roi_heads.py 32.7 KB
Newer Older
1
import torch
2
import torchvision
3
4

import torch.nn.functional as F
eellison's avatar
eellison committed
5
from torch import nn, Tensor
6
7
8

from torchvision.ops import boxes as box_ops
from torchvision.ops import misc as misc_nn_ops
eellison's avatar
eellison committed
9

10
11
12
13
from torchvision.ops import roi_align

from . import _utils as det_utils

eellison's avatar
eellison committed
14
15
from torch.jit.annotations import Optional, List, Dict, Tuple

16
17

def fastrcnn_loss(class_logits, box_regression, labels, regression_targets):
eellison's avatar
eellison committed
18
    # type: (Tensor, Tensor, List[Tensor], List[Tensor])
19
20
21
22
23
24
    """
    Computes the loss for Faster R-CNN.

    Arguments:
        class_logits (Tensor)
        box_regression (Tensor)
25
26
        labels (list[BoxList])
        regression_targets (Tensor)
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56

    Returns:
        classification_loss (Tensor)
        box_loss (Tensor)
    """

    labels = torch.cat(labels, dim=0)
    regression_targets = torch.cat(regression_targets, dim=0)

    classification_loss = F.cross_entropy(class_logits, labels)

    # get indices that correspond to the regression targets for
    # the corresponding ground truth labels, to be used with
    # advanced indexing
    sampled_pos_inds_subset = torch.nonzero(labels > 0).squeeze(1)
    labels_pos = labels[sampled_pos_inds_subset]
    N, num_classes = class_logits.shape
    box_regression = box_regression.reshape(N, -1, 4)

    box_loss = F.smooth_l1_loss(
        box_regression[sampled_pos_inds_subset, labels_pos],
        regression_targets[sampled_pos_inds_subset],
        reduction="sum",
    )
    box_loss = box_loss / labels.numel()

    return classification_loss, box_loss


def maskrcnn_inference(x, labels):
eellison's avatar
eellison committed
57
    # type: (Tensor, List[Tensor])
58
59
60
61
62
63
64
65
    """
    From the results of the CNN, post process the masks
    by taking the mask corresponding to the class with max
    probability (which are of fixed size and directly output
    by the CNN) and return the masks in the mask field of the BoxList.

    Arguments:
        x (Tensor): the mask logits
66
        labels (list[BoxList]): bounding boxes that are used as
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
            reference, one for ech image

    Returns:
        results (list[BoxList]): one BoxList for each image, containing
            the extra field mask
    """
    mask_prob = x.sigmoid()

    # select masks coresponding to the predicted classes
    num_masks = x.shape[0]
    boxes_per_image = [len(l) for l in labels]
    labels = torch.cat(labels)
    index = torch.arange(num_masks, device=labels.device)
    mask_prob = mask_prob[index, labels][:, None]

82
83
    if len(boxes_per_image) == 1:
        # TODO : remove when dynamic split supported in ONNX
eellison's avatar
eellison committed
84
85
        # and remove assignment to mask_prob_list, just assign to mask_prob
        mask_prob_list = [mask_prob]
86
    else:
eellison's avatar
eellison committed
87
        mask_prob_list = mask_prob.split(boxes_per_image, dim=0)
88

eellison's avatar
eellison committed
89
    return mask_prob_list
90
91
92


def project_masks_on_boxes(gt_masks, boxes, matched_idxs, M):
eellison's avatar
eellison committed
93
    # type: (Tensor, Tensor, Tensor, int)
94
95
96
97
98
99
100
101
102
103
    """
    Given segmentation masks and the bounding boxes corresponding
    to the location of the masks in the image, this function
    crops and resizes the masks in the position defined by the
    boxes. This prepares the masks for them to be fed to the
    loss computation as the targets.
    """
    matched_idxs = matched_idxs.to(boxes)
    rois = torch.cat([matched_idxs[:, None], boxes], dim=1)
    gt_masks = gt_masks[:, None].to(rois)
eellison's avatar
eellison committed
104
    return roi_align(gt_masks, rois, (M, M), 1.)[:, 0]
105
106


107
def maskrcnn_loss(mask_logits, proposals, gt_masks, gt_labels, mask_matched_idxs):
eellison's avatar
eellison committed
108
    # type: (Tensor, List[Tensor], List[Tensor], List[Tensor], List[Tensor])
109
110
111
112
113
114
115
116
117
118
    """
    Arguments:
        proposals (list[BoxList])
        mask_logits (Tensor)
        targets (list[BoxList])

    Return:
        mask_loss (Tensor): scalar tensor containing the loss
    """

119
    discretization_size = mask_logits.shape[-1]
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138
139
140
    labels = [l[idxs] for l, idxs in zip(gt_labels, mask_matched_idxs)]
    mask_targets = [
        project_masks_on_boxes(m, p, i, discretization_size)
        for m, p, i in zip(gt_masks, proposals, mask_matched_idxs)
    ]

    labels = torch.cat(labels, dim=0)
    mask_targets = torch.cat(mask_targets, dim=0)

