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首页> 外文期刊>EURASIP journal on applied signal processing >Information Theory for Gabor Feature Selection for Face Recognition
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Information Theory for Gabor Feature Selection for Face Recognition

机译:Gabor人脸识别特征选择的信息论

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摘要

A discriminative and robust feature-kernel enhanced informative Gabor feature-is proposed in this paper for face recognition. Mutual information is applied to select a set of informative and nonredundant Gabor features, which are then further enhanced by kernel methods for recognition. Compared with one of the top performing methods in the 2004 Face Verification Competition (FVC2004), our methods demonstrate a clear advantage over existing methods in accuracy, computation efficiency, and memory coal. The proposed method has been fully tested on the FERET database using the FERET evaluation protocol. Significant improvements on three of the test data sets are observed. Compared with the classical Gabor wavelet-based approaches using a huge number of features, our method requires less than 4 milliseconds to retrieve a few hundreds of features. Due to the substantially reduced feature dimension, only 4 seconds are required to recognize 200 face images. The paper also unified different Gabor filter definitions and proposed a training sample generation algorithm to reduce the effects caused by unbalanced number of samples available in different classes.
机译:本文提出了一种具有判别性和鲁棒性的特征核增强型信息Gabor特征,用于人脸识别。应用互信息选择一组信息性和非冗余Gabor特征,然后通过核方法对其进行进一步增强以进行识别。与2004年面部验证竞赛(FVC2004)中表现最好的方法之一相比,我们的方法在准确性,计算效率和记忆煤方面显示出明显优于现有方法的优势。所提出的方法已使用FERET评估协议在FERET数据库上进行了全面测试。观察到三个测试数据集的显着改进。与使用大量特征的基于经典Gabor小波的方法相比,我们的方法需要不到4毫秒的时间来检索数百个特征。由于特征尺寸大大减小,只需要4秒钟即可识别200张脸部图像。本文还统一了不同的Gabor滤波器定义,并提出了一种训练样本生成算法,以减少由不同类别中可用样本数量不平衡引起的影响。

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