test_ops.py 36 KB
Newer Older
1
2
3
import math
import unittest

4
import numpy as np
5

6
import torch
7
from torch import Tensor
8
from torch.autograd import gradcheck
9
10
from torch.jit.annotations import Tuple
from torch.nn.modules.utils import _pair
11
12
13
from torchvision import ops


14
class OpTester(object):
15
16
17
18
    @classmethod
    def setUpClass(cls):
        cls.dtype = torch.float64

19
20
    def test_forward_cpu_contiguous(self):
        self._test_forward(device=torch.device('cpu'), contiguous=True)
21

22
23
    def test_forward_cpu_non_contiguous(self):
        self._test_forward(device=torch.device('cpu'), contiguous=False)
24

25
26
    def test_backward_cpu_contiguous(self):
        self._test_backward(device=torch.device('cpu'), contiguous=True)
27

28
29
    def test_backward_cpu_non_contiguous(self):
        self._test_backward(device=torch.device('cpu'), contiguous=False)
30

31
    @unittest.skipIf(not torch.cuda.is_available(), "CUDA unavailable")
32
33
    def test_forward_cuda_contiguous(self):
        self._test_forward(device=torch.device('cuda'), contiguous=True)
34

35
36
37
    @unittest.skipIf(not torch.cuda.is_available(), "CUDA unavailable")
    def test_forward_cuda_non_contiguous(self):
        self._test_forward(device=torch.device('cuda'), contiguous=False)
38

39
40
41
    @unittest.skipIf(not torch.cuda.is_available(), "CUDA unavailable")
    def test_backward_cuda_contiguous(self):
        self._test_backward(device=torch.device('cuda'), contiguous=True)
42
43

    @unittest.skipIf(not torch.cuda.is_available(), "CUDA unavailable")
44
45
46
    def test_backward_cuda_non_contiguous(self):
        self._test_backward(device=torch.device('cuda'), contiguous=False)

47
48
49
50
51
52
53
54
    def _test_forward(self, device, contiguous):
        pass

    def _test_backward(self, device, contiguous):
        pass


class RoIOpTester(OpTester):
55
56
57
    def _test_forward(self, device, contiguous, x_dtype=None, rois_dtype=None):
        x_dtype = self.dtype if x_dtype is None else x_dtype
        rois_dtype = self.dtype if rois_dtype is None else rois_dtype
58
59
60
        pool_size = 5
        # n_channels % (pool_size ** 2) == 0 required for PS opeartions.
        n_channels = 2 * (pool_size ** 2)
61
        x = torch.rand(2, n_channels, 10, 10, dtype=x_dtype, device=device)
62
63
        if not contiguous:
            x = x.permute(0, 1, 3, 2)
64
65
66
67
        rois = torch.tensor([[0, 0, 0, 9, 9],  # format is (xyxy)
                             [0, 0, 5, 4, 9],
                             [0, 5, 5, 9, 9],
                             [1, 0, 0, 9, 9]],
68
                            dtype=rois_dtype, device=device)
69

70
71
        pool_h, pool_w = pool_size, pool_size
        y = self.fn(x, rois, pool_h, pool_w, spatial_scale=1, sampling_ratio=-1)
72
73
        # the following should be true whether we're running an autocast test or not.
        self.assertTrue(y.dtype == x.dtype)
74
75
76
        gt_y = self.expected_fn(x, rois, pool_h, pool_w, spatial_scale=1,
                                sampling_ratio=-1, device=device, dtype=self.dtype)

77
78
        tol = 1e-3 if (x_dtype is torch.half or rois_dtype is torch.half) else 1e-5
        self.assertTrue(torch.allclose(gt_y.to(y.dtype), y, rtol=tol, atol=tol))
79
80
81
82
83
84
85
86
87
88

    def _test_backward(self, device, contiguous):
        pool_size = 2
        x = torch.rand(1, 2 * (pool_size ** 2), 5, 5, dtype=self.dtype, device=device, requires_grad=True)
        if not contiguous:
            x = x.permute(0, 1, 3, 2)
        rois = torch.tensor([[0, 0, 0, 4, 4],  # format is (xyxy)
                             [0, 0, 2, 3, 4],
                             [0, 2, 2, 4, 4]],
                            dtype=self.dtype, device=device)
89

90
91
        def func(z):
            return self.fn(z, rois, pool_size, pool_size, spatial_scale=1, sampling_ratio=1)
92

93
        script_func = self.get_script_fn(rois, pool_size)
94

95
96
        self.assertTrue(gradcheck(func, (x,)))
        self.assertTrue(gradcheck(script_func, (x,)))
97

98
99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
    def test_boxes_shape(self):
        self._test_boxes_shape()

    def _helper_boxes_shape(self, func):
        # test boxes as Tensor[N, 5]
        with self.assertRaises(AssertionError):
            a = torch.linspace(1, 8 * 8, 8 * 8).reshape(1, 1, 8, 8)
            boxes = torch.tensor([[0, 0, 3, 3]], dtype=a.dtype)
            func(a, boxes, output_size=(2, 2))

        # test boxes as List[Tensor[N, 4]]
        with self.assertRaises(AssertionError):
            a = torch.linspace(1, 8 * 8, 8 * 8).reshape(1, 1, 8, 8)
            boxes = torch.tensor([[0, 0, 3]], dtype=a.dtype)
            ops.roi_pool(a, [boxes], output_size=(2, 2))

