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-import torch
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-import torch.nn as nn
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-from typing import List
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-
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-# -------------------- Detection Pred Layer --------------------
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-## Single-level pred layer
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-class DetPredLayer(nn.Module):
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- def __init__(self,
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- cls_dim :int,
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- reg_dim :int,
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- stride :int,
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- num_classes :int,
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- anchor_sizes :List,
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- ):
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- super().__init__()
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- # --------- Basic Parameters ----------
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- self.stride = stride
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- self.cls_dim = cls_dim
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- self.reg_dim = reg_dim
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- self.num_classes = num_classes
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- # ------------------- Anchor box -------------------
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- self.anchor_size = torch.as_tensor(anchor_sizes).float().view(-1, 2) # [A, 2]
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- self.num_anchors = self.anchor_size.shape[0]
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-
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- # --------- Network Parameters ----------
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- self.obj_pred = nn.Conv2d(self.cls_dim, 1 * self.num_anchors, kernel_size=1)
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- self.cls_pred = nn.Conv2d(self.cls_dim, num_classes * self.num_anchors, kernel_size=1)
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- self.reg_pred = nn.Conv2d(self.reg_dim, 4 * self.num_anchors, kernel_size=1)
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-
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- self.init_bias()
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-
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- def init_bias(self):
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- # Init bias
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- init_prob = 0.01
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- bias_value = -torch.log(torch.tensor((1. - init_prob) / init_prob))
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- # obj pred
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- b = self.obj_pred.bias.view(1, -1)
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- b.data.fill_(bias_value.item())
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- self.obj_pred.bias = torch.nn.Parameter(b.view(-1), requires_grad=True)
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- # cls pred
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- b = self.cls_pred.bias.view(1, -1)
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- b.data.fill_(bias_value.item())
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- self.cls_pred.bias = torch.nn.Parameter(b.view(-1), requires_grad=True)
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- # reg pred
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- b = self.reg_pred.bias.view(-1, )
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- b.data.fill_(1.0)
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- self.reg_pred.bias = torch.nn.Parameter(b.view(-1), requires_grad=True)
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- w = self.reg_pred.weight
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- w.data.fill_(0.)
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- self.reg_pred.weight = torch.nn.Parameter(w, requires_grad=True)
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-
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- def generate_anchors(self, fmp_size):
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- """
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- fmp_size: (List) [H, W]
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- """
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- # 特征图的宽和高
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- fmp_h, fmp_w = fmp_size
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-
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- # 生成网格的x坐标和y坐标
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- anchor_y, anchor_x = torch.meshgrid([torch.arange(fmp_h), torch.arange(fmp_w)])
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-
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- # 将xy两部分的坐标拼起来:[H, W, 2] -> [HW, 2]
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- anchor_xy = torch.stack([anchor_x, anchor_y], dim=-1).float().view(-1, 2)
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- # [HW, 2] -> [HW, A, 2] -> [M, 2], M=HWA
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- anchor_xy = anchor_xy.unsqueeze(1).repeat(1, self.num_anchors, 1)
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- anchor_xy = anchor_xy.view(-1, 2)
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-
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- # [A, 2] -> [1, A, 2] -> [HW, A, 2] -> [M, 2], M=HWA
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- anchor_wh = self.anchor_size.unsqueeze(0).repeat(fmp_h*fmp_w, 1, 1)
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- anchor_wh = anchor_wh.view(-1, 2)
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-
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- anchors = torch.cat([anchor_xy, anchor_wh], dim=-1)
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-
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- return anchors
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-
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- def forward(self, cls_feat, reg_feat):
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- # 预测层
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- obj_pred = self.obj_pred(reg_feat)
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- cls_pred = self.cls_pred(cls_feat)
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- reg_pred = self.reg_pred(reg_feat)
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-
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- # 生成网格坐标
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- B, _, H, W = cls_pred.size()
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- fmp_size = [H, W]
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- anchors = self.generate_anchors(fmp_size)
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- anchors = anchors.to(cls_pred.device)
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-
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- # 对 pred 的size做一些view调整,便于后续的处理
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- # [B, C*A, H, W] -> [B, H, W, C*A] -> [B, H*W*A, C]
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- obj_pred = obj_pred.permute(0, 2, 3, 1).contiguous().view(B, -1, 1)
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- cls_pred = cls_pred.permute(0, 2, 3, 1).contiguous().view(B, -1, self.num_classes)
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- reg_pred = reg_pred.permute(0, 2, 3, 1).contiguous().view(B, -1, 4)
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-
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- # 解算边界框坐标
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- cxcy_pred = (torch.sigmoid(reg_pred[..., :2]) + anchors[..., :2]) * self.stride
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- bwbh_pred = torch.exp(reg_pred[..., 2:]) * anchors[..., 2:]
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- pred_x1y1 = cxcy_pred - bwbh_pred * 0.5
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- pred_x2y2 = cxcy_pred + bwbh_pred * 0.5
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- box_pred = torch.cat([pred_x1y1, pred_x2y2], dim=-1)
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-
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- # output dict
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- outputs = {"pred_obj": obj_pred, # (torch.Tensor) [B, M, 1]
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- "pred_cls": cls_pred, # (torch.Tensor) [B, M, C]
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- "pred_reg": reg_pred, # (torch.Tensor) [B, M, 4]
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- "pred_box": box_pred, # (torch.Tensor) [B, M, 4]
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- "anchors" : anchors, # (torch.Tensor) [M, 2]
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- "fmp_size": fmp_size,
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- "stride" : self.stride, # (Int)
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- }
