当前位置: 首页 > news >正文

yolov11剪枝

思路:yolov11中的C3k2与yolov8的c2f的不同,所以与之前yolov8剪枝有稍许不同;

后续:会将剪枝流程写全,以及增加蒸馏、注意力、改loss;

注意:

1.在代码105行修改pruning.get_threshold(yolo.model, 0.65),可以获得不同的剪枝率;

2.改代码放在训练代码同一页面下即可;

3.在最后修改文件夹地址来获得剪枝后的模型;

from ultralytics import YOLO
import torch
from ultralytics.nn.modules import Bottleneck, Conv, C2f, SPPF, Detect, C3k2
from torch.nn.modules.container import Sequential
import os# os.environ["CUDA_VISIBLE_DEVICES"] = "2"class PRUNE():def __init__(self) -> None:self.threshold = Nonedef get_threshold(self, model, factor=0.8):ws = []bs = []for name, m in model.named_modules():if isinstance(m, torch.nn.BatchNorm2d):w = m.weight.abs().detach()b = m.bias.abs().detach()ws.append(w)bs.append(b)print(name, w.max().item(), w.min().item(), b.max().item(), b.min().item())print()# keepws = torch.cat(ws)self.threshold = torch.sort(ws, descending=True)[0][int(len(ws) * factor)]def prune_conv(self, conv1: Conv, conv2: Conv):## Normal Pruninggamma = conv1.bn.weight.data.detach()beta = conv1.bn.bias.data.detach()keep_idxs = []local_threshold = self.thresholdwhile len(keep_idxs) < 8:  ## 若剩余卷积核<8, 则降低阈值重新筛选keep_idxs = torch.where(gamma.abs() >= local_threshold)[0]local_threshold = local_threshold * 0.5n = len(keep_idxs)# n = max(int(len(idxs) * 0.8), p)print(n / len(gamma) * 100)conv1.bn.weight.data = gamma[keep_idxs]conv1.bn.bias.data = beta[keep_idxs]conv1.bn.running_var.data = conv1.bn.running_var.data[keep_idxs]conv1.bn.running_mean.data = conv1.bn.running_mean.data[keep_idxs]conv1.bn.num_features = nconv1.conv.weight.data = conv1.conv.weight.data[keep_idxs]conv1.conv.out_channels = nif isinstance(conv2, list) and len(conv2) > 3 and conv2[-1]._get_name() == "Proto":proto = conv2.pop()proto.cv1.conv.in_channels = nproto.cv1.conv.weight.data = proto.cv1.conv.weight.data[:, keep_idxs]if conv1.conv.bias is not None:conv1.conv.bias.data = conv1.conv.bias.data[keep_idxs]## Regular Pruningif not isinstance(conv2, list):conv2 = [conv2]for item in conv2:if item is None: continueif isinstance(item, Conv):conv = item.convelse:conv = itemif isinstance(item, Sequential):conv1 = item[0]conv = item[1].convconv1.conv.in_channels = nconv1.conv.out_channels = nconv1.conv.groups = nconv1.conv.weight.data = conv1.conv.weight.data[keep_idxs, :]conv1.bn.bias.data = conv1.bn.bias.data[keep_idxs]conv1.bn.weight.data = conv1.bn.weight.data[keep_idxs]conv1.bn.running_var.data = conv1.bn.running_var.data[keep_idxs]conv1.bn.running_mean.data = conv1.bn.running_mean.data[keep_idxs]conv1.bn.num_features = nconv.in_channels = nconv.weight.data = conv.weight.data[:, keep_idxs]def prune(self, m1, m2):if isinstance(m1, C3k2):  # C3k2 as a top convm1 = m1.cv2if isinstance(m1, Sequential):m1 = m1[1]if not isinstance(m2, list):  # m2 is just one modulem2 = [m2]for i, item in enumerate(m2):if isinstance(item, C3k2) or isinstance(item, SPPF):m2[i] = item.cv1self.prune_conv(m1, m2)def do_pruning(modelpath, savepath):pruning = PRUNE()### 0. 加载模型yolo = YOLO(modelpath)  # build a new model from scratchpruning.get_threshold(yolo.model, 0.65)  # 这里的0.8为剪枝率。### 1. 剪枝C3k2 中的Bottleneckfor name, m in yolo.model.named_modules():if isinstance(m, Bottleneck):pruning.prune_conv(m.cv1, m.cv2)### 2. 指定剪枝不同模块之间的卷积核seq = yolo.model.modelfor i in [3, 5, 7, 8]:pruning.prune(seq[i], seq[i + 1])### 3. 对检测头进行剪枝# 在P3层: seq[15]之后的网络节点与其相连的有 seq[16]、detect.cv2[0] (box分支)、detect.cv3[0] (class分支)# 在P4层: seq[18]之后的网络节点与其相连的有 seq[19]、detect.cv2[1] 、detect.cv3[1]# 在P5层: seq[21]之后的网络节点与其相连的有 detect.cv2[2] 、detect.cv3[2]detect: Detect = seq[-1]proto = detect.protolast_inputs = [seq[16], seq[19], seq[22]]colasts = [seq[17], seq[20], None]for idx, (last_input, colast, cv2, cv3, cv4) in enumerate(zip(last_inputs, colasts, detect.cv2, detect.cv3, detect.cv4)):if idx == 0:pruning.prune(last_input, [colast, cv2[0], cv3[0], cv4[0], proto])else:pruning.prune(last_input, [colast, cv2[0], cv3[0], cv4[0]])pruning.prune(cv2[0], cv2[1])pruning.prune(cv2[1], cv2[2])pruning.prune(cv3[0], cv3[1])pruning.prune(cv3[1], cv3[2])pruning.prune(cv4[0], cv4[1])pruning.prune(cv4[1], cv4[2])### 4. 模型梯度设置与保存for name, p in yolo.model.named_parameters():p.requires_grad = Trueyolo.val(data='data.yaml', batch=2, device=0, workers=0)torch.save(yolo.ckpt, savepath)if __name__ == "__main__":modelpath = "runs/segment/Constraint/weights/best.pt"savepath = "runs/segment/Constraint/weights/last_prune.pt"do_pruning(modelpath, savepath)

