Python object_detection.core.preprocessor.random_vertical_flip() Examples
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Example #1
Source File: preprocessor_builder_test.py From Live-feed-object-device-identification-using-Tensorflow-and-OpenCV with Apache License 2.0 | 6 votes |
def test_build_random_vertical_flip(self): preprocessor_text_proto = """ random_vertical_flip { keypoint_flip_permutation: 1 keypoint_flip_permutation: 0 keypoint_flip_permutation: 2 keypoint_flip_permutation: 3 keypoint_flip_permutation: 5 keypoint_flip_permutation: 4 } """ preprocessor_proto = preprocessor_pb2.PreprocessingStep() text_format.Merge(preprocessor_text_proto, preprocessor_proto) function, args = preprocessor_builder.build(preprocessor_proto) self.assertEqual(function, preprocessor.random_vertical_flip) self.assertEqual(args, {'keypoint_flip_permutation': (1, 0, 2, 3, 5, 4)})
Example #2
Source File: preprocessor_test.py From yolo_v2 with Apache License 2.0 | 6 votes |
def testRandomVerticalFlipWithEmptyBoxes(self): preprocess_options = [(preprocessor.random_vertical_flip, {})] images = self.expectedImagesAfterNormalization() boxes = self.createEmptyTestBoxes() tensor_dict = {fields.InputDataFields.image: images, fields.InputDataFields.groundtruth_boxes: boxes} images_expected1 = self.expectedImagesAfterUpDownFlip() boxes_expected = self.createEmptyTestBoxes() images_expected2 = images tensor_dict = preprocessor.preprocess(tensor_dict, preprocess_options) images = tensor_dict[fields.InputDataFields.image] boxes = tensor_dict[fields.InputDataFields.groundtruth_boxes] images_diff1 = tf.squared_difference(images, images_expected1) images_diff2 = tf.squared_difference(images, images_expected2) images_diff = tf.multiply(images_diff1, images_diff2) images_diff_expected = tf.zeros_like(images_diff) with self.test_session() as sess: (images_diff_, images_diff_expected_, boxes_, boxes_expected_) = sess.run([images_diff, images_diff_expected, boxes, boxes_expected]) self.assertAllClose(boxes_, boxes_expected_) self.assertAllClose(images_diff_, images_diff_expected_)
Example #3
Source File: preprocessor_builder_test.py From ros_people_object_detection_tensorflow with Apache License 2.0 | 6 votes |
def test_build_random_vertical_flip(self): preprocessor_text_proto = """ random_vertical_flip { keypoint_flip_permutation: 1 keypoint_flip_permutation: 0 keypoint_flip_permutation: 2 keypoint_flip_permutation: 3 keypoint_flip_permutation: 5 keypoint_flip_permutation: 4 } """ preprocessor_proto = preprocessor_pb2.PreprocessingStep() text_format.Merge(preprocessor_text_proto, preprocessor_proto) function, args = preprocessor_builder.build(preprocessor_proto) self.assertEqual(function, preprocessor.random_vertical_flip) self.assertEqual(args, {'keypoint_flip_permutation': (1, 0, 2, 3, 5, 4)})
Example #4
Source File: preprocessor_builder_test.py From Traffic-Rule-Violation-Detection-System with MIT License | 6 votes |
def test_build_random_vertical_flip(self): preprocessor_text_proto = """ random_vertical_flip { keypoint_flip_permutation: 1 keypoint_flip_permutation: 0 keypoint_flip_permutation: 2 keypoint_flip_permutation: 3 keypoint_flip_permutation: 5 keypoint_flip_permutation: 4 } """ preprocessor_proto = preprocessor_pb2.PreprocessingStep() text_format.Merge(preprocessor_text_proto, preprocessor_proto) function, args = preprocessor_builder.build(preprocessor_proto) self.assertEqual(function, preprocessor.random_vertical_flip) self.assertEqual(args, {'keypoint_flip_permutation': (1, 0, 2, 3, 5, 4)})
