題名: 3D Reconstruction and Face Recognition Using Kernel-Based ICA and Neural Networks
作者: Lin, Cheng-Jian
Huang, Ya-Tzu
Lee, Chi-Yung
關鍵字: ndependent component analysis, 3D human face reconstruction
3D human face recognition
back-propagation algorithm
neural networks
期刊名/會議名稱: 2007 NCS會議
摘要: Kernel-based nonlinear feature extraction and classification algorithms are popular research topics in machine learning. In this paper, we propose an improved photometric stereo scheme based on the basic reflectance model. In order to reconstruct a human face as a 3D model, we use kernel independent component analysis (KICA) to obtain the face’s surface normal vector on each point of the image. In this procedure, we find that the x-axis, y-axis and z-axis values of the normal vector’s coordinates are not arranged in order. Thus, an improved KICA (IKICA) method is proposed that takes the normal vector of a synthetic spherical surface normal vector as the supervised reference for solving this problem. After obtaining the correct normal vector’s sequence form surface, we use a method for enforcing integrability to reconstruct 3D objects. We test our algorithm on synthetically generated images to reconstruct object surfaces on a number of real images captured from the Yale Face Database B, and use three kinds of methods to fetch characteristic values. Those methods are called contour-based, circle-based, and feature-based methods. Then, a three layer feed-forward neural network trained by back-propagation algorithm is used to realize a classifier. All the experimental results were compared to those of the existing human face reconstruction and recognition approaches tested on the same images. The experimental results demonstrate that the proposed improved kernel independent component analysis (IKICA) method of reconstruction and human recognition are efficient approaches.
日期: 2008-08-06T02:35:06Z
分類:2007年 NCS 全國計算機會議

文件中的檔案:
檔案 描述 大小格式 
CE07NCS002007000019.pdf679.56 kBAdobe PDF檢視/開啟


在 DSpace 系統中的文件,除了特別指名其著作權條款之外,均受到著作權保護,並且保留所有的權利。