基于kmeans算法的图像颜色量化

上传者: d14665 | 上传时间: 2020-01-03 11:19:01 | 文件大小: 3.08MB | 文件类型: rar
运行环境:vs2012+opencv3.0.0 应用kmeans算法对图像进行量化处理。

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评论信息

  • TrackerLife :
    是matlab完整的Kmeans算法,虽然比较长,但对于了解原理很有帮助。
    2015-11-03
  • lin130055 :
    需要2012+的版本运行。没有原图片
    2015-10-29
  • lanzhizhang5425 :
    用vs2010没运行成功
    2015-08-23

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