Пример #1
0
def train_sample_places_low_shot(
    low_shot_trainer: SVMLowShotTrainer,
    k_values: List[int],
    sample_inds: List[int],
    sample_num: int,
    output_dir: str,
    layername: str,
    cfg: AttrDict,
):
    # setup the environment variables
    set_env_vars(local_rank=0, node_id=0, cfg=cfg)

    for low_shot_kvalue in k_values:
        checkpoint_dir = f"{output_dir}/sample{sample_num}_k{low_shot_kvalue}"
        train_data = merge_features(checkpoint_dir, "train", layername)
        train_features = train_data["features"]
        train_targets = train_data["targets"]
        checkpoint_dir = f"{output_dir}/sample{sample_inds[0]}_k{k_values[0]}"
        test_data = merge_features(checkpoint_dir, "test", layername)
        test_features = test_data["features"]
        test_targets = test_data["targets"]
        low_shot_trainer.train(train_features, train_targets, sample_num,
                               low_shot_kvalue)
        low_shot_trainer.test(test_features, test_targets, sample_num,
                              low_shot_kvalue)
Пример #2
0
def train_voc07_low_shot(
    k_values: List[int],
    sample_inds: List[int],
    output_dir: str,
    layername: str,
    cfg: AttrDict,
):
    dataset_name = cfg["SVM"]["low_shot"]["dataset_name"]
    low_shot_trainer = SVMLowShotTrainer(cfg["SVM"],
                                         layer=layername,
                                         output_dir=output_dir)
    train_data = merge_features(output_dir, "train", layername)
    train_features, train_targets = train_data["features"], train_data[
        "targets"]
    test_data = merge_features(output_dir, "test", layername)
    test_features, test_targets = test_data["features"], test_data["targets"]
    # now we want to create the low-shot samples based on the kind of dataset.
    # We only create low-shot samples for training. We test on the full dataset.
    generate_low_shot_samples(dataset_name, train_targets, k_values,
                              sample_inds, output_dir, layername)
    # Now, we train and test the low-shot SVM for every sample and k-value.
    for sample_num in sample_inds:
        for low_shot_kvalue in k_values:
            train_targets = load_file(
                f"{output_dir}/{layername}_sample{sample_num}_k{low_shot_kvalue}.npy"
            )
            low_shot_trainer.train(train_features, train_targets, sample_num,
                                   low_shot_kvalue)
            low_shot_trainer.test(test_features, test_targets, sample_num,
                                  low_shot_kvalue)
    # now we aggregate the stats across all independent samples and for each
    # k-value and report mean/min/max/std stats
    results = low_shot_trainer.aggregate_stats(k_values, sample_inds)
    logging.info("All Done!")
    return results