Deep Multi-Task Transfer Network for Cross Domain Person Re-Identification

As a prominent application of surveillance video analysis, person re-identification attracts much more research attention recently. Existing person re-identification models often focus on supervision by the pedestrian identity annotation, while it has limited scalability in realistic. Though several...

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Main Authors: Huan Wang, Jingbo Hu
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8943405/
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spelling doaj-ae150560df8e4bafa9b31e086fc5be982021-03-30T02:24:30ZengIEEEIEEE Access2169-35362020-01-0185339534810.1109/ACCESS.2019.29625818943405Deep Multi-Task Transfer Network for Cross Domain Person Re-IdentificationHuan Wang0https://orcid.org/0000-0002-2046-2443Jingbo Hu1https://orcid.org/0000-0001-9158-3333School of Computer Science and Technology, Baoji University of Arts and Sciences, Baoji, ChinaSchool of Electronic and Electrical Engineering, Baoji University of Arts and Sciences, Baoji, ChinaAs a prominent application of surveillance video analysis, person re-identification attracts much more research attention recently. Existing person re-identification models often focus on supervision by the pedestrian identity annotation, while it has limited scalability in realistic. Though several unsupervised person re-identification researches pay attention to solve this problem, they are either clustering based or cross domain based approaches, where a conventional assumption of them is the identity number of the target dataset is acknowledged. To relax this hypothesis, we propose a Deep Multi-task Transfer Network (DMTNet) for cross domain person re-identification, which conduct classification, attribute attention and identification task between source and target domains. There are three main novelties in DMTNet, including clustering number estimating algorithm to learn prior knowledge from source data to estimate the identity number, attribute attention importance learning rather than directly utilizing attribute information, and a multi-task transfer learning mechanism to transfer specific tasks cross domains. To prove the superiority of our DMTNet, we implement several compared experiments on DukeMTMC-reID and Market-1501 datasets, which results show the advancement of our network. Moreover, the discussions for different modules also point out the significance of the specific tasks.https://ieeexplore.ieee.org/document/8943405/Cross domain person re-identificationmulti-task transferattribute attentionidentity number estimating
collection DOAJ
language English
format Article
sources DOAJ
author Huan Wang
Jingbo Hu
spellingShingle Huan Wang
Jingbo Hu
Deep Multi-Task Transfer Network for Cross Domain Person Re-Identification
IEEE Access
Cross domain person re-identification
multi-task transfer
attribute attention
identity number estimating
author_facet Huan Wang
Jingbo Hu
author_sort Huan Wang
title Deep Multi-Task Transfer Network for Cross Domain Person Re-Identification
title_short Deep Multi-Task Transfer Network for Cross Domain Person Re-Identification
title_full Deep Multi-Task Transfer Network for Cross Domain Person Re-Identification
title_fullStr Deep Multi-Task Transfer Network for Cross Domain Person Re-Identification
title_full_unstemmed Deep Multi-Task Transfer Network for Cross Domain Person Re-Identification
title_sort deep multi-task transfer network for cross domain person re-identification
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description As a prominent application of surveillance video analysis, person re-identification attracts much more research attention recently. Existing person re-identification models often focus on supervision by the pedestrian identity annotation, while it has limited scalability in realistic. Though several unsupervised person re-identification researches pay attention to solve this problem, they are either clustering based or cross domain based approaches, where a conventional assumption of them is the identity number of the target dataset is acknowledged. To relax this hypothesis, we propose a Deep Multi-task Transfer Network (DMTNet) for cross domain person re-identification, which conduct classification, attribute attention and identification task between source and target domains. There are three main novelties in DMTNet, including clustering number estimating algorithm to learn prior knowledge from source data to estimate the identity number, attribute attention importance learning rather than directly utilizing attribute information, and a multi-task transfer learning mechanism to transfer specific tasks cross domains. To prove the superiority of our DMTNet, we implement several compared experiments on DukeMTMC-reID and Market-1501 datasets, which results show the advancement of our network. Moreover, the discussions for different modules also point out the significance of the specific tasks.
topic Cross domain person re-identification
multi-task transfer
attribute attention
identity number estimating
url https://ieeexplore.ieee.org/document/8943405/
work_keys_str_mv AT huanwang deepmultitasktransfernetworkforcrossdomainpersonreidentification
AT jingbohu deepmultitasktransfernetworkforcrossdomainpersonreidentification
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