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import logging |
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import unittest |
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import torch |
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from detectron2.config import get_cfg |
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from detectron2.modeling.backbone import build_backbone |
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from detectron2.modeling.proposal_generator.build import build_proposal_generator |
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from detectron2.modeling.proposal_generator.rpn_outputs import find_top_rpn_proposals |
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from detectron2.structures import Boxes, ImageList, Instances, RotatedBoxes |
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from detectron2.utils.events import EventStorage |
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logger = logging.getLogger(__name__) |
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class RPNTest(unittest.TestCase): |
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def test_rpn(self): |
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torch.manual_seed(121) |
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cfg = get_cfg() |
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cfg.MODEL.PROPOSAL_GENERATOR.NAME = "RPN" |
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cfg.MODEL.ANCHOR_GENERATOR.NAME = "DefaultAnchorGenerator" |
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cfg.MODEL.RPN.BBOX_REG_WEIGHTS = (1, 1, 1, 1) |
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backbone = build_backbone(cfg) |
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proposal_generator = build_proposal_generator(cfg, backbone.output_shape()) |
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num_images = 2 |
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images_tensor = torch.rand(num_images, 20, 30) |
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image_sizes = [(10, 10), (20, 30)] |
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images = ImageList(images_tensor, image_sizes) |
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image_shape = (15, 15) |
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num_channels = 1024 |
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features = {"res4": torch.rand(num_images, num_channels, 1, 2)} |
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gt_boxes = torch.tensor([[1, 1, 3, 3], [2, 2, 6, 6]], dtype=torch.float32) |
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gt_instances = Instances(image_shape) |
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gt_instances.gt_boxes = Boxes(gt_boxes) |
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with EventStorage(): |
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proposals, proposal_losses = proposal_generator( |
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images, features, [gt_instances[0], gt_instances[1]] |
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) |
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expected_losses = { |
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"loss_rpn_cls": torch.tensor(0.0804563984), |
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"loss_rpn_loc": torch.tensor(0.0990132466), |
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} |
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for name in expected_losses.keys(): |
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err_msg = "proposal_losses[{}] = {}, expected losses = {}".format( |
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name, proposal_losses[name], expected_losses[name] |
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) |
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self.assertTrue(torch.allclose(proposal_losses[name], expected_losses[name]), err_msg) |
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expected_proposal_boxes = [ |
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Boxes(torch.tensor([[0, 0, 10, 10], [7.3365392685, 0, 10, 10]])), |
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Boxes( |
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torch.tensor( |
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[ |
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[0, 0, 30, 20], |
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[0, 0, 16.7862777710, 13.1362524033], |
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[0, 0, 30, 13.3173446655], |
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[0, 0, 10.8602609634, 20], |
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[7.7165775299, 0, 27.3875980377, 20], |
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] |
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) |
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), |
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] |
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expected_objectness_logits = [ |
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torch.tensor([0.1225359365, -0.0133192837]), |
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torch.tensor([0.1415634006, 0.0989848152, 0.0565387346, -0.0072308783, -0.0428492837]), |
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] |
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for proposal, expected_proposal_box, im_size, expected_objectness_logit in zip( |
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proposals, expected_proposal_boxes, image_sizes, expected_objectness_logits |
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): |
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self.assertEqual(len(proposal), len(expected_proposal_box)) |
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self.assertEqual(proposal.image_size, im_size) |
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self.assertTrue( |
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torch.allclose(proposal.proposal_boxes.tensor, expected_proposal_box.tensor) |
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) |
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self.assertTrue(torch.allclose(proposal.objectness_logits, expected_objectness_logit)) |
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def test_rrpn(self): |
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torch.manual_seed(121) |
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cfg = get_cfg() |
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cfg.MODEL.PROPOSAL_GENERATOR.NAME = "RRPN" |
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cfg.MODEL.ANCHOR_GENERATOR.NAME = "RotatedAnchorGenerator" |
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cfg.MODEL.ANCHOR_GENERATOR.SIZES = [[32, 64]] |
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cfg.MODEL.ANCHOR_GENERATOR.ASPECT_RATIOS = [[0.25, 1]] |
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cfg.MODEL.ANCHOR_GENERATOR.ANGLES = [[0, 60]] |
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cfg.MODEL.RPN.BBOX_REG_WEIGHTS = (1, 1, 1, 1, 1) |
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cfg.MODEL.RPN.HEAD_NAME = "StandardRPNHead" |
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backbone = build_backbone(cfg) |
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proposal_generator = build_proposal_generator(cfg, backbone.output_shape()) |
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num_images = 2 |
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images_tensor = torch.rand(num_images, 20, 30) |
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image_sizes = [(10, 10), (20, 30)] |
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images = ImageList(images_tensor, image_sizes) |
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image_shape = (15, 15) |
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num_channels = 1024 |
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features = {"res4": torch.rand(num_images, num_channels, 1, 2)} |
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gt_boxes = torch.tensor([[2, 2, 2, 2, 0], [4, 4, 4, 4, 0]], dtype=torch.float32) |
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gt_instances = Instances(image_shape) |
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gt_instances.gt_boxes = RotatedBoxes(gt_boxes) |
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with EventStorage(): |
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proposals, proposal_losses = proposal_generator( |
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images, features, [gt_instances[0], gt_instances[1]] |
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) |
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expected_losses = { |
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"loss_rpn_cls": torch.tensor(0.043263837695121765), |
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"loss_rpn_loc": torch.tensor(0.14432406425476074), |
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} |
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for name in expected_losses.keys(): |
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err_msg = "proposal_losses[{}] = {}, expected losses = {}".format( |
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name, proposal_losses[name], expected_losses[name] |
