=valid_loader,
                                 criterion=criterion,
                                 optimizer=optimizer,
                                 lr_scheduler=lr_scheduler,
                                 path=save_model_path,
                                 loss=loss)

    print(f'{visenv_name},  best_metrc : {best_metric} in epoch{epoch}')
Esempio n. 9
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def main(args):
    os.environ['CUDA_VISIBLE_DEVICES'] = args.device
    print('load the model from:   ' + args.save_path)
    exp_dir = os.path.join(args.save_path, args.dataset, args.dataset,
                           'img_model/ckpt_max.pth')
    train_tsfm, valid_tsfm = get_transform(args)

    #valid_set = AttrDataset(args=args, split=args.valid_split, transform=valid_tsfm)
    valid_set = AttrDataset(args=args,
                            split=args.valid_split,
                            transform=valid_tsfm,
                            target_transform=None,
                            Type='val')

    valid_loader = DataLoader(
        dataset=valid_set,
        batch_size=args.batchsize,
        shuffle=False,
        num_workers=0,
        pin_memory=True,
    )
    print('have generated dataset')

    if args.model_name == 'resnet50':
        backbone = resnet50()
    if args.model_name == 'resnet18':
        backbone = resnet18()
    if args.model_name == 'resnet18_consistent':
        backbone = resnet18_consistent()
    if args.model_name == 'resnet18_stn':
        backbone = resnet18_stn()
    if args.model_name == 'resnet18_autoencoder':
        backbone = resnet18_autoencoder()
    if args.model_name == 'resnet50_dynamic_se':
        backbone = resnet50_dynamic_se()
    if args.model_name == 'resnet18_dynamic_se':
        backbone = resnet18_dynamic_se()
    if args.model_name == 'resnet18_group_se':
        backbone = resnet18_group_se()
    if args.model_name == 'resnet18_vit':
        backbone = resnet18_vit()
    if args.model_name == 'resnet18_vit_v2':
        backbone = resnet18_vit_v2()
    if args.model_name == 'resnet18_vit_v3':
        backbone = resnet18_vit_v3()
    if args.model_name == 'resnet18_vit_v4':
        backbone = resnet18_vit_v4()
    if args.model_name == 'resnet34':
        backbone = resnet34()
    if args.model_name == 'resnet18_vit_split':
        backbone = resnet18_vit_split(num_classes=valid_set.attr_num)
    if args.model_name == 'resnet18_energy_vit':
        backbone = resnet18_energy_vit(num_classes=valid_set.attr_num)
    if args.model_name == 'resnet_depth':
        backbone = resnet_depth(num_classes=valid_set.attr_num)
    if args.model_name == 'spatial_modulator':
        backbone = spatial_modulator()
    if args.model_name == 'fusion_concat':
        backbone = fusion_concat()
    classifier = BaseClassifier(nattr=valid_set.attr_num)
    model = FeatClassifier(backbone, classifier)

    if torch.cuda.is_available():
        model = torch.nn.DataParallel(model).cuda()
        #model = model.cuda()

    #loading state_dict from the model
    model.load_state_dict(torch.load(exp_dir)['state_dicts'])

    #load_ckpt(model, exp_dir)
    print('have load from the pretrained model')

    #start eval
    labels = valid_set.label
    sample_weight = labels.mean(0)
    criterion = CEL_Sigmoid(sample_weight)
    valid_loss, valid_gt, valid_probs = valid_trainer(
        model=model,
        valid_loader=valid_loader,
        criterion=criterion,
    )
    valid_result = get_pedestrian_metrics(valid_gt, valid_probs)

    #print result
    print(
        f'Evaluation on test set, \n',
        'ma: {:.4f},  pos_recall: {:.4f} , neg_recall: {:.4f} \n'.format(
            valid_result.ma, np.mean(valid_result.label_pos_recall),
            np.mean(valid_result.label_neg_recall)),
        'Acc: {:.4f}, Prec: {:.4f}, Rec: {:.4f}, F1: {:.4f}'.format(
            valid_result.instance_acc, valid_result.instance_prec,
            valid_result.instance_recall, valid_result.instance_f1))

