yolo_free_v2_basic.py 5.6 KB

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  1. import numpy as np
  2. import torch
  3. import torch.nn as nn
  4. # ---------------------------- 2D CNN ----------------------------
  5. class SiLU(nn.Module):
  6. """export-friendly version of nn.SiLU()"""
  7. @staticmethod
  8. def forward(x):
  9. return x * torch.sigmoid(x)
  10. def get_conv2d(c1, c2, k, p, s, d, g, bias=False):
  11. conv = nn.Conv2d(c1, c2, k, stride=s, padding=p, dilation=d, groups=g, bias=bias)
  12. return conv
  13. def get_activation(act_type=None):
  14. if act_type == 'relu':
  15. return nn.ReLU(inplace=True)
  16. elif act_type == 'lrelu':
  17. return nn.LeakyReLU(0.1, inplace=True)
  18. elif act_type == 'mish':
  19. return nn.Mish(inplace=True)
  20. elif act_type == 'silu':
  21. return nn.SiLU(inplace=True)
  22. elif act_type is None:
  23. return nn.Identity()
  24. def get_norm(norm_type, dim):
  25. if norm_type == 'BN':
  26. return nn.BatchNorm2d(dim)
  27. elif norm_type == 'GN':
  28. return nn.GroupNorm(num_groups=32, num_channels=dim)
  29. # Basic conv layer
  30. class Conv(nn.Module):
  31. def __init__(self,
  32. c1, # in channels
  33. c2, # out channels
  34. k=1, # kernel size
  35. p=0, # padding
  36. s=1, # padding
  37. d=1, # dilation
  38. act_type='lrelu', # activation
  39. norm_type='BN', # normalization
  40. depthwise=False):
  41. super(Conv, self).__init__()
  42. convs = []
  43. add_bias = False if norm_type else True
  44. p = p if d == 1 else d
  45. if depthwise:
  46. convs.append(get_conv2d(c1, c1, k=k, p=p, s=s, d=d, g=c1, bias=add_bias))
  47. # depthwise conv
  48. if norm_type:
  49. convs.append(get_norm(norm_type, c1))
  50. if act_type:
  51. convs.append(get_activation(act_type))
  52. # pointwise conv
  53. convs.append(get_conv2d(c1, c2, k=1, p=0, s=1, d=d, g=1, bias=add_bias))
  54. if norm_type:
  55. convs.append(get_norm(norm_type, c2))
  56. if act_type:
  57. convs.append(get_activation(act_type))
  58. else:
  59. convs.append(get_conv2d(c1, c2, k=k, p=p, s=s, d=d, g=1, bias=add_bias))
  60. if norm_type:
  61. convs.append(get_norm(norm_type, c2))
  62. if act_type:
  63. convs.append(get_activation(act_type))
  64. self.convs = nn.Sequential(*convs)
  65. def forward(self, x):
  66. return self.convs(x)
  67. # ---------------------------- YOLOv8's Modules ----------------------------
  68. # BottleNeck
  69. class Bottleneck(nn.Module):
  70. def __init__(self,
  71. in_dim,
  72. out_dim,
  73. expand_ratio=0.5,
  74. shortcut=False,
  75. depthwise=False,
  76. act_type='silu',
  77. norm_type='BN'):
  78. super(Bottleneck, self).__init__()
  79. inter_dim = int(out_dim * expand_ratio) # hidden channels
  80. self.cv1 = Conv(in_dim, inter_dim, k=3, p=1, norm_type=norm_type, act_type=act_type, depthwise=depthwise)
  81. self.cv2 = Conv(inter_dim, out_dim, k=3, p=1, norm_type=norm_type, act_type=act_type, depthwise=depthwise)
  82. self.shortcut = shortcut and in_dim == out_dim
  83. def forward(self, x):
  84. h = self.cv2(self.cv1(x))
  85. return x + h if self.shortcut else h
  86. # ELAN-CSP-Block
  87. class ELAN_CSP_Block(nn.Module):
  88. def __init__(self,
  89. in_dim,
  90. out_dim,
  91. expand_ratio=0.5,
  92. nblocks=1,
  93. shortcut=False,
  94. act_type='silu',
  95. norm_type='BN',
  96. depthwise=False):
  97. super(ELAN_CSP_Block, self).__init__()
  98. inter_dim = int(out_dim * expand_ratio)
  99. self.cv1 = Conv(in_dim, inter_dim, k=1, norm_type=norm_type, act_type=act_type)
  100. self.cv2 = Conv(in_dim, inter_dim, k=1, norm_type=norm_type, act_type=act_type)
  101. self.m = nn.Sequential(*(
  102. Bottleneck(inter_dim, inter_dim, 1.0, shortcut, depthwise, act_type, norm_type)
  103. for _ in range(nblocks)))
  104. self.cv3 = Conv((2 + nblocks) * inter_dim, out_dim, k=1, act_type=act_type, norm_type=norm_type)
  105. def forward(self, x):
  106. x1 = self.cv1(x)
  107. x2 = self.cv2(x)
  108. out = list([x1, x2])
  109. out.extend(m(out[-1]) for m in self.m)
  110. out = self.cv3(torch.cat(out, dim=1))
  111. return out
  112. # ---------------------------- FPN Modules ----------------------------
  113. ## build fpn's core block
  114. def build_fpn_block(cfg, in_dim, out_dim):
  115. if cfg['fpn_core_block'] == 'elan_cspblock':
  116. layer = ELAN_CSP_Block(in_dim=in_dim,
  117. out_dim=out_dim,
  118. expand_ratio=0.5,
  119. nblocks=round(3*cfg['depth']),
  120. shortcut=False,
  121. act_type=cfg['fpn_act'],
  122. norm_type=cfg['fpn_norm'],
  123. depthwise=cfg['fpn_depthwise']
  124. )
  125. return layer
  126. ## build fpn's reduce layer
  127. def build_reduce_layer(cfg, in_dim, out_dim):
  128. if cfg['fpn_reduce_layer'] == 'Conv':
  129. layer = Conv(in_dim, out_dim, k=1, act_type=cfg['fpn_act'], norm_type=cfg['fpn_norm'])
  130. return layer
  131. ## build fpn's downsample layer
  132. def build_downsample_layer(cfg, in_dim, out_dim):
  133. if cfg['fpn_downsample_layer'] == 'Conv':
  134. layer = Conv(in_dim, out_dim, k=3, s=2, p=1, act_type=cfg['fpn_act'], norm_type=cfg['fpn_norm'])
  135. return layer