Heterogeneous Domain Adaptation and Classification by Exploiting the Correlation Subspace

We present a novel domain adaptation approach for solving cross-domain pattern recognition problems, i.e., the data or features to be processed and recognized are collected from different domains of interest. Inspired by canonical correlation analysis (CCA), we utilize the derived correlation subspa...

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Veröffentlicht in:IEEE transactions on image processing 2014-05, Vol.23 (5), p.2009-2018
Hauptverfasser: Yeh, Yi-Ren, Huang, Chun-Hao, Wang, Yu-Chiang Frank
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container_end_page 2018
container_issue 5
container_start_page 2009
container_title IEEE transactions on image processing
container_volume 23
creator Yeh, Yi-Ren
Huang, Chun-Hao
Wang, Yu-Chiang Frank
description We present a novel domain adaptation approach for solving cross-domain pattern recognition problems, i.e., the data or features to be processed and recognized are collected from different domains of interest. Inspired by canonical correlation analysis (CCA), we utilize the derived correlation subspace as a joint representation for associating data across different domains, and we advance reduced kernel techniques for kernel CCA (KCCA) if nonlinear correlation subspace are desirable. Such techniques not only makes KCCA computationally more efficient, potential over-fitting problems can be alleviated as well. Instead of directly performing recognition in the derived CCA subspace (as prior CCA-based domain adaptation methods did), we advocate the exploitation of domain transfer ability in this subspace, in which each dimension has a unique capability in associating cross-domain data. In particular, we propose a novel support vector machine (SVM) with a correlation regularizer, named correlation-transfer SVM, which incorporates the domain adaptation ability into classifier design for cross-domain recognition. We show that our proposed domain adaptation and classification approach can be successfully applied to a variety of cross-domain recognition tasks such as cross-view action recognition, handwritten digit recognition with different features, and image-to-text or text-to-image classification. From our empirical results, we verify that our proposed method outperforms state-of-the-art domain adaptation approaches in terms of recognition performance.
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We show that our proposed domain adaptation and classification approach can be successfully applied to a variety of cross-domain recognition tasks such as cross-view action recognition, handwritten digit recognition with different features, and image-to-text or text-to-image classification. 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We show that our proposed domain adaptation and classification approach can be successfully applied to a variety of cross-domain recognition tasks such as cross-view action recognition, handwritten digit recognition with different features, and image-to-text or text-to-image classification. 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subjects Adaptation
Adaptation models
Applied sciences
Classification
Correlation
Correlation analysis
Data models
Detection, estimation, filtering, equalization, prediction
Exact sciences and technology
Feature recognition
Handwriting recognition
Image processing
Information, signal and communications theory
Kernel
Pattern recognition
Recognition
Signal and communications theory
Signal processing
Signal representation. Spectral analysis
Signal, noise
Subspaces
Support vector machines
Telecommunications and information theory
Training
Vectors
title Heterogeneous Domain Adaptation and Classification by Exploiting the Correlation Subspace
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