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Combining local face image features for identity verification

机译:结合本地人脸图像特征进行身份验证

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摘要

With an aim of extracting robust facial features under pose variations, this paper presents two directional projections corresponding to extraction of vertical and horizontal local face image features. The matching scores computed from both horizontal and vertical features are subsequently fused at score level via an extreme learning machine that optimizes the total error rate for performance enhancement. In order to benchmark the performance, both the feature extraction and fusion results are compared with that of popular face recognition methods such as principal components analysis and linear discriminant analysis in terms of equal error rate and CPU time. Our empirical experiments using four data sets show encouraging results under considerable horizontal pose variations.
机译:为了在姿势变化下提取鲁棒的面部特征,本文提出了两个方向投影,分别对应于提取垂直和水平局部面部图像特征。随后,由水平和垂直特征计算出的匹配分数会通过极限学习机在分数级别进行融合,该机器会优化总错误率以提高性能。为了对性能进行基准测试,将特征提取和融合结果与流行的人脸识别方法(例如主成分分析和线性判别分析)在错误率和CPU时间相等方面进行了比较。我们使用四个数据集进行的经验实验表明,在相当大的水平姿势变化下,结果令人鼓舞。

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