Пример #1
0
            proto_bound_boxes_filename_prefix=proto_bound_boxes_filename_prefix,
            save_prototype_class_identity=True,
            log=log)
        accu = tnt.test(model=ppnet_multi,
                        dataloader=test_loader,
                        class_specific=class_specific,
                        log=log)
        save.save_model_w_condition(model=ppnet,
                                    model_dir=model_dir,
                                    model_name=str(epoch) + 'push',
                                    accu=accu,
                                    target_accu=0.70,
                                    log=log)

        if prototype_activation_function != 'linear':
            tnt.last_only(model=ppnet_multi, log=log)
            for i in range(20):
                log('iteration: \t{0}'.format(i))
                _ = tnt.train(model=ppnet_multi,
                              dataloader=train_loader,
                              optimizer=last_layer_optimizer,
                              class_specific=class_specific,
                              coefs=coefs,
                              log=log)
                accu = tnt.test(model=ppnet_multi,
                                dataloader=test_loader,
                                class_specific=class_specific,
                                log=log)
                save.save_model_w_condition(model=ppnet,
                                            model_dir=model_dir,
                                            model_name=str(epoch) + '_' +
Пример #2
0
                  step=step,
                  weighting_attention=args.weighting_attention)
     push_model_state_epoch = epoch
     current_push_best_accu = 0.
     if config.mil_pooling == 'gated_attention' and not ppnet.mil_pooling == 'gated_attention':
         ppnet.mil_pooling = 'gated_attention'
         print('\tattention enabled')
     if config.prototype_activation_function != 'linear':
         mode = TrainMode.LAST_ONLY
         iteration = 0
     else:
         mode = TrainMode.JOINT
         epoch += 1
 elif mode == TrainMode.LAST_ONLY:
     write_mode(TrainMode.LAST_ONLY, log_writer, step)
     last_only(model=ppnet)
     train(model=ppnet,
           dataloader=train_loader,
           optimizer=last_layer_optimizer,
           config=config,
           log_writer=log_writer,
           step=step,
           weighting_attention=args.weighting_attention)
     accu = valid(model=ppnet,
                  dataloader=valid_loader,
                  config=config,
                  log_writer=log_writer,
                  step=step,
                  weighting_attention=args.weighting_attention)
     iteration += 1
     push_model_state_epoch = epoch
Пример #3
0
def main(args):

    with open("./configs/{}/{}_{}_{}.yaml".format(args.net, args.dataset,
                                                  args.backbone,
                                                  args.mode)) as fp:
        cfg = yaml.safe_load(fp)

    NET_ARGS = cfg['NET_ARGS']
    DATA_ARGS = cfg['DATA_ARGS']
    EXP_ARGS = cfg['EXP_ARGS']

    os.environ['CUDA_VISIBLE_DEVICES'] = '0,1'

    model_dir = os.path.join('./saved_models/', args.dataset, args.backbone,
                             args.net, args.mode)

    makedir(model_dir)

    log, logclose = create_logger(log_filename=os.path.join(
        model_dir, 'train_logger_{}.txt'.format(
            datetime.datetime.now().strftime("%H:%M:%S"))))

    img_dir = os.path.join(model_dir, 'img')
    makedir(img_dir)
    weight_matrix_filename = 'outputL_weights'
    prototype_img_filename_prefix = 'prototype-img'
    prototype_self_act_filename_prefix = 'prototype-self-act'
    proto_bound_boxes_filename_prefix = 'bb'
    log(pformat(cfg))

    # ---------------------------------------- Get DataLoaders ----------------------------------------------

    normalize = transforms.Normalize(mean=NET_ARGS['mean'],
                                     std=NET_ARGS['std'])
    train_transforms = transforms.Compose([
        transforms.Resize(size=(DATA_ARGS['img_size'], DATA_ARGS['img_size'])),
        transforms.ToTensor(),
        normalize,
    ])

    train_dataset = datasets.ImageFolder(DATA_ARGS['train_dir'],
                                         train_transforms)
    train_loader = torch.utils.data.DataLoader(
        train_dataset,
        batch_size=EXP_ARGS['train_batch_size'],
        shuffle=True,
        num_workers=4,
        pin_memory=False)

    train_push_dataset = datasets.ImageFolder(
        DATA_ARGS['train_push_dir'],
        transforms.Compose([
            transforms.Resize(size=(DATA_ARGS['img_size'],
                                    DATA_ARGS['img_size'])),
            transforms.ToTensor(),
        ]))

    train_push_loader = torch.utils.data.DataLoader(
        train_push_dataset,
        batch_size=EXP_ARGS['train_push_batch_size'],
        shuffle=False,
        num_workers=4,
        pin_memory=False)

    test_dataset = datasets.ImageFolder(
        DATA_ARGS['test_dir'],
        transforms.Compose([
            transforms.Resize(size=(DATA_ARGS['img_size'],
                                    DATA_ARGS['img_size'])),
            transforms.ToTensor(),
            normalize,
        ]))

    test_loader = torch.utils.data.DataLoader(
        test_dataset,
        batch_size=EXP_ARGS['test_batch_size'],
        shuffle=False,
        num_workers=4,
        pin_memory=False)

    log('training set size: {0}'.format(len(train_loader.dataset)))
    log('push set size: {0}'.format(len(train_push_loader.dataset)))
    log('test set size: {0}'.format(len(test_loader.dataset)))
    log('batch size: {0}'.format(EXP_ARGS['train_batch_size']))