    #for index in range(5, 35):
    for index in range(len(valid_set.attr_name)):
        print(f'{valid_set.attr_name[index]}')
        print(
            f'pos recall: {valid_result.label_pos_recall[index]}  neg_recall: {valid_result.label_neg_recall[index]}  ma: {valid_result.label_ma[index]}'
        )
Esempio n. 10
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def main(args):
    visenv_name = args.dataset
    exp_dir = os.path.join('exp_result', args.dataset)
    model_dir, log_dir = get_model_log_path(exp_dir, visenv_name)
    log_name = time.strftime("%Y-%m-%d %H:%M:%S", time.localtime(time.time()))
    stdout_file = os.path.join(log_dir, f'stdout_{log_name}.txt')
    save_model_path = os.path.join(model_dir, 'ckpt_max.pth')

    if args.redirector:
        print('redirector stdout')
        ReDirectSTD(stdout_file, 'stdout', False)

    pprint.pprint(OrderedDict(args.__dict__))

    print('-' * 60)
    print(f'use GPU{args.device} for training')
    print(
        f'train set: {args.dataset} {args.train_split}, test set: {args.valid_split}'
    )

    train_tsfm, valid_tsfm = get_transform(args)
    print(train_tsfm)

    train_set = AttrDataset(args=args,
                            split=args.train_split,
                            transform=train_tsfm)

    train_loader = DataLoader(
        dataset=train_set,
        batch_size=args.batchsize,
        shuffle=True,
        num_workers=4,
        pin_memory=True,
    )
    valid_set = AttrDataset(args=args,
                            split=args.valid_split,
                            transform=valid_tsfm)

    valid_loader = DataLoader(
        dataset=valid_set,
        batch_size=16,
        shuffle=False,
        num_workers=4,
        pin_memory=True,
    )

    print(f'{args.train_split} set: {len(train_loader.dataset)}, '
          f'{args.valid_split} set: {len(valid_loader.dataset)}, '
          f'attr_num : {train_set.attr_num}')

    labels = train_set.label
    sample_weight = labels.mean(0)

    # backbone = resnet50()
    # classifier = BaseClassifier(nattr=train_set.attr_num)
    backbone = osnet_ain_x1_0(num_classes=56, pretrained=True, loss='softmax')
    classifier = BaseClassifier_osnet(nattr=train_set.attr_num)
    model = FeatClassifier(backbone, classifier)

    if torch.cuda.is_available():
        model = torch.nn.DataParallel(model).cuda()
    #改
    criterion = CEL_Sigmoid(sample_weight)
    # criterion = multilabel_categorical_crossentropy

    param_groups = [{
        'params': model.module.finetune_params(),
        'lr': args.lr_ft
    }, {
        'params': model.module.fresh_params(),
        'lr': args.lr_new
    }]
    optimizer = torch.optim.SGD(param_groups,
                                momentum=args.momentum,
                                weight_decay=args.weight_decay,
                                nesterov=False)
    lr_scheduler = ReduceLROnPlateau(optimizer, factor=0.1, patience=4)
    if args.training:  #训练,每隔1个epoch,验证集评估一次
        best_metric, epoch = trainer(epoch=args.train_epoch,
                                     model=model,
                                     train_loader=train_loader,
                                     valid_loader=valid_loader,
                                     criterion=criterion,
                                     optimizer=optimizer,
                                     lr_scheduler=lr_scheduler,
                                     path=save_model_path,
                                     dataset=train_set)

        print(f'{visenv_name},  best_metrc : {best_metric} in epoch{epoch}')
    else:  #仅评估,不训练
        model_path = args.best_model_path
        saved_state_dict = torch.load(model_path)['state_dicts']
        saved_state_dict = {
            k.replace('module.', ''): v
            for k, v in saved_state_dict.items()
        }
        backbone = osnet_ain_x1_0(num_classes=valid_set.attr_num,
                                  pretrained=True,
                                  loss='softmax')
        print('make model for only test')
        classifier = BaseClassifier_osnet(nattr=valid_set.attr_num)
        test_model = FeatClassifier(backbone, classifier)
        print("loading model")
        test_model.load_state_dict(saved_state_dict)
        test_model.cuda()
        test_alm(valid_loader,
                 test_model,
                 attr_num=valid_set.attr_num,
                 description=valid_set.attr_id,
                 set='test',
                 threshold=0.5)
Esempio n. 11
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def main(args):
    visenv_name = args.dataset
    exp_dir = os.path.join('exp_result', args.dataset)
    model_dir, log_dir = get_model_log_path(exp_dir, visenv_name)
    stdout_file = os.path.join(log_dir, f'stdout_{time_str()}.txt')
    save_model_path = os.path.join(model_dir, 'ckpt_max.pth')

