Image quality assessment to enhance infrared face recognition

Camilo G. Rodriguez Pulecio, H. Benítez-Restrepo, A. Bovik
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引用次数: 12

Abstract

Automatic quality evaluation of infrared images has not been researched as extensively as for images of the visible spectrum. Moreover, there is a lack of studies on the influence of degradation of image quality on the performance of computer vision tasks operating on thermal images. Here, we quantify the impact of common image distortions on infrared face recognition, and present a method for aggregating perceptual quality-aware features to improve the identification rates. We use Natural Scene Statistics (NSS) to detect degradation of infrared images, and to adapt the face recognition algorithm to the quality of the test image. The proposed approach applied to a face identification algorithm based on thermal signatures yielded an improvement of rank one recognition rates between 11% and 19%. These results confirm the relevance of image quality assessment for improving biometric identification systems that use thermal images.
图像质量评估,增强红外人脸识别
红外图像的自动质量评价还没有像可见光图像那样得到广泛的研究。此外,缺乏关于图像质量退化对热图像计算机视觉任务性能影响的研究。在此,我们量化了常见图像失真对红外人脸识别的影响,并提出了一种聚合感知质量感知特征以提高识别率的方法。我们使用自然场景统计(NSS)来检测红外图像的退化,并使人脸识别算法适应测试图像的质量。将该方法应用于基于热特征的人脸识别算法,其识别率提高了11%至19%。这些结果证实了图像质量评估与改进使用热图像的生物识别系统的相关性。
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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