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Fusion of Directional Spatial Discriminant Features for Face Recognition

机译:人脸识别定向空间判别特征的融合

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Feature level fusion is one of the most important techniques, used to improve the performance of a face recognition system. This paper presents an approach of fusion of directional spatial discriminant features for face recognition. The key idea of the proposed method is to fuse the facial features lie along the horizontal, vertical and diagonal directions. So that this fused feature vector can contain more discriminant information than the individual facial feature lie along single direction. However due to fusion the size of fused feature vector is become larger which may increase complexity of the classifier. To optimize this lower dimensional discriminant features are again extracted from this large fused feature vector. In our experiment, we apply G-2DFLD method on the original images to extract the discriminant features. Then original images are converted into diagonal images and another set of discriminant features, representing the diagonal information, are extracted by using the G-2DFLD method. The original and diagonal features vectors are then fused to form a large feature vector. The dimension of this large fused feature vector is then reduced by PCA method and this resultant reduced feature vector is used for classification and recognition by Radial Basis Function-Neural Networks (RBF-NN). Experiments on the AT&T (formally known as ORL database) face database indicate the competitive performance of the proposed method, as compared to some existing subspaces-based methods. Click here and insert your abstract text.
机译:特征级融合是最重要的技术之一,用于提高面部识别系统的性能。本文提出了一种融合的方向空间判别特征,用于面部识别。所提出的方法的关键思想是熔化面部特征沿水平,垂直和对角线方向谎言。因此,该融合特征向量可以包含比各个面部特征沿着单一方向所在的更多判别信息。然而,由于融合,融合特征向量的大小变得更大,这可能增加分类器的复杂性。为了优化这种较低的尺寸判别特征,再次从该大融合特征向量中提取。在我们的实验中,我们在原始图像上应用G-2DFLD方法以提取判别功能。然后通过使用G-2DFLD方法将原始图像转换为对角线图像,并且代表对角线信息的另一组判别特征。然后融合原始和对角线特征向量以形成大特征向量。然后通过PCA方法减少该大融合特征向量的尺寸,并且该得到的减少特征向量用于通过径向基函数 - 神经网络(RBF-NN)进行分类和识别。与某些现有子空间的方法相比,AT&T(正式称为ORL数据库)面部数据库的实验表明所提出的方法的竞争性能。单击此处并插入抽象文本。

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