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Multi pose face recognition using double stages classifications: SMLDA and fusion of scale invariant features

机译:使用双级分类的多姿态面识别:SMLDA和尺度不变功能的融合

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This paper presents alternative technique for multi-pose face recognition using double stages classifications: shifting mean LDA (SMLDA) and fusion of scale invariant features (FSIF) based face descriptor. The first stage is employed to find the best class candidates that are similar to the query image the second stage (i.e FSIF) is employed to find the best matched class corresponding to the query image. The aims of this method are to solve the large face variability due to pose variations, to decrease the computational time of FSIF-based face recognition, and to avoid using the 3D scanner for estimating any pose variations of a face image without decreasing the recognition performance. The experimental results show that proposed method can overcome large face variability due to face pose variations, need short the computational time, and give better recognition rate than those of the previous method. In addition, the proposed method also provides better recognition rate than that of 3D based methods without requiring 3D scanner
机译:本文介绍了使用双级分类的多姿态面识别的替代技术:转换平均值LDA(SMLDA)和基于尺度不变特征(FSIF)的面部描述符的融合。使用第一阶段来查找与查询图像类似的最佳类候选,第二级(I.EFIF)用于找到与查询图像对应的最佳匹配类。该方法的目的是解决由于姿势变化引起的大面的变异性,以减少基于FSIF的面部识别的计算时间,并避免使用3D扫描仪来估计面部图像的任何姿势变化而不降低识别性能。实验结果表明,提出的方法可以克服由于面部姿势变化引起的大面的变异性,需要缩短计算时间,并提供比先前方法的识别率更好。此外,该方法还提供比基于3D方法的识别率更好,而无需3D扫描仪

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