Example #5
Source File: preprocessor_builder_test.py From Person-Detection-and-Tracking with MIT License | 6 votes |
def test_build_random_vertical_flip(self): preprocessor_text_proto = """ random_vertical_flip { keypoint_flip_permutation: 1 keypoint_flip_permutation: 0 keypoint_flip_permutation: 2 keypoint_flip_permutation: 3 keypoint_flip_permutation: 5 keypoint_flip_permutation: 4 } """ preprocessor_proto = preprocessor_pb2.PreprocessingStep() text_format.Merge(preprocessor_text_proto, preprocessor_proto) function, args = preprocessor_builder.build(preprocessor_proto) self.assertEqual(function, preprocessor.random_vertical_flip) self.assertEqual(args, {'keypoint_flip_permutation': (1, 0, 2, 3, 5, 4)})
Example #6
Source File: preprocessor_builder_test.py From vehicle_counting_tensorflow with MIT License | 6 votes |
def test_build_random_vertical_flip(self): preprocessor_text_proto = """ random_vertical_flip { keypoint_flip_permutation: 1 keypoint_flip_permutation: 0 keypoint_flip_permutation: 2 keypoint_flip_permutation: 3 keypoint_flip_permutation: 5 keypoint_flip_permutation: 4 } """ preprocessor_proto = preprocessor_pb2.PreprocessingStep() text_format.Merge(preprocessor_text_proto, preprocessor_proto) function, args = preprocessor_builder.build(preprocessor_proto) self.assertEqual(function, preprocessor.random_vertical_flip) self.assertEqual(args, {'keypoint_flip_permutation': (1, 0, 2, 3, 5, 4)})
Example #7
Source File: preprocessor_builder_test.py From yolo_v2 with Apache License 2.0 | 6 votes |
def test_build_random_vertical_flip(self): preprocessor_text_proto = """ random_vertical_flip { keypoint_flip_permutation: 1 keypoint_flip_permutation: 0 keypoint_flip_permutation: 2 keypoint_flip_permutation: 3 keypoint_flip_permutation: 5 keypoint_flip_permutation: 4 } """ preprocessor_proto = preprocessor_pb2.PreprocessingStep() text_format.Merge(preprocessor_text_proto, preprocessor_proto) function, args = preprocessor_builder.build(preprocessor_proto) self.assertEqual(function, preprocessor.random_vertical_flip) self.assertEqual(args, {'keypoint_flip_permutation': (1, 0, 2, 3, 5, 4)})
Example #8
Source File: preprocessor_test.py From ros_people_object_detection_tensorflow with Apache License 2.0 | 6 votes |
def testRandomVerticalFlipWithEmptyBoxes(self): preprocess_options = [(preprocessor.random_vertical_flip, {})] images = self.expectedImagesAfterNormalization() boxes = self.createEmptyTestBoxes() tensor_dict = {fields.InputDataFields.image: images, fields.InputDataFields.groundtruth_boxes: boxes} images_expected1 = self.expectedImagesAfterUpDownFlip() boxes_expected = self.createEmptyTestBoxes() images_expected2 = images tensor_dict = preprocessor.preprocess(tensor_dict, preprocess_options) images = tensor_dict[fields.InputDataFields.image] boxes = tensor_dict[fields.InputDataFields.groundtruth_boxes] images_diff1 = tf.squared_difference(images, images_expected1) images_diff2 = tf.squared_difference(images, images_expected2) images_diff = tf.multiply(images_diff1, images_diff2) images_diff_expected = tf.zeros_like(images_diff) with self.test_session() as sess: (images_diff_, images_diff_expected_, boxes_, boxes_expected_) = sess.run([images_diff, images_diff_expected, boxes, boxes_expected]) self.assertAllClose(boxes_, boxes_expected_) self.assertAllClose(images_diff_, images_diff_expected_)
Example #9
Source File: preprocessor_test.py From Gun-Detector with Apache License 2.0 | 6 votes |
