Multispectral Texture Features from Visible and Near-Infrared Synthetic Face Images for Face Recognition

Hyungil Kim, Seung-ho Lee, Yong Man Ro
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引用次数: 5

Abstract

Recently, high-performance face recognition has attracted research attention in real-world scenarios. Thanks to the advances in sensor technology, face recognition system equipped with multiple sensors has been widely researched. Among them, face recognition system with near-infrared imagery has been one important research topic. In this paper, complementary effect resided in face images captured by nearinfrared and visible rays is exploited by combining two distinct spectral images (i.e., face images captured by near-infrared and visible rays). We propose a new texture feature (i.e., multispectral texture feature) extraction method with synthesized face images to achieve high-performance face recognition with illumination-invariant property. The experimental results show that the proposed method enhances the discriminative power of features thanks the complementary effect.
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用于人脸识别的可见光和近红外合成人脸图像多光谱纹理特征
近年来,高性能人脸识别在现实场景中的研究备受关注。由于传感器技术的进步,多传感器的人脸识别系统得到了广泛的研究。其中,基于近红外图像的人脸识别系统一直是一个重要的研究课题。本文通过将近红外和可见光两种不同的光谱图像(即近红外和可见光捕获的人脸图像)结合起来,利用近红外和可见光捕获的人脸图像存在的互补效应。为了实现具有光照不变性的高性能人脸识别,提出了一种基于合成人脸图像的纹理特征(即多光谱纹理特征)提取方法。实验结果表明,该方法利用互补效应增强了特征的判别能力。
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