增强现实世界监控视频中的人脸识别

Le An, B. Bhanu, Songfan Yang
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引用次数: 8

摘要

在现实世界的监控视频中,人脸识别成为一个具有挑战性的问题,因为低分辨率的探头帧表现出姿势、光照条件和面部表情的变化。这与在受控环境下获得的通常是正面视图的画廊图像形成对比。由于探针图像与图库数据之间存在较大差异,直接匹配往往会导致识别精度不高。此外,低分辨率、模糊和噪声等伪影进一步扩大了这种差异。在本文中,我们提出了一个基于视频的人脸识别框架,使用一种新的图像表示称为扭曲平均脸(WAF)。waf的生成分为两个阶段:顺序翘曲和正面视图翘曲。waf可以很容易地与各种特征描述符或分类器一起使用。与原始探针数据相比,waf的图像质量明显更好,并且waf与画廊数据之间的外观差异被抑制。给定一个探测序列,仅需要为识别目的生成几个waf。我们在chokpoint数据集和我们内部的监测质量数据集上测试了所提出的方法。实验表明,采用新的图像表示方法可以显著提高识别精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Boosting Face Recognition in Real-World Surveillance Videos
Face recognition becomes a challenging problem in real-world surveillance videos where the low-resolution probe frames exhibit variations in pose, lighting condition, and facial expressions. This is in contrast with the gallery images which are generally frontal view faces acquired under controlled environments. A direct matching of probe images with gallery data often leads to poor recognition accuracy due to the significant discrepancy between the two kinds of data. In addition, the artifacts such as low resolution, blurriness and noise further enlarge this discrepancy. In this paper, we propose a video based face recognition framework using a novel image representation called warped average face (WAF). The WAFs are generated in two stages: in-sequence warping and frontal view warping. The WAFs can be easily used with various feature descriptors or classifiers. As compared to the original probe data, the image quality of the WAFs is significantly better and the appearance difference between the WAFs and the gallery data is suppressed. Given a probe sequence, only a few WAFs need to be generated for the recognition purpose. We test the proposed method on the ChokePoint dataset and our in-house dataset of surveillance quality. Experiments show that with the new image representation, the recognition accuracy can be boosted significantly.
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