    if args.redirector:
        print('redirector stdout')
        ReDirectSTD(stdout_file, 'stdout', False)

    pprint.pprint(OrderedDict(args.__dict__))

    print('-' * 60)
    print(f'use GPU{args.device} for training')
    print(f'train set: {args.dataset} {args.train_split}, test set: {args.valid_split}')

    train_tsfm, valid_tsfm = get_transform(args)
    print(train_tsfm)

    train_set = AttrDataset(args=args, split=args.train_split, transform=train_tsfm)

    train_loader = DataLoader(
        dataset=train_set,
        batch_size=args.batchsize,
        shuffle=True,
        num_workers=0,
        pin_memory=True,
    )
    valid_set = AttrDataset(args=args, split=args.valid_split, transform=valid_tsfm)

    valid_loader = DataLoader(
        dataset=valid_set,
        batch_size=args.batchsize,
        shuffle=False,
        num_workers=0,
        pin_memory=True,
    )

    print(f'{args.train_split} set: {len(train_loader.dataset)}, '
          f'{args.valid_split} set: {len(valid_loader.dataset)}, '
          f'attr_num : {train_set.attr_num}')

    labels = train_set.label
    # sample_weight = labels.mean(0)
    # sample_weight = labels[labels!=2].reshape((labels.shape[0], labels.shape[1])).mean(0)
    sample_weight = np.nanmean(np.where(labels!=2,labels,np.nan), axis=0)

    backbone = getattr(sys.modules[__name__], args.model)()
    
    if "dpn68" in args.model:
        net_parameter = 832
    elif "dpn" in args.model:
        net_parameter = 2688
    elif "densenet" in args.model:
        net_parameter = 1024
    else:
        net_parameter = 2048
    
    classifier = BaseClassifier(netpara=net_parameter, nattr=train_set.attr_num)
    model = FeatClassifier(backbone, classifier)

    if torch.cuda.is_available():
        model = torch.nn.DataParallel(model).cuda()

    criterion = CEL_Sigmoid(sample_weight)

    if torch.cuda.is_available():
        param_groups = [{'params': model.module.finetune_params(), 'lr': args.lr_ft},
                        {'params': model.module.fresh_params(), 'lr': args.lr_new}]
    else:
        param_groups = [{'params': model.finetune_params(), 'lr': args.lr_ft},
                        {'params': model.fresh_params(), 'lr': args.lr_new}]
    optimizer = torch.optim.SGD(param_groups, momentum=args.momentum, weight_decay=args.weight_decay, nesterov=False)
    lr_scheduler = ReduceLROnPlateau(optimizer, factor=0.1, patience=4)

    best_metric, epoch = trainer(epoch=args.train_epoch,
                                 model=model,
                                 train_loader=train_loader,
                                 valid_loader=valid_loader,
                                 criterion=criterion,
                                 optimizer=optimizer,
                                 lr_scheduler=lr_scheduler,
                                 path=save_model_path)

    print(f'{visenv_name},  best_metrc : {best_metric} in epoch{epoch}')
def main(args):
    visenv_name = args.dataset
    exp_dir = os.path.join('exp_result', args.dataset)
    model_dir, log_dir = get_model_log_path(exp_dir, visenv_name)
    stdout_file = os.path.join(log_dir, f'stdout_{time_str()}.txt')
    save_model_path = os.path.join(model_dir, 'ckpt_max.pth')

    if args.redirector:
        print('redirector stdout')
        ReDirectSTD(stdout_file, 'stdout', False)

    pprint.pprint(OrderedDict(args.__dict__))

    os.environ['CUDA_DEVICE_ORDER'] = 'PCI_BUS_ID'
    os.environ['CUDA_VISIBLE_DEVICES'] = str(args.device)

    print('-' * 60)
    print(f'use GPU{args.device} for training')
    print(
        f'train set: {args.dataset} {args.train_split}, test set: {args.valid_split}'
    )

    train_tsfm, valid_tsfm = get_transform(args)
    print(train_tsfm)

    train_set = AttrDataset(args=args,
                            split=args.train_split,
                            transform=train_tsfm)

    train_loader = DataLoader(
        dataset=train_set,
        batch_size=args.batchsize,
        shuffle=True,
        num_workers=4,
        pin_memory=True,
    )
    valid_set = AttrDataset(args=args,
                            split=args.valid_split,
                            transform=valid_tsfm)

