Data Driven Gabor Wavelet Design for Face Recognition

L. Shen, L. Bai, Z. Ji
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引用次数: 1

Abstract

In this paper we propose a novel data driven strategy for designing Gabor wavelets for face recognition. Each face image is represented through a multi-sensor scheme, which splits the 2D frequency plane into a number of channels and identifies the most significant units for extracting information. The representative units for a set of face images are then derived based on statistical analysis of these units. The locations of these units in the 2D frequency plane are then used to design the frequency and orientation of Gabor wavelets for face recognition. Once frequency and orientation are determined, the scale of a Gabor wavelet is determined by the sharpness of the filtered images. Two Gabor wavelet based face recognition algorithms are applied to demonstrate the advantages of the proposed strategy against conventional parameter settings. Experimental results show that the face recognition algorithms using the designed Gabor wavelets achieve better performance in terms of accuracy and efficiency. Since the strategy is based on the training data, it can be easily applied to designing Gabor wavelets for general pattern recognition task.
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数据驱动Gabor小波设计用于人脸识别
本文提出了一种新的数据驱动策略来设计Gabor小波用于人脸识别。每个人脸图像通过多传感器方案表示,该方案将二维频率平面划分为多个通道,并识别最重要的单元以提取信息。然后根据这些单位的统计分析得出一组人脸图像的代表性单位。然后使用这些单元在二维频率平面中的位置来设计用于人脸识别的Gabor小波的频率和方向。一旦确定了频率和方向,Gabor小波的尺度由滤波后图像的清晰度决定。应用了两种基于Gabor小波的人脸识别算法来证明所提出的策略相对于传统参数设置的优势。实验结果表明,基于Gabor小波的人脸识别算法在准确率和效率方面都取得了较好的效果。由于该策略是基于训练数据的,因此可以很容易地应用于设计用于一般模式识别任务的Gabor小波。
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