    # torch.mean (in binary_cross_entropy_with_logits) doesn't
    # accept empty tensors, so handle it separately
    if mask_targets.numel() == 0:
        return mask_logits.sum() * 0

    mask_loss = F.binary_cross_entropy_with_logits(
        mask_logits[torch.arange(labels.shape[0], device=labels.device), labels], mask_targets
    )
    return mask_loss


def keypoints_to_heatmap(keypoints, rois, heatmap_size):
eellison's avatar
eellison committed
141
    # type: (Tensor, Tensor, int)
142
143
144
145
146
147
148
149
150
151
152
153
154
155
156
157
158
159
160
161
162
    offset_x = rois[:, 0]
    offset_y = rois[:, 1]
    scale_x = heatmap_size / (rois[:, 2] - rois[:, 0])
    scale_y = heatmap_size / (rois[:, 3] - rois[:, 1])

    offset_x = offset_x[:, None]
    offset_y = offset_y[:, None]
    scale_x = scale_x[:, None]
    scale_y = scale_y[:, None]

    x = keypoints[..., 0]
    y = keypoints[..., 1]

    x_boundary_inds = x == rois[:, 2][:, None]
    y_boundary_inds = y == rois[:, 3][:, None]

    x = (x - offset_x) * scale_x
    x = x.floor().long()
    y = (y - offset_y) * scale_y
    y = y.floor().long()

eellison's avatar
eellison committed
163
164
    x[x_boundary_inds] = torch.tensor(heatmap_size - 1)
    y[y_boundary_inds] = torch.tensor(heatmap_size - 1)
165
166
167
168
169
170
171
172
173
174
175

    valid_loc = (x >= 0) & (y >= 0) & (x < heatmap_size) & (y < heatmap_size)
    vis = keypoints[..., 2] > 0
    valid = (valid_loc & vis).long()

    lin_ind = y * heatmap_size + x
    heatmaps = lin_ind * valid

    return heatmaps, valid


176
177
178
179
180
181
182
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
215
216
217
218
219
220
221
222
223
224
225
226
227
def _onnx_heatmaps_to_keypoints(maps, maps_i, roi_map_width, roi_map_height,
                                widths_i, heights_i, offset_x_i, offset_y_i):
    num_keypoints = torch.scalar_tensor(maps.size(1), dtype=torch.int64)

    width_correction = widths_i / roi_map_width
    height_correction = heights_i / roi_map_height

    roi_map = torch.nn.functional.interpolate(
        maps_i[None], size=(int(roi_map_height), int(roi_map_width)), mode='bicubic', align_corners=False)[0]

    w = torch.scalar_tensor(roi_map.size(2), dtype=torch.int64)
    pos = roi_map.reshape(num_keypoints, -1).argmax(dim=1)

    x_int = (pos % w)
    y_int = ((pos - x_int) / w)

    x = (torch.tensor(0.5, dtype=torch.float32) + x_int.to(dtype=torch.float32)) * \
        width_correction.to(dtype=torch.float32)
    y = (torch.tensor(0.5, dtype=torch.float32) + y_int.to(dtype=torch.float32)) * \
        height_correction.to(dtype=torch.float32)

    xy_preds_i_0 = x + offset_x_i.to(dtype=torch.float32)
    xy_preds_i_1 = y + offset_y_i.to(dtype=torch.float32)
    xy_preds_i_2 = torch.ones((xy_preds_i_1.shape), dtype=torch.float32)
    xy_preds_i = torch.stack([xy_preds_i_0.to(dtype=torch.float32),
                              xy_preds_i_1.to(dtype=torch.float32),
                              xy_preds_i_2.to(dtype=torch.float32)], 0)

    # TODO: simplify when indexing without rank will be supported by ONNX
    end_scores_i = roi_map.index_select(1, y_int.to(dtype=torch.int64)) \
        .index_select(2, x_int.to(dtype=torch.int64))[:num_keypoints, 0, 0]
    return xy_preds_i, end_scores_i


@torch.jit.script
def _onnx_heatmaps_to_keypoints_loop(maps, rois, widths_ceil, heights_ceil,
                                     widths, heights, offset_x, offset_y, num_keypoints):
    xy_preds = torch.zeros((0, 3, int(num_keypoints)), dtype=torch.float32, device=maps.device)
    end_scores = torch.zeros((0, int(num_keypoints)), dtype=torch.float32, device=maps.device)

    for i in range(int(rois.size(0))):
        xy_preds_i, end_scores_i = _onnx_heatmaps_to_keypoints(maps, maps[i],
                                                               widths_ceil[i], heights_ceil[i],
                                                               widths[i], heights[i],
                                                               offset_x[i], offset_y[i])
        xy_preds = torch.cat((xy_preds.to(dtype=torch.float32),
                              xy_preds_i.unsqueeze(0).to(dtype=torch.float32)), 0)
        end_scores = torch.cat((end_scores.to(dtype=torch.float32),
                                end_scores_i.to(dtype=torch.float32).unsqueeze(0)), 0)
    return xy_preds, end_scores


