基于Meanshift的单目标跟踪算法matlab及C版本

上传者: zhao854076811 | 上传时间: 2019-12-21 22:19:28 | 文件大小: 11.03MB | 文件类型: zip
基于meanshift的单目标跟踪算法实现 说明: 1. RGB颜色空间刨分,采用16*16*16的直方图 2. 目标模型和候选模型的概率密度计算公式参照上文 3. opencv版本运行:按P停止,截取目标,再按P,进行单目标跟踪 4. Matlab版本,将视频改为图片序列,第一帧停止,手工标定目标,双击目标区域,进行单目标跟踪。 博客地址:http://blog.csdn.net/jinshen

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