Multi-source adaptation joint kernel sparse representation for visual classification.

JianWen Tao, Wenjun Hu, Shiting Wen
Author Information
  1. JianWen Tao: School of Information Science and Engineering, Ningbo Institute of Technology, Zhejiang University, Ningbo 315100, China. Electronic address: jianwen_tao@aliyun.com.
  2. Wenjun Hu: School of Information and Engineering, Huzhou Teachers College, Huzhou 313000, China.
  3. Shiting Wen: School of Information Science and Engineering, Ningbo Institute of Technology, Zhejiang University, Ningbo 315100, China.

Abstract

Most of the existing domain adaptation learning (DAL) methods relies on a single source domain to learn a classifier with well-generalized performance for the target domain of interest, which may lead to the so-called negative transfer problem. To this end, many multi-source adaptation methods have been proposed. While the advantages of using multi-source domains of information for establishing an adaptation model have been widely recognized, how to boost the robustness of the computational model for multi-source adaptation learning has only recently received attention. To address this issue for achieving enhanced performance, we propose in this paper a novel algorithm called multi-source Adaptation Regularization Joint Kernel Sparse Representation (ARJKSR) for robust visual classification problems. Specifically, ARJKSR jointly represents target dataset by a sparse linear combination of training data of each source domain in some optimal Reproduced Kernel Hilbert Space (RKHS), recovered by simultaneously minimizing the inter-domain distribution discrepancy and maximizing the local consistency, whilst constraining the observations from both target and source domains to share their sparse representations. The optimization problem of ARJKSR can be solved using an efficient alternative direction method. Under the framework ARJKSR, we further learn a robust label prediction matrix for the unlabeled instances of target domain based on the classical graph-based semi-supervised learning (GSSL) diagram, into which multiple Laplacian graphs constructed with the ARJKSR are incorporated. The validity of our method is examined by several visual classification problems. Results demonstrate the superiority of our method in comparison to several state-of-the-arts.

Keywords

MeSH Term

Algorithms
Computer Simulation
Machine Learning
Models, Theoretical

Word Cloud

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