def testRandomVerticalFlipWithEmptyBoxes(self): preprocess_options = [(preprocessor.random_vertical_flip, {})] images = self.expectedImagesAfterNormalization() boxes = self.createEmptyTestBoxes() tensor_dict = {fields.InputDataFields.image: images, fields.InputDataFields.groundtruth_boxes: boxes} images_expected1 = self.expectedImagesAfterUpDownFlip() boxes_expected = self.createEmptyTestBoxes() images_expected2 = images tensor_dict = preprocessor.preprocess(tensor_dict, preprocess_options) images = tensor_dict[fields.InputDataFields.image] boxes = tensor_dict[fields.InputDataFields.groundtruth_boxes] images_diff1 = tf.squared_difference(images, images_expected1) images_diff2 = tf.squared_difference(images, images_expected2) images_diff = tf.multiply(images_diff1, images_diff2) images_diff_expected = tf.zeros_like(images_diff) with self.test_session() as sess: (images_diff_, images_diff_expected_, boxes_, boxes_expected_) = sess.run([images_diff, images_diff_expected, boxes, boxes_expected]) self.assertAllClose(boxes_, boxes_expected_) self.assertAllClose(images_diff_, images_diff_expected_)
Example #10
Source File: preprocessor_builder_test.py From Gun-Detector with Apache License 2.0 | 6 votes |
def test_build_random_vertical_flip(self): preprocessor_text_proto = """ random_vertical_flip { keypoint_flip_permutation: 1 keypoint_flip_permutation: 0 keypoint_flip_permutation: 2 keypoint_flip_permutation: 3 keypoint_flip_permutation: 5 keypoint_flip_permutation: 4 } """ preprocessor_proto = preprocessor_pb2.PreprocessingStep() text_format.Merge(preprocessor_text_proto, preprocessor_proto) function, args = preprocessor_builder.build(preprocessor_proto) self.assertEqual(function, preprocessor.random_vertical_flip) self.assertEqual(args, {'keypoint_flip_permutation': (1, 0, 2, 3, 5, 4)})
Example #11
Source File: preprocessor_test.py From ros_tensorflow with Apache License 2.0 | 6 votes |
def testRandomVerticalFlipWithEmptyBoxes(self): preprocess_options = [(preprocessor.random_vertical_flip, {})] images = self.expectedImagesAfterNormalization() boxes = self.createEmptyTestBoxes() tensor_dict = {fields.InputDataFields.image: images, fields.InputDataFields.groundtruth_boxes: boxes} images_expected1 = self.expectedImagesAfterUpDownFlip() boxes_expected = self.createEmptyTestBoxes() images_expected2 = images tensor_dict = preprocessor.preprocess(tensor_dict, preprocess_options) images = tensor_dict[fields.InputDataFields.image] boxes = tensor_dict[fields.InputDataFields.groundtruth_boxes] images_diff1 = tf.squared_difference(images, images_expected1) images_diff2 = tf.squared_difference(images, images_expected2) images_diff = tf.multiply(images_diff1, images_diff2) images_diff_expected = tf.zeros_like(images_diff) with self.test_session() as sess: (images_diff_, images_diff_expected_, boxes_, boxes_expected_) = sess.run([images_diff, images_diff_expected, boxes, boxes_expected]) self.assertAllClose(boxes_, boxes_expected_) self.assertAllClose(images_diff_, images_diff_expected_)
Example #12
Source File: preprocessor_builder_test.py From ros_tensorflow with Apache License 2.0 | 6 votes |
def test_build_random_vertical_flip(self): preprocessor_text_proto = """ random_vertical_flip { keypoint_flip_permutation: 1 keypoint_flip_permutation: 0 keypoint_flip_permutation: 2 keypoint_flip_permutation: 3 keypoint_flip_permutation: 5 keypoint_flip_permutation: 4 } """ preprocessor_proto = preprocessor_pb2.PreprocessingStep() text_format.Merge(preprocessor_text_proto, preprocessor_proto) function, args = preprocessor_builder.build(preprocessor_proto) self.assertEqual(function, preprocessor.random_vertical_flip) self.assertEqual(args, {'keypoint_flip_permutation': (1, 0, 2, 3, 5, 4)})