228
229
230
231
232
233
234
235
236
237
238
239
240
241
242
243
244
245
246
247
248
def heatmaps_to_keypoints(maps, rois):
    """Extract predicted keypoint locations from heatmaps. Output has shape
    (#rois, 4, #keypoints) with the 4 rows corresponding to (x, y, logit, prob)
    for each keypoint.
    """
    # This function converts a discrete image coordinate in a HEATMAP_SIZE x
    # HEATMAP_SIZE image to a continuous keypoint coordinate. We maintain
    # consistency with keypoints_to_heatmap_labels by using the conversion from
    # Heckbert 1990: c = d + 0.5, where d is a discrete coordinate and c is a
    # continuous coordinate.
    offset_x = rois[:, 0]
    offset_y = rois[:, 1]

    widths = rois[:, 2] - rois[:, 0]
    heights = rois[:, 3] - rois[:, 1]
    widths = widths.clamp(min=1)
    heights = heights.clamp(min=1)
    widths_ceil = widths.ceil()
    heights_ceil = heights.ceil()

    num_keypoints = maps.shape[1]
249
250
251
252
253
254
255
256

    if torchvision._is_tracing():
        xy_preds, end_scores = _onnx_heatmaps_to_keypoints_loop(maps, rois,
                                                                widths_ceil, heights_ceil, widths, heights,
                                                                offset_x, offset_y,
                                                                torch.scalar_tensor(num_keypoints, dtype=torch.int64))
        return xy_preds.permute(0, 2, 1), end_scores

257
258
259
260
261
262
263
264
265
266
267
268
    xy_preds = torch.zeros((len(rois), 3, num_keypoints), dtype=torch.float32, device=maps.device)
    end_scores = torch.zeros((len(rois), num_keypoints), dtype=torch.float32, device=maps.device)
    for i in range(len(rois)):
        roi_map_width = int(widths_ceil[i].item())
        roi_map_height = int(heights_ceil[i].item())
        width_correction = widths[i] / roi_map_width
        height_correction = heights[i] / roi_map_height
        roi_map = torch.nn.functional.interpolate(
            maps[i][None], size=(roi_map_height, roi_map_width), mode='bicubic', align_corners=False)[0]
        # roi_map_probs = scores_to_probs(roi_map.copy())
        w = roi_map.shape[2]
        pos = roi_map.reshape(num_keypoints, -1).argmax(dim=1)
eellison's avatar
eellison committed
269

270
        x_int = pos % w
271
        y_int = (pos - x_int) // w
272
273
274
275
276
277
278
279
280
281
282
283
        # assert (roi_map_probs[k, y_int, x_int] ==
        #         roi_map_probs[k, :, :].max())
        x = (x_int.float() + 0.5) * width_correction
        y = (y_int.float() + 0.5) * height_correction
        xy_preds[i, 0, :] = x + offset_x[i]
        xy_preds[i, 1, :] = y + offset_y[i]
        xy_preds[i, 2, :] = 1
        end_scores[i, :] = roi_map[torch.arange(num_keypoints), y_int, x_int]

    return xy_preds.permute(0, 2, 1), end_scores


284
def keypointrcnn_loss(keypoint_logits, proposals, gt_keypoints, keypoint_matched_idxs):
eellison's avatar
eellison committed
285
    # type: (Tensor, List[Tensor], List[Tensor], List[Tensor])
286
287
288
    N, K, H, W = keypoint_logits.shape
    assert H == W
    discretization_size = H
289
290
291
292
293
294
295
296
297
298
299
300
301
302
303
304
305
306
307
308
309
310
311
312
313
314
    heatmaps = []
    valid = []
    for proposals_per_image, gt_kp_in_image, midx in zip(proposals, gt_keypoints, keypoint_matched_idxs):
        kp = gt_kp_in_image[midx]
        heatmaps_per_image, valid_per_image = keypoints_to_heatmap(
            kp, proposals_per_image, discretization_size
        )
        heatmaps.append(heatmaps_per_image.view(-1))
        valid.append(valid_per_image.view(-1))

    keypoint_targets = torch.cat(heatmaps, dim=0)
    valid = torch.cat(valid, dim=0).to(dtype=torch.uint8)
    valid = torch.nonzero(valid).squeeze(1)

    # torch.mean (in binary_cross_entropy_with_logits) does'nt
    # accept empty tensors, so handle it sepaartely
    if keypoint_targets.numel() == 0 or len(valid) == 0:
        return keypoint_logits.sum() * 0

    keypoint_logits = keypoint_logits.view(N * K, H * W)

    keypoint_loss = F.cross_entropy(keypoint_logits[valid], keypoint_targets[valid])
    return keypoint_loss


def keypointrcnn_inference(x, boxes):
eellison's avatar
eellison committed
315
    # type: (Tensor, List[Tensor])
316
317
318
    kp_probs = []
    kp_scores = []

319
320
321
322
323
324
325
    boxes_per_image = [box.size(0) for box in boxes]

    if len(boxes_per_image) == 1:
        # TODO : remove when dynamic split supported in ONNX
        kp_prob, scores = heatmaps_to_keypoints(x, boxes[0])
        return [kp_prob], [scores]

