A New Hybrid Shape Moment Invariant Techniques for Face Identification in Thermal and Visible Visions

S. Hamandi, A. M. Rahma, R. Hassan
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引用次数: 4

Abstract

Presently, the extraction of robust facial features is becoming very effective for accurate face recognition especially for smart security surveillance systems. This paper investigates three different moment invariants techniques for robust facial features extraction and then determine how each one of these moments is affected by whether the face image was thermal or on a greyscale with the proposal of a hybrid technique that deals with the robust descriptors of each method. This hybrid technique has improved the results and gave robust facial features for face identification. A feed-forward neural network is trained with these moments' features where the recognized faces are classified to one of the basic faces of IRIS and CARL face datasets which achieved high accuracy reaching 98.1% for thermal images and 81.2% for grey images.
一种基于热视觉和视觉的混合形状不变人脸识别技术
目前,鲁棒性人脸特征的提取是实现准确人脸识别的重要手段,尤其是在智能安防监控系统中。本文研究了三种不同的矩不变量鲁棒人脸特征提取技术,然后确定了每个矩是如何受到人脸图像是热图像还是灰度图像的影响,并提出了一种处理每种方法鲁棒描述子的混合技术。这种混合技术改善了结果,并为人脸识别提供了鲁棒的面部特征。利用这些矩量特征训练前馈神经网络,将识别的人脸分类为IRIS和CARL人脸数据集的基本人脸之一,热图像和灰度图像的识别准确率分别达到98.1%和81.2%。
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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