114
115
    def fn(*args, **kwargs):
        pass
116

117
118
    def get_script_fn(*args, **kwargs):
        pass
119

120
121
    def expected_fn(*args, **kwargs):
        pass
122

123
124
125
126
127
128
129
    @unittest.skipIf(not torch.cuda.is_available(), "CUDA unavailable")
    def test_autocast(self):
        for x_dtype in (torch.float, torch.half):
            for rois_dtype in (torch.float, torch.half):
                with torch.cuda.amp.autocast():
                    self._test_forward(torch.device("cuda"), contiguous=False, x_dtype=x_dtype, rois_dtype=rois_dtype)

130

131
132
133
class RoIPoolTester(RoIOpTester, unittest.TestCase):
    def fn(self, x, rois, pool_h, pool_w, spatial_scale=1, sampling_ratio=-1, **kwargs):
        return ops.RoIPool((pool_h, pool_w), spatial_scale)(x, rois)
134

135
    def get_script_fn(self, rois, pool_size):
136
        @torch.jit.script
137
        def script_fn(input, rois, pool_size):
138
            # type: (Tensor, Tensor, int) -> Tensor
139
140
            return ops.roi_pool(input, rois, pool_size, 1.0)[0]
        return lambda x: script_fn(x, rois, pool_size)
141

142
143
144
145
    def expected_fn(self, x, rois, pool_h, pool_w, spatial_scale=1, sampling_ratio=-1,
                    device=None, dtype=torch.float64):
        if device is None:
            device = torch.device("cpu")
146

147
148
        n_channels = x.size(1)
        y = torch.zeros(rois.size(0), n_channels, pool_h, pool_w, dtype=dtype, device=device)
149

150
151
        def get_slice(k, block):
            return slice(int(np.floor(k * block)), int(np.ceil((k + 1) * block)))
152

153
154
155
156
        for roi_idx, roi in enumerate(rois):
            batch_idx = int(roi[0])
            j_begin, i_begin, j_end, i_end = (int(round(x.item() * spatial_scale)) for x in roi[1:])
            roi_x = x[batch_idx, :, i_begin:i_end + 1, j_begin:j_end + 1]
157

158
159
160
            roi_h, roi_w = roi_x.shape[-2:]
            bin_h = roi_h / pool_h
            bin_w = roi_w / pool_w
161

162
163
164
165
166
167
            for i in range(0, pool_h):
                for j in range(0, pool_w):
                    bin_x = roi_x[:, get_slice(i, bin_h), get_slice(j, bin_w)]
                    if bin_x.numel() > 0:
                        y[roi_idx, :, i, j] = bin_x.reshape(n_channels, -1).max(dim=1)[0]
        return y
168

169
170
171
    def _test_boxes_shape(self):
        self._helper_boxes_shape(ops.roi_pool)

172

173
174
175
class PSRoIPoolTester(RoIOpTester, unittest.TestCase):
    def fn(self, x, rois, pool_h, pool_w, spatial_scale=1, sampling_ratio=-1, **kwargs):
        return ops.PSRoIPool((pool_h, pool_w), 1)(x, rois)
176

177
    def get_script_fn(self, rois, pool_size):
178
        @torch.jit.script
179
        def script_fn(input, rois, pool_size):
180
            # type: (Tensor, Tensor, int) -> Tensor
181
182
            return ops.ps_roi_pool(input, rois, pool_size, 1.0)[0]
        return lambda x: script_fn(x, rois, pool_size)
183

184
185
186
187
188
189
190
191
192
193
194
195
196
197
198
199
200
201
202
203
204
205
206
207
208
209
210
211
212
213
214
    def expected_fn(self, x, rois, pool_h, pool_w, spatial_scale=1, sampling_ratio=-1,
                    device=None, dtype=torch.float64):
        if device is None:
            device = torch.device("cpu")
        n_input_channels = x.size(1)
        self.assertEqual(n_input_channels % (pool_h * pool_w), 0, "input channels must be divisible by ph * pw")
        n_output_channels = int(n_input_channels / (pool_h * pool_w))
        y = torch.zeros(rois.size(0), n_output_channels, pool_h, pool_w, dtype=dtype, device=device)

        def get_slice(k, block):
            return slice(int(np.floor(k * block)), int(np.ceil((k + 1) * block)))

        for roi_idx, roi in enumerate(rois):
            batch_idx = int(roi[0])
            j_begin, i_begin, j_end, i_end = (int(round(x.item() * spatial_scale)) for x in roi[1:])
            roi_x = x[batch_idx, :, i_begin:i_end + 1, j_begin:j_end + 1]

            roi_height = max(i_end - i_begin, 1)
            roi_width = max(j_end - j_begin, 1)
            bin_h, bin_w = roi_height / float(pool_h), roi_width / float(pool_w)

            for i in range(0, pool_h):
                for j in range(0, pool_w):
                    bin_x = roi_x[:, get_slice(i, bin_h), get_slice(j, bin_w)]
                    if bin_x.numel() > 0:
                        area = bin_x.size(-2) * bin_x.size(-1)
                        for c_out in range(0, n_output_channels):
                            c_in = c_out * (pool_h * pool_w) + pool_w * i + j
                            t = torch.sum(bin_x[c_in, :, :])
                            y[roi_idx, c_out, i, j] = t / area
        return y
215

216
217
218
    def _test_boxes_shape(self):
        self._helper_boxes_shape(ops.ps_roi_pool)

219

220
221
def bilinear_interpolate(data, y, x, snap_border=False):
    height, width = data.shape
222

223
224
225
226
227
    if snap_border:
        if -1 < y <= 0:
            y = 0
        elif height - 1 <= y < height:
            y = height - 1
228

229
230
231
232
        if -1 < x <= 0:
            x = 0
        elif width - 1 <= x < width:
            x = width - 1
233

