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A CMOS binary pattern classifier based on Parzen's method

机译:基于Parzen方法的CMOS二进制模式分类器

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摘要

Biological circuitry in the brain that has been associated with the Parzen method of classification inspired an analog CMOS binary pattern classifier. The circuitry resides on three separate chips. The first chip computes the closeness of a test vector to each training vector stored on the chip where "vector closeness" is defined as the number of bits two vectors have in common above some thresholds. The second chip computes the closeness of the test vector to each possible category where "category closeness" is defined as the sum of the closenesses of the test vector to each training vector in a particular category. Category closenesses are coded by currents which feed into an "early bird" winner-take-all circuit on the third chip that selects the category closest to the test vector. Parzen classifiers offer superior classification accuracy than the common nearest neighbor Hamming networks. A high degree of parallelism allows for O(1) time complexity and the chips are tillable for increased training vector storage capacity. Proof-of-concept chips were fabricated through the MOSIS chip prototyping service and successfully tested.
机译:与Parzen分类方法相关联的大脑生物电路启发了模拟CMOS二进制模式分类器。该电路位于三个单独的芯片上。第一芯片计算测试向量与存储在芯片上的每个训练向量的接近度,其中“向量接近度”定义为两个向量在某些阈值之上共同具有的位数。第二芯片计算测试向量与每个可能类别的接近度,其中“类别接近度”定义为测试向量与特定类别中每个训练向量的接近度之和。类别接近度由电流编码,该电流馈入第三芯片上的“早起的鸟”获胜者通吃电路中,该电路选择最接近测试向量的类别。 Parzen分类器比常见的最近邻居汉明网络具有更高的分类精度。高度的并行度允许O(1)时间复杂度,并且芯片可耕作以增加训练向量的存储容量。概念验证芯片是通过MOSIS芯片原型制作服务制造的,并已成功测试。

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