基于分数融合的多模态混合人脸识别

Taher Khadhraoui, F. Benzarti, H. Amiri
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引用次数: 5

摘要

本文提出了一种基于相关向量机评分融合的二维和三维人脸识别新方法。RVM使用核函数的组合对训练数据进行分类,并与SVM进行比较。引入了一些新颖的方法,使识别对面部表情具有鲁棒性。这些创新包括:从二维面部图像和点云中计算姿态和面部表情的自动不变特征,并生成局部描述符。通过主成分分析分别对这两个描述符进行约简,得到两个归一化后融合的分数,以提高识别性能。该方法在CASIA-3D数据库上进行了测试,扫描总数为4674次,其中每人可扫描38次。结果表明,该方法具有良好的应用前景,在0.01 FAR下的验证率为99.4%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multimodal hybrid face recognition based on score level fusion using Relevance Vector Machine
In this paper, we present a novel fusion approach 2D and 3D face recognition based on score level fusion using Relevance Vector Machine. RVM uses a combination of kernel functions on training data for classification and compared to SVM. Several novelties are introduced to make the recognition robust to facial expressions. These novelties include: Automatic invariant feature in the pose and in the facial expressions is calculated from 2D facial image and from the point cloud and to generate a local descriptor. These two descriptors are reduced separately by the Principal Component Analysis to provide two scores which are normalized and then are fused to improve the recognition performance. The proposed approach is tested on a CASIA-3D database, the total number of scans is 4674 among which 38 scans per person are available. The results are found to be promising, and show the potential of our approach, we obtain a 99.4% verification rate at 0.01 FAR.
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