Low-Rank Constrained Latent Domain Adaptation Co-Regression for Robust Depression Recognition

Focusing on the facial-based depression recognition where the feature distribution could be shifted due to unlimited variations in facial image acquisition, we propose a novel Low-rank constrained latent Domain Adaptation Depression Recognition (LDADR) framework by jointly utilizing facial appearanc...

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Main Authors: Jianwen Tao, Haote Xu, Jianjing Fu
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8851226/
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author Jianwen Tao
Haote Xu
Jianjing Fu
author_facet Jianwen Tao
Haote Xu
Jianjing Fu
author_sort Jianwen Tao
collection DOAJ
description Focusing on the facial-based depression recognition where the feature distribution could be shifted due to unlimited variations in facial image acquisition, we propose a novel Low-rank constrained latent Domain Adaptation Depression Recognition (LDADR) framework by jointly utilizing facial appearance and dynamics features. Under this framework, to alleviate the domain distribution bias in depression recognition, we devote to uncover a compact and more informative latent space on appearance feature representation to minimize the domain distribution divergence as well as to share more discriminative structures between domains. In this optimal latent space, both source and target classification loss functions are incorporated as parts of its co-regression function by encoding the common components of the classifier models as a low-rank constraint term. Moreover, the target prediction results on both appearance features and dynamics features are constrained to be consistent for better fusing the discriminative information from different representations. We specially adopt the l<sub>2,1</sub>-norm based loss function for learning robust classifiers on different feature representations. Different from the state of the arts, our algorithm can adapt knowledge from another source for Automated Depression Recognition (ADR) even if the features of the source and target domains are partially different but overlapping. The proposed methods are evaluated on three depression databases, and the outstanding performance for almost all learning tasks has been achieved compared with several representative algorithms.
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spelling doaj.art-8276813ed25143ef8c7e57e88f4276eb2022-12-21T22:26:18ZengIEEEIEEE Access2169-35362019-01-01714540614542510.1109/ACCESS.2019.29442118851226Low-Rank Constrained Latent Domain Adaptation Co-Regression for Robust Depression RecognitionJianwen Tao0https://orcid.org/0000-0001-7207-5894Haote Xu1Jianjing Fu2School of Electronics and Information Engineering, Ningbo Polytechnic, Ningbo, ChinaSchool of Information Engineering, Jiangxi University of Science and Technology, Ganzhou, ChinaCollege of New Media, Communication University of Zhejiang, Hangzhou, ChinaFocusing on the facial-based depression recognition where the feature distribution could be shifted due to unlimited variations in facial image acquisition, we propose a novel Low-rank constrained latent Domain Adaptation Depression Recognition (LDADR) framework by jointly utilizing facial appearance and dynamics features. Under this framework, to alleviate the domain distribution bias in depression recognition, we devote to uncover a compact and more informative latent space on appearance feature representation to minimize the domain distribution divergence as well as to share more discriminative structures between domains. In this optimal latent space, both source and target classification loss functions are incorporated as parts of its co-regression function by encoding the common components of the classifier models as a low-rank constraint term. Moreover, the target prediction results on both appearance features and dynamics features are constrained to be consistent for better fusing the discriminative information from different representations. We specially adopt the l<sub>2,1</sub>-norm based loss function for learning robust classifiers on different feature representations. Different from the state of the arts, our algorithm can adapt knowledge from another source for Automated Depression Recognition (ADR) even if the features of the source and target domains are partially different but overlapping. The proposed methods are evaluated on three depression databases, and the outstanding performance for almost all learning tasks has been achieved compared with several representative algorithms.https://ieeexplore.ieee.org/document/8851226/Automated depression diagnosisdomain adaptationmulti-feature representationlatent space
spellingShingle Jianwen Tao
Haote Xu
Jianjing Fu
Low-Rank Constrained Latent Domain Adaptation Co-Regression for Robust Depression Recognition
IEEE Access
Automated depression diagnosis
domain adaptation
multi-feature representation
latent space
title Low-Rank Constrained Latent Domain Adaptation Co-Regression for Robust Depression Recognition
title_full Low-Rank Constrained Latent Domain Adaptation Co-Regression for Robust Depression Recognition
title_fullStr Low-Rank Constrained Latent Domain Adaptation Co-Regression for Robust Depression Recognition
title_full_unstemmed Low-Rank Constrained Latent Domain Adaptation Co-Regression for Robust Depression Recognition
title_short Low-Rank Constrained Latent Domain Adaptation Co-Regression for Robust Depression Recognition
title_sort low rank constrained latent domain adaptation co regression for robust depression recognition
topic Automated depression diagnosis
domain adaptation
multi-feature representation
latent space
url https://ieeexplore.ieee.org/document/8851226/
work_keys_str_mv AT jianwentao lowrankconstrainedlatentdomainadaptationcoregressionforrobustdepressionrecognition
AT haotexu lowrankconstrainedlatentdomainadaptationcoregressionforrobustdepressionrecognition
AT jianjingfu lowrankconstrainedlatentdomainadaptationcoregressionforrobustdepressionrecognition