326
327
328
329
330
331
332
333
334
335
    x2 = x.split(boxes_per_image, dim=0)

    for xx, bb in zip(x2, boxes):
        kp_prob, scores = heatmaps_to_keypoints(xx, bb)
        kp_probs.append(kp_prob)
        kp_scores.append(scores)

    return kp_probs, kp_scores


336
def _onnx_expand_boxes(boxes, scale):
eellison's avatar
eellison committed
337
    # type: (Tensor, float)
338
339
340
341
342
343
344
345
346
347
348
349
350
351
352
353
    w_half = (boxes[:, 2] - boxes[:, 0]) * .5
    h_half = (boxes[:, 3] - boxes[:, 1]) * .5
    x_c = (boxes[:, 2] + boxes[:, 0]) * .5
    y_c = (boxes[:, 3] + boxes[:, 1]) * .5

    w_half = w_half.to(dtype=torch.float32) * scale
    h_half = h_half.to(dtype=torch.float32) * scale

    boxes_exp0 = x_c - w_half
    boxes_exp1 = y_c - h_half
    boxes_exp2 = x_c + w_half
    boxes_exp3 = y_c + h_half
    boxes_exp = torch.stack((boxes_exp0, boxes_exp1, boxes_exp2, boxes_exp3), 1)
    return boxes_exp


354
355
# the next two functions should be merged inside Masker
# but are kept here for the moment while we need them
356
# temporarily for paste_mask_in_image
357
def expand_boxes(boxes, scale):
eellison's avatar
eellison committed
358
    # type: (Tensor, float)
359
360
    if torchvision._is_tracing():
        return _onnx_expand_boxes(boxes, scale)
361
362
363
364
365
366
367
368
369
370
371
372
373
374
375
376
    w_half = (boxes[:, 2] - boxes[:, 0]) * .5
    h_half = (boxes[:, 3] - boxes[:, 1]) * .5
    x_c = (boxes[:, 2] + boxes[:, 0]) * .5
    y_c = (boxes[:, 3] + boxes[:, 1]) * .5

    w_half *= scale
    h_half *= scale

    boxes_exp = torch.zeros_like(boxes)
    boxes_exp[:, 0] = x_c - w_half
    boxes_exp[:, 2] = x_c + w_half
    boxes_exp[:, 1] = y_c - h_half
    boxes_exp[:, 3] = y_c + h_half
    return boxes_exp


eellison's avatar
eellison committed
377
378
379
380
381
382
@torch.jit.unused
def expand_masks_tracing_scale(M, padding):
    # type: (int, int) -> float
    return torch.tensor(M + 2 * padding).to(torch.float32) / torch.tensor(M).to(torch.float32)


383
def expand_masks(mask, padding):
eellison's avatar
eellison committed
384
    # type: (Tensor, int)
385
    M = mask.shape[-1]
eellison's avatar
eellison committed
386
387
    if torch._C._get_tracing_state():  # could not import is_tracing(), not sure why
        scale = expand_masks_tracing_scale(M, padding)
388
389
    else:
        scale = float(M + 2 * padding) / M
390
391
392
393
394
    padded_mask = torch.nn.functional.pad(mask, (padding,) * 4)
    return padded_mask, scale


def paste_mask_in_image(mask, box, im_h, im_w):
eellison's avatar
eellison committed
395
    # type: (Tensor, Tensor, int, int)
396
397
398
399
400
401
402
403
404
405
406
407
408
409
410
411
412
413
414
415
416
417
418
419
420
    TO_REMOVE = 1
    w = int(box[2] - box[0] + TO_REMOVE)
    h = int(box[3] - box[1] + TO_REMOVE)
    w = max(w, 1)
    h = max(h, 1)

    # Set shape to [batchxCxHxW]
    mask = mask.expand((1, 1, -1, -1))

    # Resize mask
    mask = misc_nn_ops.interpolate(mask, size=(h, w), mode='bilinear', align_corners=False)
    mask = mask[0][0]

    im_mask = torch.zeros((im_h, im_w), dtype=mask.dtype, device=mask.device)
    x_0 = max(box[0], 0)
    x_1 = min(box[2] + 1, im_w)
    y_0 = max(box[1], 0)
    y_1 = min(box[3] + 1, im_h)

    im_mask[y_0:y_1, x_0:x_1] = mask[
        (y_0 - box[1]):(y_1 - box[1]), (x_0 - box[0]):(x_1 - box[0])
    ]
    return im_mask


421
422
423
424
425
426
427
428
429
430
431
432
433
434
435
436
437
438
439
440
441
442
443
444
445
446
447
448
449
450
451
452
453
454
455
456
457
458
459
460
461
462
463
464
465
466
467
468
469
470
471
def _onnx_paste_mask_in_image(mask, box, im_h, im_w):
    one = torch.ones(1, dtype=torch.int64)
    zero = torch.zeros(1, dtype=torch.int64)

    w = (box[2] - box[0] + one)
    h = (box[3] - box[1] + one)
    w = torch.max(torch.cat((w, one)))
    h = torch.max(torch.cat((h, one)))