Example #13
Source File: preprocessor_test.py From BMW-TensorFlow-Training-GUI with Apache License 2.0 | 6 votes |
def testRandomVerticalFlipWithEmptyBoxes(self): preprocess_options = [(preprocessor.random_vertical_flip, {})] images = self.expectedImagesAfterNormalization() boxes = self.createEmptyTestBoxes() tensor_dict = {fields.InputDataFields.image: images, fields.InputDataFields.groundtruth_boxes: boxes} images_expected1 = self.expectedImagesAfterUpDownFlip() boxes_expected = self.createEmptyTestBoxes() images_expected2 = images tensor_dict = preprocessor.preprocess(tensor_dict, preprocess_options) images = tensor_dict[fields.InputDataFields.image] boxes = tensor_dict[fields.InputDataFields.groundtruth_boxes] images_diff1 = tf.squared_difference(images, images_expected1) images_diff2 = tf.squared_difference(images, images_expected2) images_diff = tf.multiply(images_diff1, images_diff2) images_diff_expected = tf.zeros_like(images_diff) with self.test_session() as sess: (images_diff_, images_diff_expected_, boxes_, boxes_expected_) = sess.run([images_diff, images_diff_expected, boxes, boxes_expected]) self.assertAllClose(boxes_, boxes_expected_) self.assertAllClose(images_diff_, images_diff_expected_)
Example #14
Source File: preprocessor_builder_test.py From BMW-TensorFlow-Training-GUI with Apache License 2.0 | 6 votes |
def test_build_random_vertical_flip(self): preprocessor_text_proto = """ random_vertical_flip { keypoint_flip_permutation: 1 keypoint_flip_permutation: 0 keypoint_flip_permutation: 2 keypoint_flip_permutation: 3 keypoint_flip_permutation: 5 keypoint_flip_permutation: 4 } """ preprocessor_proto = preprocessor_pb2.PreprocessingStep() text_format.Merge(preprocessor_text_proto, preprocessor_proto) function, args = preprocessor_builder.build(preprocessor_proto) self.assertEqual(function, preprocessor.random_vertical_flip) self.assertEqual(args, {'keypoint_flip_permutation': (1, 0, 2, 3, 5, 4)})
Example #15
Source File: preprocessor_builder_test.py From Live-feed-object-device-identification-using-Tensorflow-and-OpenCV with Apache License 2.0 | 6 votes |
def test_build_random_vertical_flip(self): preprocessor_text_proto = """ random_vertical_flip { keypoint_flip_permutation: 1 keypoint_flip_permutation: 0 keypoint_flip_permutation: 2 keypoint_flip_permutation: 3 keypoint_flip_permutation: 5 keypoint_flip_permutation: 4 } """ preprocessor_proto = preprocessor_pb2.PreprocessingStep() text_format.Merge(preprocessor_text_proto, preprocessor_proto) function, args = preprocessor_builder.build(preprocessor_proto) self.assertEqual(function, preprocessor.random_vertical_flip) self.assertEqual(args, {'keypoint_flip_permutation': (1, 0, 2, 3, 5, 4)})
Example #16
Source File: preprocessor_test.py From vehicle_counting_tensorflow with MIT License | 6 votes |
def testRandomVerticalFlipWithEmptyBoxes(self): preprocess_options = [(preprocessor.random_vertical_flip, {})] images = self.expectedImagesAfterNormalization() boxes = self.createEmptyTestBoxes() tensor_dict = {fields.InputDataFields.image: images, fields.InputDataFields.groundtruth_boxes: boxes} images_expected1 = self.expectedImagesAfterUpDownFlip() boxes_expected = self.createEmptyTestBoxes() images_expected2 = images tensor_dict = preprocessor.preprocess(tensor_dict, preprocess_options) images = tensor_dict[fields.InputDataFields.image] boxes = tensor_dict[fields.InputDataFields.groundtruth_boxes] images_diff1 = tf.squared_difference(images, images_expected1) images_diff2 = tf.squared_difference(images, images_expected2) images_diff = tf.multiply(images_diff1, images_diff2) images_diff_expected = tf.zeros_like(images_diff) with self.test_session() as sess: (images_diff_, images_diff_expected_, boxes_, boxes_expected_) = sess.run([images_diff, images_diff_expected, boxes, boxes_expected]) self.assertAllClose(boxes_, boxes_expected_) self.assertAllClose(images_diff_, images_diff_expected_)
Example #17
Source File: preprocessor_test.py From Elphas with Apache License 2.0 | 6 votes |
def testRandomVerticalFlipWithEmptyBoxes(self): preprocess_options = [(preprocessor.random_vertical_flip, {})] images = self.expectedImagesAfterNormalization() boxes = self.createEmptyTestBoxes() tensor_dict = {fields.InputDataFields.image: images, fields.InputDataFields.groundtruth_boxes: boxes} images_expected1 = self.expectedImagesAfterUpDownFlip() boxes_expected = self.createEmptyTestBoxes() images_expected2 = images tensor_dict = preprocessor.preprocess(tensor_dict, preprocess_options) images = tensor_dict[fields.InputDataFields.image] boxes = tensor_dict[fields.InputDataFields.groundtruth_boxes] images_diff1 = tf.squared_difference(images, images_expected1) images_diff2 = tf.squared_difference(images, images_expected2) images_diff = tf.multiply(images_diff1, images_diff2) images_diff_expected = tf.zeros_like(images_diff) with self.test_session() as sess: (images_diff_, images_diff_expected_, boxes_, boxes_expected_) = sess.run([images_diff, images_diff_expected, boxes, boxes_expected]) self.assertAllClose(boxes_, boxes_expected_) self.assertAllClose(images_diff_, images_diff_expected_)
Example #18
Source File: preprocessor_builder_test.py From Elphas with Apache License 2.0 | 6 votes |
def test_build_random_vertical_flip(self): preprocessor_text_proto = """ random_vertical_flip { keypoint_flip_permutation: 1 keypoint_flip_permutation: 0 keypoint_flip_permutation: 2 keypoint_flip_permutation: 3 keypoint_flip_permutation: 5 keypoint_flip_permutation: 4 } """ preprocessor_proto = preprocessor_pb2.PreprocessingStep() text_format.Merge(preprocessor_text_proto, preprocessor_proto) function, args = preprocessor_builder.build(preprocessor_proto) self.assertEqual(function, preprocessor.random_vertical_flip) self.assertEqual(args, {'keypoint_flip_permutation': (1, 0, 2, 3, 5, 4)})
Example #19
Source File: preprocessor_test.py From object_detection_with_tensorflow with MIT License | 6 votes |
def testRandomVerticalFlipWithEmptyBoxes(self): preprocess_options = [(preprocessor.random_vertical_flip, {})] images = self.expectedImagesAfterNormalization() boxes = self.createEmptyTestBoxes() tensor_dict = {fields.InputDataFields.image: images, fields.InputDataFields.groundtruth_boxes: boxes} images_expected1 = self.expectedImagesAfterUpDownFlip() boxes_expected = self.createEmptyTestBoxes() images_expected2 = images tensor_dict = preprocessor.preprocess(tensor_dict, preprocess_options) images = tensor_dict[fields.InputDataFields.image] boxes = tensor_dict[fields.InputDataFields.groundtruth_boxes] images_diff1 = tf.squared_difference(images, images_expected1) images_diff2 = tf.squared_difference(images, images_expected2) images_diff = tf.multiply(images_diff1, images_diff2) images_diff_expected = tf.zeros_like(images_diff) with self.test_session() as sess: (images_diff_, images_diff_expected_, boxes_, boxes_expected_) = sess.run([images_diff, images_diff_expected, boxes, boxes_expected]) self.assertAllClose(boxes_, boxes_expected_) self.assertAllClose(images_diff_, images_diff_expected_)
