Example #1
0
    def build_train_loader(cls, cfg):
        """
        Returns:
            iterable
        It now calls :func:`fastreid.data.build_reid_train_loader`.
        Overwrite it if you'd like a different data loader.
        """
        logger = logging.getLogger("fastreid.dml_dataset")
        logger.info("Prepare training set")

        mapper = []
        if cfg.INPUT.SIZE_TRAIN[0] > 0:
            if len(cfg.INPUT.SIZE_TRAIN) == 1:
                resize = cfg.INPUT.SIZE_TRAIN[0]
            else:
                resize = cfg.INPUT.SIZE_TRAIN
            mapper.append(T.Resize(resize, interpolation=3))

        if cfg.INPUT.CJ.ENABLED:
            cj_params = [
                cfg.INPUT.CJ.BRIGHTNESS, cfg.INPUT.CJ.CONTRAST,
                cfg.INPUT.CJ.SATURATION, cfg.INPUT.CJ.HUE
            ]
            mapper.append(T.ColorJitter(*cj_params))

        mapper.extend([
            T.RandomResizedCrop(size=cfg.INPUT.CROP_SIZE,
                                scale=cfg.INPUT.SCALE,
                                ratio=cfg.INPUT.RATIO,
                                interpolation=3),
            T.RandomHorizontalFlip(),
            ToTensor(),
        ])
        return build_reid_train_loader(cfg, mapper=T.Compose(mapper))
Example #2
0
 def build_train_loader(cls, cfg):
     """
     Returns:
         iterable
     It now calls :func:`fastreid.data.build_detection_train_loader`.
     Overwrite it if you'd like a different data loader.
     """
     return build_reid_train_loader(cfg)
Example #3
0
 def build_train_loader(cls, cfg):
     """
     Returns:
         iterable
     It now calls :func:`fastreid.data.build_reid_train_loader`.
     Overwrite it if you'd like a different data loader.
     """
     logger = logging.getLogger(__name__)
     logger.info("Prepare training set")
     return build_reid_train_loader(cfg)
Example #4
0
def do_train(cfg, model, resume=False):
    data_loader = build_reid_train_loader(cfg)

    model.train()
    optimizer = build_optimizer(cfg, model)

    iters_per_epoch = len(data_loader.dataset) // cfg.SOLVER.IMS_PER_BATCH
    scheduler = build_lr_scheduler(cfg, optimizer, iters_per_epoch)

    checkpointer = Checkpointer(model,
                                cfg.OUTPUT_DIR,
                                save_to_disk=comm.is_main_process(),
                                optimizer=optimizer**scheduler)

    start_epoch = (checkpointer.resume_or_load(
        cfg.MODEL.WEIGHTS, resume=resume).get("epoch", -1) + 1)
    iteration = start_iter = start_epoch * iters_per_epoch

    max_epoch = cfg.SOLVER.MAX_EPOCH
    max_iter = max_epoch * iters_per_epoch
    warmup_iters = cfg.SOLVER.WARMUP_ITERS
    delay_epochs = cfg.SOLVER.DELAY_EPOCHS

    periodic_checkpointer = PeriodicCheckpointer(checkpointer,
                                                 cfg.SOLVER.CHECKPOINT_PERIOD,
                                                 max_epoch)

    writers = ([
        CommonMetricPrinter(max_iter),
        JSONWriter(os.path.join(cfg.OUTPUT_DIR, "metrics.json")),
        TensorboardXWriter(cfg.OUTPUT_DIR)
    ] if comm.is_main_process() else [])

    # compared to "train_net.py", we do not support some hooks, such as
    # accurate timing, FP16 training and precise BN here,
    # because they are not trivial to implement in a small training loop
    logger.info("Start training from epoch {}".format(start_epoch))
    with EventStorage(start_iter) as storage:
        for epoch in range(start_epoch, max_epoch):
            storage.epoch = epoch
            for data, _ in zip(data_loader, range(iters_per_epoch)):
                storage.iter = iteration

                loss_dict = model(data)
                losses = sum(loss_dict.values())
                assert torch.isfinite(losses).all(), loss_dict

                loss_dict_reduced = {
                    k: v.item()
                    for k, v in comm.reduce_dict(loss_dict).items()
                }
                losses_reduced = sum(loss
                                     for loss in loss_dict_reduced.values())
                if comm.is_main_process():
                    storage.put_scalars(total_loss=losses_reduced,
                                        **loss_dict_reduced)

                optimizer.zero_grad()
                losses.backward()
                optimizer.step()
                storage.put_scalar("lr",
                                   optimizer.param_groups[0]["lr"],
                                   smoothing_hint=False)

                if iteration - start_iter > 5 and (
                    (iteration + 1) % 200 == 0 or iteration == max_iter - 1):
                    for writer in writers:
                        writer.write()

                iteration += 1

                if iteration <= warmup_iters:
                    scheduler["warmup_sched"].step()

            # Write metrics after each epoch
            for writer in writers:
                writer.write()

            if iteration > warmup_iters and (epoch + 1) >= delay_epochs:
                scheduler["lr_sched"].step()

            if (cfg.TEST.EVAL_PERIOD > 0
                    and (epoch + 1) % cfg.TEST.EVAL_PERIOD == 0
                    and epoch != max_iter - 1):
                do_test(cfg, model)
                # Compared to "train_net.py", the test results are not dumped to EventStorage

            periodic_checkpointer.step(epoch)
Example #5
0
 def build_train_loader(cls, cfg):
     logger = logging.getLogger("fastreid.naic20")
     logger.info("Prepare NAIC20 competition trainset")
     return build_reid_train_loader(cfg, rm_lt=cfg.DATASETS.RM_LT)