    # ------------------------------------ Model and Optimizer ----------------------------------------------

    ppnet = model_AttProto.construct_PPNet(
        base_architecture=NET_ARGS['base_architecture'],
        pretrained=True,
        img_size=DATA_ARGS['img_size'],
        prototype_shape=NET_ARGS['prototype_shape'],
        num_classes=DATA_ARGS['num_classes'],
        prototype_activation_function=NET_ARGS[
            'prototype_activation_function'],
        add_on_layers_type=NET_ARGS['add_on_layers_type'],
        att_version=NET_ARGS['ATT_VERSION'])

    ppnet = ppnet.cuda()
    ppnet_multi = torch.nn.DataParallel(ppnet)
    class_specific = True

    if EXP_ARGS['RESUME']['iS_RESUME']:
        ppnet = torch.load(EXP_ARGS['RESUME']['PATH'])
        log(" Resumed from model: {}".format(EXP_ARGS['RESUME']['PATH']))
        ppnet_multi = torch.nn.DataParallel(ppnet)
        accu = tnt.test(model=ppnet_multi,
                        dataloader=test_loader,
                        class_specific=True,
                        log=log,
                        EXP_ARGS=EXP_ARGS)
        log("\nInit Accuracy {:.2f} \n\n".format(accu))

    ppnet_multi = torch.nn.DataParallel(ppnet)

    warm_optimizer_lrs = EXP_ARGS['OPTIMIZER']['warm_optimizer_lrs']
    warm_optimizer_specs = [
        {
            'params': ppnet.add_on_layers.parameters(),
            'lr': warm_optimizer_lrs['add_on_layers'],
            'weight_decay': 1e-3
        },
        {
            'params': ppnet.prototype_vectors,
            'lr': warm_optimizer_lrs['prototype_vectors']
        },
        {
            'params': ppnet.att_layer.parameters(),
            'lr': warm_optimizer_lrs['att_layer'],
            'weight_decay': 1e-3
        },
    ]
    warm_optimizer = torch.optim.Adam(warm_optimizer_specs)

    joint_optimizer_lrs = EXP_ARGS['OPTIMIZER']['joint_optimizer_lrs']
    joint_optimizer_specs = [{
        'params': ppnet.features.parameters(),
        'lr': joint_optimizer_lrs['features'],
        'weight_decay': 1e-3
    }, {
        'params': ppnet.add_on_layers.parameters(),
        'lr': joint_optimizer_lrs['add_on_layers'],
        'weight_decay': 1e-3
    }, {
        'params': ppnet.prototype_vectors,
        'lr': joint_optimizer_lrs['prototype_vectors']
    }, {
        'params': ppnet.att_layer.parameters(),
        'lr': joint_optimizer_lrs['att_layer'],
        'weight_decay': 1e-3
    }]
    joint_optimizer = torch.optim.Adam(joint_optimizer_specs)

    joint_lr_scheduler = torch.optim.lr_scheduler.StepLR(
        joint_optimizer,
        step_size=int(joint_optimizer_lrs['joint_lr_step_size']),
        gamma=0.1)

    push_epochs = [
        i for i in range(EXP_ARGS['num_train_epochs']) if i % 10 == 0
    ]

    log('\n\n------------------------ Start Training ----------------------------\n\n'
        )

    max_acc = 0.0
    max_acc_epoch = 0
    max_acc_iter = 0
    target_accu = 0.1

    for epoch in range(EXP_ARGS['start_epoch'], EXP_ARGS['num_train_epochs']):

        log('------------------------- Epoch: {}  -------------------------------------'
            .format(epoch))

        if epoch < EXP_ARGS['num_warm_epochs']:
            tnt.warm_only(model=ppnet_multi, log=log)
            _ = tnt.train(model=ppnet_multi,
                          dataloader=train_loader,
                          optimizer=warm_optimizer,
                          class_specific=class_specific,
                          coefs=EXP_ARGS['LOSS']['loss_coefs_warm'],
                          log=log,
                          EXP_ARGS=EXP_ARGS)
        else:
            tnt.joint(model=ppnet_multi, log=log)
            joint_lr_scheduler.step()

