首页> 外文会议>International Workshop on Biometric Recognition Systems(IWBRS 2005); 20051022-23; Beijing(CN) >Gabor Feature Selection for Face Recognition Using Improved AdaBoost Learning
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Gabor Feature Selection for Face Recognition Using Improved AdaBoost Learning

机译:利用改进的AdaBoost学习进行人脸识别的Gabor特征选择

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Though AdaBoost has been widely used for feature selection and classifier learning, many of the selected features, or weak classifiers, are redundant. By incorporating mutual information into AdaBoost, we propose an improved boosting algorithm in this paper. The proposed method fully examines the redundancy between candidate classifiers and selected classifiers. The classifiers thus selected are both accurate and non-redundant. Experimental results show that the strong classifier learned using the proposed algorithm achieves a lower training error rate than AdaBoost. The proposed algorithm has also been applied to select discriminative Gabor features for face recognition. Even with the simple correlation distance measure and 1-NN classifier, the selected Gabor features achieve quite high recognition accuracy on the FERET database, where both expression and illumination variance exists. When only 140 features are used, the selected features achieve as high as 95.5% accuracy, which is about 2.5% higher than that of features selected by AdaBoost.
机译:尽管AdaBoost已被广泛用于特征选择和分类器学习,但许多选定的特征或弱分类器是多余的。通过将互信息纳入AdaBoost,我们提出了一种改进的增强算法。所提出的方法充分检查了候选分类器和选定分类器之间的冗余性。这样选择的分类器既是准确的又是非冗余的。实验结果表明,与AdaBoost相比,使用该算法学习的强分类器的训练错误率更低。所提出的算法也已被应用于选择区分Gabor特征进行人脸识别。即使使用简单的相关距离测度和1-NN分类器,选定的Gabor特征也可以在FERET数据库上实现很高的识别精度,该数据库中同时存在表达式和光照差异。仅使用140个功能时,所选功能的准确率高达95.5%,比AdaBoost选择的功能高约2.5%。

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