yolov2.py 8.5 KB

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  1. import torch
  2. import torch.nn as nn
  3. import numpy as np
  4. from utils.misc import multiclass_nms
  5. from .yolov2_backbone import build_backbone
  6. from .yolov2_neck import build_neck
  7. from .yolov2_head import build_head
  8. # YOLOv2
  9. class YOLOv2(nn.Module):
  10. def __init__(self,
  11. cfg,
  12. device,
  13. num_classes=20,
  14. conf_thresh=0.01,
  15. nms_thresh=0.5,
  16. topk=100,
  17. trainable=False,
  18. deploy=False,
  19. nms_class_agnostic=False):
  20. super(YOLOv2, self).__init__()
  21. # ------------------- Basic parameters -------------------
  22. self.cfg = cfg # 模型配置文件
  23. self.device = device # cuda或者是cpu
  24. self.num_classes = num_classes # 类别的数量
  25. self.trainable = trainable # 训练的标记
  26. self.conf_thresh = conf_thresh # 得分阈值
  27. self.nms_thresh = nms_thresh # NMS阈值
  28. self.topk = topk # topk
  29. self.stride = 32 # 网络的最大步长
  30. self.deploy = deploy
  31. self.nms_class_agnostic = nms_class_agnostic
  32. # ------------------- Anchor box -------------------
  33. self.anchor_size = torch.as_tensor(cfg['anchor_size']).float().view(-1, 2) # [A, 2]
  34. self.num_anchors = self.anchor_size.shape[0]
  35. # ------------------- Network Structure -------------------
  36. ## 主干网络
  37. self.backbone, feat_dim = build_backbone(
  38. cfg['backbone'], trainable&cfg['pretrained'])
  39. ## 颈部网络
  40. self.neck = build_neck(cfg, feat_dim, out_dim=512)
  41. head_dim = self.neck.out_dim
  42. ## 检测头
  43. self.head = build_head(cfg, head_dim, head_dim, num_classes)
  44. ## 预测层
  45. self.obj_pred = nn.Conv2d(head_dim, 1*self.num_anchors, kernel_size=1)
  46. self.cls_pred = nn.Conv2d(head_dim, num_classes*self.num_anchors, kernel_size=1)
  47. self.reg_pred = nn.Conv2d(head_dim, 4*self.num_anchors, kernel_size=1)
  48. if self.trainable:
  49. self.init_bias()
  50. def init_bias(self):
  51. # init bias
  52. init_prob = 0.01
  53. bias_value = -torch.log(torch.tensor((1. - init_prob) / init_prob))
  54. nn.init.constant_(self.obj_pred.bias, bias_value)
  55. nn.init.constant_(self.cls_pred.bias, bias_value)
  56. def generate_anchors(self, fmp_size):
  57. """
  58. fmp_size: (List) [H, W]
  59. """
  60. fmp_h, fmp_w = fmp_size
  61. # generate grid cells
  62. anchor_y, anchor_x = torch.meshgrid([torch.arange(fmp_h), torch.arange(fmp_w)])
  63. anchor_xy = torch.stack([anchor_x, anchor_y], dim=-1).float().view(-1, 2)
  64. # [HW, 2] -> [HW, A, 2] -> [M, 2]
  65. anchor_xy = anchor_xy.unsqueeze(1).repeat(1, self.num_anchors, 1)
  66. anchor_xy = anchor_xy.view(-1, 2).to(self.device)
  67. # [A, 2] -> [1, A, 2] -> [HW, A, 2] -> [M, 2]
  68. anchor_wh = self.anchor_size.unsqueeze(0).repeat(fmp_h*fmp_w, 1, 1)
  69. anchor_wh = anchor_wh.view(-1, 2).to(self.device)
  70. anchors = torch.cat([anchor_xy, anchor_wh], dim=-1)
  71. return anchors
  72. def decode_boxes(self, anchors, reg_pred):
  73. """
  74. 将txtytwth转换为常用的x1y1x2y2形式。
  75. """
  76. # 计算预测边界框的中心点坐标和宽高
  77. pred_ctr = (torch.sigmoid(reg_pred[..., :2]) + anchors[..., :2]) * self.stride
  78. pred_wh = torch.exp(reg_pred[..., 2:]) * anchors[..., 2:]
  79. # 将所有bbox的中心带你坐标和宽高换算成x1y1x2y2形式
  80. pred_x1y1 = pred_ctr - pred_wh * 0.5
  81. pred_x2y2 = pred_ctr + pred_wh * 0.5
  82. pred_box = torch.cat([pred_x1y1, pred_x2y2], dim=-1)
  83. return pred_box
  84. def postprocess(self, obj_pred, cls_pred, reg_pred, anchors):
  85. """
  86. Input:
  87. obj_pred: (Tensor) [H*W*A, 1]
  88. cls_pred: (Tensor) [H*W*A, C]
  89. reg_pred: (Tensor) [H*W*A, 4]
  90. """
  91. # (H x W x A x C,)
  92. scores = torch.sqrt(obj_pred.sigmoid() * cls_pred.sigmoid()).flatten()
  93. # Keep top k top scoring indices only.
