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Robust Face Recognition with Occlusion by Fusing Image Gradient Orientations with Markov Random Fields

机译:通过使用马尔可夫随机字段融合图像梯度方向,强大的人脸识别

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Partially occluded faces are very common in automatic face recognition (FR) in the real world. We explore the problem of FR with occlusion in the domain of Image Gradient Orientations (IGO) and center on the probabilistic generative model of occluded images. The existing works usually put stress on the error distribution in the non-occluded region but neglect the distribution in the occluded region for the unpredictability of occlusions. However, in the IGO domain, this distribution can be built simply and elegantly as a uniform distribution in the interval [-π, π). We fully use this distribution to build the probabilistic error model conditioned on the occlusion support and construct a new error metric, which fully harnesses the spatial and statistical local information of two compared images and plays a very important role in initializing the occlusion support. In addition, we extend the definition of occlusions to other variations, such as highlight illumination changes, and suggest these occlusion-like variations should also be detected and excluded from further recognition. To detect the occlusion support accurately, the contiguous structure of occlusions is modeled using a Markov random field (MRF). By fusing IGO with MRF, we propose a new error coding model, called Double Weighted Error Coding (DWEC), for robust FR with occlusion. Experiments demonstrate the effectiveness and robustness of DWEC in dealing with occlusion and occlusion-like variations.
机译:部分闭塞面在现实世界中的自动面部识别(FR)中非常常见。我们探讨了在图像梯度方向(IGO)域中遮挡的FR的问题,并在封闭图像的概率生成模型中的概率。现有的作品通常会对非闭塞区域的错误分布进行压力,但忽略了闭塞区域的分布,以实现闭塞的不可预测性。但是,在IGO域中,可以简单且优雅地在间隔[-π,π)中简单且优雅地构建该分布。我们充分利用此分发来构建封闭锁定支持的概率误差模型,并构建一个新的误差度量,它完全利用了两个比较图像的空间和统计本地信息,并在初始化遮挡载体方面发挥非常重要的作用。此外,我们将闭塞的定义扩展到其他变体,例如突出照明变化,并建议这些遮挡样变化也应检测并排除在进一步的识别之外。为了准确地检测遮挡支撑,使用马尔可夫随机场(MRF)建模闭塞的连续结构。通过使用MRF融合IGO,我们提出了一种新的错误编码模型,称为双加权误差编码(DWEC),用于遮挡的鲁棒FR。实验证明了DWEC在处理闭塞和闭塞式变异方面的有效性和鲁棒性。

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