A Regularized Correntropy Framework for Robust Pattern Recognition

Hits
5677
Authors
Unit
Programming Language
Operating System
References
Ran He, Wei-Shi Zheng, Bao-Gang Hu, XiangWei Kong. A Regularized Correntropy Framework for Robust Pattern Recognition. Neural Computation (NECO), 2011, 23(8):2074-2100.
Linux-desktop
Windows-desktop
Rating
★★★
1 vote
This letter proposes a new multiple linear regression model using regularized correntropy for robust pattern recognition. First, we motivate the use of correntropy to improve the robustness of the classicalmean square error (MSE) criterion that is sensitive to outliers. Then an l1 regularization scheme is imposed on the correntropy to learn robust and sparse representations. Based on the half-quadratic optimization technique, we propose a novel algorithm to solve the nonlinear optimization problem. Second, we develop a new correntropy-based classifier based on the learned regularization scheme for robust object recognition. Extensive experiments over several applications confirm that the correntropy-based l1 regularization can improve recognition accuracy and receiver operator characteristic curves under noise corruption and occlusion.
OpenPR - Open Pattern Recognition Project, Powered by National Laboratory of Pattern Recognition,Casia,P.R.C ;Joomla templates by SG web hosting;Customized by Jiang nan