Three-View Surveillance Video Based Face Modeling for Recogniton

Scott Von Duhn, M. Ko, L. Yin, Terry Hung, Xiaozhou Wei
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引用次数: 4

Abstract

3D face recognition has been researched intensively in recent decades. Most 3D data (so called range facial data) are obtained from 3D range imaging systems. Such data representations have been proven effective for face recognition in 3D space. However, obtaining such data requires subject cooperation in a constrained environment, which is not practical for many real applications of video surveillance. It is therefore in high demand to use regular video cameras to generate 3D face models for further classification. The goal of our research is to develop a method of tracking feature points on a face in multiple views in order to build 3D models of individual faces. We proposed a three-view based video tracking and model creation algorithm, which is based on the active appearance model and a generic facial model. We will describe how to build useful individual models over time, and validate the created dynamic model sequences. Our experiments demonstrate the feasibility of the proposed work through the application for face recognition.
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基于三视图监控视频的人脸识别建模
近几十年来,三维人脸识别技术得到了广泛的研究。大多数三维数据(即所谓的距离面部数据)是从三维距离成像系统获得的。这种数据表示已被证明对三维空间的人脸识别是有效的。然而,获取此类数据需要在受限的环境下进行主体合作,这对于视频监控的许多实际应用来说是不现实的。因此,使用普通摄像机生成3D人脸模型以进行进一步分类的需求很大。我们的研究目标是开发一种在多个视图中跟踪人脸特征点的方法,以建立单个人脸的3D模型。提出了一种基于活动外观模型和通用面部模型的三视图视频跟踪和模型创建算法。我们将描述如何随着时间的推移构建有用的单个模型,并验证创建的动态模型序列。我们的实验通过应用于人脸识别证明了所提出工作的可行性。
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