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-
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- return outputs
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-
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-## Multi-level pred layer
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-class Yolov3DetPredLayer(nn.Module):
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- def __init__(self, cfg):
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- super().__init__()
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- # --------- Basic Parameters ----------
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- self.cfg = cfg
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- self.num_levels = len(cfg.out_stride)
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-
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- # ----------- Network Parameters -----------
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- ## pred layers
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- self.multi_level_preds = nn.ModuleList(
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- [DetPredLayer(cls_dim = round(cfg.head_dim * cfg.width),
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- reg_dim = round(cfg.head_dim * cfg.width),
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- stride = cfg.out_stride[level],
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- anchor_sizes = cfg.anchor_size[level],
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- num_classes = cfg.num_classes,)
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- for level in range(self.num_levels)
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- ])
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-
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- def forward(self, cls_feats, reg_feats):
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- all_anchors = []
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- all_strides = []
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- all_fmp_sizes = []
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- all_obj_preds = []
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- all_cls_preds = []
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- all_reg_preds = []
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- all_box_preds = []
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- for level in range(self.num_levels):
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- # -------------- Single-level prediction --------------
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- outputs = self.multi_level_preds[level](cls_feats[level], reg_feats[level])
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-
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- # collect results
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- all_obj_preds.append(outputs["pred_obj"])
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- all_cls_preds.append(outputs["pred_cls"])
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- all_reg_preds.append(outputs["pred_reg"])
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- all_box_preds.append(outputs["pred_box"])
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- all_fmp_sizes.append(outputs["fmp_size"])
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- all_anchors.append(outputs["anchors"])
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-
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- # output dict
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- outputs = {"pred_obj": all_obj_preds, # List(Tensor) [B, M, 1]
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- "pred_cls": all_cls_preds, # List(Tensor) [B, M, C]
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- "pred_reg": all_reg_preds, # List(Tensor) [B, M, 4*(reg_max)]
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- "pred_box": all_box_preds, # List(Tensor) [B, M, 4]
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- "fmp_sizes": all_fmp_sizes, # List(Tensor) [M, 1]
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- "anchors": all_anchors, # List(Tensor) [M, 2]
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- "strides": self.cfg.out_stride, # List(Int) = [8, 16, 32]
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- }
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-
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- return outputs
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-
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-
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-if __name__=='__main__':
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- import time
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- from thop import profile
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- # Model config
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-
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- # YOLOv8-Base config
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- class Yolov3BaseConfig(object):
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- def __init__(self) -> None:
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- # ---------------- Model config ----------------
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- self.width = 1.0
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- self.depth = 1.0
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- self.out_stride = [8, 16, 32]
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- self.max_stride = 32
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- self.num_levels = 3
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- ## Head
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- self.head_dim = 256
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- self.anchor_size = {0: [[10, 13], [16, 30], [33, 23]],
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- 1: [[30, 61], [62, 45], [59, 119]],
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- 2: [[116, 90], [156, 198], [373, 326]]}
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-
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- cfg = Yolov3BaseConfig()
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- cfg.num_classes = 20
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- # Build a pred layer
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- pred = Yolov3DetPredLayer(cfg)
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-
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- # Inference
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- cls_feats = [torch.randn(1, cfg.head_dim, 80, 80),
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- torch.randn(1, cfg.head_dim, 40, 40),
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- torch.randn(1, cfg.head_dim, 20, 20),]
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- reg_feats = [torch.randn(1, cfg.head_dim, 80, 80),
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- torch.randn(1, cfg.head_dim, 40, 40),
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- torch.randn(1, cfg.head_dim, 20, 20),]
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- t0 = time.time()
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- output = pred(cls_feats, reg_feats)
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- t1 = time.time()
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- print('Time: ', t1 - t0)
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- print('====== Pred output ======= ')
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- pred_obj = output["pred_obj"]
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- pred_cls = output["pred_cls"]
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- pred_reg = output["pred_reg"]
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- pred_box = output["pred_box"]
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- anchors = output["anchors"]
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-
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- for level in range(cfg.num_levels):
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- print("- Level-{} : objectness -> {}".format(level, pred_obj[level].shape))
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- print("- Level-{} : classification -> {}".format(level, pred_cls[level].shape))
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- print("- Level-{} : delta regression -> {}".format(level, pred_reg[level].shape))
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- print("- Level-{} : bbox regression -> {}".format(level, pred_box[level].shape))
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- print("- Level-{} : anchor boxes -> {}".format(level, anchors[level].shape))
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-
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- flops, params = profile(pred, inputs=(cls_feats, reg_feats, ), verbose=False)
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- print('==============================')
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- print('GFLOPs : {:.2f}'.format(flops / 1e9 * 2))
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- print('Params : {:.2f} M'.format(params / 1e6))
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