Example #20
Source File: preprocessor_builder_test.py From object_detection_with_tensorflow with MIT License | 6 votes |
def test_build_random_vertical_flip(self): preprocessor_text_proto = """ random_vertical_flip { keypoint_flip_permutation: 1 keypoint_flip_permutation: 0 keypoint_flip_permutation: 2 keypoint_flip_permutation: 3 keypoint_flip_permutation: 5 keypoint_flip_permutation: 4 } """ preprocessor_proto = preprocessor_pb2.PreprocessingStep() text_format.Merge(preprocessor_text_proto, preprocessor_proto) function, args = preprocessor_builder.build(preprocessor_proto) self.assertEqual(function, preprocessor.random_vertical_flip) self.assertEqual(args, {'keypoint_flip_permutation': (1, 0, 2, 3, 5, 4)})
Example #21
Source File: preprocessor_builder_test.py From object_detection_with_tensorflow with MIT License | 6 votes |
def test_build_random_vertical_flip(self): preprocessor_text_proto = """ random_vertical_flip { keypoint_flip_permutation: 1 keypoint_flip_permutation: 0 keypoint_flip_permutation: 2 keypoint_flip_permutation: 3 keypoint_flip_permutation: 5 keypoint_flip_permutation: 4 } """ preprocessor_proto = preprocessor_pb2.PreprocessingStep() text_format.Merge(preprocessor_text_proto, preprocessor_proto) function, args = preprocessor_builder.build(preprocessor_proto) self.assertEqual(function, preprocessor.random_vertical_flip) self.assertEqual(args, {'keypoint_flip_permutation': (1, 0, 2, 3, 5, 4)})
Example #22
Source File: preprocessor_test.py From AniSeg with Apache License 2.0 | 6 votes |
def testRandomVerticalFlipWithEmptyBoxes(self): preprocess_options = [(preprocessor.random_vertical_flip, {})] images = self.expectedImagesAfterNormalization() boxes = self.createEmptyTestBoxes() tensor_dict = {fields.InputDataFields.image: images, fields.InputDataFields.groundtruth_boxes: boxes} images_expected1 = self.expectedImagesAfterUpDownFlip() boxes_expected = self.createEmptyTestBoxes() images_expected2 = images tensor_dict = preprocessor.preprocess(tensor_dict, preprocess_options) images = tensor_dict[fields.InputDataFields.image] boxes = tensor_dict[fields.InputDataFields.groundtruth_boxes] images_diff1 = tf.squared_difference(images, images_expected1) images_diff2 = tf.squared_difference(images, images_expected2) images_diff = tf.multiply(images_diff1, images_diff2) images_diff_expected = tf.zeros_like(images_diff) with self.test_session() as sess: (images_diff_, images_diff_expected_, boxes_, boxes_expected_) = sess.run([images_diff, images_diff_expected, boxes, boxes_expected]) self.assertAllClose(boxes_, boxes_expected_) self.assertAllClose(images_diff_, images_diff_expected_)
Example #23
Source File: preprocessor_builder_test.py From AniSeg with Apache License 2.0 | 6 votes |
def test_build_random_vertical_flip(self): preprocessor_text_proto = """ random_vertical_flip { keypoint_flip_permutation: 1 keypoint_flip_permutation: 0 keypoint_flip_permutation: 2 keypoint_flip_permutation: 3 keypoint_flip_permutation: 5 keypoint_flip_permutation: 4 } """ preprocessor_proto = preprocessor_pb2.PreprocessingStep() text_format.Merge(preprocessor_text_proto, preprocessor_proto) function, args = preprocessor_builder.build(preprocessor_proto) self.assertEqual(function, preprocessor.random_vertical_flip) self.assertEqual(args, {'keypoint_flip_permutation': (1, 0, 2, 3, 5, 4)})
Example #24