    valid_loader = DataLoader(
        dataset=valid_set,
        batch_size=args.batchsize,
        shuffle=False,
        num_workers=4,
        pin_memory=True,
    )

    print(f'{args.train_split} set: {len(train_loader.dataset)}, '
          f'{args.valid_split} set: {len(valid_loader.dataset)}, '
          f'attr_num : {train_set.attr_num}')

    labels = train_set.label
    sample_weight = labels.mean(0)

    backbone = resnet50()
    classifier = BaseClassifier(nattr=train_set.attr_num)
    model = FeatClassifier(backbone, classifier)

    if torch.cuda.is_available():
        model = torch.nn.DataParallel(model).cuda()

    criterion = CEL_Sigmoid(sample_weight)

    param_groups = [{
        'params': model.module.finetune_params(),
        'lr': args.lr_ft
    }, {
        'params': model.module.fresh_params(),
        'lr': args.lr_new
    }]
    optimizer = torch.optim.SGD(param_groups,
                                momentum=args.momentum,
                                weight_decay=args.weight_decay,
                                nesterov=False)
    lr_scheduler = MultiStepLR(optimizer, args.lr_scheduler_steps, gamma=0.1)

    best_metric, epoch = trainer(epoch=args.train_epoch,
                                 model=model,
                                 train_loader=train_loader,
                                 valid_loader=valid_loader,
                                 criterion=criterion,
                                 optimizer=optimizer,
                                 lr_scheduler=lr_scheduler,
                                 path=save_model_path)

    print(f'{visenv_name},  best_metrc : {best_metric} in epoch{epoch}')
    torch.save(model.state_dict(),
               os.path.join(model_dir, f'{time_str()}_model.pth.tar'))
Esempio n. 13
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def main(args):
    visenv_name = args.dataset
    exp_dir = os.path.join('exp_result', args.dataset)
    model_dir, log_dir = get_model_log_path(exp_dir, visenv_name)
    stdout_file = os.path.join(log_dir, f'stdout_{time_str()}.txt')
    save_model_path = os.path.join(model_dir, 'ckpt_max.pth')

    if args.redirector:
        print('redirector stdout')
        ReDirectSTD(stdout_file, 'stdout', False)

    pprint.pprint(OrderedDict(args.__dict__))

    print('-' * 60)
    print(f'use GPU{args.device} for training')
    print(
        f'train set: {args.dataset} {args.train_split}, test set: {args.valid_split}'
    )

    train_tsfm, valid_tsfm = get_transform(args)
    print(train_tsfm)

    train_set = AttrDataset(args=args,
                            split=args.train_split,
                            transform=train_tsfm)

    train_loader = DataLoader(
        dataset=train_set,
        batch_size=args.batchsize,
        shuffle=True,
        num_workers=4,
        pin_memory=True,
    )
    valid_set = AttrDataset(args=args,
                            split=args.valid_split,
                            transform=valid_tsfm)

    valid_loader = DataLoader(
        dataset=valid_set,
        batch_size=args.batchsize,
        shuffle=False,
        num_workers=4,
        pin_memory=True,
    )

    print(f'{args.train_split} set: {len(train_loader.dataset)}, '
          f'{args.valid_split} set: {len(valid_loader.dataset)}, '
          f'attr_num : {train_set.attr_num}')

    labels = train_set.label
    sample_weight = labels.mean(0)

    if args.model == 'resnet18':
        backbone = resnet18()
    elif args.model == 'resnet34':
        backbone = resnet34()
    elif args.model == 'resnet50':
        backbone = resnet50()
    elif args.model == 'resnet101':
        backbone = resnet101()
    elif args.model == 'resnet152':
        backbone = resnet50()
    else:
        raise ValueError('No Defined Model!')