    # Set shape to [batchxCxHxW]
    mask = mask.expand((1, 1, mask.size(0), mask.size(1)))

    # Resize mask
    mask = torch.nn.functional.interpolate(mask, size=(int(h), int(w)), mode='bilinear', align_corners=False)
    mask = mask[0][0]

    x_0 = torch.max(torch.cat((box[0].unsqueeze(0), zero)))
    x_1 = torch.min(torch.cat((box[2].unsqueeze(0) + one, im_w.unsqueeze(0))))
    y_0 = torch.max(torch.cat((box[1].unsqueeze(0), zero)))
    y_1 = torch.min(torch.cat((box[3].unsqueeze(0) + one, im_h.unsqueeze(0))))

    unpaded_im_mask = mask[(y_0 - box[1]):(y_1 - box[1]),
                           (x_0 - box[0]):(x_1 - box[0])]

    # TODO : replace below with a dynamic padding when support is added in ONNX

    # pad y
    zeros_y0 = torch.zeros(y_0, unpaded_im_mask.size(1))
    zeros_y1 = torch.zeros(im_h - y_1, unpaded_im_mask.size(1))
    concat_0 = torch.cat((zeros_y0,
                          unpaded_im_mask.to(dtype=torch.float32),
                          zeros_y1), 0)[0:im_h, :]
    # pad x
    zeros_x0 = torch.zeros(concat_0.size(0), x_0)
    zeros_x1 = torch.zeros(concat_0.size(0), im_w - x_1)
    im_mask = torch.cat((zeros_x0,
                         concat_0,
                         zeros_x1), 1)[:, :im_w]
    return im_mask


@torch.jit.script
def _onnx_paste_masks_in_image_loop(masks, boxes, im_h, im_w):
    res_append = torch.zeros(0, im_h, im_w)
    for i in range(masks.size(0)):
        mask_res = _onnx_paste_mask_in_image(masks[i][0], boxes[i], im_h, im_w)
        mask_res = mask_res.unsqueeze(0)
        res_append = torch.cat((res_append, mask_res))
    return res_append


472
def paste_masks_in_image(masks, boxes, img_shape, padding=1):
eellison's avatar
eellison committed
473
    # type: (Tensor, Tensor, Tuple[int, int], int)
474
    masks, scale = expand_masks(masks, padding=padding)
475
    boxes = expand_boxes(boxes, scale).to(dtype=torch.int64)
476
    im_h, im_w = img_shape
477
478
479
480
481

    if torchvision._is_tracing():
        return _onnx_paste_masks_in_image_loop(masks, boxes,
                                               torch.scalar_tensor(im_h, dtype=torch.int64),
                                               torch.scalar_tensor(im_w, dtype=torch.int64))[:, None]
482
483
484
485
486
    res = [
        paste_mask_in_image(m[0], b, im_h, im_w)
        for m, b in zip(masks, boxes)
    ]
    if len(res) > 0:
eellison's avatar
eellison committed
487
        ret = torch.stack(res, dim=0)[:, None]
488
    else:
eellison's avatar
eellison committed
489
490
        ret = masks.new_empty((0, 1, im_h, im_w))
    return ret
491
492
493


class RoIHeads(torch.nn.Module):
eellison's avatar
eellison committed
494
495
496
497
498
499
    __annotations__ = {
        'box_coder': det_utils.BoxCoder,
        'proposal_matcher': det_utils.Matcher,
        'fg_bg_sampler': det_utils.BalancedPositiveNegativeSampler,
    }

500
501
502
503
504
505
506
507
508
509
510
511
512
513
514
515
516
517
518
519
520
521
522
523
524
525
526
527
528
529
530
531
532
533
534
535
536
537
538
539
540
541
542
543
544
545
546
547
548
549
550
551
552
553
554
555
556
557
558
559
560
561
562
563
564
565
566
567
568
569
570
571
    def __init__(self,
                 box_roi_pool,
                 box_head,
                 box_predictor,
                 # Faster R-CNN training
                 fg_iou_thresh, bg_iou_thresh,
                 batch_size_per_image, positive_fraction,
                 bbox_reg_weights,
                 # Faster R-CNN inference
                 score_thresh,
                 nms_thresh,
                 detections_per_img,
                 # Mask
                 mask_roi_pool=None,
                 mask_head=None,
                 mask_predictor=None,
                 keypoint_roi_pool=None,
                 keypoint_head=None,
                 keypoint_predictor=None,
                 ):
        super(RoIHeads, self).__init__()

        self.box_similarity = box_ops.box_iou
        # assign ground-truth boxes for each proposal
        self.proposal_matcher = det_utils.Matcher(
            fg_iou_thresh,
            bg_iou_thresh,
            allow_low_quality_matches=False)

        self.fg_bg_sampler = det_utils.BalancedPositiveNegativeSampler(
            batch_size_per_image,
            positive_fraction)

        if bbox_reg_weights is None:
            bbox_reg_weights = (10., 10., 5., 5.)
        self.box_coder = det_utils.BoxCoder(bbox_reg_weights)

        self.box_roi_pool = box_roi_pool
        self.box_head = box_head
        self.box_predictor = box_predictor

        self.score_thresh = score_thresh
        self.nms_thresh = nms_thresh
        self.detections_per_img = detections_per_img

