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Residual Clustering Based Lossless Compression for Remotely Sensed Images

机译:基于残余聚类的远程感测图像的无损压缩

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In the K-means algorithm, every pixel in a super-space is required to calculate Euclidean distance for clustering, so it is time-consuming computing when there are a great many class centers. Improved K-means clustering algorithm presented here could save initial clustering time by making initial division based on previous clustering results, and maintain the relationship among stable classes. Only calculating and comparing distances with neighbor centers, near to the pixel except those far away from it, accelerates clustering process with more and more classes becoming stable. Clustering lossless compression algorithm can efficiently eliminate the inter-spectral and intra-spectral redundancy at high convergent speed through enhancing intra-class redundancy. The multi-level clustering process can not only remove the spatial redundancy but also delete the residue redundancy, whose importance in lossless compression was overlooked previously, realizing a breakthrough lossless compression ratio at 2.882 for multi-spectral images. The comparison of the parameter analysis of the TM (Landsat Thematic Mapper) images with other lossless compression algorithms shows that this multilevel clustering lossless compression algorithm is more efficient.
机译:在K-means算法中,超空间中的每个像素都需要计算欧几里德距离进行聚类,因此当有许多阶级中心时,它是耗时的计算。提交的K-Means聚类算法在此提供通过基于先前的聚类结果进行初始分割来节省初始聚类时间,并保持稳定类之间的关系。仅计算和比较与邻居中心的距离,除了远离它的像素之外,只能加速聚类过程,越来越多的类变得稳定。聚类无损压缩算法可以通过提高类内冗余,有效地消除高收敛速度的频谱间和频谱间冗余。多级聚类过程不仅可以删除空间冗余,而且删除残留冗余,其先前忽略了其无损压缩的重要性,实现了2.882的突破性的无损压缩比对于多光谱图像。与其他无损压缩算法的TM(LANDSAT主题映射器)图像的参数分析的比较显示,该多级聚类无损压缩算法更有效。

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