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# Copyright (c) OpenMMLab. All rights reserved.
import bisect
import math
from collections import defaultdict
from unittest.mock import MagicMock

import numpy as np
import pytest

from mmdet.datasets import (ClassBalancedDataset, ConcatDataset, CustomDataset,
                            MultiImageMixDataset, RepeatDataset)


def test_dataset_wrapper():
    CustomDataset.load_annotations = MagicMock()
    CustomDataset.__getitem__ = MagicMock(side_effect=lambda idx: idx)
    dataset_a = CustomDataset(
        ann_file=MagicMock(), pipeline=[], test_mode=True, img_prefix='')
    len_a = 10
    cat_ids_list_a = [
        np.random.randint(0, 80, num).tolist()
        for num in np.random.randint(1, 20, len_a)
    ]
    ann_info_list_a = []
    for _ in range(len_a):
        height = np.random.randint(10, 30)
        weight = np.random.randint(10, 30)
        img = np.ones((height, weight, 3))
        gt_bbox = np.concatenate([
            np.random.randint(1, 5, (2, 2)),
            np.random.randint(1, 5, (2, 2)) + 5
        ],
                                 axis=1)
        gt_labels = np.random.randint(0, 80, 2)
        ann_info_list_a.append(
            dict(gt_bboxes=gt_bbox, gt_labels=gt_labels, img=img))
    dataset_a.data_infos = MagicMock()
    dataset_a.data_infos.__len__.return_value = len_a
    dataset_a.get_cat_ids = MagicMock(
        side_effect=lambda idx: cat_ids_list_a[idx])
    dataset_a.get_ann_info = MagicMock(
        side_effect=lambda idx: ann_info_list_a[idx])
    dataset_b = CustomDataset(
        ann_file=MagicMock(), pipeline=[], test_mode=True, img_prefix='')
    len_b = 20
    cat_ids_list_b = [
        np.random.randint(0, 80, num).tolist()
        for num in np.random.randint(1, 20, len_b)
    ]
    ann_info_list_b = []
    for _ in range(len_b):
        height = np.random.randint(10, 30)
        weight = np.random.randint(10, 30)
        img = np.ones((height, weight, 3))
        gt_bbox = np.concatenate([
            np.random.randint(1, 5, (2, 2)),
            np.random.randint(1, 5, (2, 2)) + 5
        ],
                                 axis=1)
        gt_labels = np.random.randint(0, 80, 2)
        ann_info_list_b.append(
            dict(gt_bboxes=gt_bbox, gt_labels=gt_labels, img=img))
    dataset_b.data_infos = MagicMock()
    dataset_b.data_infos.__len__.return_value = len_b
    dataset_b.get_cat_ids = MagicMock(
        side_effect=lambda idx: cat_ids_list_b[idx])
    dataset_b.get_ann_info = MagicMock(
        side_effect=lambda idx: ann_info_list_b[idx])

    concat_dataset = ConcatDataset([dataset_a, dataset_b])
    assert concat_dataset[5] == 5
    assert concat_dataset[25] == 15
    assert concat_dataset.get_cat_ids(5) == cat_ids_list_a[5]
    assert concat_dataset.get_cat_ids(25) == cat_ids_list_b[15]
    assert concat_dataset.get_ann_info(5) == ann_info_list_a[5]
    assert concat_dataset.get_ann_info(25) == ann_info_list_b[15]
    assert len(concat_dataset) == len(dataset_a) + len(dataset_b)

    # Test if ConcatDataset allows dataset classes without the PALETTE
    # attribute
    palette_backup = CustomDataset.PALETTE
    delattr(CustomDataset, 'PALETTE')
    concat_dataset = ConcatDataset([dataset_a, dataset_b])
    assert concat_dataset.PALETTE is None
    CustomDataset.PALETTE = palette_backup

    repeat_dataset = RepeatDataset(dataset_a, 10)
    assert repeat_dataset[5] == 5
    assert repeat_dataset[15] == 5
    assert repeat_dataset[27] == 7
    assert repeat_dataset.get_cat_ids(5) == cat_ids_list_a[5]
    assert repeat_dataset.get_cat_ids(15) == cat_ids_list_a[5]
    assert repeat_dataset.get_cat_ids(27) == cat_ids_list_a[7]
    assert repeat_dataset.get_ann_info(5) == ann_info_list_a[5]
    assert repeat_dataset.get_ann_info(15) == ann_info_list_a[5]
    assert repeat_dataset.get_ann_info(27) == ann_info_list_a[7]
    assert len(repeat_dataset) == 10 * len(dataset_a)

