Esempio n. 1
0
def main():
    opt = OptInit().get_args()
    logging.info('===> Creating dataloader ...')
    train_dataset = GeoData.S3DIS(opt.data_dir,
                                  opt.area,
                                  True,
                                  pre_transform=T.NormalizeScale())
    train_loader = DenseDataLoader(train_dataset,
                                   batch_size=opt.batch_size,
                                   shuffle=True,
                                   num_workers=4)
    test_dataset = GeoData.S3DIS(opt.data_dir,
                                 opt.area,
                                 train=False,
                                 pre_transform=T.NormalizeScale())
    test_loader = DenseDataLoader(test_dataset,
                                  batch_size=opt.batch_size,
                                  shuffle=False,
                                  num_workers=0)
    opt.n_classes = train_loader.dataset.num_classes

    logging.info('===> Loading the network ...')
    model = DenseDeepGCN(opt).to(opt.device)
    if opt.multi_gpus:
        model = DataParallel(DenseDeepGCN(opt)).to(opt.device)
    logging.info('===> loading pre-trained ...')
    model, opt.best_value, opt.epoch = load_pretrained_models(
        model, opt.pretrained_model, opt.phase)
    logging.info(model)

    logging.info('===> Init the optimizer ...')
    criterion = torch.nn.CrossEntropyLoss().to(opt.device)
    optimizer = torch.optim.Adam(model.parameters(), lr=opt.lr)

    scheduler = torch.optim.lr_scheduler.StepLR(optimizer, opt.lr_adjust_freq,
                                                opt.lr_decay_rate)
    optimizer, scheduler, opt.lr = load_pretrained_optimizer(
        opt.pretrained_model, optimizer, scheduler, opt.lr)

    logging.info('===> Init Metric ...')
    opt.losses = AverageMeter()
    opt.test_value = 0.

    logging.info('===> start training ...')
    for _ in range(opt.epoch, opt.total_epochs):
        opt.epoch += 1
        logging.info('Epoch:{}'.format(opt.epoch))
        train(model, train_loader, optimizer, scheduler, criterion, opt)
        if opt.epoch % opt.eval_freq == 0 and opt.eval_freq != -1:
            test(model, test_loader, opt)
        scheduler.step()
    logging.info('Saving the final model.Finish!')
Esempio n. 2
0
def main():
    opt = OptInit().get_args()
    logging.info('===> Creating dataloader ...')
    train_dataset = GeoData.S3DIS(opt.data_dir,
                                  opt.area,
                                  True,
                                  pre_transform=T.NormalizeScale())
    train_loader = DenseDataLoader(train_dataset,
                                   batch_size=opt.batch_size,
                                   shuffle=True,
                                   num_workers=4)
    test_dataset = GeoData.S3DIS(opt.data_dir,
                                 opt.area,
                                 train=False,
                                 pre_transform=T.NormalizeScale())
    test_loader = DenseDataLoader(test_dataset,
                                  batch_size=opt.batch_size,
                                  shuffle=False,
                                  num_workers=0)
    opt.n_classes = train_loader.dataset.num_classes

    logging.info('===> Loading the network ...')
    model = DenseDeepGCN(opt).to(opt.device)
    if opt.multi_gpus:
        model = DataParallel(DenseDeepGCN(opt)).to(opt.device)

    logging.info('===> loading pre-trained ...')
    model, opt.best_value, opt.epoch = load_pretrained_models(
        model, opt.pretrained_model, opt.phase)
    logging.info(model)

    logging.info('===> Init the optimizer ...')
    criterion = torch.nn.CrossEntropyLoss().to(opt.device)
    optimizer = torch.optim.Adam(model.parameters(), lr=opt.lr)

    scheduler = torch.optim.lr_scheduler.StepLR(optimizer, opt.lr_adjust_freq,
                                                opt.lr_decay_rate)
    optimizer, scheduler, opt.lr = load_pretrained_optimizer(
        opt.pretrained_model, optimizer, scheduler, opt.lr)

    logging.info('===> Init Metric ...')
    opt.losses = AverageMeter()
    opt.test_value = 0.

    logging.info('===> start training ...')
    for _ in range(opt.epoch, opt.total_epochs):
        opt.epoch += 1
        logging.info('Epoch:{}'.format(opt.epoch))
        train(model, train_loader, optimizer, criterion, opt)
        if opt.epoch % opt.eval_freq == 0 and opt.eval_freq != -1:
            test(model, test_loader, opt)
        scheduler.step()

        # ------------------ save checkpoints
        # min or max. based on the metrics
        is_best = (opt.test_value < opt.best_value)
        opt.best_value = max(opt.test_value, opt.best_value)
        model_cpu = {k: v.cpu() for k, v in model.state_dict().items()}
        save_checkpoint(
            {
                'epoch': opt.epoch,
                'state_dict': model_cpu,
                'optimizer_state_dict': optimizer.state_dict(),
                'scheduler_state_dict': scheduler.state_dict(),
                'best_value': opt.best_value,
            }, is_best, opt.ckpt_dir, opt.exp_name)

        # ------------------ tensorboard log
        info = {
            'loss': opt.losses.avg,
            'test_value': opt.test_value,
            'lr': scheduler.get_lr()[0]
        }
        opt.writer.add_scalars('epoch', info, opt.iter)

    logging.info('Saving the final model.Finish!')