首页> 外文会议>International Computer Science Symposium in Russia(CSR 2006); 20060608-12; St.Petersburg(RU) >3D Facial Recognition Using Eigenface and Cascade Fuzzy Neural Networks: Normalized Facial Image Approach
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3D Facial Recognition Using Eigenface and Cascade Fuzzy Neural Networks: Normalized Facial Image Approach

机译:使用特征脸和级联模糊神经网络的3D面部识别:标准化面部图像方法

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The depth information in the face represents personal features in detail. In particular, the surface curvatures extracted from the face contain the most important personal facial information. The principal component analysis using the surface curvature reduces the data dimensions with less degradation of original information, and the proposed 3D face recognition algorithm collaborated into them. The recognition for the eigenface referred from the maximum and minimum curvatures is performed. To classify the faces, the cascade architectures of fuzzy neural networks, which can guarantee a high recognition rate as well as parsimonious knowledge base, are considered. Experimental results on a 46 person data set of 3D images demonstrate the effectiveness of the proposed method.
机译:面部的深度信息详细代表了个人特征。特别地,从面部提取的表面曲率包含最重要的个人面部信息。使用表面曲率的主成分分析可减少数据尺寸,同时减少原始信息的退化,并且将拟议的3D人脸识别算法与它们配合使用。执行从最大曲率和最小曲率参考的特征面识别。为了对人脸进行分类,考虑了可以保证较高识别率和简约知识库的模糊神经网络的级联体系结构。在46人的3D图像数据集上的实验结果证明了该方法的有效性。

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