    classifier = BaseClassifier(nattr=train_set.attr_num)
    model = FeatClassifier(backbone, classifier)

    if torch.cuda.is_available():
        model = torch.nn.DataParallel(model).cuda()

    criterion = CEL_Sigmoid(sample_weight)

    param_groups = [{
        'params': model.module.finetune_params(),
        'lr': args.lr_ft
    }, {
        'params': model.module.fresh_params(),
        'lr': args.lr_new
    }]
    optimizer = torch.optim.SGD(param_groups,
                                momentum=args.momentum,
                                weight_decay=args.weight_decay,
                                nesterov=False)
    lr_scheduler = ReduceLROnPlateau(optimizer, factor=0.1, patience=4)

    best_metric, epoch = trainer(epoch=args.train_epoch,
                                 model=model,
                                 train_loader=train_loader,
                                 valid_loader=valid_loader,
                                 criterion=criterion,
                                 optimizer=optimizer,
                                 lr_scheduler=lr_scheduler,
                                 path=save_model_path)

    print(f'{visenv_name},  best_metrc : {best_metric} in epoch{epoch}')
def main(args):
    visenv_name = args.dataset
    exp_dir = os.path.join('exp_result', args.dataset)
    model_dir, log_dir = get_model_log_path(exp_dir, visenv_name)

    # Added for logging purposes
    user = getpass.getuser()
    fixed_time_str = time_str()
    stdout_file = os.path.join(
        log_dir, "_".join(['stdout', user, f'{fixed_time_str}.txt']))
    save_model_path = os.path.join(
        model_dir, "_".join(['ckpt_max', user, f'{fixed_time_str}.pth']))
    trackitems_dir = os.path.join(
        log_dir, "_".join(['trackitems', user, f'{fixed_time_str}.txt']))

    if args.redirector:
        print('redirector stdout')
        ReDirectSTD(stdout_file, 'stdout', False)

    pprint.pprint(OrderedDict(args.__dict__))

    print('-' * 60)
    print(f'use GPU{args.device} for training')
    print(
        f'train set: {args.dataset} {args.train_split}, test set: {args.valid_split}'
    )

    train_tsfm, valid_tsfm = get_transform(args)
    print(train_tsfm)

    #train_set = AttrDataset(args=args, split=args.train_split, transform=train_tsfm)
    train_set = AttrDataset_new(args=args,
                                split=args.train_split,
                                transformation_dict=args.train_transform)

    train_loader = DataLoader(
        dataset=train_set,
        batch_size=args.batchsize,
        shuffle=True,
        num_workers=8,
        pin_memory=True,
    )
    #valid_set = AttrDataset(args=args, split=args.valid_split, transform=valid_tsfm)
    valid_set = AttrDataset_new(args=args,
                                split=args.valid_split,
                                transformation_dict=args.valid_transform)

    valid_loader = DataLoader(
        dataset=valid_set,
        batch_size=args.batchsize,
        shuffle=False,
        num_workers=8,
        pin_memory=True,
    )

    print(f'{args.train_split} set: {len(train_loader.dataset)}, '
          f'{args.valid_split} set: {len(valid_loader.dataset)}, '
          f'attr_num : {train_set.attr_num}')

    labels = train_set.label
    # sample_weight = labels.mean(0)
    sample_weight = np.nanmean(np.where(labels != 2, labels, np.nan), axis=0)

    backbone = getattr(sys.modules[__name__], args.model)()

    if "dpn68" in args.model:
        net_parameter = 832
    elif "dpn" in args.model:
        net_parameter = 2688
    elif "densenet" in args.model:
        net_parameter = 1024
    else:
        net_parameter = 2048

    classifier = BaseClassifier(netpara=net_parameter,
                                nattr=train_set.attr_num)
    model = FeatClassifier(backbone, classifier)

    if torch.cuda.is_available():
        model = torch.nn.DataParallel(model).cuda()

    criterion = CEL_Sigmoid(sample_weight)

    if torch.cuda.is_available():
        param_groups = [{
            'params': model.module.finetune_params(),
            'lr': args.lr_ft
        }, {
            'params': model.module.fresh_params(),
            'lr': args.lr_new
        }]
    else:
        param_groups = [{
            'params': model.finetune_params(),
            'lr': args.lr_ft
        }, {
            'params': model.fresh_params(),
            'lr': args.lr_new
        }]
    optimizer = torch.optim.SGD(param_groups,
                                momentum=args.momentum,
                                weight_decay=args.weight_decay,
                                nesterov=False)
    lr_scheduler = ReduceLROnPlateau(optimizer, factor=0.1, patience=4)

