DocumentCode
1299757
Title
Tensor Learning for Regression
Author
Guo, Weiwei ; Kotsia, Irene ; Patras, Ioannis
Author_Institution
Coll. of Electron. Sci. & Eng., Nat. Univ. of Defense Technol., Changsha, China
Volume
21
Issue
2
fYear
2012
Firstpage
816
Lastpage
827
Abstract
In this paper, we exploit the advantages of tensorial representations and propose several tensor learning models for regression. The model is based on the canonical/parallel-factor decomposition of tensors of multiple modes and allows the simultaneous projections of an input tensor to more than one direction along each mode. Two empirical risk functions are studied, namely, the square loss and ε-insensitive loss functions. The former leads to higher rank tensor ridge regression (TRR), and the latter leads to higher rank support tensor regression (STR), both formulated using the Frobenius norm for regularization. We also use the group-sparsity norm for regularization, favoring in that way the low rank decomposition of the tensorial weight. In that way, we achieve the automatic selection of the rank during the learning process and obtain the optimal-rank TRR and STR. Experiments conducted for the problems of head-pose, human-age, and 3-D body-pose estimations using real data from publicly available databases, verified not only the superiority of tensors over their vector counterparts but also the efficiency of the proposed algorithms.
Keywords
learning (artificial intelligence); pose estimation; regression analysis; support vector machines; tensors; ε-insensitive loss functions; 3D body-pose estimations; Frobenius norm; automatic selection; canonical decomposition; empirical risk functions; group-sparsity norm; head-pose; human-age; input tensor; learning process; low rank decomposition; multiple modes; optimal-rank STR; optimal-rank TRR; parallel-factor decomposition; publicly available databases; rank support tensor regression; simultaneous projections; square loss; tensor learning models; tensor ridge regression; tensorial representations; tensorial weight; tensors; vector counterparts; Computer science; Electronic mail; Materials; Matrix decomposition; Roads; Tensile stress; Visualization; Canonical decomposition (CANDECOMP)/parallel-factor (PARAFAC; CP) decomposition; Frobenius norm; group-sparsity norm; ridge regression (RR); support vector regression (SVR); tensors; Databases, Factual; Humans; Image Processing, Computer-Assisted; Posture; Regression Analysis; Support Vector Machines; Video Recording;
fLanguage
English
Journal_Title
Image Processing, IEEE Transactions on
Publisher
ieee
ISSN
1057-7149
Type
jour
DOI
10.1109/TIP.2011.2165291
Filename
5986711
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