Source File: preprocessor_test.py From MAX-Object-Detector with Apache License 2.0 | 6 votes |
def testRandomVerticalFlipWithEmptyBoxes(self): preprocess_options = [(preprocessor.random_vertical_flip, {})] images = self.expectedImagesAfterNormalization() boxes = self.createEmptyTestBoxes() tensor_dict = {fields.InputDataFields.image: images, fields.InputDataFields.groundtruth_boxes: boxes} images_expected1 = self.expectedImagesAfterUpDownFlip() boxes_expected = self.createEmptyTestBoxes() images_expected2 = images tensor_dict = preprocessor.preprocess(tensor_dict, preprocess_options) images = tensor_dict[fields.InputDataFields.image] boxes = tensor_dict[fields.InputDataFields.groundtruth_boxes] images_diff1 = tf.squared_difference(images, images_expected1) images_diff2 = tf.squared_difference(images, images_expected2) images_diff = tf.multiply(images_diff1, images_diff2) images_diff_expected = tf.zeros_like(images_diff) with self.test_session() as sess: (images_diff_, images_diff_expected_, boxes_, boxes_expected_) = sess.run([images_diff, images_diff_expected, boxes, boxes_expected]) self.assertAllClose(boxes_, boxes_expected_) self.assertAllClose(images_diff_, images_diff_expected_)
Example #25
Source File: preprocessor_builder_test.py From MAX-Object-Detector with Apache License 2.0 | 6 votes |
def test_build_random_vertical_flip(self): preprocessor_text_proto = """ random_vertical_flip { keypoint_flip_permutation: 1 keypoint_flip_permutation: 0 keypoint_flip_permutation: 2 keypoint_flip_permutation: 3 keypoint_flip_permutation: 5 keypoint_flip_permutation: 4 } """ preprocessor_proto = preprocessor_pb2.PreprocessingStep() text_format.Merge(preprocessor_text_proto, preprocessor_proto) function, args = preprocessor_builder.build(preprocessor_proto) self.assertEqual(function, preprocessor.random_vertical_flip) self.assertEqual(args, {'keypoint_flip_permutation': (1, 0, 2, 3, 5, 4)})
Example #26
Source File: preprocessor_test.py From Accident-Detection-on-Indian-Roads with GNU Affero General Public License v3.0 | 6 votes |
def testRandomVerticalFlipWithEmptyBoxes(self): preprocess_options = [(preprocessor.random_vertical_flip, {})] images = self.expectedImagesAfterNormalization() boxes = self.createEmptyTestBoxes() tensor_dict = {fields.InputDataFields.image: images, fields.InputDataFields.groundtruth_boxes: boxes} images_expected1 = self.expectedImagesAfterUpDownFlip() boxes_expected = self.createEmptyTestBoxes() images_expected2 = images tensor_dict = preprocessor.preprocess(tensor_dict, preprocess_options) images = tensor_dict[fields.InputDataFields.image] boxes = tensor_dict[fields.InputDataFields.groundtruth_boxes] images_diff1 = tf.squared_difference(images, images_expected1) images_diff2 = tf.squared_difference(images, images_expected2) images_diff = tf.multiply(images_diff1, images_diff2) images_diff_expected = tf.zeros_like(images_diff) with self.test_session() as sess: (images_diff_, images_diff_expected_, boxes_, boxes_expected_) = sess.run([images_diff, images_diff_expected, boxes, boxes_expected]) self.assertAllClose(boxes_, boxes_expected_) self.assertAllClose(images_diff_, images_diff_expected_)
Example #27
Source File: preprocessor_test.py From g-tensorflow-models with Apache License 2.0 | 6 votes |
