yolov6_head.py 5.7 KB

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  1. import torch
  2. import torch.nn as nn
  3. try:
  4. from .yolov6_basic import BasicConv
  5. except:
  6. from yolov6_basic import BasicConv
  7. ## Single-level Detection Head
  8. class DetHead(nn.Module):
  9. def __init__(self,
  10. in_dim :int = 256,
  11. cls_head_dim :int = 256,
  12. reg_head_dim :int = 256,
  13. num_cls_head :int = 2,
  14. num_reg_head :int = 2,
  15. act_type :str = "silu",
  16. norm_type :str = "BN",
  17. depthwise :bool = False):
  18. super().__init__()
  19. # --------- Basic Parameters ----------
  20. self.in_dim = in_dim
  21. self.num_cls_head = num_cls_head
  22. self.num_reg_head = num_reg_head
  23. self.act_type = act_type
  24. self.norm_type = norm_type
  25. self.depthwise = depthwise
  26. # --------- Network Parameters ----------
  27. ## cls head
  28. cls_feats = []
  29. self.cls_head_dim = cls_head_dim
  30. for i in range(num_cls_head):
  31. if i == 0:
  32. cls_feats.append(
  33. BasicConv(in_dim, self.cls_head_dim,
  34. kernel_size=3, padding=1, stride=1,
  35. act_type=act_type,
  36. norm_type=norm_type,
  37. depthwise=depthwise)
  38. )
  39. else:
  40. cls_feats.append(
  41. BasicConv(self.cls_head_dim, self.cls_head_dim,
  42. kernel_size=3, padding=1, stride=1,
  43. act_type=act_type,
  44. norm_type=norm_type,
  45. depthwise=depthwise)
  46. )
  47. ## reg head
  48. reg_feats = []
  49. self.reg_head_dim = reg_head_dim
  50. for i in range(num_reg_head):
  51. if i == 0:
  52. reg_feats.append(
  53. BasicConv(in_dim, self.reg_head_dim,
  54. kernel_size=3, padding=1, stride=1,
  55. act_type=act_type,
  56. norm_type=norm_type,
  57. depthwise=depthwise)
  58. )
  59. else:
  60. reg_feats.append(
  61. BasicConv(self.reg_head_dim, self.reg_head_dim,
  62. kernel_size=3, padding=1, stride=1,
  63. act_type=act_type,
  64. norm_type=norm_type,
  65. depthwise=depthwise)
  66. )
  67. self.cls_feats = nn.Sequential(*cls_feats)
  68. self.reg_feats = nn.Sequential(*reg_feats)
  69. self.init_weights()
  70. def init_weights(self):
  71. """Initialize the parameters."""
  72. for m in self.modules():
  73. if isinstance(m, torch.nn.Conv2d):
  74. # In order to be consistent with the source code,
  75. # reset the Conv2d initialization parameters
  76. m.reset_parameters()
  77. def forward(self, x):
  78. """
  79. in_feats: (Tensor) [B, C, H, W]
  80. """
  81. cls_feats = self.cls_feats(x)
  82. reg_feats = self.reg_feats(x)
  83. return cls_feats, reg_feats
  84. ## Multi-level Detection Head
  85. class Yolov6DetHead(nn.Module):
  86. def __init__(self, cfg, in_dims):
  87. super().__init__()
  88. ## ----------- Network Parameters -----------
  89. self.multi_level_heads = nn.ModuleList(
  90. [DetHead(in_dim = in_dims[level],
  91. cls_head_dim = in_dims[level],
  92. reg_head_dim = in_dims[level],
  93. num_cls_head = cfg.num_cls_head,
  94. num_reg_head = cfg.num_reg_head,
  95. act_type = cfg.head_act,
  96. norm_type = cfg.head_norm,
  97. depthwise = cfg.head_depthwise)
  98. for level in range(cfg.num_levels)
  99. ])
  100. # --------- Basic Parameters ----------
  101. self.in_dims = in_dims
  102. def forward(self, feats):
  103. """
  104. feats: List[(Tensor)] [[B, C, H, W], ...]
  105. """
  106. cls_feats = []
  107. reg_feats = []
  108. for feat, head in zip(feats, self.multi_level_heads):
  109. # ---------------- Pred ----------------
  110. cls_feat, reg_feat = head(feat)
  111. cls_feats.append(cls_feat)
  112. reg_feats.append(reg_feat)
  113. return cls_feats, reg_feats
  114. if __name__=='__main__':
  115. import time
  116. from thop import profile
  117. # Model config
  118. # YOLOv3-Base config
  119. class Yolov6BaseConfig(object):
  120. def __init__(self) -> None:
  121. # ---------------- Model config ----------------
  122. self.out_stride = 32
  123. self.max_stride = 32
  124. self.num_levels = 3
  125. ## Head
  126. self.head_act = 'lrelu'
  127. self.head_norm = 'BN'
  128. self.head_depthwise = False
  129. self.head_dim = 256
  130. self.num_cls_head = 2
  131. self.num_reg_head = 2
  132. cfg = Yolov6BaseConfig()
  133. # Build a head
  134. pyramid_feats = [torch.randn(1, cfg.head_dim, 80, 80),
  135. torch.randn(1, cfg.head_dim, 40, 40),
  136. torch.randn(1, cfg.head_dim, 20, 20)]
  137. head = Yolov6DetHead(cfg, [cfg.head_dim]*3)
  138. # Inference
  139. t0 = time.time()
  140. cls_feats, reg_feats = head(pyramid_feats)
  141. t1 = time.time()
  142. print('Time: ', t1 - t0)
  143. for cls_f, reg_f in zip(cls_feats, reg_feats):
  144. print(cls_f.shape, reg_f.shape)
  145. print('==============================')
  146. flops, params = profile(head, inputs=(pyramid_feats, ), verbose=False)
  147. print('==============================')
  148. print('GFLOPs : {:.2f}'.format(flops / 1e9 * 2))
  149. print('Params : {:.2f} M'.format(params / 1e6))