234
235
236
237
    y_low = int(math.floor(y))
    x_low = int(math.floor(x))
    y_high = y_low + 1
    x_high = x_low + 1
238

239
240
    wy_h = y - y_low
    wx_h = x - x_low
241
    wy_l = 1 - wy_h
242
    wx_l = 1 - wx_h
243

244
    val = 0
245
246
247
248
    for wx, xp in zip((wx_l, wx_h), (x_low, x_high)):
        for wy, yp in zip((wy_l, wy_h), (y_low, y_high)):
            if 0 <= yp < height and 0 <= xp < width:
                val += wx * wy * data[yp, xp]
249
    return val
250
251


252
class RoIAlignTester(RoIOpTester, unittest.TestCase):
AhnDW's avatar
AhnDW committed
253
    def fn(self, x, rois, pool_h, pool_w, spatial_scale=1, sampling_ratio=-1, aligned=False, **kwargs):
254
        return ops.RoIAlign((pool_h, pool_w), spatial_scale=spatial_scale,
AhnDW's avatar
AhnDW committed
255
                            sampling_ratio=sampling_ratio, aligned=aligned)(x, rois)
256

257
258
259
    def get_script_fn(self, rois, pool_size):
        @torch.jit.script
        def script_fn(input, rois, pool_size):
260
            # type: (Tensor, Tensor, int) -> Tensor
261
262
            return ops.roi_align(input, rois, pool_size, 1.0)[0]
        return lambda x: script_fn(x, rois, pool_size)
263

AhnDW's avatar
AhnDW committed
264
    def expected_fn(self, in_data, rois, pool_h, pool_w, spatial_scale=1, sampling_ratio=-1, aligned=False,
265
                    device=None, dtype=torch.float64):
266
267
        if device is None:
            device = torch.device("cpu")
268
269
270
        n_channels = in_data.size(1)
        out_data = torch.zeros(rois.size(0), n_channels, pool_h, pool_w, dtype=dtype, device=device)

AhnDW's avatar
AhnDW committed
271
272
        offset = 0.5 if aligned else 0.

273
274
        for r, roi in enumerate(rois):
            batch_idx = int(roi[0])
AhnDW's avatar
AhnDW committed
275
            j_begin, i_begin, j_end, i_end = (x.item() * spatial_scale - offset for x in roi[1:])
276
277
278
279
280
281
282
283
284
285
286
287
288
289
290
291
292
293
294
295

            roi_h = i_end - i_begin
            roi_w = j_end - j_begin
            bin_h = roi_h / pool_h
            bin_w = roi_w / pool_w

            for i in range(0, pool_h):
                start_h = i_begin + i * bin_h
                grid_h = sampling_ratio if sampling_ratio > 0 else int(np.ceil(bin_h))
                for j in range(0, pool_w):
                    start_w = j_begin + j * bin_w
                    grid_w = sampling_ratio if sampling_ratio > 0 else int(np.ceil(bin_w))

                    for channel in range(0, n_channels):

                        val = 0
                        for iy in range(0, grid_h):
                            y = start_h + (iy + 0.5) * bin_h / grid_h
                            for ix in range(0, grid_w):
                                x = start_w + (ix + 0.5) * bin_w / grid_w
296
                                val += bilinear_interpolate(in_data[batch_idx, channel, :, :], y, x, snap_border=True)
297
298
299
                        val /= grid_h * grid_w

                        out_data[r, channel, i, j] = val
300
301
        return out_data

302
303
304
    def _test_boxes_shape(self):
        self._helper_boxes_shape(ops.roi_align)

305

306
307
308
309
class PSRoIAlignTester(RoIOpTester, unittest.TestCase):
    def fn(self, x, rois, pool_h, pool_w, spatial_scale=1, sampling_ratio=-1, **kwargs):
        return ops.PSRoIAlign((pool_h, pool_w), spatial_scale=spatial_scale,
                              sampling_ratio=sampling_ratio)(x, rois)
310

311
    def get_script_fn(self, rois, pool_size):
312
        @torch.jit.script
313
        def script_fn(input, rois, pool_size):
314
            # type: (Tensor, Tensor, int) -> Tensor
315
316
            return ops.ps_roi_align(input, rois, pool_size, 1.0)[0]
        return lambda x: script_fn(x, rois, pool_size)
317

318
319
    def expected_fn(self, in_data, rois, pool_h, pool_w, device, spatial_scale=1,
                    sampling_ratio=-1, dtype=torch.float64):
320
321
        if device is None:
            device = torch.device("cpu")
322
323
324
325
326
327
328
329
330
331
332
333
334
335
336
337
338
339
340
341
342
343
344
345
346
347
348
349
        n_input_channels = in_data.size(1)
        self.assertEqual(n_input_channels % (pool_h * pool_w), 0, "input channels must be divisible by ph * pw")
        n_output_channels = int(n_input_channels / (pool_h * pool_w))
        out_data = torch.zeros(rois.size(0), n_output_channels, pool_h, pool_w, dtype=dtype, device=device)

        for r, roi in enumerate(rois):
            batch_idx = int(roi[0])
            j_begin, i_begin, j_end, i_end = (x.item() * spatial_scale - 0.5 for x in roi[1:])

            roi_h = i_end - i_begin
            roi_w = j_end - j_begin
            bin_h = roi_h / pool_h
            bin_w = roi_w / pool_w

            for i in range(0, pool_h):
                start_h = i_begin + i * bin_h
                grid_h = sampling_ratio if sampling_ratio > 0 else int(np.ceil(bin_h))
                for j in range(0, pool_w):
                    start_w = j_begin + j * bin_w
                    grid_w = sampling_ratio if sampling_ratio > 0 else int(np.ceil(bin_w))
                    for c_out in range(0, n_output_channels):
                        c_in = c_out * (pool_h * pool_w) + pool_w * i + j

