# Copyright (c) OpenMMLab. All rights reserved. from unittest import TestCase import torch from mmengine.structures import InstanceData from mmdet.models.dense_heads import FoveaHead class TestFOVEAHead(TestCase): def test_fovea_head_loss(self): """Tests anchor head loss when truth is empty and non-empty.""" s = 256 img_metas = [{ 'img_shape': (s, s, 3), 'pad_shape': (s, s, 3), 'scale_factor': 1, }] fovea_head = FoveaHead(num_classes=4, in_channels=1) # Anchor head expects a multiple levels of features per image feats = ( torch.rand(1, 1, s // (2**(i + 2)), s // (2**(i + 2))) for i in range(len(fovea_head.prior_generator.strides))) cls_scores, bbox_preds = fovea_head.forward(feats) # Test that empty ground truth encourages the network to # predict background gt_instances = InstanceData() gt_instances.bboxes = torch.empty((0, 4)) gt_instances.labels = torch.LongTensor([]) empty_gt_losses = fovea_head.loss_by_feat(cls_scores, bbox_preds, [gt_instances], img_metas) # When there is no truth, the cls loss should be nonzero but # there should be no box loss. empty_cls_loss = empty_gt_losses['loss_cls'] empty_box_loss = empty_gt_losses['loss_bbox'] self.assertGreater(empty_cls_loss.item(), 0, 'cls loss should be non-zero') self.assertEqual( empty_box_loss.item(), 0, 'there should be no box loss when there are no true boxes') # When truth is non-empty then both cls and box loss # should be nonzero for random inputs gt_instances = InstanceData() gt_instances.bboxes = torch.Tensor( [[23.6667, 23.8757, 238.6326, 151.8874]]) gt_instances.labels = torch.LongTensor([2]) one_gt_losses = fovea_head.loss_by_feat(cls_scores, bbox_preds, [gt_instances], img_metas) onegt_cls_loss = one_gt_losses['loss_cls'] onegt_box_loss = one_gt_losses['loss_bbox'] self.assertGreater(onegt_cls_loss.item(), 0, 'cls loss should be non-zero') self.assertGreater(onegt_box_loss.item(), 0, 'box loss should be non-zero')