A REAL TIME FACE RECOGNITION SYSTEM USING ALEXNET DEEP CONVOLUTIONAL NETWORK TRANSFER LEARNING MODEL

L. Omotosho, I. Ogundoyin, Joshua O. Oyeniyi, Oluwashina A. Oyeniran
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Abstract

. In the field of deep learning, facial recognition belongs to the computer vision category. In various applications such as access control system, security, attendance management etc., it has been widely used for authentication and identification purposes. In deep learning, transfer learning is a method of using a neural network model that is first trained on a problem similar to the problem that is being solved. The most commonly used face recognition methods are mainly based on template matching, geometric features based, algebraic and deep learning method. The advantage of template matching is that it is easy to implement, and the disadvantage is that it is difficult to deal with the pose and scale changes effectively. The most important issue, regardless of the method used in the face recognition system, is dimensionality and computational complexity, especially when operating on large databases. In this paper, we applied a transfer learning model based on AlexNet Deep convolutional network to develop a real time face recognition system that has a good robustness to face pose and illumination, reduce dimensionality, complexity and improved recognition accuracy. The system has a recognition accuracy of 98.95 %.
一个采用alexnet深度卷积网络迁移学习模型的实时人脸识别系统
。在深度学习领域,人脸识别属于计算机视觉范畴。在门禁系统、安防、考勤管理等各种应用中,它已被广泛用于认证和识别目的。在深度学习中,迁移学习是一种使用神经网络模型的方法,该模型首先在与正在解决的问题相似的问题上进行训练。目前最常用的人脸识别方法主要有基于模板匹配、基于几何特征、代数和深度学习的方法。模板匹配的优点是易于实现,缺点是难以有效处理位姿和尺度的变化。无论在人脸识别系统中使用哪种方法,最重要的问题是维数和计算复杂性,特别是在大型数据库上操作时。本文采用基于AlexNet深度卷积网络的迁移学习模型,开发了一种对人脸姿态和光照具有良好鲁棒性、降低了维数和复杂度、提高了识别精度的实时人脸识别系统。该系统的识别准确率为98.95%。
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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