两种算法并行化VQ码本生成:并行LBG和主动PNN[图像压缩应用]

A. Wakatani
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引用次数: 1

摘要

只提供摘要形式。我们评估了用于VQ压缩码本生成的两种并行算法:并行LBG和主动PNN。并行LBG是基于基于k -均值方法的LBG算法。后两种算法的成本主要包括:a)计算部分;B)通信部分;c)更新部分。侵略性PNN是PNN (pairwise nearest neighbor)算法的并行化版本,其代价主要包括:a)计算部分;B)通信部分;c)归并部分。我们在PC集群系统上测量了这两种算法的加速和运行时间。在两种算法压缩的图像质量相同的情况下,主动PNN所需的训练向量数量远少于并行LBG,并且在运行时间方面具有优势。
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Parallelization of VQ codebook generation by two algorithms: parallel LBG and aggressive PNN [image compression applications]
Summary form only given. We evaluate two parallel algorithms for the codebook generation of the VQ compression: parallel LBG and aggressive PNN. Parallel LBG is based on the LBG algorithm with the K-mean method. The cost of both latter algorithms mainly consists of: a) the computation part; b) the communication part; and c) the update part. Aggressive PNN is a parallelized version of the PNN (pairwise nearest neighbor) algorithm, whose cost mainly consists of: a) the computation part; b) the communication part; and c) the merge part. We measured the speedups and elapsed times of both algorithms on a PC cluster system. When the quality of images compressed by both algorithms is the same, the number of training vectors required by the aggressive PNN is much less than that by the parallel LBG, and the aggressive PNN is superior in terms of the elapsed time.
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