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A review of optimization method in face recognition: Comparison deep learning and non-deep learning methods

机译:人脸识别优化方法综述:深度学习与非深度学习方法的比较

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Currently, face recognition system is growing sustainably on a larger scope. A few years ago, face recognition was used as a personal identification with a limited scope, now this technology has grown in the field of security, in terms of preventing fraudsters, criminals, and terrorists. In addition, face recognition is also used in detecting how tired a driver is, reducing the occurrence of road accidents, as well as in marketing, advertising, health, and others. Many method are developed to give the best accuracy in face recognition. Deep learning approach become trend in this field because of stunning results, and fast computation. However, the problem about accuracy, complexity, and scalability become a challenges in face recognition. This paper focus on recognizing the importance of this technology, how to achieve high accuracy with low complexity. Deep learning and non-deep learning methods are discussed and compared to analyze their advantages and disadvantages. From critical analysis using experiment with YALE dataset, non-deep learning algorithm can reach up to 90.6% for low-high complexity and 94.67% in deep learning method for low-high complexity. Genetic algorithm combining with CNN and SVM was an optimization method for overcome accuracy and complexity problems.
机译:目前,人脸识别系统在更大范围内正在可持续发展。几年前,人脸识别在有限范围内被用作个人识别,现在,在防止欺诈者,罪犯和恐怖分子方面,该技术在安全领域得到了发展。另外,面部识别还用于检测驾驶员的疲劳程度,减少道路交通事故的发生,以及用于营销,广告,健康等方面。已开发出许多方法以在人脸识别中提供最佳准确性。深度学习方法因其惊人的结果和快速的计算而成为该领域的趋势。然而,关于准确性,复杂性和可伸缩性的问题成为面部识别中的挑战。本文着重于认识到这项技术的重要性,以及如何以低复杂度实现高精度。讨论并比较了深度学习和非深度学习方法的优缺点。通过使用YALE数据集进行实验的批判性分析,低深度复杂度的非深度学习算法可以达到90.6%,深度复杂度较低的深度学习方法可以达到94.67%。结合CNN和SVM的遗传算法是克服精度和复杂性问题的一种优化方法。

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