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Image-to-image face recognition using Dual Linear Regression based Classification and Electoral College voting

机译:使用基于双重线性回归的分类和选举大学投票进行图像到图像的人脸识别

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This paper proposes an image-to-image face recognition algorithm that uses Dual Linear Regression based Classification (DLRC) and an Electoral College voting approach. Each face image involved is first converted into a cluster of images; each image in the cluster is obtained by shifting the original image a few pixels. The similarity of a pair of face images can be measured by comparing the distance between the corresponding image clusters, which is calculated using DLRC approach. To further improve performance, each cluster of images, representing a single face image, is then partitioned into a union of clusters of sub images. DLRC is then used to measure similarities between corresponding sub-image clusters to provide temporary identity decisions; a voting approach is applied to make final conclusions. We have carried out experiments on a benchmark dataset for face recognition. The result demonstrates that the proposed approach works best in certain simple situations, while its performance is also comparable to known algorithms in complicated situations.
机译:本文提出了一种基于图像的图像人脸识别算法,该算法使用基于双重线性回归的分类(DLRC)和选举学院的投票方法。首先将涉及的每个面部图像转换为图像簇;然后将其转换为图像簇。通过将原始图像移动几个像素来获得聚类中的每个图像。可以通过比较使用DLRC方法计算的相应图像簇之间的距离来测量一对面部图像的相似度。为了进一步提高性能,然后将代表单个面部图像的每个图像群集划分为子图像群集的并集。 DLRC然后用于测量相应子图像集群之间的相似性,以提供临时的身份决策;采用投票方式得出最终结论。我们已经在用于人脸识别的基准数据集上进行了实验。结果表明,所提出的方法在某些简单情况下效果最佳,而在复杂情况下其性能也可与已知算法相媲美。

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