| import torch
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| import numpy as np
|
|
|
|
|
| def point_form(boxes):
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| """ Convert prior_boxes to (xmin, ymin, xmax, ymax)
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| representation for comparison to point form ground truth data.
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| Args:
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| boxes: (tensor) center-size default boxes from priorbox layers.
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| Return:
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| boxes: (tensor) Converted xmin, ymin, xmax, ymax form of boxes.
|
| """
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| return torch.cat((boxes[:, :2] - boxes[:, 2:]/2,
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| boxes[:, :2] + boxes[:, 2:]/2), 1)
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|
|
|
|
| def center_size(boxes):
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| """ Convert prior_boxes to (cx, cy, w, h)
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| representation for comparison to center-size form ground truth data.
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| Args:
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| boxes: (tensor) point_form boxes
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| Return:
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| boxes: (tensor) Converted xmin, ymin, xmax, ymax form of boxes.
|
| """
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| return torch.cat((boxes[:, 2:] + boxes[:, :2])/2,
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| boxes[:, 2:] - boxes[:, :2], 1)
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|
|
|
|
| def intersect(box_a, box_b):
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| """ We resize both tensors to [A,B,2] without new malloc:
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| [A,2] -> [A,1,2] -> [A,B,2]
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| [B,2] -> [1,B,2] -> [A,B,2]
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| Then we compute the area of intersect between box_a and box_b.
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| Args:
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| box_a: (tensor) bounding boxes, Shape: [A,4].
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| box_b: (tensor) bounding boxes, Shape: [B,4].
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| Return:
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| (tensor) intersection area, Shape: [A,B].
|
| """
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| A = box_a.size(0)
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| B = box_b.size(0)
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| max_xy = torch.min(box_a[:, 2:].unsqueeze(1).expand(A, B, 2),
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| box_b[:, 2:].unsqueeze(0).expand(A, B, 2))
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| min_xy = torch.max(box_a[:, :2].unsqueeze(1).expand(A, B, 2),
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| box_b[:, :2].unsqueeze(0).expand(A, B, 2))
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| inter = torch.clamp((max_xy - min_xy), min=0)
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| return inter[:, :, 0] * inter[:, :, 1]
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|
|
|
|
| def jaccard(box_a, box_b):
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| """Compute the jaccard overlap of two sets of boxes. The jaccard overlap
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| is simply the intersection over union of two boxes. Here we operate on
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| ground truth boxes and default boxes.
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| E.g.:
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| A ∩ B / A ∪ B = A ∩ B / (area(A) + area(B) - A ∩ B)
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| Args:
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| box_a: (tensor) Ground truth bounding boxes, Shape: [num_objects,4]
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| box_b: (tensor) Prior boxes from priorbox layers, Shape: [num_priors,4]
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| Return:
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| jaccard overlap: (tensor) Shape: [box_a.size(0), box_b.size(0)]
|
| """
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| inter = intersect(box_a, box_b)
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| area_a = ((box_a[:, 2]-box_a[:, 0]) *
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| (box_a[:, 3]-box_a[:, 1])).unsqueeze(1).expand_as(inter)
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| area_b = ((box_b[:, 2]-box_b[:, 0]) *
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| (box_b[:, 3]-box_b[:, 1])).unsqueeze(0).expand_as(inter)
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| union = area_a + area_b - inter
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| return inter / union
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|
|
|
|
| def matrix_iou(a, b):
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| """
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| return iou of a and b, numpy version for data augenmentation
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| """
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| lt = np.maximum(a[:, np.newaxis, :2], b[:, :2])
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| rb = np.minimum(a[:, np.newaxis, 2:], b[:, 2:])
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|
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| area_i = np.prod(rb - lt, axis=2) * (lt < rb).all(axis=2)
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| area_a = np.prod(a[:, 2:] - a[:, :2], axis=1)
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| area_b = np.prod(b[:, 2:] - b[:, :2], axis=1)
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| return area_i / (area_a[:, np.newaxis] + area_b - area_i)
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|
|
|
|
| def matrix_iof(a, b):
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| """
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| return iof of a and b, numpy version for data augenmentation
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| """
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| lt = np.maximum(a[:, np.newaxis, :2], b[:, :2])
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| rb = np.minimum(a[:, np.newaxis, 2:], b[:, 2:])
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|
|
| area_i = np.prod(rb - lt, axis=2) * (lt < rb).all(axis=2)
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| area_a = np.prod(a[:, 2:] - a[:, :2], axis=1)
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| return area_i / np.maximum(area_a[:, np.newaxis], 1)
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|
|
|
|
| def match(threshold, truths, priors, variances, labels, landms, loc_t, conf_t, landm_t, idx):
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| """Match each prior box with the ground truth box of the highest jaccard
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| overlap, encode the bounding boxes, then return the matched indices
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| corresponding to both confidence and location preds.
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| Args:
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| threshold: (float) The overlap threshold used when mathing boxes.
