Multi-spectral face recognition: Identification of people in difficult environments

T. Bourlai, B. Cukic
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引用次数: 61

Abstract

In this paper we study the problems of intra-spectral and cross-spectral face recognition (FR) in homogeneous and heterogeneous environments. Specifically we investigate the advantages and limitations of matching (i) short wave infrared (SWIR) face images to visible images under controlled or uncontrolled conditions, (ii) mid-wave infrared (MWIR) to MWIR or visible images under controlled conditions, and (iii) intra-distance near infrared (NIR) to NIR images and cross-distance, cross-spectral NIR to visible images. All NIR images were captured night-time, outdoors and at mid-ranges (from 30 up to 120 meters). We utilized both commercial and academic face matchers and performed a set of experiments indicating that our cross-photometric score level fusion rule can be utilized to improve SWIR cross-spectral matching performance across all FR scenarios investigated. We also show that intra-spectral matching results, using either MWIR or NIR images, are comparable to the baseline results, i.e., when comparing visible to visible face images. Our experiments also indicate that the level of improvement in recognition performance is scenario dependent. Experiments also show that cross-spectral matching (the heterogeneous problem, where gallery and probe sets have face images acquired in different spectral bands) is a very challenging problem and it requires further investigation to address real-world law enforcement or military situations.
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多光谱人脸识别:在困难环境中识别人
本文研究了均匀和异构环境下的光谱内人脸识别和跨光谱人脸识别问题。具体来说,我们研究了以下几种匹配方法的优点和局限性:(i)在受控或不受控条件下短波红外(SWIR)人脸图像与可见光图像匹配,(ii)在受控条件下中波红外(MWIR)与MWIR或可见光图像匹配,以及(iii)距离内近红外(NIR)与近红外图像匹配以及跨距离、跨光谱近红外与可见光图像匹配。所有近红外图像都是在夜间、户外和中距离(从30米到120米)拍摄的。我们使用了商业和学术的人脸匹配器,并进行了一系列实验,表明我们的交叉光度评分水平融合规则可以用于改善所有FR场景下的SWIR交叉光谱匹配性能。我们还表明,使用MWIR或NIR图像的光谱内匹配结果与基线结果相当,即在比较可见光和可见光人脸图像时。我们的实验还表明,识别性能的提高程度取决于场景。实验还表明,交叉光谱匹配是一个非常具有挑战性的问题,需要进一步研究以解决现实世界的执法或军事情况。
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