3D Spatio-Temporal face recognition using dynamic range model sequences

Yi Sun, L. Yin
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引用次数: 10

Abstract

Research on 3D face recognition has been intensified in recent years. However, most research has focused on the 3D static data analysis. In this paper, we investigate the face recognition problem using dynamic 3D face model sequences. Based on our newly created 3D dynamic face database, we propose to use a spatio-temporal hidden Markov model (HMM) which incorporates 3D surface feature characterization to learn the spatial and temporal information of faces. The advantage of using 3D dynamic data for face recognition has been evaluated by comparing our approach to three conventional approaches: 2D video based temporal HMM model, conventional 2D-texture based approach (e.g., Gabor wavelet based approach), and static 3D-model-based approaches.
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基于动态范围模型序列的三维时空人脸识别
近年来,三维人脸识别的研究得到了加强。然而,大多数研究都集中在三维静态数据分析上。本文研究了基于动态三维人脸模型序列的人脸识别问题。在新建立的三维动态人脸数据库的基础上,提出了一种结合三维表面特征表征的时空隐马尔可夫模型(HMM)来学习人脸的时空信息。通过将我们的方法与三种传统方法进行比较,评估了使用3D动态数据进行人脸识别的优势:基于2D视频的时间HMM模型,传统的基于2D纹理的方法(例如,基于Gabor小波的方法)和基于静态3D模型的方法。
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