分区空间上快速码本设计的并行竞争学习算法

S. Momose, K. Sano, K. Suzuki, Tadao Nakamura
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引用次数: 3

摘要

矢量量化(VQ)是一种有吸引力的有损数据压缩技术,是数据存储和传输的关键技术。到目前为止,已经提出了各种竞争学习(CL)算法来设计具有最小化误差的量化的最优码本。然而,由于竞争学习的计算复杂性,它们的实际应用在大规模问题上受到限制。本文提出了一种基于空间划分的并行竞争学习算法,用于快速码本设计。该算法将输入向量空间划分为若干子空间,并为这些子空间独立设计相应的子码本,降低了计算复杂度。不同子空间上的独立处理可以并行处理,没有同步开销,从而具有高可伸缩性。我们在一个8节点的商用PC集群上进行了并行码本设计的实验。实验结果表明,在不增加量化误差的情况下,该码本设计获得了较高的加速。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parallel competitive learning algorithm for fast codebook design on partitioned space
Vector quantization (VQ) is an attractive technique for lossy data compression, which is a key technology for data storage and/or transfer. So far, various competitive learning (CL) algorithms have been proposed to design optimal codebooks presenting quantization with minimized errors. However, their practical use has been limited for large scale problems, due to the computational complexity of competitive learning. This work presents a parallel competitive learning algorithm for fast code-book design based on space partitioning. The algorithm partitions input-vector space into some subspaces, and independently designs corresponding subcodebooks for these subspaces with computational complexity reduced. Independent processing on different subspaces can be processed in parallel without synchronization overhead, resulting in high scalability. We perform experiments of parallel codebook design on a commodity PC cluster with 8 nodes. Experimental results show that the high speedup of the codebook design is obtained without increase of quantization errors.
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