                        val = 0
                        for iy in range(0, grid_h):
                            y = start_h + (iy + 0.5) * bin_h / grid_h
                            for ix in range(0, grid_w):
                                x = start_w + (ix + 0.5) * bin_w / grid_w
350
                                val += bilinear_interpolate(in_data[batch_idx, c_in, :, :], y, x, snap_border=True)
351
352
353
354
                        val /= grid_h * grid_w

                        out_data[r, c_out, i, j] = val
        return out_data
355

356
357
358
    def _test_boxes_shape(self):
        self._helper_boxes_shape(ops.ps_roi_align)

359

360
361
362
363
364
365
366
367
368
369
370
371
372
373
class MultiScaleRoIAlignTester(unittest.TestCase):
    def test_msroialign_repr(self):
        fmap_names = ['0']
        output_size = (7, 7)
        sampling_ratio = 2
        # Pass mock feature map names
        t = ops.poolers.MultiScaleRoIAlign(fmap_names, output_size, sampling_ratio)

        # Check integrity of object __repr__ attribute
        expected_string = (f"MultiScaleRoIAlign(featmap_names={fmap_names}, output_size={output_size}, "
                           f"sampling_ratio={sampling_ratio})")
        self.assertEqual(t.__repr__(), expected_string)


374
375
376
377
378
379
380
381
382
383
384
385
386
387
388
389
390
391
392
393
394
395
396
397
class NMSTester(unittest.TestCase):
    def reference_nms(self, boxes, scores, iou_threshold):
        """
        Args:
            box_scores (N, 5): boxes in corner-form and probabilities.
            iou_threshold: intersection over union threshold.
        Returns:
             picked: a list of indexes of the kept boxes
        """
        picked = []
        _, indexes = scores.sort(descending=True)
        while len(indexes) > 0:
            current = indexes[0]
            picked.append(current.item())
            if len(indexes) == 1:
                break
            current_box = boxes[current, :]
            indexes = indexes[1:]
            rest_boxes = boxes[indexes, :]
            iou = ops.box_iou(rest_boxes, current_box.unsqueeze(0)).squeeze(1)
            indexes = indexes[iou <= iou_threshold]

        return torch.as_tensor(picked)

398
399
400
401
402
    def _create_tensors_with_iou(self, N, iou_thresh):
        # force last box to have a pre-defined iou with the first box
        # let b0 be [x0, y0, x1, y1], and b1 be [x0, y0, x1 + d, y1],
        # then, in order to satisfy ops.iou(b0, b1) == iou_thresh,
        # we need to have d = (x1 - x0) * (1 - iou_thresh) / iou_thresh
403
404
405
        # Adjust the threshold upward a bit with the intent of creating
        # at least one box that exceeds (barely) the threshold and so
        # should be suppressed.
406
        boxes = torch.rand(N, 4) * 100
407
408
409
        boxes[:, 2:] += boxes[:, :2]
        boxes[-1, :] = boxes[0, :]
        x0, y0, x1, y1 = boxes[-1].tolist()
410
        iou_thresh += 1e-5
411
        boxes[-1, 2] += (x1 - x0) * (1 - iou_thresh) / iou_thresh
412
413
414
415
416
417
        scores = torch.rand(N)
        return boxes, scores

    def test_nms(self):
        err_msg = 'NMS incompatible between CPU and reference implementation for IoU={}'
        for iou in [0.2, 0.5, 0.8]:
418
            boxes, scores = self._create_tensors_with_iou(1000, iou)
419
420
            keep_ref = self.reference_nms(boxes, scores, iou)
            keep = ops.nms(boxes, scores, iou)
421
            self.assertTrue(torch.allclose(keep, keep_ref), err_msg.format(iou))
422
423
424
425
        self.assertRaises(RuntimeError, ops.nms, torch.rand(4), torch.rand(3), 0.5)
        self.assertRaises(RuntimeError, ops.nms, torch.rand(3, 5), torch.rand(3), 0.5)
        self.assertRaises(RuntimeError, ops.nms, torch.rand(3, 4), torch.rand(3, 2), 0.5)
        self.assertRaises(RuntimeError, ops.nms, torch.rand(3, 4), torch.rand(4), 0.5)
426
427

    @unittest.skipIf(not torch.cuda.is_available(), "CUDA unavailable")
428
429
    def test_nms_cuda(self, dtype=torch.float64):
        tol = 1e-3 if dtype is torch.half else 1e-5
430
431
432
        err_msg = 'NMS incompatible between CPU and CUDA for IoU={}'

        for iou in [0.2, 0.5, 0.8]:
433
            boxes, scores = self._create_tensors_with_iou(1000, iou)
434
435
436
            r_cpu = ops.nms(boxes, scores, iou)
            r_cuda = ops.nms(boxes.cuda(), scores.cuda(), iou)

437
438
439
440
            is_eq = torch.allclose(r_cpu, r_cuda.cpu())
            if not is_eq:
                # if the indices are not the same, ensure that it's because the scores
                # are duplicate
441
                is_eq = torch.allclose(scores[r_cpu], scores[r_cuda.cpu()], rtol=tol, atol=tol)
442
            self.assertTrue(is_eq, err_msg.format(iou))
443

444
445
446
447
448
449
    @unittest.skipIf(not torch.cuda.is_available(), "CUDA unavailable")
    def test_autocast(self):
        for dtype in (torch.float, torch.half):
            with torch.cuda.amp.autocast():
                self.test_nms_cuda(dtype=dtype)

