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首页> 外文期刊>Pattern Analysis and Applications >A sparse neighborhood preserving non-negative tensor factorization algorithm for facial expression recognition
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A sparse neighborhood preserving non-negative tensor factorization algorithm for facial expression recognition

机译:稀疏邻域保留非负张量分解算法的面部表情识别

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摘要

In this paper, a novel sparse neighborhood preserving non-negative tensor factorization (SNPNTF) algorithm is proposed for facial expression recognition. It is derived from non-negative tensor factorization (NTF), and it works in the rank-one tensor space. A sparse constraint is adopted into the objective function, which takes the optimization step in the direction of the negative gradient, and then projects onto the sparse constrained space. To consider the spatial neighborhood structure and the class-based discriminant information, a neighborhood preserving constraint is adopted based on the manifold learning and graph preserving theory. The Laplacian graph which encodes the spatial information in the face samples and the penalty graph which considers the pre-defined class information are considered in this constraint. By using it, the obtained parts-based representations of SNPNTF vary smoothly along the geodesics of the data manifold and they are more discriminant for recognition. SNPNTF is a quadratic convex function in the tensor space, and it could converge to the optimal solution. The gradient descent method is used for the optimization of SNPNTF to ensure the convergence property. Experiments are conducted on the JAFFE database, the Cohn-Kanade database and the AR database. The results demonstrate that SNPNTF provides effective facial representations and achieves better recognition performance, compared with non-negative matrix factorization, NTF and some variant algorithms. Also, the convergence property of SNPNTF is well guaranteed.
机译:本文提出了一种新的稀疏邻域保留非负张量因子分解算法(SNPNTF)。它是从非负张量因子分解(NTF)派生的,并且在秩张量空间中工作。在目标函数中采用稀疏约束,该约束朝负梯度的方向执行优化步骤,然后投影到稀疏约束空间上。为了考虑空间邻域结构和基于类的判别信息,基于流形学习和图保持理论,采用了邻域保持约束。在此约束条件下,考虑了对面部样本中的空间信息进行编码的拉普拉斯图和考虑了预定义类别信息的惩罚图。通过使用它,获得的SNPNTF的基于零件的表示形式沿着数据流形的测地线平滑变化,并且它们对于识别而言更具区分性。 SNPNTF是张量空间中的二次凸函数,可以收敛到最优解。梯度下降法用于SNPNTF的优化,以确保收敛性。在JAFFE数据库,Cohn-Kanade数据库和AR数据库上进行了实验。结果表明,与非负矩阵分解,NTF和某些变体算法相比,SNPNTF提供了有效的面部表示并获得了更好的识别性能。而且,SNPNTF的收敛性得到了很好的保证。

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