首页> 外文会议>European signal processing conference;EUSIPCO 2009 >MULTI LIBRARY WAVELET NEURAL NETWORKS FOR 3D FACE RECOGNITION USING 3D FACIAL SHAPE REPRESENTATION
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MULTI LIBRARY WAVELET NEURAL NETWORKS FOR 3D FACE RECOGNITION USING 3D FACIAL SHAPE REPRESENTATION

机译:使用3D面形表示的3D人脸识别多库小波神经网络

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This paper presents a new approach for 3D face modeling and recognition: Motivated by finding a representation that embodies a high power of discrimination between face classes, a new type of 3D shape descriptors is suggested. We have developed a fully automatic system which uses an alignment algorithm to register 3D facial scans. In addition, scalability in both time and space is achieved by converting 3D facial scans into compact wavelet metadata. Our system consists in two phases. The first phase is called enrolment composed of 3 steps: data processing, alignment and metadata generating. The metadata generating step is powered by the use of Multi Library Wavelet Neural Networks (MLWNN). The second phase is called Authentication it starts with the calculation of depth distances between a probe and gallery 3D face. A K-Nearest Neighbors (K-NN) technique is used for 3D face classification. The results of this contribution are more interesting, in comparison with some others works, in term of recognition rate using the GavabDB 3D facial database.
机译:本文提出了一种用于3D人脸建模和识别的新方法:通过找到一种体现人脸类之间的强大区分能力的表示形式,提出了一种新型的3D形状描述符。我们已经开发了一种全自动系统,该系统使用对齐算法来注册3D面部扫描。此外,通过将3D面部扫描转换为紧凑的小波元数据,可以在时间和空间上实现可伸缩性。我们的系统分为两个阶段。第一阶段称为注册,包括三个步骤:数据处理,对齐和元数据生成。元数据生成步骤是通过使用多库小波神经网络(MLWNN)来实现的。第二阶段称为身份验证,它从计算探针和图库3D面之间的深度距离开始。 K最近邻(K-NN)技术用于3D人脸分类。与使用GavabDB 3D面部数据库的识别率相比,与其他一些作品相比,这种贡献的结果更加有趣。

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