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首页> 外文期刊>IEEE Journal of Solid-State Circuits >Sub-Microwatt Analog VLSI Trainable Pattern Classifier
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Sub-Microwatt Analog VLSI Trainable Pattern Classifier

机译:亚兆瓦级模拟VLSI可训练模式分类器

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摘要

The design and implementation of an analog system-on-chip template-based pattern classifier for biometric signature verification at sub-microwatt power is presented. A programmable array of floating-gate subthreshold MOS translinear circuits matches input features with stored templates and combines the scores into category outputs. Subtractive normalization of the outputs by current-mode feedback produces confidence scores which are integrated for category selection. The classifier implements a support vector machine to select programming values from training samples. A two-step calibration procedure during programming alleviates offset and gain errors in the analog array. A 24-class, 14-input, 720-template classifier trained for speaker identification and fabricated on a 3 mm$,times,$3 mm chip in 0.5 $mu$m CMOS delivers real-time recognition accuracy on par with floating-point emulation in software. At 40 classifications per second and 840 nW power, the processor attains a computational efficiency of $1.3 times 10^{12}$ multiply-accumulates per second per Watt of power.
机译:提出了基于模拟系统芯片模板的模式分类器的设计和实现,该模式分类器用于以亚微瓦功率进行生物特征签名验证。浮动栅极亚阈值MOS超线性电路的可编程阵列将输入特征与存储的模板进行匹配,并将分数合并为类别输出。通过电流模式反馈对输出进行减法归一化会产生置信度得分,这些得分将集成为类别选择。分类器实现支持向量机,以从训练样本中选择编程值。编程过程中的两步校准程序减轻了模拟阵列中的失调和增益误差。 24类,14输入,720模板分类器,经过训练可用于说话人识别,并在0.5微米CMOS的3毫米,3倍,3毫米芯片中制造,可提供与浮点仿真同等的实时识别精度在软件中。在每秒40个分类和840 nW功率的情况下,处理器的计算效率为$ 1.3乘以每秒每瓦功率乘以10 ^ {12} $的乘积。

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