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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
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