450

eellison's avatar
eellison committed
451
452
453
454
455
456
457
458
459
class NewEmptyTensorTester(unittest.TestCase):
    def test_new_empty_tensor(self):
        input = torch.tensor([2., 2.], requires_grad=True)
        new_shape = [3, 3]
        out = torch.ops.torchvision._new_empty_tensor_op(input, new_shape)
        assert out.size() == torch.Size([3, 3])
        assert out.dtype == input.dtype


460
461
462
463
464
465
466
467
468
469
470
471
472
473
474
475
476
477
478
479
480
481
482
483
484
485
486
487
488
489
490
491
492
493
494
495
496
497
498
499
500
501
class DeformConvTester(OpTester, unittest.TestCase):
    def expected_fn(self, x, weight, offset, bias, stride=1, padding=0, dilation=1):
        stride_h, stride_w = _pair(stride)
        pad_h, pad_w = _pair(padding)
        dil_h, dil_w = _pair(dilation)
        weight_h, weight_w = weight.shape[-2:]

        n_batches, n_in_channels, in_h, in_w = x.shape
        n_out_channels = weight.shape[0]

        out_h = (in_h + 2 * pad_h - (dil_h * (weight_h - 1) + 1)) // stride_h + 1
        out_w = (in_w + 2 * pad_w - (dil_w * (weight_w - 1) + 1)) // stride_w + 1

        n_offset_grps = offset.shape[1] // (2 * weight_h * weight_w)
        in_c_per_offset_grp = n_in_channels // n_offset_grps

        n_weight_grps = n_in_channels // weight.shape[1]
        in_c_per_weight_grp = weight.shape[1]
        out_c_per_weight_grp = n_out_channels // n_weight_grps

        out = torch.zeros(n_batches, n_out_channels, out_h, out_w, device=x.device, dtype=x.dtype)
        for b in range(n_batches):
            for c_out in range(n_out_channels):
                for i in range(out_h):
                    for j in range(out_w):
                        for di in range(weight_h):
                            for dj in range(weight_w):
                                for c in range(in_c_per_weight_grp):
                                    weight_grp = c_out // out_c_per_weight_grp
                                    c_in = weight_grp * in_c_per_weight_grp + c

                                    offset_grp = c_in // in_c_per_offset_grp
                                    offset_idx = 2 * (offset_grp * (weight_h * weight_w) + di * weight_w + dj)

                                    pi = stride_h * i - pad_h + dil_h * di + offset[b, offset_idx, i, j]
                                    pj = stride_w * j - pad_w + dil_w * dj + offset[b, offset_idx + 1, i, j]

                                    out[b, c_out, i, j] += (weight[c_out, c, di, dj] *
                                                            bilinear_interpolate(x[b, c_in, :, :], pi, pj))
        out += bias.view(1, n_out_channels, 1, 1)
        return out

502
    def get_fn_args(self, device, contiguous, batch_sz, dtype):
503
504
505
506
507
508
509
510
511
512
513
514
515
516
517
518
519
520
        n_in_channels = 6
        n_out_channels = 2
        n_weight_grps = 2
        n_offset_grps = 3

        stride = (2, 1)
        pad = (1, 0)
        dilation = (2, 1)

        stride_h, stride_w = stride
        pad_h, pad_w = pad
        dil_h, dil_w = dilation
        weight_h, weight_w = (3, 2)
        in_h, in_w = (5, 4)

        out_h = (in_h + 2 * pad_h - (dil_h * (weight_h - 1) + 1)) // stride_h + 1
        out_w = (in_w + 2 * pad_w - (dil_w * (weight_w - 1) + 1)) // stride_w + 1

521
        x = torch.rand(batch_sz, n_in_channels, in_h, in_w, device=device, dtype=dtype, requires_grad=True)
522
523

        offset = torch.randn(batch_sz, n_offset_grps * 2 * weight_h * weight_w, out_h, out_w,
524
                             device=device, dtype=dtype, requires_grad=True)
525
526

        weight = torch.randn(n_out_channels, n_in_channels // n_weight_grps, weight_h, weight_w,
527
                             device=device, dtype=dtype, requires_grad=True)
528

529
        bias = torch.randn(n_out_channels, device=device, dtype=dtype, requires_grad=True)
530
531
532
533
534
535
536
537

        if not contiguous:
            x = x.permute(0, 1, 3, 2).contiguous().permute(0, 1, 3, 2)
            offset = offset.permute(1, 3, 0, 2).contiguous().permute(2, 0, 3, 1)
            weight = weight.permute(3, 2, 0, 1).contiguous().permute(2, 3, 1, 0)

        return x, weight, offset, bias, stride, pad, dilation

538
539
    def _test_forward(self, device, contiguous, dtype=None):
        dtype = self.dtype if dtype is None else dtype
540
        for batch_sz in [0, 33]:
541
            self._test_forward_with_batchsize(device, contiguous, batch_sz, dtype)
542

543
544
    def _test_forward_with_batchsize(self, device, contiguous, batch_sz, dtype):
        x, _, offset, _, stride, padding, dilation = self.get_fn_args(device, contiguous, batch_sz, dtype)
545
546
547
548
549
550
        in_channels = 6
        out_channels = 2
        kernel_size = (3, 2)
        groups = 2

        layer = ops.DeformConv2d(in_channels, out_channels, kernel_size, stride=stride, padding=padding,
551
                                 dilation=dilation, groups=groups).to(device=x.device, dtype=dtype)
552
553
554
555
556
557
        res = layer(x, offset)

        weight = layer.weight.data
        bias = layer.bias.data
        expected = self.expected_fn(x, weight, offset, bias, stride=stride, padding=padding, dilation=dilation)

