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Ordered vector quantization for neural network pattern classification

机译:Neural网络模式分类的有序矢量量化

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The accurate classification of time sequences of vectors is a common goal in signal processing. Vector quantization (VQ) has commonly been used to help encode vectors for subsequent classification. The authors depart from this past approach proposing the use of VQ codebook indices, as opposed to codebook vectors. It is shown that one-dimensional ordering of these indices markedly improves the neural-network-based classification accuracy of acoustic time-frequency patterns. The needs for and extensions of multidimensional codebook indices are described.
机译:准确分类的矢量时间序列是信号处理中的共同目标。矢量量化(VQ)通常用于帮助编码向量进行后续分类。作者从这个过去的方法开始提出使用VQ码本指数,而不是码本向量。结果表明,这些指标的一维顺序显着提高了声学时频模式的神经网络的分类精度。描述了多维码本指数的需求和扩展。

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