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Manifold based sparse representation for facial understanding in natural images

机译:基于流形的稀疏表示,用于自然图像中的面部理解

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摘要

Sparse representations, motivated by strong evidence of sparsity in the primate visual cortex, are gaining popularity in the computer vision and pattern recognition fields, yet sparse methods have not gained widespread acceptance in the facial understanding communities. A main criticism brought forward by recent publications is that sparse reconstruction models work well with controlled datasets, but exhibit coefficient contamination in natural datasets. To better handle facial understanding problems, specifically the broad category of facial classification problems, an improved sparse paradigm is introduced in this paper. Our paradigm combines manifold learning for dimensionality reduction, based on a newly introduced variant of semi-supervised Locality Preserving Projections, with a e~1 reconstruction error, and a regional based statistical inference model. We demonstrate state-of-the-art classification accuracy for the facial understanding problems of expression, gender, race, glasses, and facial hair classification. Our method minimizes coefficient contamination and offers a unique advantage over other facial classification methods when dealing with occlusions. Experimental results are presented on multi-class as well as binary facial classification problems using the Labeled Faces in the Wild, Cohn-Kanade, Extended Cohn-Kanade, and GEMEP-FERA datasets demonstrating how and under what conditions sparse representations can further the field of facial understanding.
机译:稀疏表示法受到灵长类动物视觉皮层稀疏性的有力佐证,在计算机视觉和模式识别领域越来越受欢迎,但稀疏方法尚未在面部理解界得到广泛接受。最近的出版物提出的主要批评是,稀疏重建模型可以很好地与受控数据集一起使用,但是在自然数据集中显示出系数污染。为了更好地处理面部理解问题,尤其是广泛的面部分类问题,本文引入了一种改进的稀疏范式。我们的范例结合了基于新引入的半监督局部保留投影变体的流形学习和降维,该变体具有e〜1的重构误差,以及基于区域的统计推断模型。我们针对表情,性别,种族,眼镜和面部毛发分类的面部理解问题展示了最新的分类准确性。当处理遮挡时,我们的方法可最大程度地减少系数污染,并提供优于其他面部分类方法的独特优势。实验结果针对野生型,Cohn-Kanade,Extended Cohn-Kanade和GEMEP-FERA数据集的多类以及二值脸部分类问题进行了介绍,这些数据集展示了稀疏表示如何以及在何种条件下可以进一步扩展图像处理领域。面部了解。

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