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Optimization of VQ architectures

机译:VQ架构的优化

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摘要

Abstract: Vector quantization (VQ) has emerged as a viable and practical bandwidth compression technique due to its promising performance and a simple decompression architecture that requires a single look-up table. The improvement in the performance of VQ is realized only when large dimension input vectors could be utilized. This is hampered by the exponential growth in the complexity and the storage requirements of VQ for large dimension vectors. This presentation summarizes the results of a study that considers the hardware completely of VQ based on both Linde-Buzo-Gray (LBG) classification and neutral networks (NNs). The result of the study shows that a single chip implementation of large dimension VQ at video rates using either LBG or NN approach is not feasible if a full search algorithm is utilized. Modified forms of LBG VQ, with suboptimal performance, can be implemented using a single chip at moderate vector dimensions and bit rates. The most efficient implementation of neural network vector quantization (NNVQ) is the one that uses a combination of an analog and a digital chip.!14
机译:摘要:矢量量化(VQ)由于其令人鼓舞的性能和简单的解压缩架构(需要一个查询表)而成为一种可行且实用的带宽压缩技术。仅当可以使用大尺寸输入矢量时,才能实现VQ性能的提高。对于大型向量,VQ的复杂性和存储要求呈指数增长,这阻碍了这种增长。本演讲总结了一项研究结果,该研究完全基于Linde-Buzo-Gray(LBG)分类和中性网络(NN)来考虑VQ的硬件。研究结果表明,如果使用完整搜索算法,则使用LBG或NN方法在视频速率下以视频速率实现大尺寸VQ的单芯片实现是不可行的。具有次优性能的LBG VQ修改形式可以使用单个芯片以中等矢量尺寸和比特率实现。神经网络矢量量化(NNVQ)的最有效实现是使用模拟和数字芯片的组合!14

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