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- import torch
- import torch.nn as nn
- try:
- from .gelan_basic import BasicConv, RepGElanLayer, ADown
- except:
- from gelan_basic import BasicConv, RepGElanLayer, ADown
- # ---------------------------- Basic functions ----------------------------
- class GElanBackbone(nn.Module):
- def __init__(self, cfg):
- super(GElanBackbone, self).__init__()
- # ------------------ Basic setting ------------------
- self.feat_dims = [cfg.backbone_feats["c1"][-1], # 64
- cfg.backbone_feats["c2"][-1], # 128
- cfg.backbone_feats["c3"][-1], # 256
- cfg.backbone_feats["c4"][-1], # 512
- cfg.backbone_feats["c5"][-1], # 512
- ]
-
- # ------------------ Network setting ------------------
- ## P1/2
- self.layer_1 = BasicConv(3, cfg.backbone_feats["c1"][0],
- kernel_size=3, padding=1, stride=2,
- act_type=cfg.bk_act, norm_type=cfg.bk_norm, depthwise=cfg.bk_depthwise)
- # P2/4
- self.layer_2 = nn.Sequential(
- BasicConv(cfg.backbone_feats["c1"][0], cfg.backbone_feats["c2"][0],
- kernel_size=3, padding=1, stride=2,
- act_type=cfg.bk_act, norm_type=cfg.bk_norm, depthwise=cfg.bk_depthwise),
- RepGElanLayer(in_dim = cfg.backbone_feats["c2"][0],
- inter_dims = cfg.backbone_feats["c2"][1],
- out_dim = cfg.backbone_feats["c2"][2],
- num_blocks = cfg.backbone_depth,
- shortcut = True,
- act_type = cfg.bk_act,
- norm_type = cfg.bk_norm,
- depthwise = cfg.bk_depthwise)
- )
- # P3/8
- self.layer_3 = nn.Sequential(
- ADown(cfg.backbone_feats["c2"][2], cfg.backbone_feats["c3"][0],
- act_type=cfg.bk_act, norm_type=cfg.bk_norm, depthwise=cfg.bk_depthwise),
- RepGElanLayer(in_dim = cfg.backbone_feats["c3"][0],
- inter_dims = cfg.backbone_feats["c3"][1],
- out_dim = cfg.backbone_feats["c3"][2],
- num_blocks = cfg.backbone_depth,
- shortcut = True,
- act_type = cfg.bk_act,
- norm_type = cfg.bk_norm,
- depthwise = cfg.bk_depthwise)
- )
- # P4/16
- self.layer_4 = nn.Sequential(
- ADown(cfg.backbone_feats["c3"][2], cfg.backbone_feats["c4"][0],
- act_type=cfg.bk_act, norm_type=cfg.bk_norm, depthwise=cfg.bk_depthwise),
- RepGElanLayer(in_dim = cfg.backbone_feats["c4"][0],
- inter_dims = cfg.backbone_feats["c4"][1],
- out_dim = cfg.backbone_feats["c4"][2],
- num_blocks = cfg.backbone_depth,
- shortcut = True,
- act_type = cfg.bk_act,
- norm_type = cfg.bk_norm,
- depthwise = cfg.bk_depthwise)
- )
- # P5/32
- self.layer_5 = nn.Sequential(
- ADown(cfg.backbone_feats["c4"][2], cfg.backbone_feats["c5"][0],
- act_type=cfg.bk_act, norm_type=cfg.bk_norm, depthwise=cfg.bk_depthwise),
- RepGElanLayer(in_dim = cfg.backbone_feats["c5"][0],
- inter_dims = cfg.backbone_feats["c5"][1],
- out_dim = cfg.backbone_feats["c5"][2],
- num_blocks = cfg.backbone_depth,
- shortcut = True,
- act_type = cfg.bk_act,
- norm_type = cfg.bk_norm,
- depthwise = cfg.bk_depthwise)
- )
- # Initialize all layers
- self.init_weights()
-
- def init_weights(self):
- """Initialize the parameters."""
- for m in self.modules():
- if isinstance(m, torch.nn.Conv2d):
- # In order to be consistent with the source code,
- # reset the Conv2d initialization parameters
- m.reset_parameters()
- def forward(self, x):
- c1 = self.layer_1(x)
- c2 = self.layer_2(c1)
- c3 = self.layer_3(c2)
- c4 = self.layer_4(c3)
- c5 = self.layer_5(c4)
- outputs = [c3, c4, c5]
- return outputs
- # ---------------------------- Functions ----------------------------
- ## build Yolo's Backbone
- def build_backbone(cfg):
- # model
- backbone = GElanBackbone(cfg)
-
- return backbone
- if __name__ == '__main__':
- import time
- from thop import profile
- base_config = {
- "bk_act": "silu",
- "bk_norm": "BN"
- }
- class BaseConfig(object):
- def __init__(self) -> None:
- self.bk_act = 'silu'
- self.bk_norm = 'BN'
- self.bk_depthwise = False
- self.backbone_feats = {
- "c1": [64],
- "c2": [128, [128, 64], 256],
- "c3": [256, [256, 128], 512],
- "c4": [512, [512, 256], 512],
- "c5": [512, [512, 256], 512],
- }
- self.backbone_depth = 1
- cfg = BaseConfig()
- model = build_backbone(cfg)
- x = torch.randn(1, 3, 640, 640)
- t0 = time.time()
- outputs = model(x)
- t1 = time.time()
- print('Time: ', t1 - t0)
- for out in outputs:
- print(out.shape)
- x = torch.randn(1, 3, 640, 640)
- print('==============================')
- flops, params = profile(model, inputs=(x, ), verbose=False)
- print('==============================')
- print('GFLOPs : {:.2f}'.format(flops / 1e9 * 2))
- print('Params : {:.2f} M'.format(params / 1e6))
-
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