Near-IR to visible light face matching: Effectiveness of pre-processing options for commercial matchers

John S. Bernhard, Jeremiah R. Barr, K. Bowyer, P. Flynn
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引用次数: 22

Abstract

The use of near-IR images for face recognition has been proposed as a means to address illumination issues that can hinder standard visible light face matching. However, most existing non-experimental databases contain visible light images. This makes the matching of near-IR face images to visible light face images an interesting and useful challenge. Image pre-processing techniques can potentially be used to help reduce the differences between near-IR and visible light images, with the goal of improving matching accuracy. We evaluate the use of several such techniques in combination with commercial matchers and show that simply extracting the red plane results in a comparable improvement in accuracy. In addition, we show that many of the pre-processing techniques hinder the ability of existing commercial matchers to extract templates. We also make available a new dataset called Near Infrared Visible Light Database (ND-NIVL) consisting of visible light and near-IR face images with accompanying baseline performance for several commercial matchers.
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近红外到可见光的人脸匹配:商用匹配器预处理选项的有效性
使用近红外图像进行人脸识别已被提出作为解决照明问题的一种手段,这可能会阻碍标准可见光人脸匹配。然而,大多数现有的非实验数据库包含可见光图像。这使得近红外人脸图像与可见光人脸图像的匹配成为一个有趣而有用的挑战。图像预处理技术可以潜在地用于帮助减少近红外和可见光图像之间的差异,以提高匹配精度。我们评估了几种这样的技术与商业匹配器的结合使用,并表明简单地提取红色平面会导致准确度的相当提高。此外,我们还表明,许多预处理技术阻碍了现有商业匹配器提取模板的能力。我们还提供了一个名为近红外可见光数据库(ND-NIVL)的新数据集,该数据集由可见光和近红外人脸图像组成,并附带了几个商业匹配器的基线性能。
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