558
559
560
        tol = 1e-3 if dtype is torch.half else 1e-5
        self.assertTrue(torch.allclose(res.to(expected.dtype), expected, rtol=tol, atol=tol),
                        '\nres:\n{}\nexpected:\n{}'.format(res, expected))
561

562
563
564
565
566
        # test for wrong sizes
        with self.assertRaises(RuntimeError):
            wrong_offset = torch.rand_like(offset[:, :2])
            res = layer(x, wrong_offset)

567
    def _test_backward(self, device, contiguous):
568
569
570
571
        for batch_sz in [0, 33]:
            self._test_backward_with_batchsize(device, contiguous, batch_sz)

    def _test_backward_with_batchsize(self, device, contiguous, batch_sz):
572
        x, weight, offset, bias, stride, padding, dilation = self.get_fn_args(device, contiguous, batch_sz, self.dtype)
573
574
575
576
577
578
579
580
581
582
583
584
585
586

        def func(x_, offset_, weight_, bias_):
            return ops.deform_conv2d(x_, offset_, weight_, bias_, stride=stride, padding=padding, dilation=dilation)

        gradcheck(func, (x, offset, weight, bias), nondet_tol=1e-5)

        @torch.jit.script
        def script_func(x_, offset_, weight_, bias_, stride_, pad_, dilation_):
            # type: (Tensor, Tensor, Tensor, Tensor, Tuple[int, int], Tuple[int, int], Tuple[int, int]) -> Tensor
            return ops.deform_conv2d(x_, offset_, weight_, bias_, stride=stride_, padding=pad_, dilation=dilation_)

        gradcheck(lambda z, off, wei, bi: script_func(z, off, wei, bi, stride, padding, dilation),
                  (x, offset, weight, bias), nondet_tol=1e-5)

587
588
589
590
591
592
593
594
595
596
597
598
599
600
601
602
603
604
605
606
607
608
609
610
611
612
613
614
615
        # Test from https://github.com/pytorch/vision/issues/2598
        # Run on CUDA only
        if "cuda" in device.type:
            # compare grads computed on CUDA with grads computed on CPU
            true_cpu_grads = None

            init_weight = torch.randn(9, 9, 3, 3, requires_grad=True)
            img = torch.randn(8, 9, 1000, 110)
            offset = torch.rand(8, 2 * 3 * 3, 1000, 110)

            if not contiguous:
                img = img.permute(0, 1, 3, 2).contiguous().permute(0, 1, 3, 2)
                offset = offset.permute(1, 3, 0, 2).contiguous().permute(2, 0, 3, 1)
                weight = init_weight.permute(3, 2, 0, 1).contiguous().permute(2, 3, 1, 0)
            else:
                weight = init_weight

            for d in ["cpu", "cuda"]:

                out = ops.deform_conv2d(img.to(d), offset.to(d), weight.to(d), padding=1)
                out.mean().backward()
                if true_cpu_grads is None:
                    true_cpu_grads = init_weight.grad
                    self.assertTrue(true_cpu_grads is not None)
                else:
                    self.assertTrue(init_weight.grad is not None)
                    res_grads = init_weight.grad.to("cpu")
                    self.assertTrue(true_cpu_grads.allclose(res_grads))

616
617
618
619
620
621
    @unittest.skipIf(not torch.cuda.is_available(), "CUDA unavailable")
    def test_autocast(self):
        for dtype in (torch.float, torch.half):
            with torch.cuda.amp.autocast():
                self._test_forward(torch.device("cuda"), False, dtype=dtype)

622

623
624
625
class FrozenBNTester(unittest.TestCase):
    def test_frozenbatchnorm2d_repr(self):
        num_features = 32
626
627
        eps = 1e-5
        t = ops.misc.FrozenBatchNorm2d(num_features, eps=eps)
628
629

        # Check integrity of object __repr__ attribute
630
        expected_string = f"FrozenBatchNorm2d({num_features}, eps={eps})"
631
632
        self.assertEqual(t.__repr__(), expected_string)

633
634
635
636
637
638
639
640
641
    def test_frozenbatchnorm2d_eps(self):
        sample_size = (4, 32, 28, 28)
        x = torch.rand(sample_size)
        state_dict = dict(weight=torch.rand(sample_size[1]),
                          bias=torch.rand(sample_size[1]),
                          running_mean=torch.rand(sample_size[1]),
                          running_var=torch.rand(sample_size[1]),
                          num_batches_tracked=torch.tensor(100))

642
        # Check that default eps is equal to the one of BN
643
644
        fbn = ops.misc.FrozenBatchNorm2d(sample_size[1])
        fbn.load_state_dict(state_dict, strict=False)
645
        bn = torch.nn.BatchNorm2d(sample_size[1]).eval()
646
647
648
649
650
651
652
653
654
655
656
657
658
659
660
661
        bn.load_state_dict(state_dict)
        # Difference is expected to fall in an acceptable range
        self.assertTrue(torch.allclose(fbn(x), bn(x), atol=1e-6))

        # Check computation for eps > 0
        fbn = ops.misc.FrozenBatchNorm2d(sample_size[1], eps=1e-5)
        fbn.load_state_dict(state_dict, strict=False)
        bn = torch.nn.BatchNorm2d(sample_size[1], eps=1e-5).eval()
        bn.load_state_dict(state_dict)
        self.assertTrue(torch.allclose(fbn(x), bn(x), atol=1e-6))

    def test_frozenbatchnorm2d_n_arg(self):
        """Ensure a warning is thrown when passing `n` kwarg
        (remove this when support of `n` is dropped)"""
        self.assertWarns(DeprecationWarning, ops.misc.FrozenBatchNorm2d, 32, eps=1e-5, n=32)

