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1、打开终端,克隆项目
git clone https://github.com/AlexeyAB/darknet.git
2、修改Makefile文件

其中,GPU和CUDNN是GPU加速,CUDNN_HALF是特定硬件加速,OPENCV是否使用OpenCV,AVX和OPENMP是CPU加速
opencv编译问题https://blog.csdn.net/qq_40297851/article/details/107031700
3、编译
cd darknet
make 或者 make -j8(加速编译)
4、制作数据集
制作数据集,进入桌面 “yolov4Detection/darknet”我们只需要对里面的“train_data”文件夹进行操作即可

image”和“xml”放到“train_data”里面,并把“data”里面的“predefined_classes.txt” 放到“train_data”里面,改为“voc.names”

打开“spilt_train_val.py”文件,将数据集划分为训练集以及验证集指定xml文件路径,以及生成的训练集和验证集txt文件保存路径
Ctrl + F5 运行,打开“train_data/main”
# coding:utf-8 import os import random import argparse parser = argparse.ArgumentParser() #xml文件的地址,根据自己的数据进行修改 parser.add_argument('--xml_path', default='/home/nx/Desktop/yolov4Detection/darknet/train_data1/xml', type=str, help='input xml label path') #数据集的划分,根据自己的数据进行修改 parser.add_argument('--txt_path', default='/home/nx/Desktop/yolov4Detection/darknet/train_data1/main', type=str, help='output txt label path') opt = parser.parse_args() trainval_percent = 1.0 train_percent = 0.9 xmlfilepath = opt.xml_path txtsavepath = opt.txt_path total_xml = os.listdir(xmlfilepath) if not os.path.exists(txtsavepath): os.makedirs(txtsavepath) num = len(total_xml) list_index = range(num) tv = int(num * trainval_percent) tr = int(tv * train_percent) trainval = random.sample(list_index, tv) train = random.sample(trainval, tr) file_trainval = open(txtsavepath + '/trainval.txt', 'w') file_test = open(txtsavepath + '/test.txt', 'w') file_train = open(txtsavepath + '/train.txt', 'w') file_val = open(txtsavepath + '/val.txt', 'w') for i in list_index: name = total_xml[i][:-4] + '\n' if i in trainval: file_trainval.write(name) if i in train: file_train.write(name) else: file_val.write(name) else: file_test.write(name) file_trainval.close() file_train.close() file_val.close() file_test.close()


打开“train.txt”和 “val.txt”,数据集划分完毕


打开“voc_label.py”文件,将每个xml标注文件转换成txt格式,并把训练和验证图片的路径信息保存到“train_data”文件夹下的“train.txt”和“val.txt”需要修改以下路径
# -*- coding: utf-8 -*- import xml.etree.ElementTree as ET import os from os import getcwd sets = ['train', 'val', 'test'] # 改成自己的类别 # classes = ["bolt","couch","nut","gasket","pillar"] classes = ["1","2","3","4","5","6","7","8","9"] abs_path = os.getcwd() def convert(size, box): dw = 1. / (size[0]) dh = 1. / (size[1]) x = (box[0] + box[1]) / 2.0 - 1 y = (box[2] + box[3]) / 2.0 - 1 w = box[1] - box[0] h = box[3] - box[2] x = x * dw w = w * dw y = y * dh h = h * dh return x, y, w, h def convert_annotation(image_id): in_file = open('/home/nx/Desktop/yolov4Detection/darknet/train_data1/xml/%s.xml' % (image_id), encoding='UTF-8') out_file = open('/home/nx/Desktop/yolov4Detection/darknet/train_data1/image/%s.txt' % (image_id), 'w') tree = ET.parse(in_file) root = tree.getroot() size = root.find('size') w = int(size.find('width').text) h = int(size.find('height').text) for obj in root.iter('object'): difficult = obj.find('difficult').text #difficult = obj.find('Difficult').text cls = obj.find('name').text if cls not in classes or int(difficult) == 1: continue cls_id = classes.index(cls) xmlbox = obj.find('bndbox') b = (float(xmlbox.find('xmin').text), float(xmlbox.find('xmax').text), float(xmlbox.find('ymin').text), float(xmlbox.find('ymax').text)) b1, b2, b3, b4 = b # 标注越界修正 if b2 > w: b2 = w if b4 > h: b4 = h b = (b1, b2, b3, b4) bb = convert((w, h), b) out_file.write(str(cls_id) + " " + " ".join([str(a) for a in bb]) + '\n') wd = getcwd() for image_set in sets: image_ids = open('/home/nx/Desktop/yolov4Detection/darknet/train_data1/main/%s.txt' % (image_set)).read().strip().split() list_file = open('/home/nx/Desktop/yolov4Detection/darknet/train_data1/%s.txt' % (image_set), 'w') for image_id in image_ids: list_file.write('/home/nx/Desktop/yolov4Detection/darknet/train_data1/image/%s.png\n' % (image_id)) convert_annotation(image_id) list_file.close()

Ctrl + F5 运行,打开“train_data”

打开“train.txt”、“val.txt”,确认图片路径没问题

打开“image”文件夹,打开txt文件,确认标注信息转换正确

6、设置训练参数
打开train_data文件夹下的“voc.data”
修改类别数目为:5
修改train.txt、val.txt、voc.names文件路径
修改训练生成模型保存路径backup

需要把“yolov4-tiny.cfg”里面的classes、filter进行修改
Ctrl + F,查找“classes”修改为5,共两处
并把上方的filter修改为(classes+5)*3 = 30

7、开始训练
在“darknet”文件夹下,右键,打开“Open in Terminal”

输入下面命令,回车,开始训练
./darknet detector train train_data/voc.data train_data/yolov4.cfg train_data/yolov4.conv.137 -gpus -map
# 评估,比较最后一行,选mAP (mean average precision) 最大的 ,或者IoU(intersect over union)最好的
./darknet detector map data/VOC.data yolo-obj.cfg backup\yolo-obj_6000.weights

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