학술논문

Domain Adaptation Image Classification Based on Multi-sparse Representation
Document Type
Article
Source
KSII Transactions on Internet and Information Systems (TIIS). May 30, 2017 11(5):2590
Subject
Image classification
domain adaptation
sparese coding
bag of visual words
dictionary learning
Language
English
ISSN
1976-7277
Abstract
Generally, research of classical image classification algorithms assume that training data and testing data are derived from the same domain with the same distribution. Unfortunately, in practical applications, this assumption is rarely met. Aiming at the problem, a domain adaption image classification approach based on multi-sparse representation is proposed in this paper. The existences of intermediate domains are hypothesized between the source and target domains. And each intermediate subspace is modeled through online dictionary learning with target data updating. On the one hand, the reconstruction error of the target data is guaranteed, on the other, the transition from the source domain to the target domain is as smooth as possible. An augmented feature representation produced by invariant sparse codes across the source, intermediate and target domain dictionaries is employed for across domain recognition. Experimental results verify the effectiveness of the proposed algorithm.