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| truths: (tensor) Ground truth boxes, Shape: [num_obj, 4].
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| priors: (tensor) Prior boxes from priorbox layers, Shape: [n_priors,4].
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| variances: (tensor) Variances corresponding to each prior coord,
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| Shape: [num_priors, 4].
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| labels: (tensor) All the class labels for the image, Shape: [num_obj].
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| landms: (tensor) Ground truth landms, Shape [num_obj, 10].
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| loc_t: (tensor) Tensor to be filled w/ endcoded location targets.
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| conf_t: (tensor) Tensor to be filled w/ matched indices for conf preds.
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| landm_t: (tensor) Tensor to be filled w/ endcoded landm targets.
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| idx: (int) current batch index
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| Return:
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| The matched indices corresponding to 1)location 2)confidence 3)landm preds.
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| """
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|
|
| overlaps = jaccard(
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| truths,
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| point_form(priors)
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| )
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|
|
|
|
| best_prior_overlap, best_prior_idx = overlaps.max(1, keepdim=True)
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|
|
|
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| valid_gt_idx = best_prior_overlap[:, 0] >= 0.2
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| best_prior_idx_filter = best_prior_idx[valid_gt_idx, :]
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| if best_prior_idx_filter.shape[0] <= 0:
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| loc_t[idx] = 0
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| conf_t[idx] = 0
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| return
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|
|
|
|
| best_truth_overlap, best_truth_idx = overlaps.max(0, keepdim=True)
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| best_truth_idx.squeeze_(0)
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| best_truth_overlap.squeeze_(0)
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| best_prior_idx.squeeze_(1)
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| best_prior_idx_filter.squeeze_(1)
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| best_prior_overlap.squeeze_(1)
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| best_truth_overlap.index_fill_(0, best_prior_idx_filter, 2)
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|
|
|
|
| for j in range(best_prior_idx.size(0)):
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| best_truth_idx[best_prior_idx[j]] = j
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| matches = truths[best_truth_idx]
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| conf = labels[best_truth_idx]
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| conf[best_truth_overlap < threshold] = 0
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| loc = encode(matches, priors, variances)
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|
|
| matches_landm = landms[best_truth_idx]
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| landm = encode_landm(matches_landm, priors, variances)
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| loc_t[idx] = loc
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| conf_t[idx] = conf
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| landm_t[idx] = landm
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|
|
|
|
| def encode(matched, priors, variances):
|
| """Encode the variances from the priorbox layers into the ground truth boxes
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| we have matched (based on jaccard overlap) with the prior boxes.
|
| Args:
|
| matched: (tensor) Coords of ground truth for each prior in point-form
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| Shape: [num_priors, 4].
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| priors: (tensor) Prior boxes in center-offset form
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| Shape: [num_priors,4].
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| variances: (list[float]) Variances of priorboxes
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| Return:
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| encoded boxes (tensor), Shape: [num_priors, 4]
|
| """
|
|
|
|
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| g_cxcy = (matched[:, :2] + matched[:, 2:])/2 - priors[:, :2]
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|
|
| g_cxcy /= (variances[0] * priors[:, 2:])
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|
|
| g_wh = (matched[:, 2:] - matched[:, :2]) / priors[:, 2:]
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| g_wh = torch.log(g_wh) / variances[1]
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|
|
| return torch.cat([g_cxcy, g_wh], 1)
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|
|
| def encode_landm(matched, priors, variances):
|
| """Encode the variances from the priorbox layers into the ground truth boxes
|
| we have matched (based on jaccard overlap) with the prior boxes.
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| Args:
|
| matched: (tensor) Coords of ground truth for each prior in point-form
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| Shape: [num_priors, 10].
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| priors: (tensor) Prior boxes in center-offset form
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| Shape: [num_priors,4].
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| variances: (list[float]) Variances of priorboxes
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| Return:
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| encoded landm (tensor), Shape: [num_priors, 10]
|
| """
|
|
|
|
|
| matched = torch.reshape(matched, (matched.size(0), 5, 2))
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| priors_cx = priors[:, 0].unsqueeze(1).expand(matched.size(0), 5).unsqueeze(2)
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| priors_cy = priors[:, 1].unsqueeze(1).expand(matched.size(0), 5).unsqueeze(2)
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| priors_w = priors[:, 2].unsqueeze(1).expand(matched.size(0), 5).unsqueeze(2)
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| priors_h = priors[:, 3].unsqueeze(1).expand(matched.size(0), 5).unsqueeze(2)
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| priors = torch.cat([priors_cx, priors_cy, priors_w, priors_h], dim=2)
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| g_cxcy = matched[:, :, :2] - priors[:, :, :2]
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|
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| g_cxcy /= (variances[0] * priors[:, :, 2:])
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|
|
| g_cxcy = g_cxcy.reshape(g_cxcy.size(0), -1)
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|
|
| return g_cxcy
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|
|
|
|
|
|
| def decode(loc, priors, variances):
|
| """Decode locations from predictions using priors to undo
|
| the encoding we did for offset regression at test time.
