A novel approach for multimodal face recognition system based on modular PCA

S. Parvathy, S. Naveen, R. Moni
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引用次数: 4

Abstract

An efficient face recognition system should recognize faces in different views and poses. The efficiency of a human face recognition system depends on the capability of face recognition in presence of changes in the appearance of face due to expression, pose and illumination. A novel algorithm which utilizes the combination of texture and depth information based on Modular PCA to overcome the problem of pose variation and illumination change for face recognition is proposed. The system has combined 2D and 3D systems in the feature level which presents higher performance in contrast with methods which utilizes either 2D or 3D system separately. A multimodal face recognition based on Modular PCA when compared with conventional PCA algorithm has an improved recognition rate for face images with large variations in illumination and facial expression. The proposed algorithm is tested with FRAV3D database that has faces with pose variation and illumination changes. Recognition rates from experimental results show the superiority of Modular PCA over conventional PCA methods in tackling face images with different pose variations and changes in illuminations. The proposed algorithm shows a recognition rate of 86% that is achieved in fusion experiment.
一种基于模块化PCA的多模态人脸识别方法
一个高效的人脸识别系统应该能够识别不同视角和姿态的人脸。人脸识别系统的效率取决于在面部表情、姿势和光照变化的情况下,人脸识别的能力。提出了一种基于模块化主成分分析的纹理信息和深度信息相结合的人脸识别算法,克服了姿态变化和光照变化的问题。该系统在特征级结合了二维和三维系统,与单独利用二维或三维系统的方法相比,具有更高的性能。与传统的主成分分析算法相比,基于模块化主成分分析的多模态人脸识别对于光照和面部表情变化较大的人脸图像具有更高的识别率。在具有姿态变化和光照变化的人脸的FRAV3D数据库中对该算法进行了测试。实验结果表明,模块化主成分分析方法在处理不同姿态变化和光照变化的人脸图像方面优于传统主成分分析方法。在融合实验中,该算法的识别率达到了86%。
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