  94. num_topk = min(self.topk, reg_pred.size(0))
  95. # torch.sort is actually faster than .topk (at least on GPUs)
  96. predicted_prob, topk_idxs = scores.sort(descending=True)
  97. topk_scores = predicted_prob[:num_topk]
  98. topk_idxs = topk_idxs[:num_topk]
  99. # filter out the proposals with low confidence score
  100. keep_idxs = topk_scores > self.conf_thresh
  101. scores = topk_scores[keep_idxs]
  102. topk_idxs = topk_idxs[keep_idxs]
  103. anchor_idxs = torch.div(topk_idxs, self.num_classes, rounding_mode='floor')
  104. labels = topk_idxs % self.num_classes
  105. reg_pred = reg_pred[anchor_idxs]
  106. anchors = anchors[anchor_idxs]
  107. # 解算边界框, 并归一化边界框: [H*W*A, 4]
  108. bboxes = self.decode_boxes(anchors, reg_pred)
  109. # to cpu & numpy
  110. scores = scores.cpu().numpy()
  111. labels = labels.cpu().numpy()
  112. bboxes = bboxes.cpu().numpy()
  113. # nms
  114. scores, labels, bboxes = multiclass_nms(
  115. scores, labels, bboxes, self.nms_thresh, self.num_classes, self.nms_class_agnostic)
  116. return bboxes, scores, labels
  117. @torch.no_grad()
  118. def inference(self, x):
  119. bs = x.shape[0]
  120. # 主干网络
  121. feat = self.backbone(x)
  122. # 颈部网络
  123. feat = self.neck(feat)
  124. # 检测头
  125. cls_feat, reg_feat = self.head(feat)
  126. # 预测层
  127. obj_pred = self.obj_pred(reg_feat)
  128. cls_pred = self.cls_pred(cls_feat)
  129. reg_pred = self.reg_pred(reg_feat)
  130. fmp_size = obj_pred.shape[-2:]
  131. # anchors: [M, 2]
  132. anchors = self.generate_anchors(fmp_size)
  133. # 对 pred 的size做一些view调整,便于后续的处理
  134. # [B, A*C, H, W] -> [B, H, W, A*C] -> [B, H*W*A, C]
  135. obj_pred = obj_pred.permute(0, 2, 3, 1).contiguous().view(bs, -1, 1)
  136. cls_pred = cls_pred.permute(0, 2, 3, 1).contiguous().view(bs, -1, self.num_classes)
  137. reg_pred = reg_pred.permute(0, 2, 3, 1).contiguous().view(bs, -1, 4)
  138. # 测试时,笔者默认batch是1,
  139. # 因此,我们不需要用batch这个维度,用[0]将其取走。
  140. obj_pred = obj_pred[0] # [H*W*A, 1]
  141. cls_pred = cls_pred[0] # [H*W*A, NC]
  142. reg_pred = reg_pred[0] # [H*W*A, 4]
  143. if self.deploy:
  144. scores = torch.sqrt(obj_pred.sigmoid() * cls_pred.sigmoid())
  145. bboxes = self.decode_boxes(anchors, reg_pred)
  146. # [n_anchors_all, 4 + C]
  147. outputs = torch.cat([bboxes, scores], dim=-1)
  148. return outputs
  149. else:
  150. # post process
  151. bboxes, scores, labels = self.postprocess(
  152. obj_pred, cls_pred, reg_pred, anchors)
  153. return bboxes, scores, labels
  154. def forward(self, x):
  155. if not self.trainable:
  156. return self.inference(x)
  157. else:
  158. bs = x.shape[0]
  159. # 主干网络
  160. feat = self.backbone(x)
  161. # 颈部网络
  162. feat = self.neck(feat)
  163. # 检测头
  164. cls_feat, reg_feat = self.head(feat)
  165. # 预测层
  166. obj_pred = self.obj_pred(reg_feat)
  167. cls_pred = self.cls_pred(cls_feat)
  168. reg_pred = self.reg_pred(reg_feat)
  169. fmp_size = obj_pred.shape[-2:]
  170. # anchors: [M, 2]
  171. anchors = self.generate_anchors(fmp_size)
  172. # 对 pred 的size做一些view调整,便于后续的处理
  173. # [B, A*C, H, W] -> [B, H, W, A*C] -> [B, H*W*A, C]
  174. obj_pred = obj_pred.permute(0, 2, 3, 1).contiguous().view(bs, -1, 1)
  175. cls_pred = cls_pred.permute(0, 2, 3, 1).contiguous().view(bs, -1, self.num_classes)
  176. reg_pred = reg_pred.permute(0, 2, 3, 1).contiguous().view(bs, -1, 4)
  177. # decode bbox
  178. box_pred = self.decode_boxes(anchors, reg_pred)
  179. # 网络输出
  180. outputs = {"pred_obj": obj_pred, # (Tensor) [B, M, 1]
  181. "pred_cls": cls_pred, # (Tensor) [B, M, C]
  182. "pred_box": box_pred, # (Tensor) [B, M, 4]
  183. "stride": self.stride, # (Int)
  184. "fmp_size": fmp_size # (List) [fmp_h, fmp_w]
  185. }
  186. return outputs