An exemplar-based multi-view domain generalization framework for visual recognition

In this paper, we propose a new exemplar-based multi-view domain generalization (EMVDG) framework for visual recognition by learning robust classifier that are able to generalize well to arbitrary target domain based on the training samples with multiple types of features (i.e., multi-view features)...

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Main Authors: Niu, Li, Li, Wen, Xu, Dong, Cai, Jianfei
Other Authors: School of Computer Science and Engineering
Format: Article
Language:English
Published: 2020
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Online Access:https://hdl.handle.net/10356/140625
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1406252020-06-01T02:40:38Z An exemplar-based multi-view domain generalization framework for visual recognition Niu, Li Li, Wen Xu, Dong Cai, Jianfei School of Computer Science and Engineering Interdisciplinary Graduate School (IGS) Engineering::Computer science and engineering Domain Generalization Domain Adaptation In this paper, we propose a new exemplar-based multi-view domain generalization (EMVDG) framework for visual recognition by learning robust classifier that are able to generalize well to arbitrary target domain based on the training samples with multiple types of features (i.e., multi-view features). In this framework, we aim to address two issues simultaneously. First, the distribution of training samples (i.e., the source domain) is often considerably different from that of testing samples (i.e., the target domain), so the performance of the classifiers learnt on the source domain may drop significantly on the target domain. Moreover, the testing data are often unseen during the training procedure. Second, when the training data are associated with multi-view features, the recognition performance can be further improved by exploiting the relation among multiple types of features. To address the first issue, considering that it has been shown that fusing multiple SVM classifiers can enhance the domain generalization ability, we build our EMVDG framework upon exemplar SVMs (ESVMs), in which a set of ESVM classifiers are learnt with each one trained based on one positive training sample and all the negative training samples. When the source domain contains multiple latent domains, the learnt ESVM classifiers are expected to be grouped into multiple clusters. To address the second issue, we propose two approaches under the EMVDG framework based on the consensus principle and the complementary principle, respectively. Specifically, we propose an EMVDG_CO method by adding a co-regularizer to enforce the cluster structures of ESVM classifiers on different views to be consistent based on the consensus principle. Inspired by multiple kernel learning, we also propose another EMVDG_MK method by fusing the ESVM classifiers from different views based on the complementary principle. In addition, we further extend our EMVDG framework to exemplar-based multi-view domain adaptation (EMVDA) framework when the unlabeled target domain data are available during the training procedure. The effectiveness of our EMVDG and EMVDA frameworks for visual recognition is clearly demonstrated by comprehensive experiments on three benchmark data sets. NRF (Natl Research Foundation, S’pore) MOE (Min. of Education, S’pore) 2020-06-01T02:40:38Z 2020-06-01T02:40:38Z 2016 Journal Article Niu, L., Li, W., Xu, D., & Cai, J. (2018). An exemplar-based multi-view domain generalization framework for visual recognition. IEEE Transactions on Neural Networks and Learning Systems, 29(2), 259-272. doi:10.1109/tnnls.2016.2615469 2162-237X https://hdl.handle.net/10356/140625 10.1109/TNNLS.2016.2615469 27834652 2-s2.0-84995447186 2 29 259 272 en IEEE Transactions on Neural Networks and Learning Systems © 2016 IEEE. All rights reserved.
institution Nanyang Technological University
building NTU Library
country Singapore
collection DR-NTU
language English
topic Engineering::Computer science and engineering
Domain Generalization
Domain Adaptation
spellingShingle Engineering::Computer science and engineering
Domain Generalization
Domain Adaptation
Niu, Li
Li, Wen
Xu, Dong
Cai, Jianfei
An exemplar-based multi-view domain generalization framework for visual recognition
description In this paper, we propose a new exemplar-based multi-view domain generalization (EMVDG) framework for visual recognition by learning robust classifier that are able to generalize well to arbitrary target domain based on the training samples with multiple types of features (i.e., multi-view features). In this framework, we aim to address two issues simultaneously. First, the distribution of training samples (i.e., the source domain) is often considerably different from that of testing samples (i.e., the target domain), so the performance of the classifiers learnt on the source domain may drop significantly on the target domain. Moreover, the testing data are often unseen during the training procedure. Second, when the training data are associated with multi-view features, the recognition performance can be further improved by exploiting the relation among multiple types of features. To address the first issue, considering that it has been shown that fusing multiple SVM classifiers can enhance the domain generalization ability, we build our EMVDG framework upon exemplar SVMs (ESVMs), in which a set of ESVM classifiers are learnt with each one trained based on one positive training sample and all the negative training samples. When the source domain contains multiple latent domains, the learnt ESVM classifiers are expected to be grouped into multiple clusters. To address the second issue, we propose two approaches under the EMVDG framework based on the consensus principle and the complementary principle, respectively. Specifically, we propose an EMVDG_CO method by adding a co-regularizer to enforce the cluster structures of ESVM classifiers on different views to be consistent based on the consensus principle. Inspired by multiple kernel learning, we also propose another EMVDG_MK method by fusing the ESVM classifiers from different views based on the complementary principle. In addition, we further extend our EMVDG framework to exemplar-based multi-view domain adaptation (EMVDA) framework when the unlabeled target domain data are available during the training procedure. The effectiveness of our EMVDG and EMVDA frameworks for visual recognition is clearly demonstrated by comprehensive experiments on three benchmark data sets.
author2 School of Computer Science and Engineering
author_facet School of Computer Science and Engineering
Niu, Li
Li, Wen
Xu, Dong
Cai, Jianfei
format Article
author Niu, Li
Li, Wen
Xu, Dong
Cai, Jianfei
author_sort Niu, Li
title An exemplar-based multi-view domain generalization framework for visual recognition
title_short An exemplar-based multi-view domain generalization framework for visual recognition
title_full An exemplar-based multi-view domain generalization framework for visual recognition
title_fullStr An exemplar-based multi-view domain generalization framework for visual recognition
title_full_unstemmed An exemplar-based multi-view domain generalization framework for visual recognition
title_sort exemplar-based multi-view domain generalization framework for visual recognition
publishDate 2020
url https://hdl.handle.net/10356/140625
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