662

663
664
665
666
667
668
669
670
671
672
673
674
675
676
677
678
679
680
681
682
683
684
685
686
687
class BoxConversionTester(unittest.TestCase):
    @staticmethod
    def _get_box_sequences():
        # Define here the argument type of `boxes` supported by region pooling operations
        box_tensor = torch.tensor([[0, 0, 0, 100, 100], [1, 0, 0, 100, 100]], dtype=torch.float)
        box_list = [torch.tensor([[0, 0, 100, 100]], dtype=torch.float),
                    torch.tensor([[0, 0, 100, 100]], dtype=torch.float)]
        box_tuple = tuple(box_list)
        return box_tensor, box_list, box_tuple

    def test_check_roi_boxes_shape(self):
        # Ensure common sequences of tensors are supported
        for box_sequence in self._get_box_sequences():
            self.assertIsNone(ops._utils.check_roi_boxes_shape(box_sequence))

    def test_convert_boxes_to_roi_format(self):
        # Ensure common sequences of tensors yield the same result
        ref_tensor = None
        for box_sequence in self._get_box_sequences():
            if ref_tensor is None:
                ref_tensor = box_sequence
            else:
                self.assertTrue(torch.equal(ref_tensor, ops._utils.convert_boxes_to_roi_format(box_sequence)))


688
689
690
691
692
693
694
695
696
697
698
699
700
701
702
703
704
705
706
707
708
709
710
711
712
713
714
715
716
717
718
719
720
721
722
723
724
725
726
727
728
729
730
731
732
733
734
735
736
737
738
739
740
741
742
743
744
745
746
747
748
749
750
751
752
753
754
755
756
757
758
759
760
761
762
763
764
765
766
767
class BoxTester(unittest.TestCase):
    def test_bbox_same(self):
        box_tensor = torch.tensor([[0, 0, 100, 100], [0, 0, 0, 0],
                                  [10, 15, 30, 35], [23, 35, 93, 95]], dtype=torch.float)

        exp_xyxy = torch.tensor([[0, 0, 100, 100], [0, 0, 0, 0],
                                [10, 15, 30, 35], [23, 35, 93, 95]], dtype=torch.float)

        box_same = ops.box_convert(box_tensor, in_fmt="xyxy", out_fmt="xyxy")
        self.assertEqual(exp_xyxy.size(), torch.Size([4, 4]))
        self.assertEqual(exp_xyxy.dtype, box_tensor.dtype)
        assert torch.all(torch.eq(box_same, exp_xyxy)).item()

        box_same = ops.box_convert(box_tensor, in_fmt="xywh", out_fmt="xywh")
        self.assertEqual(exp_xyxy.size(), torch.Size([4, 4]))
        self.assertEqual(exp_xyxy.dtype, box_tensor.dtype)
        assert torch.all(torch.eq(box_same, exp_xyxy)).item()

        box_same = ops.box_convert(box_tensor, in_fmt="cxcywh", out_fmt="cxcywh")
        self.assertEqual(exp_xyxy.size(), torch.Size([4, 4]))
        self.assertEqual(exp_xyxy.dtype, box_tensor.dtype)
        assert torch.all(torch.eq(box_same, exp_xyxy)).item()

    def test_bbox_xyxy_xywh(self):
        # Simple test convert boxes to xywh and back. Make sure they are same.
        # box_tensor is in x1 y1 x2 y2 format.
        box_tensor = torch.tensor([[0, 0, 100, 100], [0, 0, 0, 0],
                                  [10, 15, 30, 35], [23, 35, 93, 95]], dtype=torch.float)
        exp_xywh = torch.tensor([[0, 0, 100, 100], [0, 0, 0, 0],
                                [10, 15, 20, 20], [23, 35, 70, 60]], dtype=torch.float)

        box_xywh = ops.box_convert(box_tensor, in_fmt="xyxy", out_fmt="xywh")
        self.assertEqual(exp_xywh.size(), torch.Size([4, 4]))
        self.assertEqual(exp_xywh.dtype, box_tensor.dtype)
        assert torch.all(torch.eq(box_xywh, exp_xywh)).item()

        # Reverse conversion
        box_xyxy = ops.box_convert(box_xywh, in_fmt="xywh", out_fmt="xyxy")
        self.assertEqual(box_xyxy.size(), torch.Size([4, 4]))
        self.assertEqual(box_xyxy.dtype, box_tensor.dtype)
        assert torch.all(torch.eq(box_xyxy, box_tensor)).item()

    def test_bbox_xyxy_cxcywh(self):
        # Simple test convert boxes to xywh and back. Make sure they are same.
        # box_tensor is in x1 y1 x2 y2 format.
        box_tensor = torch.tensor([[0, 0, 100, 100], [0, 0, 0, 0],
                                  [10, 15, 30, 35], [23, 35, 93, 95]], dtype=torch.float)
        exp_cxcywh = torch.tensor([[50, 50, 100, 100], [0, 0, 0, 0],
                                  [20, 25, 20, 20], [58, 65, 70, 60]], dtype=torch.float)

        box_cxcywh = ops.box_convert(box_tensor, in_fmt="xyxy", out_fmt="cxcywh")
        self.assertEqual(exp_cxcywh.size(), torch.Size([4, 4]))
        self.assertEqual(exp_cxcywh.dtype, box_tensor.dtype)
        assert torch.all(torch.eq(box_cxcywh, exp_cxcywh)).item()

