Differentiated learning for multi-modal domain adaptation
Directly deploying a trained multi-modal classifier to a new environment usually leads to poor performance due to the well-known domain shift problem. Existing multi-modal domain adaptation methods treated each modality equally and optimize the sub-models of different modalities synchronously. Howev...
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sg-smu-ink.sis_research-95322024-01-22T14:59:22Z Differentiated learning for multi-modal domain adaptation LV, Jianming LIU, Kaijie HE, Shengfeng Directly deploying a trained multi-modal classifier to a new environment usually leads to poor performance due to the well-known domain shift problem. Existing multi-modal domain adaptation methods treated each modality equally and optimize the sub-models of different modalities synchronously. However, as observed in this paper, the degrees of domain shift in different modalities are usually diverse. We propose a novel Differentiated Learning framework to make use of the diversity between multiple modalities for more effective domain adaptation. Specifically, we model the classifiers of different modalities as a group of teacher/student sub-models, and a novel Prototype based Reliability Measurement is presented to estimate the reliability of the recognition results made by each sub-model on the target domain. More reliable results are then picked up as teaching materials for all sub-models in the group. Considering the diversity of different modalities, each sub-model performs the Asynchronous Curriculum Learning by choosing the teaching materials from easy to hard measured by itself. Furthermore, a reliability-aware fusion scheme is proposed to combine all optimized sub-models to support final decision. Comprehensive experiments based on three multi-modal datasets with different learning tasks have been conducted, which show the superior performance of our model while comparing with state-of-the-art multi-modal domain adaptation models. 2021-10-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/8529 info:doi/10.1145/3474085.3475660 https://ink.library.smu.edu.sg/context/sis_research/article/9532/viewcontent/Differentiated_learning_for_multi_modal_domain_adaptation.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Differentiated learning Multi-modal analysis Domain adaptation Databases and Information Systems Graphics and Human Computer Interfaces |
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Differentiated learning Multi-modal analysis Domain adaptation Databases and Information Systems Graphics and Human Computer Interfaces LV, Jianming LIU, Kaijie HE, Shengfeng Differentiated learning for multi-modal domain adaptation |
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Directly deploying a trained multi-modal classifier to a new environment usually leads to poor performance due to the well-known domain shift problem. Existing multi-modal domain adaptation methods treated each modality equally and optimize the sub-models of different modalities synchronously. However, as observed in this paper, the degrees of domain shift in different modalities are usually diverse. We propose a novel Differentiated Learning framework to make use of the diversity between multiple modalities for more effective domain adaptation. Specifically, we model the classifiers of different modalities as a group of teacher/student sub-models, and a novel Prototype based Reliability Measurement is presented to estimate the reliability of the recognition results made by each sub-model on the target domain. More reliable results are then picked up as teaching materials for all sub-models in the group. Considering the diversity of different modalities, each sub-model performs the Asynchronous Curriculum Learning by choosing the teaching materials from easy to hard measured by itself. Furthermore, a reliability-aware fusion scheme is proposed to combine all optimized sub-models to support final decision. Comprehensive experiments based on three multi-modal datasets with different learning tasks have been conducted, which show the superior performance of our model while comparing with state-of-the-art multi-modal domain adaptation models. |
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LV, Jianming LIU, Kaijie HE, Shengfeng |
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LV, Jianming LIU, Kaijie HE, Shengfeng |
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LV, Jianming |
title |
Differentiated learning for multi-modal domain adaptation |
title_short |
Differentiated learning for multi-modal domain adaptation |
title_full |
Differentiated learning for multi-modal domain adaptation |
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Differentiated learning for multi-modal domain adaptation |
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Differentiated learning for multi-modal domain adaptation |
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differentiated learning for multi-modal domain adaptation |
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Institutional Knowledge at Singapore Management University |
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2021 |
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https://ink.library.smu.edu.sg/sis_research/8529 https://ink.library.smu.edu.sg/context/sis_research/article/9532/viewcontent/Differentiated_learning_for_multi_modal_domain_adaptation.pdf |
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