        self.mask_roi_pool = mask_roi_pool
        self.mask_head = mask_head
        self.mask_predictor = mask_predictor

        self.keypoint_roi_pool = keypoint_roi_pool
        self.keypoint_head = keypoint_head
        self.keypoint_predictor = keypoint_predictor

    def has_mask(self):
        if self.mask_roi_pool is None:
            return False
        if self.mask_head is None:
            return False
        if self.mask_predictor is None:
            return False
        return True

    def has_keypoint(self):
        if self.keypoint_roi_pool is None:
            return False
        if self.keypoint_head is None:
            return False
        if self.keypoint_predictor is None:
            return False
        return True

    def assign_targets_to_proposals(self, proposals, gt_boxes, gt_labels):
eellison's avatar
eellison committed
572
        # type: (List[Tensor], List[Tensor], List[Tensor])
573
574
575
576
        matched_idxs = []
        labels = []
        for proposals_in_image, gt_boxes_in_image, gt_labels_in_image in zip(proposals, gt_boxes, gt_labels):

577
578
579
580
581
582
583
584
585
586
587
588
589
590
591
592
593
594
595
596
597
598
599
600
601
602
            if gt_boxes_in_image.numel() == 0:
                # Background image
                device = proposals_in_image.device
                clamped_matched_idxs_in_image = torch.zeros(
                    (proposals_in_image.shape[0],), dtype=torch.int64, device=device
                )
                labels_in_image = torch.zeros(
                    (proposals_in_image.shape[0],), dtype=torch.int64, device=device
                )
            else:
                #  set to self.box_similarity when https://github.com/pytorch/pytorch/issues/27495 lands
                match_quality_matrix = box_ops.box_iou(gt_boxes_in_image, proposals_in_image)
                matched_idxs_in_image = self.proposal_matcher(match_quality_matrix)

                clamped_matched_idxs_in_image = matched_idxs_in_image.clamp(min=0)

                labels_in_image = gt_labels_in_image[clamped_matched_idxs_in_image]
                labels_in_image = labels_in_image.to(dtype=torch.int64)

                # Label background (below the low threshold)
                bg_inds = matched_idxs_in_image == self.proposal_matcher.BELOW_LOW_THRESHOLD
                labels_in_image[bg_inds] = torch.tensor(0)

                # Label ignore proposals (between low and high thresholds)
                ignore_inds = matched_idxs_in_image == self.proposal_matcher.BETWEEN_THRESHOLDS
                labels_in_image[ignore_inds] = torch.tensor(-1)  # -1 is ignored by sampler
603
604
605
606
607
608

            matched_idxs.append(clamped_matched_idxs_in_image)
            labels.append(labels_in_image)
        return matched_idxs, labels

    def subsample(self, labels):
eellison's avatar
eellison committed
609
        # type: (List[Tensor])
610
611
612
613
614
615
616
617
618
619
        sampled_pos_inds, sampled_neg_inds = self.fg_bg_sampler(labels)
        sampled_inds = []
        for img_idx, (pos_inds_img, neg_inds_img) in enumerate(
            zip(sampled_pos_inds, sampled_neg_inds)
        ):
            img_sampled_inds = torch.nonzero(pos_inds_img | neg_inds_img).squeeze(1)
            sampled_inds.append(img_sampled_inds)
        return sampled_inds

    def add_gt_proposals(self, proposals, gt_boxes):
eellison's avatar
eellison committed
620
        # type: (List[Tensor], List[Tensor])
621
622
623
624
625
626
627
        proposals = [
            torch.cat((proposal, gt_box))
            for proposal, gt_box in zip(proposals, gt_boxes)
        ]

        return proposals

eellison's avatar
eellison committed
628
629
630
631
632
633
634
    def DELTEME_all(self, the_list):
        # type: (List[bool])
        for i in the_list:
            if not i:
                return False
        return True

635
    def check_targets(self, targets):
eellison's avatar
eellison committed
636
        # type: (Optional[List[Dict[str, Tensor]]])
637
        assert targets is not None
eellison's avatar
eellison committed
638
639
640
641
        assert self.DELTEME_all(["boxes" in t for t in targets])
        assert self.DELTEME_all(["labels" in t for t in targets])
        if self.has_mask():
            assert self.DELTEME_all(["masks" in t for t in targets])
642
643

    def select_training_samples(self, proposals, targets):
eellison's avatar
eellison committed
644
        # type: (List[Tensor], Optional[List[Dict[str, Tensor]]])
645
        self.check_targets(targets)
eellison's avatar
eellison committed
646
        assert targets is not None
647
        dtype = proposals[0].dtype
648
649
        device = proposals[0].device

650
        gt_boxes = [t["boxes"].to(dtype) for t in targets]
651
652
653
654
655
656
657
658
659
660
661
662
663
664
665
666
        gt_labels = [t["labels"] for t in targets]

