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YOLO红白细胞血小板检测数据集(含1000张图片)+对应voc、coco和yolo三种格式标签+划分脚本+训练教程.rar (2000个子文件)
1. 三个数据集划分脚本使用说明.html 46KB
2、YOLO环境搭建Linux版本.html 40KB
3、YOLO训练教程Linux版本(根据案例修改训练自己的数据集).html 19KB
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1、YOLO环境搭建Windows版本.html 13KB
1、Linux之Ubuntu环境安装教程.html 8KB
训练集、验证集、测试集划分脚本(图片标签划分写入新文件夹).py 3KB
训练集、验证集划分脚本(图片标签划分写入新文件夹).py 3KB
split_train_val生成ImageSets下txt文件划分脚本.py 1KB
train_list.txt 20KB
trainval_list.txt 5KB
test_list.txt 4KB
1526.txt 2KB
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