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A principal component neural network-based face recognition system and ASIC implementation

机译:基于主组分的基于神经网络的面部识别系统和ASIC实现

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Principal component analysis (PCA) finds wide usage in computer-aided vision applications and one such application is face recognition. The neural network that performs PCA is called a principal component neural network (PCNN). This paper presents a new PCNN-based face recognition system. The proposed recognition system can tolerate local variations in the face such as expression changes and directional lighting. An optimal digital hardware design is proposed for PCNN. An ASIC implementation of the proposed design yields a throughput of processing about 11,000 inputs per second during the training phase and about 19,000 inputs per second during the retrieval phase. The customized hardware-based recognition is about 10/sup 5/ times faster than a software-based recognition in a PC. Such results are valuable for high-speed applications.
机译:主成分分析(PCA)在计算机辅助视觉应用中找到了广泛的用途,一个这样的应用程序是人脸识别。执行PCA的神经网络称为主分量神经网络(PCNN)。本文介绍了一种新的基于PCNN的面部识别系统。所提出的识别系统可以耐受诸如表达式变化和方向照明的面部的局部变化。为PCNN提出了一种最佳的数字硬件设计。所提出的设计的ASIC实现产生了在训练阶段期间每秒加工约11,000个输入的吞吐量,并且在检索期期间每秒约19,000个输入。基于硬件的基于硬件的识别比PC中的基于软件的识别速度快约10 / sup 5 / sup。这种结果对于高速应用是有价值的。

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