    # Test if RepeatDataset allows dataset classes without the PALETTE
    # attribute
    delattr(CustomDataset, 'PALETTE')
    repeat_dataset = RepeatDataset(dataset_a, 10)
    assert repeat_dataset.PALETTE is None
    CustomDataset.PALETTE = palette_backup

    category_freq = defaultdict(int)
    for cat_ids in cat_ids_list_a:
        cat_ids = set(cat_ids)
        for cat_id in cat_ids:
            category_freq[cat_id] += 1
    for k, v in category_freq.items():
        category_freq[k] = v / len(cat_ids_list_a)

    mean_freq = np.mean(list(category_freq.values()))
    repeat_thr = mean_freq

    category_repeat = {
        cat_id: max(1.0, math.sqrt(repeat_thr / cat_freq))
        for cat_id, cat_freq in category_freq.items()
    }

    repeat_factors = []
    for cat_ids in cat_ids_list_a:
        cat_ids = set(cat_ids)
        repeat_factor = max({category_repeat[cat_id] for cat_id in cat_ids})
        repeat_factors.append(math.ceil(repeat_factor))
    repeat_factors_cumsum = np.cumsum(repeat_factors)
    repeat_factor_dataset = ClassBalancedDataset(dataset_a, repeat_thr)
    assert len(repeat_factor_dataset) == repeat_factors_cumsum[-1]
    for idx in np.random.randint(0, len(repeat_factor_dataset), 3):
        assert repeat_factor_dataset[idx] == bisect.bisect_right(
            repeat_factors_cumsum, idx)
        assert repeat_factor_dataset.get_ann_info(idx) == ann_info_list_a[
            bisect.bisect_right(repeat_factors_cumsum, idx)]
    # Test if ClassBalancedDataset allows dataset classes without the PALETTE
    # attribute
    delattr(CustomDataset, 'PALETTE')
    repeat_factor_dataset = ClassBalancedDataset(dataset_a, repeat_thr)
    assert repeat_factor_dataset.PALETTE is None
    CustomDataset.PALETTE = palette_backup

    img_scale = (60, 60)
    pipeline = [
        dict(type='Mosaic', img_scale=img_scale, pad_val=114.0),
        dict(
            type='RandomAffine',
            scaling_ratio_range=(0.1, 2),
            border=(-img_scale[0] // 2, -img_scale[1] // 2)),
        dict(
            type='MixUp',
            img_scale=img_scale,
            ratio_range=(0.8, 1.6),
            pad_val=114.0),
        dict(type='RandomFlip', flip_ratio=0.5),
        dict(type='Resize', img_scale=img_scale, keep_ratio=True),
        dict(type='Pad', pad_to_square=True, pad_val=114.0),
    ]

    CustomDataset.load_annotations = MagicMock()
    results = []
    for _ in range(2):
        height = np.random.randint(10, 30)
        weight = np.random.randint(10, 30)
        img = np.ones((height, weight, 3))
        gt_bbox = np.concatenate([
            np.random.randint(1, 5, (2, 2)),
            np.random.randint(1, 5, (2, 2)) + 5
        ],
                                 axis=1)
        gt_labels = np.random.randint(0, 80, 2)
        results.append(dict(gt_bboxes=gt_bbox, gt_labels=gt_labels, img=img))

    CustomDataset.__getitem__ = MagicMock(side_effect=lambda idx: results[idx])
    dataset_a = CustomDataset(
        ann_file=MagicMock(), pipeline=[], test_mode=True, img_prefix='')
    len_a = 2
    cat_ids_list_a = [
        np.random.randint(0, 80, num).tolist()
        for num in np.random.randint(1, 20, len_a)
    ]
    dataset_a.data_infos = MagicMock()
    dataset_a.data_infos.__len__.return_value = len_a
    dataset_a.get_cat_ids = MagicMock(
        side_effect=lambda idx: cat_ids_list_a[idx])

    # test dynamic_scale deprecated
    with pytest.raises(RuntimeError):
        MultiImageMixDataset(dataset_a, pipeline, (80, 80))

    multi_image_mix_dataset = MultiImageMixDataset(dataset_a, pipeline)
    for idx in range(len_a):
        results_ = multi_image_mix_dataset[idx]
        assert results_['img'].shape == (img_scale[0], img_scale[1], 3)

    # test skip_type_keys
    multi_image_mix_dataset = MultiImageMixDataset(
        dataset_a,
        pipeline,
        skip_type_keys=('MixUp', 'RandomFlip', 'Resize', 'Pad'))
    for idx in range(len_a):
        results_ = multi_image_mix_dataset[idx]
        assert results_['img'].shape == (img_scale[0], img_scale[1], 3)

    # Test if MultiImageMixDataset allows dataset classes without the PALETTE
    # attribute
    delattr(CustomDataset, 'PALETTE')
    multi_image_mix_dataset = MultiImageMixDataset(dataset_a, pipeline)
    assert multi_image_mix_dataset.PALETTE is None
    CustomDataset.PALETTE = palette_backup