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Face recognition across large pose variations via Boosted Tied Factor Analysis

机译:通过Boosted Tied Factor Analysis进行跨较大姿势变化的面部识别

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In this paper, we propose an ensemble-based approach to boost performance of Tied Factor Analysis(TFA) to overcome some of the challenges in face recognition across large pose variations. We use Adaboost. m1 to boost TFA which has shown to possess state-of-the-art face recognition performance under large pose variations. To this end, we have employed boosting as a discriminative training in the TFA as a generative model. In this model, TFA is used as a base classifier for the boosting algorithm and a weighted likelihood model for TFA is proposed to adjust the importance of each training data. Moreover, a modified weighting and a diversity criterion are used to generate more diverse classifiers in the boosting process. Experimental results on the FERET data set demonstrated the improved performance of the Boosted Tied Factor Analysis(BTFA) in comparison with TFA for lower dimensions when a holistic approach is being used.
机译:在本文中,我们提出了一种基于整体的方法来提高Tied Factor Analysis(TFA)的性能,以克服在较大姿势变化下的面部识别中的一些挑战。我们使用Adaboost。 m1增强了TFA,在较大的姿势变化下,TFA具有最先进的人脸识别性能。为此,我们在TFA中采用了boosting作为判别训练作为生成模型。在该模型中,将TFA用作提升算法的基本分类器,并提出了针对TFA的加权似然模型来调整每个训练数据的重要性。此外,在提升过程中,使用修改后的权重和分集标准来生成更多的分类器。当使用整体方法时,FERET数据集上的实验结果证明,与TFA相比,Boosted Tied Factor Analysis(BTFA)的性能得到了改善,而TFA却更小。

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