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Low-resolution face recognition using unimodal data fusion

机译:使用单峰数据融合的低分辨率面部识别

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The objective of low-resolution face recognition is to identify faces in an uncontrolled situations like from small size or poor quality images with varying pose, illumination, expression, etc. Most existing approaches use features of just one type. In this work, we propose a robust low face recognition technique based on unimodal features fusion, which is more discriminative than using only one feature modality. Features of each facial image are extracted using three steps: i) both Gabor filters and Histogram of Oriented Gradients (HOG) descriptor are calculated. ii) the size of these features is reduced using the Linear Discriminant Analysis (LDA) method in order to remove redundant information. iii) the reduced features are combined using Discriminant Correlation Analysis (DCA) method. To achieve the recognition task, a Support Vectors Machine Classifier, is used. Performance of the proposed method will be measured using the AR database.
机译:低分辨率面部识别的目的是在具有不同姿势,照明,表达等的小尺寸或差的质量图像中识别非控制性情况的面孔。大多数现有方法使用只有一种类型的功能。在这项工作中,我们提出了一种基于单峰特征融合的强大低面部识别技术,其比仅使用一个特征模态更为判别。使用三个步骤提取每个面部图像的特征:i)计算取向梯度(HOG)描述符的Gabor滤波器和直方图。 ii)使用线性判别分析(LDA)方法来减少这些特征的大小,以便去除冗余信息。 III)使用判别相关性分析(DCA)方法结合了降低的特征。为了实现识别任务,使用支持向量机器分类器。将使用AR数据库测量所提出的方法的性能。

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