首页> 外文会议>ACCV 2010;Asian conference on computer vision >A Multi-level Supporting Scheme for Face Recognition under Partial Occlusions and Disguise
【24h】

A Multi-level Supporting Scheme for Face Recognition under Partial Occlusions and Disguise

机译:部分遮挡和伪装的人脸识别多层次支持方案

获取原文

摘要

Face recognition has always been a challenging task in real-life surveillance videos, with partial occlusion being one of the key factors affecting the robustness of face recognition systems. Previous researches had approached the problem of face recognition with partial occlusions by dividing a face image into local patches, and training an independent classifier for each local patch. The final recognition result was then decided by integrating the results of all local patch classifiers. Such a local approach, however, ignored all the crucial distinguishing information presented in the global holistic faces. Instead of using only local patch classifiers, this paper presents a novel multi-level supporting scheme which incorporates patch classifiers at multiple levels, including both the global holistic face and local face patches at different levels. This supporting scheme employs a novel criteria-based class candidates selection process. This selection process preserves more class candidates for consideration as the final recognition results when there are conflicts between patch classifiers, while enables a fast decision making when most of the classifiers conclude to the same set of class candidates. All the patch classifiers will contribute their supports to each selected class candidate. The support of each classifier is defined as a simple distance-based likelihood ratio, which effectively enhances the effect of a "more-confident" classifier. The proposed supporting scheme is evaluated using the AR face database which contains faces with different facial expressions and face occlusions in real scenarios. Experimental results show that the proposed supporting scheme gives a high recognition rate, and outperforms other existing methods.
机译:在实时监控视频中,人脸识别一直是一项艰巨的任务,部分遮挡是影响人脸识别系统鲁棒性的关键因素之一。先前的研究通过将面部图像划分为局部斑块并为每个局部斑块训练独立的分类器来解决具有部分遮挡的面部识别问题。然后,通过整合所有本地补丁分类器的结果来确定最终的识别结果。然而,这种局部方法忽略了全球整体面孔中呈现的所有关键的区别信息。本文提出了一种新颖的多级支持方案,该方案将多个级别的补丁分类器结合在一起,包括全局整体脸部补丁和不同级别的局部脸部补丁,而不是仅使用局部补丁分类器。该支持方案采用了一种新颖的基于标准的班级候选人选择过程。当补丁分类器之间存在冲突时,此选择过程将保留更多的候选类作为最终识别结果,以供考虑,而当大多数分类器得出同一组候选者时,可以快速做出决策。所有补丁分类器将为每个选定的类别候选者提供支持。每个分类器的支持被定义为基于距离的简单似然比,它有效地增强了“更加自信”分类器的效果。使用AR人脸数据库评估提出的支持方案,该数据库包含真实场景中具有不同人脸表情和人脸遮挡的人脸。实验结果表明,所提出的支持方案具有较高的识别率,并且优于其他现有方法。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号