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| Args:
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| loc (tensor): location predictions for loc layers,
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| Shape: [num_priors,4]
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| priors (tensor): Prior boxes in center-offset form.
|
| Shape: [num_priors,4].
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| variances: (list[float]) Variances of priorboxes
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| Return:
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| decoded bounding box predictions
|
| """
|
|
|
| boxes = torch.cat((
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| priors[:, :2] + loc[:, :2] * variances[0] * priors[:, 2:],
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| priors[:, 2:] * torch.exp(loc[:, 2:] * variances[1])), 1)
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| boxes[:, :2] -= boxes[:, 2:] / 2
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| boxes[:, 2:] += boxes[:, :2]
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| return boxes
|
|
|
| def decode_landm(pre, priors, variances):
|
| """Decode landm from predictions using priors to undo
|
| the encoding we did for offset regression at test time.
|
| Args:
|
| pre (tensor): landm predictions for loc layers,
|
| Shape: [num_priors,10]
|
| priors (tensor): Prior boxes in center-offset form.
|
| Shape: [num_priors,4].
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| variances: (list[float]) Variances of priorboxes
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| Return:
|
| decoded landm predictions
|
| """
|
| landms = torch.cat((priors[:, :2] + pre[:, :2] * variances[0] * priors[:, 2:],
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| priors[:, :2] + pre[:, 2:4] * variances[0] * priors[:, 2:],
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| priors[:, :2] + pre[:, 4:6] * variances[0] * priors[:, 2:],
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| priors[:, :2] + pre[:, 6:8] * variances[0] * priors[:, 2:],
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| priors[:, :2] + pre[:, 8:10] * variances[0] * priors[:, 2:],
|
| ), dim=1)
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| return landms
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|
|
|
|
| def log_sum_exp(x):
|
| """Utility function for computing log_sum_exp while determining
|
| This will be used to determine unaveraged confidence loss across
|
| all examples in a batch.
|
| Args:
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| x (Variable(tensor)): conf_preds from conf layers
|
| """
|
| x_max = x.data.max()
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| return torch.log(torch.sum(torch.exp(x-x_max), 1, keepdim=True)) + x_max
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|
|
|
|
|
|
|
|
|
|
| def nms(boxes, scores, overlap=0.5, top_k=200):
|
| """Apply non-maximum suppression at test time to avoid detecting too many
|
| overlapping bounding boxes for a given object.
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| Args:
|
| boxes: (tensor) The location preds for the img, Shape: [num_priors,4].
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| scores: (tensor) The class predscores for the img, Shape:[num_priors].
|
| overlap: (float) The overlap thresh for suppressing unnecessary boxes.
|
| top_k: (int) The Maximum number of box preds to consider.
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| Return:
|
| The indices of the kept boxes with respect to num_priors.
|
| """
|
|
|
| keep = torch.Tensor(scores.size(0)).fill_(0).long()
|
| if boxes.numel() == 0:
|
| return keep
|
| x1 = boxes[:, 0]
|
| y1 = boxes[:, 1]
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| x2 = boxes[:, 2]
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| y2 = boxes[:, 3]
|
| area = torch.mul(x2 - x1, y2 - y1)
|
| v, idx = scores.sort(0)
|
|
|
| idx = idx[-top_k:]
|
| xx1 = boxes.new()
|
| yy1 = boxes.new()
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| xx2 = boxes.new()
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| yy2 = boxes.new()
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| w = boxes.new()
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| h = boxes.new()
|
|
|
|
|
| count = 0
|
| while idx.numel() > 0:
|
| i = idx[-1]
|
|
|
| keep[count] = i
|
| count += 1
|
| if idx.size(0) == 1:
|
| break
|
| idx = idx[:-1]
|
|
|
| torch.index_select(x1, 0, idx, out=xx1)
|
| torch.index_select(y1, 0, idx, out=yy1)
|
| torch.index_select(x2, 0, idx, out=xx2)
|
| torch.index_select(y2, 0, idx, out=yy2)
|
|
|
| xx1 = torch.clamp(xx1, min=x1[i])
|
| yy1 = torch.clamp(yy1, min=y1[i])
|
| xx2 = torch.clamp(xx2, max=x2[i])
|
| yy2 = torch.clamp(yy2, max=y2[i])
|
| w.resize_as_(xx2)
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| h.resize_as_(yy2)
|
| w = xx2 - xx1
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| h = yy2 - yy1
|
|
|
| w = torch.clamp(w, min=0.0)
|
| h = torch.clamp(h, min=0.0)
|
| inter = w*h
|
|
|
| rem_areas = torch.index_select(area, 0, idx)
|
| union = (rem_areas - inter) + area[i]
|
| IoU = inter/union
|
|
|
| idx = idx[IoU.le(overlap)]
|
| return keep, count
|
|
|
|
|
|
|