# Copyright (c) OpenMMLab. All rights reserved. import unittest import numpy as np import torch from mmdet.structures import DetDataSample from mmdet.structures.bbox import HorizontalBoxes from mmengine.structures import InstanceData from mmyolo.datasets import BatchShapePolicy, yolov5_collate def _rand_bboxes(rng, num_boxes, w, h): cx, cy, bw, bh = rng.rand(num_boxes, 4).T tl_x = ((cx * w) - (w * bw / 2)).clip(0, w) tl_y = ((cy * h) - (h * bh / 2)).clip(0, h) br_x = ((cx * w) + (w * bw / 2)).clip(0, w) br_y = ((cy * h) + (h * bh / 2)).clip(0, h) bboxes = np.vstack([tl_x, tl_y, br_x, br_y]).T return bboxes class TestYOLOv5Collate(unittest.TestCase): def test_yolov5_collate(self): rng = np.random.RandomState(0) inputs = torch.randn((3, 10, 10)) data_samples = DetDataSample() gt_instances = InstanceData() bboxes = _rand_bboxes(rng, 4, 6, 8) gt_instances.bboxes = HorizontalBoxes(bboxes, dtype=torch.float32) labels = rng.randint(1, 2, size=len(bboxes)) gt_instances.labels = torch.LongTensor(labels) data_samples.gt_instances = gt_instances out = yolov5_collate([dict(inputs=inputs, data_samples=data_samples)]) self.assertIsInstance(out, dict) self.assertTrue(out['inputs'].shape == (1, 3, 10, 10)) self.assertTrue(out['data_samples'], dict) self.assertTrue(out['data_samples']['bboxes_labels'].shape == (4, 6)) out = yolov5_collate([dict(inputs=inputs, data_samples=data_samples)] * 2) self.assertIsInstance(out, dict) self.assertTrue(out['inputs'].shape == (2, 3, 10, 10)) self.assertTrue(out['data_samples'], dict) self.assertTrue(out['data_samples']['bboxes_labels'].shape == (8, 6)) def test_yolov5_collate_with_multi_scale(self): rng = np.random.RandomState(0) inputs = torch.randn((3, 10, 10)) data_samples = DetDataSample() gt_instances = InstanceData() bboxes = _rand_bboxes(rng, 4, 6, 8) gt_instances.bboxes = HorizontalBoxes(bboxes, dtype=torch.float32) labels = rng.randint(1, 2, size=len(bboxes)) gt_instances.labels = torch.LongTensor(labels) data_samples.gt_instances = gt_instances out = yolov5_collate([dict(inputs=inputs, data_samples=data_samples)], use_ms_training=True) self.assertIsInstance(out, dict) self.assertTrue(out['inputs'][0].shape == (3, 10, 10)) self.assertTrue(out['data_samples'], dict) self.assertTrue(out['data_samples']['bboxes_labels'].shape == (4, 6)) self.assertIsInstance(out['inputs'], list) self.assertIsInstance(out['data_samples']['bboxes_labels'], torch.Tensor) out = yolov5_collate( [dict(inputs=inputs, data_samples=data_samples)] * 2, use_ms_training=True) self.assertIsInstance(out, dict) self.assertTrue(out['inputs'][0].shape == (3, 10, 10)) self.assertTrue(out['data_samples'], dict) self.assertTrue(out['data_samples']['bboxes_labels'].shape == (8, 6)) self.assertIsInstance(out['inputs'], list) self.assertIsInstance(out['data_samples']['bboxes_labels'], torch.Tensor) class TestBatchShapePolicy(unittest.TestCase): def test_batch_shape_policy(self): src_data_infos = [{ 'height': 20, 'width': 100, }, { 'height': 11, 'width': 100, }, { 'height': 21, 'width': 100, }, { 'height': 30, 'width': 100, }, { 'height': 10, 'width': 100, }] expected_data_infos = [{ 'height': 10, 'width': 100, 'batch_shape': np.array([96, 672]) }, { 'height': 11, 'width': 100, 'batch_shape': np.array([96, 672]) }, { 'height': 20, 'width': 100, 'batch_shape': np.array([160, 672]) }, { 'height': 21, 'width': 100, 'batch_shape': np.array([160, 672]) }, { 'height': 30, 'width': 100, 'batch_shape': np.array([224, 672]) }] batch_shapes_policy = BatchShapePolicy(batch_size=2) out_data_infos = batch_shapes_policy(src_data_infos) for i in range(5): self.assertEqual( (expected_data_infos[i]['height'], expected_data_infos[i]['width']), (out_data_infos[i]['height'], out_data_infos[i]['width'])) self.assertTrue( np.allclose(expected_data_infos[i]['batch_shape'], out_data_infos[i]['batch_shape']))