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) |
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self.assertTrue(torch.allclose(proposal_losses[name], expected_losses[name]), err_msg) |
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expected_proposal_boxes = [ |
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RotatedBoxes( |
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torch.tensor( |
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[ |
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[0.60189795, 1.24095452, 61.98131943, 18.03621292, -4.07244873], |
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[15.64940453, 1.69624567, 59.59749603, 16.34339333, 2.62692475], |
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[-3.02982378, -2.69752932, 67.90952301, 59.62455750, 59.97010040], |
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[16.71863365, 1.98309708, 35.61507797, 32.81484985, 62.92267227], |
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[0.49432933, -7.92979717, 67.77606201, 62.93098450, -1.85656738], |
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[8.00880814, 1.36017394, 121.81007385, 32.74150467, 50.44297409], |
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[16.44299889, -4.82221127, 63.39775848, 61.22503662, 54.12270737], |
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[5.00000000, 5.00000000, 10.00000000, 10.00000000, -0.76943970], |
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[17.64130402, -0.98095351, 61.40377808, 16.28918839, 55.53118134], |
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[0.13016054, 4.60568953, 35.80157471, 32.30180359, 62.52872086], |
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[-4.26460743, 0.39604485, 124.30079651, 31.84611320, -1.58203125], |
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[7.52815342, -0.91636634, 62.39784622, 15.45565224, 60.79549789], |
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] |
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) |
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), |
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RotatedBoxes( |
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torch.tensor( |
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[ |
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[0.07734215, 0.81635046, 65.33510590, 17.34688377, -1.51821899], |
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[-3.41833067, -3.11320257, 64.17595673, 60.55617905, 58.27033234], |
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[20.67383385, -6.16561556, 63.60531998, 62.52315903, 54.85546494], |
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[15.00000000, 10.00000000, 30.00000000, 20.00000000, -0.18218994], |
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[9.22646523, -6.84775209, 62.09895706, 65.46472931, -2.74307251], |
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[15.00000000, 4.93451595, 30.00000000, 9.86903191, -0.60272217], |
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[8.88342094, 2.65560246, 120.95362854, 32.45022202, 55.75970078], |
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[16.39088631, 2.33887148, 34.78761292, 35.61492920, 60.81977463], |
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[9.78298569, 10.00000000, 19.56597137, 20.00000000, -0.86660767], |
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[1.28576660, 5.49873352, 34.93610382, 33.22600174, 60.51599884], |
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[17.58912468, -1.63270092, 62.96052551, 16.45713997, 52.91245270], |
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[5.64749718, -1.90428460, 62.37649155, 16.19474792, 61.09543991], |
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[0.82255805, 2.34931135, 118.83985901, 32.83671188, 56.50753784], |
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[-5.33874989, 1.64404404, 125.28501892, 33.35424042, -2.80731201], |
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] |
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) |
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), |
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] |
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expected_objectness_logits = [ |
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torch.tensor( |
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[ |
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0.10111768, |
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0.09112845, |
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0.08466332, |
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0.07589971, |
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0.06650183, |
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0.06350251, |
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0.04299347, |
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0.01864817, |
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0.00986163, |
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0.00078543, |
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-0.04573630, |
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-0.04799230, |
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] |
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), |
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torch.tensor( |
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[ |
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0.11373727, |
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0.09377633, |
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0.05281663, |
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0.05143715, |
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0.04040275, |
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0.03250912, |
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0.01307789, |
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0.01177734, |
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0.00038105, |
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-0.00540255, |
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-0.01194804, |
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-0.01461012, |
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-0.03061717, |
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-0.03599222, |
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] |
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), |
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] |
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torch.set_printoptions(precision=8, sci_mode=False) |
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for proposal, expected_proposal_box, im_size, expected_objectness_logit in zip( |
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proposals, expected_proposal_boxes, image_sizes, expected_objectness_logits |
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): |
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self.assertEqual(len(proposal), len(expected_proposal_box)) |
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self.assertEqual(proposal.image_size, im_size) |
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err_msg = "computed proposal boxes = {}, expected {}".format( |
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proposal.proposal_boxes.tensor, expected_proposal_box.tensor |
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) |
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self.assertTrue( |
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torch.allclose( |
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proposal.proposal_boxes.tensor, expected_proposal_box.tensor, atol=1e-5 |
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), |
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err_msg, |
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) |
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err_msg = "computed objectness logits = {}, expected {}".format( |
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proposal.objectness_logits, expected_objectness_logit |
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) |
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self.assertTrue( |
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torch.allclose(proposal.objectness_logits, expected_objectness_logit, atol=1e-5), |
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err_msg, |
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) |
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def test_rpn_proposals_inf(self): |
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N, Hi, Wi, A = 3, 3, 3, 3 |
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proposals = [torch.rand(N, Hi * Wi * A, 4)] |
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pred_logits = [torch.rand(N, Hi * Wi * A)] |
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pred_logits[0][1][3:5].fill_(float("inf")) |
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images = ImageList.from_tensors([torch.rand(3, 10, 10)] * 3) |
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find_top_rpn_proposals(proposals, pred_logits, images, 0.5, 1000, 1000, 0, False) |
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if __name__ == "__main__": |
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unittest.main() |
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