http://www.lryc.cn/news/497686.html

相关文章:

  • 智慧地图聚合(LockMap)标注系统开发说明文档
  • 「Mac畅玩鸿蒙与硬件36」UI互动应用篇13 - 数字滚动抽奖器
  • cuda12.1版本的pytorch环境安装记录,并添加到jupyter和pycharm中
  • Linux: network: nic: mellanox MRU初现
  • 深入理解红黑树的底层逻辑
  • 【数据结构】手搓链表
  • ThinkPHP场景动态验证
  • 在M3上面搭建一套lnmp环境
  • 【C++笔记】二叉搜索树
  • Fork/Join框架简介
  • Java项目实战II基于微信小程序的电子竞技信息交流平台的设计与实现(开发文档+数据库+源码)
  • Mysql读写分离分库分表
  • B站狂神说--springboot项目学习(新建一个springboot项目)
  • eltable el-table 横向 滚动条常显
  • centos8 mysql 主从复制
  • 【C++】入门【五】
  • 【React】二、状态变量useState
  • SQL Server中的数据处理函数:提升SQL查询能力
  • TypeScript 语言学习入门级教程五
  • 上海市计算机学会竞赛平台2022年7月月赛丙组匹配括号(三)
  • 108.【C语言】数据结构之二叉树查找值为x的节点
  • Java学习笔记(10)--面向对象基础
  • 社群分享在商业引流与职业转型中的作用:开源 AI 智能名片 2+1 链动模式小程序的应用契机
  • nodejs官方文档学习-笔记-1
  • android视频播放器之DKVideoPlayer
  • Linux——基础命令(3)
  • MySQL备份恢复
  • 鲲鹏麒麟安装离线版MySQL5.7
  • 【不稳定的BUG】__scrt_is_managed_app()中断
  • MyBatis 详解