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VLSI realization of learning vector quantization with hardware/software co-design for different applications

机译:通过针对不同应用的硬件/软件协同设计实现VLSI学习矢量量化

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摘要

This paper reports a VLSI realization of learning vector quantization (LVQ) with high flexibility for different applications. It is based on a hardware/software (HW/SW) co-design concept for on-chip learning and recognition and designed as a SoC in 180nm CMOS. The time consuming nearest Euclidean distance search in the LVQ algorithm's competition layer is efficiently implemented as a pipeline with parallel p-word input. Since neuron number in the competition layer, weight values, input and output number are scalable, the requirements of many different applications can be satisfied without hardware changes. Classification of a d-dimensional input vector is completed in n x [d/p] + R clock cycles, where R is the pipeline depth, and n is the number of reference feature vectors (FVs). Adjustment of stored reference FVs during learning is done by the embedded 32-bit RISC CPU, because this operation is not time critical. The high flexibility is verified by the application of human detection with different numbers for the dimensionality of the FVs. (C) 2015 The Japan Society of Applied Physics
机译:本文报道了针对不同应用具有高度灵活性的学习矢量量化(LVQ)的VLSI实现。它基于用于片上学习和识别的硬件/软件(HW / SW)协同设计概念,并设计为180nm CMOS中的SoC。 LVQ算法竞争层中耗时的最近欧几里德距离搜索有效地实现为具有并行p字输入的管道。由于竞争层中的神经元数量,权重值,输入和输出数量是可伸缩的,因此无需更改硬件即可满足许多不同应用程序的需求。 d维输入向量的分类在n x [d / p] + R个时钟周期内完成,其中R是流水线深度,n是参考特征向量(FV)的数量。学习期间存储参考FV的调整是由嵌入式32位RISC CPU进行的,因为此操作不是时间紧迫的操作。通过对FV的维数使用不同数量的人工检测,可以验证这种高灵活性。 (C)2015年日本应用物理学会

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  • 来源
    《Japanese journal of applied physics》 |2015年第4s期|04DE05.1-04DE05.5|共5页
  • 作者单位

    Hiroshima Univ, Grad Sch Engn, Hiroshima 7398527, Japan.;

    Hiroshima Univ, Res Inst Nanodevice & Bio Syst, Hiroshima 7398530, Japan.;

    Hiroshima Univ, Res Inst Nanodevice & Bio Syst, Hiroshima 7398530, Japan.;

    Hiroshima Univ, HiSIM Res Ctr, Hiroshima 7398530, Japan.;

    Hiroshima Univ, HiSIM Res Ctr, Hiroshima 7398530, Japan.;

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