def testRandomVerticalFlipWithEmptyBoxes(self): preprocess_options = [(preprocessor.random_vertical_flip, {})] images = self.expectedImagesAfterNormalization() boxes = self.createEmptyTestBoxes() tensor_dict = {fields.InputDataFields.image: images, fields.InputDataFields.groundtruth_boxes: boxes} images_expected1 = self.expectedImagesAfterUpDownFlip() boxes_expected = self.createEmptyTestBoxes() images_expected2 = images tensor_dict = preprocessor.preprocess(tensor_dict, preprocess_options) images = tensor_dict[fields.InputDataFields.image] boxes = tensor_dict[fields.InputDataFields.groundtruth_boxes] images_diff1 = tf.squared_difference(images, images_expected1) images_diff2 = tf.squared_difference(images, images_expected2) images_diff = tf.multiply(images_diff1, images_diff2) images_diff_expected = tf.zeros_like(images_diff) with self.test_session() as sess: (images_diff_, images_diff_expected_, boxes_, boxes_expected_) = sess.run([images_diff, images_diff_expected, boxes, boxes_expected]) self.assertAllClose(boxes_, boxes_expected_) self.assertAllClose(images_diff_, images_diff_expected_)
Example #28
Source File: preprocessor_builder_test.py From g-tensorflow-models with Apache License 2.0 | 6 votes |
def test_build_random_vertical_flip(self): preprocessor_text_proto = """ random_vertical_flip { keypoint_flip_permutation: 1 keypoint_flip_permutation: 0 keypoint_flip_permutation: 2 keypoint_flip_permutation: 3 keypoint_flip_permutation: 5 keypoint_flip_permutation: 4 } """ preprocessor_proto = preprocessor_pb2.PreprocessingStep() text_format.Merge(preprocessor_text_proto, preprocessor_proto) function, args = preprocessor_builder.build(preprocessor_proto) self.assertEqual(function, preprocessor.random_vertical_flip) self.assertEqual(args, {'keypoint_flip_permutation': (1, 0, 2, 3, 5, 4)})
Example #29
Source File: preprocessor_builder_test.py From models with Apache License 2.0 | 6 votes |
def test_build_random_vertical_flip(self): preprocessor_text_proto = """ random_vertical_flip { keypoint_flip_permutation: 1 keypoint_flip_permutation: 0 keypoint_flip_permutation: 2 keypoint_flip_permutation: 3 keypoint_flip_permutation: 5 keypoint_flip_permutation: 4 probability: 0.5 } """ preprocessor_proto = preprocessor_pb2.PreprocessingStep() text_format.Merge(preprocessor_text_proto, preprocessor_proto) function, args = preprocessor_builder.build(preprocessor_proto) self.assertEqual(function, preprocessor.random_vertical_flip) self.assertEqual(args, {'keypoint_flip_permutation': (1, 0, 2, 3, 5, 4), 'probability': 0.5})
Example #30
Source File: preprocessor_test.py From multilabel-image-classification-tensorflow with MIT License | 6 votes |
def testRandomVerticalFlipWithEmptyBoxes(self): preprocess_options = [(preprocessor.random_vertical_flip, {})] images = self.expectedImagesAfterNormalization() boxes = self.createEmptyTestBoxes() tensor_dict = {fields.InputDataFields.image: images, fields.InputDataFields.groundtruth_boxes: boxes} images_expected1 = self.expectedImagesAfterUpDownFlip() boxes_expected = self.createEmptyTestBoxes() images_expected2 = images tensor_dict = preprocessor.preprocess(tensor_dict, preprocess_options) images = tensor_dict[fields.InputDataFields.image] boxes = tensor_dict[fields.InputDataFields.groundtruth_boxes] images_diff1 = tf.squared_difference(images, images_expected1) images_diff2 = tf.squared_difference(images, images_expected2) images_diff = tf.multiply(images_diff1, images_diff2) images_diff_expected = tf.zeros_like(images_diff) with self.test_session() as sess: (images_diff_, images_diff_expected_, boxes_, boxes_expected_) = sess.run([images_diff, images_diff_expected, boxes, boxes_expected]) self.assertAllClose(boxes_, boxes_expected_) self.assertAllClose(images_diff_, images_diff_expected_)