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Fusion of Appearance and Depth Information for Face Recognition

机译:融合外观和深度信息以进行人脸识别

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摘要

In this paper, an investigation is carried out regarding combination of 3D and 2D information for face recognition. A two-stage method, PCA and a Reduced Multivariate Polynomial Model (RMPM), is developed to fuse the appearance and depth information of face images in feature level where simplicity (number of polynomial coefficients increases linearly with model-order and input-dimension, i.e. no dimension explosion as in the case of full multivariate polynomials) and ease of use (can be easily formulated into recursive learning fashion) are major concerns. To cater for fast on-line registration capability when a new user arrives, the learning is formulated into recursive form. The improvement of the face recognition rate using this combination is quantified. The recognition rate by the combination is better than either appearance alone or depth alone. The performance of the algorithm is verified on both XM2VTS database and a real-time stereo vision system, showing that it is able to detect, track and recognize a person walking towards a stereo camera within reasonable time.
机译:在本文中,对用于面部识别的3D和2D信息的组合进行了研究。开发了一种两阶段方法PCA和精简多元多项式模型(RMPM),用于在特征级别上融合人脸图像的外观和深度信息,从而简化操作(多项式系数的数量随模型阶数和输入维数线性增加,即没有像全多元多项式那样发生维数爆炸和易于使用(可以轻松地构造为递归学习方式)是主要问题。为了满足新用户到达时的快速在线注册功能,将学习公式化为递归形式。量化使用该组合的面部识别率的提高。组合的识别率比单独的外观或单独的深度要好。该算法的性能在XM2VTS数据库和实时立体视觉系统上均得到了验证,表明该算法能够在合理的时间内检测,跟踪和识别正走向立体摄像机的人。

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