局部线性回归(LLR)用于姿态不变人脸识别

Xiujuan Chai, S. Shan, Xilin Chen, Wen Gao
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引用次数: 32

摘要

视点(或姿态)引起的面部外观变化严重降低了人脸识别系统的性能,这是人脸识别的瓶颈之一。一种可能的解决方案是从任何给定的非正面视图生成虚拟正面视图,以获得虚拟的画廊/探头面。本文将这类解表述为一个预测问题,提出了一种简单而高效的局部线性回归(LLR)方法,该方法可以从给定的非正面人脸图像生成虚拟正面视图。通过观察发现,正面和非正面视图对对应的局部面部区域比整个面部区域更符合线性假设。这可以很容易地解释为三维脸型是由许多局部平面组成的,这些局部平面在成像投影下满足自然线性模型。在LLR中,我们简单地将整个非正面人脸图像分割成多个局部补丁,并对每个补丁应用线性回归来预测其虚拟正面补丁。与其他方法相比,在CMU PIE数据库上的实验结果表明,该方法具有明显的优势
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Local Linear Regression (LLR) for Pose Invariant Face Recognition
The variation of facial appearance due to the viewpoint (/pose) degrades face recognition systems considerably, which is well known as one of the bottlenecks in face recognition. One of the possible solutions is generating virtual frontal view from any given non-frontal view to obtain a virtual gallery/probe face. By formulating this kind of solutions as a prediction problem, this paper proposes a simple but efficient novel local linear regression (LLR) method, which can generate the virtual frontal view from a given non-frontal face image. The proposed LLR inspires from the observation that the corresponding local facial regions of the frontal and non-frontal view pair satisfy linear assumption much better than the whole face region. This can be explained easily by the fact that a 3D face shape is composed of many local planar surfaces, which satisfy naturally linear model under imaging projection. In LLR, we simply partition the whole non-frontal face image into multiple local patches and apply linear regression to each patch for the prediction of its virtual frontal patch. Comparing with other methods, the experimental results on CMU PIE database show distinct advantage of the proposed method
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