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Gabor-oriented local order feature-based deep learning for face annotation

机译:面向加勒比的地方订单基于脸部注释的深度学习

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摘要

Face annotation, a modern research topic in the area of image processing, has useful real-life applications. It is a really difficult task to annotate the correct names of people to the corresponding faces because of the variations in facial appearance. Hence, there still is a need for a robust feature to improve the performance of the face annotation process. In this work, a novel approach called the Deep Gabor-Oriented Local Order Features (DGOLOF) for feature representation has been proposed, which extracts deep texture features from face images. Seven recently proposed face annotation methods are considered to evaluate the proposed deep texture feature under uncontrolled situations like occlusion, expression changes, illumination and pose variations. Experimental results on the LFW, IMFDB, Yahoo and PubFig databases show that the proposed deep texture feature provides efficient results with the Name Semantic Network (NSN)-based face annotation. Moreover, it is observed that the proposed deep texture feature improves the performance of face annotation, regardless of all the challenges involved.
机译:面对注释,在图像处理领域的现代研究主题,具有有用的现实生活应用。由于面部外观的变化,将人们的正确名称注释到相应的面部是一个非常困难的任务。因此,仍然需要一种坚固的特征来改善面部注释过程的性能。在这项工作中,已经提出了一种称为Beabor导向的局部订单特征(DGOLOF)的新方法,该方法对于特征表示,从面部图像中提取深度纹理特征。七个最近提出的面部注释方法被认为是在不受控制的情况下评估所提出的深度纹理特征,如遮挡,表达变化,照明和姿势变化。 LFW,IMFDB,Yahoo和Pubfig数据库上的实验结果表明,所提出的深度纹理功能提供了有效的结果,并使用名称语义网络(NSN)的面部注释。此外,观察到所提出的深度纹理特征提高了脸部注释的性能,无论涉及所有挑战。

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