        # append ground-truth bboxes to propos
        proposals = self.add_gt_proposals(proposals, gt_boxes)

        # get matching gt indices for each proposal
        matched_idxs, labels = self.assign_targets_to_proposals(proposals, gt_boxes, gt_labels)
        # sample a fixed proportion of positive-negative proposals
        sampled_inds = self.subsample(labels)
        matched_gt_boxes = []
        num_images = len(proposals)
        for img_id in range(num_images):
            img_sampled_inds = sampled_inds[img_id]
            proposals[img_id] = proposals[img_id][img_sampled_inds]
            labels[img_id] = labels[img_id][img_sampled_inds]
            matched_idxs[img_id] = matched_idxs[img_id][img_sampled_inds]
667
668
669
670
671

            gt_boxes_in_image = gt_boxes[img_id]
            if gt_boxes_in_image.numel() == 0:
                gt_boxes_in_image = torch.zeros((1, 4), dtype=dtype, device=device)
            matched_gt_boxes.append(gt_boxes_in_image[matched_idxs[img_id]])
672
673
674
675
676

        regression_targets = self.box_coder.encode(matched_gt_boxes, proposals)
        return proposals, matched_idxs, labels, regression_targets

    def postprocess_detections(self, class_logits, box_regression, proposals, image_shapes):
eellison's avatar
eellison committed
677
        # type: (Tensor, Tensor, List[Tensor], List[Tuple[int, int]])
678
679
680
        device = class_logits.device
        num_classes = class_logits.shape[-1]

681
        boxes_per_image = [boxes_in_image.shape[0] for boxes_in_image in proposals]
682
683
684
685
        pred_boxes = self.box_coder.decode(box_regression, proposals)

        pred_scores = F.softmax(class_logits, -1)

686
687
        pred_boxes_list = pred_boxes.split(boxes_per_image, 0)
        pred_scores_list = pred_scores.split(boxes_per_image, 0)
688
689
690
691

        all_boxes = []
        all_scores = []
        all_labels = []
eellison's avatar
eellison committed
692
        for boxes, scores, image_shape in zip(pred_boxes_list, pred_scores_list, image_shapes):
693
694
695
696
697
698
699
700
701
702
703
704
705
            boxes = box_ops.clip_boxes_to_image(boxes, image_shape)

            # create labels for each prediction
            labels = torch.arange(num_classes, device=device)
            labels = labels.view(1, -1).expand_as(scores)

            # remove predictions with the background label
            boxes = boxes[:, 1:]
            scores = scores[:, 1:]
            labels = labels[:, 1:]

            # batch everything, by making every class prediction be a separate instance
            boxes = boxes.reshape(-1, 4)
706
707
            scores = scores.reshape(-1)
            labels = labels.reshape(-1)
708
709
710
711
712

            # remove low scoring boxes
            inds = torch.nonzero(scores > self.score_thresh).squeeze(1)
            boxes, scores, labels = boxes[inds], scores[inds], labels[inds]

713
714
715
716
            # remove empty boxes
            keep = box_ops.remove_small_boxes(boxes, min_size=1e-2)
            boxes, scores, labels = boxes[keep], scores[keep], labels[keep]

717
718
719
720
721
722
723
724
725
726
727
728
729
            # non-maximum suppression, independently done per class
            keep = box_ops.batched_nms(boxes, scores, labels, self.nms_thresh)
            # keep only topk scoring predictions
            keep = keep[:self.detections_per_img]
            boxes, scores, labels = boxes[keep], scores[keep], labels[keep]

            all_boxes.append(boxes)
            all_scores.append(scores)
            all_labels.append(labels)

        return all_boxes, all_scores, all_labels

    def forward(self, features, proposals, image_shapes, targets=None):
eellison's avatar
eellison committed
730
        # type: (Dict[str, Tensor], List[Tensor], List[Tuple[int, int]], Optional[List[Dict[str, Tensor]]])
731
732
733
734
735
736
737
        """
        Arguments:
            features (List[Tensor])
            proposals (List[Tensor[N, 4]])
            image_shapes (List[Tuple[H, W]])
            targets (List[Dict])
        """
738
739
        if targets is not None:
            for t in targets:
eellison's avatar
eellison committed
740
741
742
                # TODO: https://github.com/pytorch/pytorch/issues/26731
                floating_point_types = (torch.float, torch.double, torch.half)
                assert t["boxes"].dtype in floating_point_types, 'target boxes must of float type'
743
                assert t["labels"].dtype == torch.int64, 'target labels must of int64 type'
eellison's avatar
eellison committed
744
                if self.has_keypoint():
745
746
                    assert t["keypoints"].dtype == torch.float32, 'target keypoints must of float type'

