Facial Recognition System Using DWT, DCT, and Multilayer Sigmoid Neural Network Classifier

Genevieve Sapijaszko, W. Mikhael
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引用次数: 0

Abstract

Facial recognition systems have seen widespread use in numerous applications, including identity verification for phone security, missing person identification, and forensic investigations. The purpose of this study is to improve both the speed and accuracy of a facial recognition system, thus enhancing its suitability for real-world applications. The proposed system reduces overall computational complexity by using simple algorithms and transforms such as grayscaling, a two-dimensional discrete wavelet transform, and a two-dimensional discrete cosine transform. The classification algorithm increases accuracy by using a straight-forward multilayer sigmoid neural network, which better correlates the input and output data than existing methods. The recognition system is tested with four freely accessible datasets: the ORL, YALE, FERET-c, and FEI. A test set based on the combination of all datasets is also utilized to evaluate the system performance. Results show that the system still maintains high recognition rates despite reducing complexity compared to popular existing methods.
使用DWT, DCT和多层s型神经网络分类器的人脸识别系统
面部识别系统已经广泛应用于许多应用,包括电话安全的身份验证、失踪人员识别和法医调查。本研究的目的是提高人脸识别系统的速度和准确性,从而增强其对现实世界应用的适用性。该系统通过使用简单的算法和变换,如灰度化、二维离散小波变换和二维离散余弦变换,降低了整体的计算复杂度。该算法通过使用直接的多层s形神经网络来提高分类精度,与现有方法相比,该方法可以更好地关联输入和输出数据。该识别系统使用四个可自由访问的数据集进行测试:ORL, YALE, FERET-c和FEI。基于所有数据集的组合的测试集也被用来评估系统的性能。结果表明,与现有的常用方法相比,该系统在降低复杂性的同时仍保持了较高的识别率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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