Face Feature Weighted Fusion Based on Fuzzy Membership Degree for Video Face Recognition.

Jae Young Choi, K N Plataniotis, Yong Man Ro
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引用次数: 23

Abstract

This paper proposes a new video face recognition (FR) method that is designed for significantly improving FR via adaptive fusion of multiple face features (belonging to the same subject) acquired from a face sequence of video frames. In this paper, we derive an upper bound for recognition error arising from the proposed weighted feature fusion to justify theoretically its effectiveness for recognition from videos. In addition, in order to compute the optimal weights of face features to be fused, we develop a novel weight determination solution based on fuzzy membership function and quality measurement for face images. Using four public video databases, the effectiveness of the proposed method has been successfully evaluated under the conditions that are similar to those in real-world video FR applications. Furthermore, our method is simple and straightforward to implement.

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基于模糊隶属度的人脸特征加权融合视频人脸识别。
本文提出了一种新的视频人脸识别方法,通过自适应融合从视频帧的人脸序列中获取的多个人脸特征(属于同一主体),显著提高了视频人脸识别的识别率。在本文中,我们推导了由所提出的加权特征融合引起的识别误差的上界,从理论上证明了其对视频识别的有效性。此外,为了计算待融合人脸特征的最优权重,我们提出了一种基于模糊隶属函数和人脸图像质量测量的权重确定方法。利用四个公共视频数据库,在与实际视频FR应用相似的条件下,成功地评估了该方法的有效性。此外,我们的方法简单且易于实现。
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