            _ = tnt.train(model=ppnet_multi,
                          dataloader=train_loader,
                          optimizer=joint_optimizer,
                          class_specific=class_specific,
                          coefs=EXP_ARGS['LOSS']['loss_coefs_joint'],
                          log=log,
                          EXP_ARGS=EXP_ARGS)

        accu = tnt.test(model=ppnet_multi,
                        dataloader=test_loader,
                        class_specific=class_specific,
                        log=log,
                        EXP_ARGS=EXP_ARGS)

        if accu > max_acc:
            max_acc = accu
            max_acc_iter = 0
            max_acc_epoch = epoch
            save.save_model_w_condition(model=ppnet,
                                        model_dir=model_dir,
                                        model_name='',
                                        accu=accu,
                                        target_accu=target_accu,
                                        log=log,
                                        best=True,
                                        stage='prepush_{}'.format(epoch))

        log("\nBest Accuracy {:.2f} at epoch {} and iter {}\n\n".format(
            max_acc, max_acc_epoch, max_acc_iter))

        if epoch >= EXP_ARGS['push_start'] and epoch in push_epochs:

            save.save_model_w_condition(model=ppnet,
                                        model_dir=model_dir,
                                        model_name='',
                                        accu=accu,
                                        target_accu=target_accu,
                                        log=log,
                                        best=True,
                                        stage='prepushfinal_{}'.format(epoch))

            log('\n------------------------- Push Prototypes -----------------------------'
                )

            push.push_prototypes(
                train_push_loader,
                prototype_network_parallel=ppnet_multi,
                class_specific=class_specific,
                preprocess_input_function=preprocess_input_function,
                prototype_layer_stride=1,
                root_dir_for_saving_prototypes=img_dir,
                epoch_number=epoch,
                prototype_img_filename_prefix=prototype_img_filename_prefix,
                prototype_self_act_filename_prefix=
                prototype_self_act_filename_prefix,
                proto_bound_boxes_filename_prefix=
                proto_bound_boxes_filename_prefix,
                save_prototype_class_identity=True,
                log=log)

            accu = tnt.test(model=ppnet_multi,
                            dataloader=test_loader,
                            class_specific=class_specific,
                            log=log,
                            EXP_ARGS=EXP_ARGS)

            save.save_model_w_condition(model=ppnet,
                                        model_dir=model_dir,
                                        model_name='',
                                        accu=accu,
                                        target_accu=target_accu,
                                        log=log,
                                        best=True,
                                        stage='push_{}'.format(epoch))

            last_layer_optimizer_specs = [{
                'params':
                ppnet.last_layer.parameters(),
                'lr':
                EXP_ARGS['OPTIMIZER']['last_layer_optimizer_lrs']
                ['last_layer_optimizer_lr']
            }]

            last_layer_optimizer = torch.optim.Adam(last_layer_optimizer_specs)
            last_lr_lr_scheduler = torch.optim.lr_scheduler.StepLR(
                last_layer_optimizer,
                step_size=EXP_ARGS['OPTIMIZER']['last_layer_optimizer_lrs']
                ['last_lr_step_size'],
                gamma=0.1)

            log('\n------------------------- Last Layer Training -----------------------------------'
                )

            if NET_ARGS['prototype_activation_function'] != 'linear':
                tnt.last_only(model=ppnet_multi, log=log)

                max_acc_post, max_acc_post_iter, max_acc_post_epoch = 0, 0, epoch

                for i in range(
                        EXP_ARGS['OPTIMIZER']['last_layer_optimizer_lrs']
                    ['last_layer_optimizer_iters']):
                    log('Last layer optimization, Iteration:  {0}'.format(i))
                    _ = tnt.train(model=ppnet_multi,
                                  dataloader=train_loader,
                                  optimizer=last_layer_optimizer,
                                  class_specific=class_specific,
                                  coefs=EXP_ARGS['LOSS']['loss_coefs_joint'],
                                  log=log,
                                  EXP_ARGS=EXP_ARGS)

                    last_lr_lr_scheduler.step()
                    accu = tnt.test(model=ppnet_multi,
                                    dataloader=test_loader,
                                    class_specific=class_specific,
                                    log=log,
                                    EXP_ARGS=EXP_ARGS)

                    if accu > max_acc_post:
                        max_acc_post = accu
                        max_acc_post_iter = i
                        max_acc_post_epoch = epoch
                        save.save_model_w_condition(
                            model=ppnet,
                            model_dir=model_dir,
                            model_name='',
                            accu=accu,
                            target_accu=0.70,
                            log=log,
                            best=True,
                            stage='postpush_{}'.format(epoch))

                    log("Best Accuracy - PostPush {:.2f} at epoch {} and iter {}"
                        .format(max_acc_post, max_acc_post_epoch,
                                max_acc_post_iter))

                save.save_model_w_condition(
                    model=ppnet,
                    model_dir=model_dir,
                    model_name='',
                    accu=accu,
                    target_accu=0.70,
                    log=log,
                    best=True,
                    stage='postpushfinal_{}'.format(epoch))

    logclose()