参数控制的混沌协同神经网络人脸识别

Wee Ming Wong, C. Loo, A. Tan
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引用次数: 3

摘要

神经网络在模式识别领域起着重要的作用。对于模式识别,传统神经网络的一个主要缺点是神经网络很容易陷入虚假状态。为了克服这一问题,文献中提出了协同神经网络(SNN),然而,在将协同神经网络应用于人脸识别时,由于存储容量小,对于大型图像数据库,结果并不令人满意。因此,在传统的协同神经网络中引入混沌动态特性来解决这一问题。本文在混沌协同神经网络(CSNN)中引入了一个额外的控制参数,以便在识别图像时终止识别过程。这有助于减轻处理内存的需求,这往往伴随着这样的网络。测试了各种图像缺陷,并基于增量样本量评估了两种方法的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parameter controlled chaotic synergetic neural network for face recognition
Neural network plays a major role in the field of pattern recognition. For pattern recognition, a major drawback with traditional neural networks is that neural networks may easily be trapped in spurious states. Synergetic neural network (SNN) has been proposed in the literature to overcome this problem, however, when applying synergetic neural network on face recognition, the results are not satisfactory for large image databases due to low memory capacity. Therefore, the chaotic dynamic property is introduced to the conventional synergetic neural network in order to resolve the problem. In this paper, an additional control parameter is introduced to the chaotic synergetic neural network (CSNN) in order to terminate the recognition process whenever an image is recognized. This helps to alleviate processing memory demand which often accompanies such networks. Various imagery defects are tested and the accuracy of both methods is evaluated based on incremental sample size.
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