yolov5检测源码_EDS模型文件_使用说明

上传者: DeepLearning_ | 上传时间: 2022-11-28 21:26:21 | 文件大小: 70.6MB | 文件类型: ZIP
1、yolov5检测源码+EDS模型文件+使用说明 2、附有训练pr曲线、损失值曲线、召回率曲线、精确度曲线、mAP等评估指标曲线 3、迭代200次,模型拟合较好。

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