    # Added for logging purposes
    with open(trackitems_dir, "a") as f:
        code, line_no = inspect.getsourcelines(get_transform)
        for line in code:
            f.write(str(line))
        f.write(str("\n\n"))

        f.write(str(args.__dict__))
        f.write(str("\n\n"))

        f.write(str(lr_scheduler.__dict__))
        f.write(str("\n\n"))

        model_str = str(model).lower()
        have_dropout = 'dropout' in model_str
        f.write('dropout: %s' % (have_dropout))
        f.write(str("\n\n"))

        have_leaky_relu = 'leaky_relu' in model_str
        f.write('leaky_relu: %s' % (have_leaky_relu))
        f.write(str("\n\n"))

    best_metric, epoch = trainer(epoch=args.train_epoch,
                                 model=model,
                                 train_loader=train_loader,
                                 valid_loader=valid_loader,
                                 criterion=criterion,
                                 optimizer=optimizer,
                                 lr_scheduler=lr_scheduler,
                                 path=save_model_path,
                                 measure="f1")

    print(f'{visenv_name},  best_metrc : {best_metric} in epoch{epoch}')

    # Added for logging purposes
    with open(trackitems_dir, "a") as f:
        f.write(f'{visenv_name},  best_metrc : {best_metric} in epoch{epoch}')
        f.write("\n\n")
Esempio n. 15
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def main(args):
    visenv_name = args.dataset
    exp_dir = os.path.join('exp_result', args.dataset)
    model_dir, log_dir = get_model_log_path(exp_dir, visenv_name)
    stdout_file = os.path.join(log_dir, f'stdout_{time_str()}.txt')
    save_model_path = os.path.join(model_dir, 'ckpt_max.pth')

    if args.redirector:
        print('redirector stdout')
        ReDirectSTD(stdout_file, 'stdout', False)

    pprint.pprint(OrderedDict(args.__dict__))

    print('-' * 60)
    print(f'use GPU{args.device} for training')
    print(
        f'train set: {args.dataset} {args.train_split}, test set: {args.valid_split}'
    )

    train_tsfm, valid_tsfm = get_transform(args)
    print(train_tsfm)

    train_set = AttrDataset(args=args,
                            split=args.train_split,
                            transform=train_tsfm)

    train_loader = DataLoader(
        dataset=train_set,
        batch_size=args.batchsize,
        shuffle=True,
        num_workers=4,
        pin_memory=True,
    )
    valid_set = AttrDataset(args=args,
                            split=args.valid_split,
                            transform=valid_tsfm)

    valid_loader = DataLoader(
        dataset=valid_set,
        batch_size=args.batchsize,
        shuffle=False,
        num_workers=4,
        pin_memory=True,
    )

    print(f'{args.train_split} set: {len(train_loader.dataset)}, '
          f'{args.valid_split} set: {len(valid_loader.dataset)}, '
          f'attr_num : {train_set.attr_num}')

    labels = train_set.label
    sample_weight = labels.mean(0)

    backbone = resnet50()
    classifier = BaseClassifier(nattr=train_set.attr_num)
    model = FeatClassifier(backbone, classifier)

    checkpoint = torch.load(
        '/home/sohaibrabbani/PycharmProjects/Strong_Baseline_of_Pedestrian_Attribute_Recognition/exp_result/custom/custom/img_model/ckpt_max.pth'
    )
    model.load_state_dict({
        k.replace('module.', ''): v
        for k, v in checkpoint['state_dicts'].items()
    })

    for param in model.backbone.parameters():
        param.requires_grad = False

    if torch.cuda.is_available():
        model = torch.nn.DataParallel(model).cuda()

    criterion = CEL_Sigmoid(sample_weight)

    param_groups = [{
        'params':
        filter(lambda p: p.requires_grad, model.module.finetune_params()),
        'lr':
        args.lr_ft
    }, {
        'params':
        filter(lambda p: p.requires_grad, model.module.fresh_params()),
        'lr':
        args.lr_new
    }]

    optimizer = torch.optim.SGD(param_groups,
                                momentum=args.momentum,
                                weight_decay=args.weight_decay,
                                nesterov=False)
    lr_scheduler = ReduceLROnPlateau(optimizer, factor=0.1, patience=4)

    best_metric, epoch = trainer(epoch=args.train_epoch,
                                 model=model,
                                 train_loader=train_loader,
                                 valid_loader=valid_loader,
                                 criterion=criterion,
                                 optimizer=optimizer,
                                 lr_scheduler=lr_scheduler,
                                 path=save_model_path)

    print(f'{visenv_name},  best_metrc : {best_metric} in epoch{epoch}')