747
748
        if self.training:
            proposals, matched_idxs, labels, regression_targets = self.select_training_samples(proposals, targets)
eellison's avatar
eellison committed
749
750
751
752
        else:
            labels = None
            regression_targets = None
            matched_idxs = None
753
754
755
756
757

        box_features = self.box_roi_pool(features, proposals, image_shapes)
        box_features = self.box_head(box_features)
        class_logits, box_regression = self.box_predictor(box_features)

eellison's avatar
eellison committed
758
759
        result = torch.jit.annotate(List[Dict[str, torch.Tensor]], [])
        losses = {}
760
        if self.training:
eellison's avatar
eellison committed
761
            assert labels is not None and regression_targets is not None
762
763
            loss_classifier, loss_box_reg = fastrcnn_loss(
                class_logits, box_regression, labels, regression_targets)
eellison's avatar
eellison committed
764
765
766
767
            losses = {
                "loss_classifier": loss_classifier,
                "loss_box_reg": loss_box_reg
            }
768
769
770
771
772
        else:
            boxes, scores, labels = self.postprocess_detections(class_logits, box_regression, proposals, image_shapes)
            num_images = len(boxes)
            for i in range(num_images):
                result.append(
eellison's avatar
eellison committed
773
774
775
776
777
                    {
                        "boxes": boxes[i],
                        "labels": labels[i],
                        "scores": scores[i],
                    }
778
779
                )

eellison's avatar
eellison committed
780
        if self.has_mask():
781
782
            mask_proposals = [p["boxes"] for p in result]
            if self.training:
eellison's avatar
eellison committed
783
                assert matched_idxs is not None
784
785
786
787
788
789
790
791
                # during training, only focus on positive boxes
                num_images = len(proposals)
                mask_proposals = []
                pos_matched_idxs = []
                for img_id in range(num_images):
                    pos = torch.nonzero(labels[img_id] > 0).squeeze(1)
                    mask_proposals.append(proposals[img_id][pos])
                    pos_matched_idxs.append(matched_idxs[img_id][pos])
eellison's avatar
eellison committed
792
793
            else:
                pos_matched_idxs = None
794

eellison's avatar
eellison committed
795
796
797
798
799
800
801
            if self.mask_roi_pool is not None:
                mask_features = self.mask_roi_pool(features, mask_proposals, image_shapes)
                mask_features = self.mask_head(mask_features)
                mask_logits = self.mask_predictor(mask_features)
            else:
                mask_logits = torch.tensor(0)
                raise Exception("Expected mask_roi_pool to be not None")
802
803
804

            loss_mask = {}
            if self.training:
eellison's avatar
eellison committed
805
806
807
808
                assert targets is not None
                assert pos_matched_idxs is not None
                assert mask_logits is not None

809
810
                gt_masks = [t["masks"] for t in targets]
                gt_labels = [t["labels"] for t in targets]
eellison's avatar
eellison committed
811
                rcnn_loss_mask = maskrcnn_loss(
812
                    mask_logits, mask_proposals,
813
                    gt_masks, gt_labels, pos_matched_idxs)
eellison's avatar
eellison committed
814
815
816
                loss_mask = {
                    "loss_mask": rcnn_loss_mask
                }
817
818
819
820
            else:
                labels = [r["labels"] for r in result]
                masks_probs = maskrcnn_inference(mask_logits, labels)
                for mask_prob, r in zip(masks_probs, result):
821
                    r["masks"] = mask_prob
822
823
824

            losses.update(loss_mask)

eellison's avatar
eellison committed
825
826
827
828
        # keep none checks in if conditional so torchscript will conditionally
        # compile each branch
        if self.keypoint_roi_pool is not None and self.keypoint_head is not None \
                and self.keypoint_predictor is not None:
829
830
831
832
833
834
            keypoint_proposals = [p["boxes"] for p in result]
            if self.training:
                # during training, only focus on positive boxes
                num_images = len(proposals)
                keypoint_proposals = []
                pos_matched_idxs = []
eellison's avatar
eellison committed
835
                assert matched_idxs is not None
836
837
838
839
                for img_id in range(num_images):
                    pos = torch.nonzero(labels[img_id] > 0).squeeze(1)
                    keypoint_proposals.append(proposals[img_id][pos])
                    pos_matched_idxs.append(matched_idxs[img_id][pos])
eellison's avatar
eellison committed
840
841
            else:
                pos_matched_idxs = None
842
843
844
845
846
847
848

            keypoint_features = self.keypoint_roi_pool(features, keypoint_proposals, image_shapes)
            keypoint_features = self.keypoint_head(keypoint_features)
            keypoint_logits = self.keypoint_predictor(keypoint_features)

            loss_keypoint = {}
            if self.training:
eellison's avatar
eellison committed
849
850
851
                assert targets is not None
                assert pos_matched_idxs is not None

852
                gt_keypoints = [t["keypoints"] for t in targets]
eellison's avatar
eellison committed
853
                rcnn_loss_keypoint = keypointrcnn_loss(
854
                    keypoint_logits, keypoint_proposals,
855
                    gt_keypoints, pos_matched_idxs)
eellison's avatar
eellison committed
856
857
858
                loss_keypoint = {
                    "loss_keypoint": rcnn_loss_keypoint
                }
859
            else:
eellison's avatar
eellison committed
860
861
862
                assert keypoint_logits is not None
                assert keypoint_proposals is not None

863
864
865
866
867
868
869
870
                keypoints_probs, kp_scores = keypointrcnn_inference(keypoint_logits, keypoint_proposals)
                for keypoint_prob, kps, r in zip(keypoints_probs, kp_scores, result):
                    r["keypoints"] = keypoint_prob
                    r["keypoints_scores"] = kps

            losses.update(loss_keypoint)

        return result, losses