首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Achieving robust face recognition from video by combining a weak photometric model and a learnt generic face invariant
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Achieving robust face recognition from video by combining a weak photometric model and a learnt generic face invariant

机译:通过结合弱测光模型和学习到的通用人脸不变性,从视频中获得可靠的人脸识别

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In spite of over two decades of intense research, illumination and pose invariance remain prohibitively challenging aspects of face recognition for most practical applications. The objective of this work is to recognize faces using video sequences both for training and recognition input, in a realistic, unconstrained setup in which lighting, pose and user motion pattern have a wide variability and face images are of low resolution. The central contribution is an illumination invariant, which we show to be suitable for recognition from video of loosely constrained head motion. In particular there are three contributions: (i) we show how a photometric model of image formation can be combined with a statistical model of generic face appearance variation to exploit the proposed invariant and generalize in the presence of extreme illumination changes; (ii) we introduce a video sequence re-illumination algorithm to achieve fine alignment of two video sequences; and (iii) we use the smoothness of geodesically local appearance manifold structure and a robust same-identity likelihood to achieve robustness to unseen head poses. We describe a fully automatic recognition system based on the proposed method and an extensive evaluation on 323 individuals and 1474 video sequences with extreme illumination, pose and head motion variation. Our system consistently achieved a nearly perfect recognition rate (over 99.7% on all four databases).
机译:尽管进行了二十多年的深入研究,但对于大多数实际应用而言,光照和姿势不变性仍然是面部识别面临的极具挑战性的方面。这项工作的目的是在逼真的,不受约束的设置中使用视频序列进行训练和识别输入来识别人脸,其中照明,姿势和用户运动模式具有很大的可变性,而人脸图像的分辨率较低。中心作用是照明不变性,我们证明它适合从不受约束的头部运动的视频中识别。特别是有以下三点贡献:(i)我们展示了如何将图像形成的光度学模型与通用面部外观变化的统计模型结合起来,以利用拟议的不变性并在存在极端照明变化的情况下进行概括; (ii)我们引入了视频序列重新照明算法,以实现两个视频序列的精确对齐; (iii)我们使用测地线局部外观流形结构的平滑度和鲁棒的同一性可能性来实现对看不见的头部姿势的鲁棒性。我们描述了一种基于提出的方法的全自动识别系统,并对323个个体和1474个视频序列进行了广泛的评估,这些视频序列具有极端的照度,姿势和头部运动变化。我们的系统始终达到近乎完美的识别率(在所有四个数据库上均超过99.7%)。

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