FEA-Bench / testbed /openvinotoolkit__datumaro /tests /test_widerface_format.py
hc99's picture
Add files using upload-large-folder tool
d21cb06 verified
raw
history blame
6.54 kB
import os.path as osp
from unittest import TestCase
import numpy as np
from datumaro.components.extractor import Bbox, DatasetItem
from datumaro.components.project import Dataset, Project
from datumaro.plugins.widerface_format import WiderFaceConverter, WiderFaceImporter
from datumaro.util.test_utils import TestDir, compare_datasets
class WiderFaceFormatTest(TestCase):
def test_can_save_and_load(self):
source_dataset = Dataset.from_iterable([
DatasetItem(id='1', subset='train', image=np.ones((8, 8, 3)),
annotations=[
Bbox(0, 2, 4, 2),
Bbox(0, 1, 2, 3, attributes = {
'blur': 2, 'expression': 0, 'illumination': 0,
'occluded': 0, 'pose': 2, 'invalid': 0}),
]
),
DatasetItem(id='2', subset='train', image=np.ones((10, 10, 3)),
annotations=[
Bbox(0, 2, 4, 2, attributes = {
'blur': 2, 'expression': 0, 'illumination': 1,
'occluded': 0, 'pose': 1, 'invalid': 0}),
Bbox(3, 3, 2, 3, attributes = {
'blur': 0, 'expression': 1, 'illumination': 0,
'occluded': 0, 'pose': 2, 'invalid': 0}),
Bbox(2, 1, 2, 3, attributes = {
'blur': 2, 'expression': 0, 'illumination': 0,
'occluded': 0, 'pose': 0, 'invalid': 1}),
]
),
DatasetItem(id='3', subset='val', image=np.ones((8, 8, 3)),
annotations=[
Bbox(0, 1, 5, 2, attributes = {
'blur': 2, 'expression': 1, 'illumination': 0,
'occluded': 0, 'pose': 1, 'invalid': 0}),
Bbox(0, 2, 3, 2),
Bbox(0, 2, 4, 2),
Bbox(0, 7, 3, 2, attributes = {
'blur': 2, 'expression': 1, 'illumination': 0,
'occluded': 0, 'pose': 1, 'invalid': 0}),
]
),
DatasetItem(id='4', subset='val', image=np.ones((8, 8, 3))),
])
with TestDir() as test_dir:
WiderFaceConverter.convert(source_dataset, test_dir, save_images=True)
parsed_dataset = WiderFaceImporter()(test_dir).make_dataset()
compare_datasets(self, source_dataset, parsed_dataset)
def test_can_save_dataset_with_no_subsets(self):
source_dataset = Dataset.from_iterable([
DatasetItem(id='a/b/1', image=np.ones((8, 8, 3)),
annotations=[
Bbox(0, 2, 4, 2),
Bbox(0, 1, 2, 3, attributes = {
'blur': 2, 'expression': 0, 'illumination': 0,
'occluded': 0, 'pose': 2, 'invalid': 0}),
]
),
])
with TestDir() as test_dir:
WiderFaceConverter.convert(source_dataset, test_dir, save_images=True)
parsed_dataset = WiderFaceImporter()(test_dir).make_dataset()
compare_datasets(self, source_dataset, parsed_dataset)
def test_can_save_dataset_with_non_widerface_attributes(self):
source_dataset = Dataset.from_iterable([
DatasetItem(id='a/b/1', image=np.ones((8, 8, 3)),
annotations=[
Bbox(0, 2, 4, 2),
Bbox(0, 1, 2, 3, attributes = {
'non-widerface attribute': 0,
'blur': 1, 'invalid': 1}),
Bbox(1, 1, 2, 2, attributes = {
'non-widerface attribute': 0}),
]
),
])
target_dataset = Dataset.from_iterable([
DatasetItem(id='a/b/1', image=np.ones((8, 8, 3)),
annotations=[
Bbox(0, 2, 4, 2),
Bbox(0, 1, 2, 3, attributes = {
'blur': 1, 'invalid': 1}),
Bbox(1, 1, 2, 2),
]
),
])
with TestDir() as test_dir:
WiderFaceConverter.convert(source_dataset, test_dir, save_images=True)
parsed_dataset = WiderFaceImporter()(test_dir).make_dataset()
compare_datasets(self, target_dataset, parsed_dataset)
DUMMY_DATASET_DIR = osp.join(osp.dirname(__file__), 'assets', 'widerface_dataset')
class WiderFaceImporterTest(TestCase):
def test_can_detect(self):
self.assertTrue(WiderFaceImporter.detect(DUMMY_DATASET_DIR))
def test_can_import(self):
expected_dataset = Dataset.from_iterable([
DatasetItem(id='0--Parade/0_Parade_image_01', subset='train',
image=np.ones((10, 15, 3)),
annotations=[
Bbox(1, 2, 2, 2, attributes = {
'blur': 0, 'expression': 0, 'illumination': 0,
'occluded': 0, 'pose': 0, 'invalid': 0}),
]
),
DatasetItem(id='1--Handshaking/1_Handshaking_image_02', subset='train',
image=np.ones((10, 15, 3)),
annotations=[
Bbox(1, 1, 2, 2, attributes = {
'blur': 0, 'expression': 0, 'illumination': 1,
'occluded': 0, 'pose': 0, 'invalid': 0}),
Bbox(5, 1, 2, 2, attributes = {
'blur': 0, 'expression': 0, 'illumination': 1,
'occluded': 0, 'pose': 0, 'invalid': 0}),
]
),
DatasetItem(id='0--Parade/0_Parade_image_03', subset='val',
image=np.ones((10, 15, 3)),
annotations=[
Bbox(0, 0, 1, 1, attributes = {
'blur': 2, 'expression': 0, 'illumination': 0,
'occluded': 0, 'pose': 2, 'invalid': 0}),
Bbox(3, 2, 1, 2, attributes = {
'blur': 0, 'expression': 0, 'illumination': 0,
'occluded': 1, 'pose': 0, 'invalid': 0}),
Bbox(5, 6, 1, 1, attributes = {
'blur': 2, 'expression': 0, 'illumination': 0,
'occluded': 0, 'pose': 2, 'invalid': 0}),
]
),
])
dataset = Project.import_from(DUMMY_DATASET_DIR, 'wider_face') \
.make_dataset()
compare_datasets(self, expected_dataset, dataset)