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Quantization for classification accuracy in high-rate quantizers

机译:量化以实现高速率量化器中的分类精度

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摘要

Quantization of signals is required for many transmission, storage and compression applications. The original signal is quantized at the encoder side. At the decoder side, a replica of the original signal that should resemble the original signal in some sense is recovered. Present quantizers make an effort to reduce the distortion of the signal in the sense of reproduction fidelity. Consider scenarios in which signals are generated from multiple classes. The encoder focuses on the task of quantizing the data without any regards to the class of the signal. The quantized signal reaches the decoder where not only the recovery of the signal should take place but also a decision is to be made on the class of the signal based on the quantized version of the signal only. In this paper, we study the design of such scalar quantizer that is optimized for the task of classification at the decoder. We define the distortion to be the symmetric Kullback-Leibler (KL) divergence measure between the conditional probabilities of class given the signal before and after quantization. A high-rate analysis of the quantizer is presented and the optimum point density of the quantizer for minimizing the symmetric KL divergence is derived. The performance of this method on synthetically generated data is examined and observed to be superior in the task of classification of signals at the decoder.
机译:许多传输,存储和压缩应用都需要对信号进行量化。原始信号在编码器侧被量化。在解码器侧,恢复在某种意义上应类似于原始信号的原始信号的副本。在再现保真度的意义上,当前的量化器努力减少信号的失真。考虑从多个类别生成信号的场景。编码器专注于量化数据的任务,而无需考虑信号的类别。量化的信号到达解码器,在解码器中,不仅应该恢复信号,而且还要仅基于信号的量化版本来决定信号的类别。在本文中,我们研究了针对解码器分类任务而优化的这种标量量化器的设计。我们将失真定义为在量化前后给定信号的类的条件概率之间的对称Kullback-Leibler(KL)发散度量。给出了量化器的高速率分析,并得出了用于最小化对称KL散度的量化器的最佳点密度。检查并观察到该方法对合成生成的数据的性能在解码器上的信号分类任务中表现出色。

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