Face recognition based on error detection under partial occlusion

Xiaolin Chen, Shunfang Wang, Weibo Liu
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引用次数: 2

Abstract

Face recognition presents the difficulty of occlusion. The occlusion is generally endowed a little weight to weaken its influence on recognition performance. On the basis of this idea, many existing algorithms used the reconstruction error or projection error as the probability estimation for occlusion image. These methods require iterative computation, which may lead to the difficulty of threshold selection and high time complexity. To solve these problems, this paper proposed a novel method for occlusion face recognition by using an error detection method. First, a face image is divided into four regions and we extract feature and detect error for each region. Second, we use the logarithmic transform error operator to calculate the weight value of each region. The experiments based on the AR database demonstrate that the proposed algorithm for occlusion face recognition achieves high efficiency and good robustness and outperforms the existing methods for certain occlusion recognition.
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局部遮挡下基于错误检测的人脸识别
人脸识别存在遮挡困难。为了降低遮挡对识别性能的影响,遮挡通常被赋予较小的权重。基于这一思想,现有的许多算法使用重建误差或投影误差作为遮挡图像的概率估计。这些方法需要迭代计算,这可能导致阈值选择困难和时间复杂度高。针对这些问题,本文提出了一种基于误差检测的遮挡人脸识别新方法。首先,将人脸图像分成四个区域,对每个区域进行特征提取和误差检测。其次,我们使用对数变换误差算子来计算每个区域的权重值。基于AR数据库的实验表明,本文提出的遮挡人脸识别算法具有较高的效率和较好的鲁棒性,在某些遮挡识别方面优于现有方法。
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