Face recognition in low-resolution videos using learning-based likelihood measurement model

S. Biswas, G. Aggarwal, P. Flynn
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引用次数: 19

Abstract

Low-resolution surveillance videos with uncontrolled pose and illumination present a significant challenge to both face tracking and recognition algorithms. Considerable appearance difference between the probe videos and high-resolution controlled images in the gallery acquired during enrollment makes the problem even harden In this paper, we extend the simultaneous tracking and recognition framework [22] to address the problem of matching high-resolution gallery images with surveillance quality probe videos. We propose using a learning-based likelihood measurement model to handle the large appearance and resolution difference between the gallery images and probe videos. The measurement model consists of a mapping which transforms the gallery and probe features to a space in which their inter-Euclidean distances approximate the distances that would have been obtained had all the descriptors been computed from good quality frontal images. Experimental results on real surveillance quality videos and comparisons with related approaches show the effectiveness of the proposed framework.
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基于学习的似然测量模型在低分辨率视频中的人脸识别
姿态和光照不受控制的低分辨率监控视频对人脸跟踪和识别算法提出了重大挑战。在登记过程中获取的图库中探针视频与高分辨率控制图像之间的巨大外观差异使得问题更加严峻。本文扩展了同步跟踪和识别框架[22],以解决高分辨率图库图像与监控质量探针视频的匹配问题。我们建议使用基于学习的似然度量模型来处理图库图像和探针视频之间的巨大外观和分辨率差异。测量模型由一个映射组成,该映射将画廊和探头特征转换为一个空间,其中它们的欧几里得距离近似于从高质量的正面图像中计算所有描述符所获得的距离。在真实监控视频上的实验结果以及与相关方法的比较表明了该框架的有效性。
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