        # Reverse conversion
        box_xyxy = ops.box_convert(box_cxcywh, in_fmt="cxcywh", out_fmt="xyxy")
        self.assertEqual(box_xyxy.size(), torch.Size([4, 4]))
        self.assertEqual(box_xyxy.dtype, box_tensor.dtype)
        assert torch.all(torch.eq(box_xyxy, box_tensor)).item()

    def test_bbox_xywh_cxcywh(self):
        box_tensor = torch.tensor([[0, 0, 100, 100], [0, 0, 0, 0],
                                  [10, 15, 20, 20], [23, 35, 70, 60]], dtype=torch.float)

        # This is wrong
        exp_cxcywh = torch.tensor([[50, 50, 100, 100], [0, 0, 0, 0],
                                  [20, 25, 20, 20], [58, 65, 70, 60]], dtype=torch.float)

        box_cxcywh = ops.box_convert(box_tensor, in_fmt="xywh", out_fmt="cxcywh")
        self.assertEqual(exp_cxcywh.size(), torch.Size([4, 4]))
        self.assertEqual(exp_cxcywh.dtype, box_tensor.dtype)
        assert torch.all(torch.eq(box_cxcywh, exp_cxcywh)).item()

        # Reverse conversion
        box_xywh = ops.box_convert(box_cxcywh, in_fmt="cxcywh", out_fmt="xywh")
        self.assertEqual(box_xywh.size(), torch.Size([4, 4]))
        self.assertEqual(box_xywh.dtype, box_tensor.dtype)
        assert torch.all(torch.eq(box_xywh, box_tensor)).item()

768
769
770
771
772
773
774
775
776
777
778
779
780
    def test_bbox_invalid(self):
        box_tensor = torch.tensor([[0, 0, 100, 100], [0, 0, 0, 0],
                                  [10, 15, 20, 20], [23, 35, 70, 60]], dtype=torch.float)

        invalid_infmts = ["xwyh", "cxwyh"]
        invalid_outfmts = ["xwcx", "xhwcy"]
        for inv_infmt in invalid_infmts:
            for inv_outfmt in invalid_outfmts:
                self.assertRaises(ValueError, ops.box_convert, box_tensor, inv_infmt, inv_outfmt)

    def test_bbox_convert_jit(self):
        box_tensor = torch.tensor([[0, 0, 100, 100], [0, 0, 0, 0],
                                  [10, 15, 30, 35], [23, 35, 93, 95]], dtype=torch.float)
781

782
783
        scripted_fn = torch.jit.script(ops.box_convert)
        TOLERANCE = 1e-3
784

785
786
787
        box_xywh = ops.box_convert(box_tensor, in_fmt="xyxy", out_fmt="xywh")
        scripted_xywh = scripted_fn(box_tensor, 'xyxy', 'xywh')
        self.assertTrue((scripted_xywh - box_xywh).abs().max() < TOLERANCE)
788

789
790
791
        box_cxcywh = ops.box_convert(box_tensor, in_fmt="xyxy", out_fmt="cxcywh")
        scripted_cxcywh = scripted_fn(box_tensor, 'xyxy', 'cxcywh')
        self.assertTrue((scripted_cxcywh - box_cxcywh).abs().max() < TOLERANCE)
792
793


Aditya Oke's avatar
Aditya Oke committed
794
795
796
797
798
799
800
801
802
803
804
805
806
807
808
809
810
811
812
813
814
815
816
817
818
819
820
821
822
823
824
825
826
827
828
829
830
831
832
833
834
835
836
837
838
839
class BoxAreaTester(unittest.TestCase):
    def test_box_area(self):
        # A bounding box of area 10000 and a degenerate case
        box_tensor = torch.tensor([[0, 0, 100, 100], [0, 0, 0, 0]], dtype=torch.float)
        expected = torch.tensor([10000, 0])
        calc_area = ops.box_area(box_tensor)
        assert calc_area.size() == torch.Size([2])
        assert calc_area.dtype == box_tensor.dtype
        assert torch.all(torch.eq(calc_area, expected)).item() is True


class BoxIouTester(unittest.TestCase):
    def test_iou(self):
        # Boxes to test Iou
        boxes1 = torch.tensor([[0, 0, 100, 100], [0, 0, 50, 50], [200, 200, 300, 300]], dtype=torch.float)
        boxes2 = torch.tensor([[0, 0, 100, 100], [0, 0, 50, 50], [200, 200, 300, 300]], dtype=torch.float)

        # Expected IoU matrix for these boxes
        expected = torch.tensor([[1.0, 0.25, 0.0], [0.25, 1.0, 0.0], [0.0, 0.0, 1.0]])

        out = ops.box_iou(boxes1, boxes2)

        # Check if all elements of tensor are as expected.
        assert out.size() == torch.Size([3, 3])
        tolerance = 1e-4
        assert ((out - expected).abs().max() < tolerance).item() is True


class GenBoxIouTester(unittest.TestCase):
    def test_gen_iou(self):
        # Test Generalized IoU
        boxes1 = torch.tensor([[0, 0, 100, 100], [0, 0, 50, 50], [200, 200, 300, 300]], dtype=torch.float)
        boxes2 = torch.tensor([[0, 0, 100, 100], [0, 0, 50, 50], [200, 200, 300, 300]], dtype=torch.float)

        # Expected gIoU matrix for these boxes
        expected = torch.tensor([[1.0, 0.25, -0.7778], [0.25, 1.0, -0.8611],
                                [-0.7778, -0.8611, 1.0]])

        out = ops.generalized_box_iou(boxes1, boxes2)

        # Check if all elements of tensor are as expected.
        assert out.size() == torch.Size([3, 3])
        tolerance = 1e-4
        assert ((out - expected).abs().max() < tolerance).item() is True


840
841
if __name__ == '__main__':
    unittest.main()