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Deep Adversarial Attention Alignment for Unsupervised Domain Adaptation: The Benefit of Target Expectation Maximization

dc.contributor.authorKang, Guoliang
dc.contributor.authorZheng, Liang
dc.contributor.authorYan, Yan
dc.contributor.authorYang, Yi
dc.contributor.editorLeal-Taixe, L
dc.contributor.editorRoth, S
dc.coverage.spatialMunich, Germany
dc.date.accessioned2024-02-14T00:14:03Z
dc.date.createdSeptember 8-14 2018
dc.date.issued2018
dc.date.updated2022-10-02T07:19:43Z
dc.description.abstractIn this paper, we make two contributions to unsupervised domain adaptation (UDA) using the convolutional neural network (CNN). First, our approach transfers knowledge in all the convolutional layers through attention alignment. Most previous methods align high-level representations, e.g., activations of the fully connected (FC) layers. In these methods, however, the convolutional layers which underpin critical low-level domain knowledge cannot be updated directly towards reducing domain discrepancy. Specifically, we assume that the discriminative regions in an image are relatively invariant to image style changes. Based on this assumption, we propose an attention alignment scheme on all the target convolutional layers to uncover the knowledge shared by the source domain. Second, we estimate the posterior label distribution of the unlabeled data for target network training. Previous methods, which iteratively update the pseudo labels by the target network and refine the target network by the updated pseudo labels, are vulnerable to label estimation errors. Instead, our approach uses category distribution to calculate the cross-entropy loss for training, thereby ameliorating the error accumulation of the estimated labels. The two contributions allow our approach to outperform the state-of-the-art methods by +2.6% on the Office-31 dataset.en_AU
dc.description.sponsorshipWe acknowledge the Data to Decisions CRC (D2D CRC) and Cooperative Research Centres Programme for funding the research.en_AU
dc.format.mimetypeapplication/pdfen_AU
dc.identifier.isbn978-303011014-7en_AU
dc.identifier.urihttp://hdl.handle.net/1885/313572
dc.language.isoen_AUen_AU
dc.publisherSpringer Verlagen_AU
dc.relation.ispartofseries15th European Conference on Computer Vision, ECCV 2018en_AU
dc.rights© Springer Nature Switzerland AG 2018en_AU
dc.sourceLecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)en_AU
dc.subjectDomain adaptationen_AU
dc.subjectCycleGANen_AU
dc.subjectAttentionen_AU
dc.subjectEMen_AU
dc.titleDeep Adversarial Attention Alignment for Unsupervised Domain Adaptation: The Benefit of Target Expectation Maximizationen_AU
dc.typeConference paperen_AU
local.bibliographicCitation.lastpage436en_AU
local.bibliographicCitation.startpage420en_AU
local.contributor.affiliationKang, Guoliang, University of Technology Sydneyen_AU
local.contributor.affiliationZheng, Liang, College of Engineering and Computer Science, ANUen_AU
local.contributor.affiliationYan, Yan, University of Technology Sydneyen_AU
local.contributor.affiliationYang, Yi, University of Technology Sydneyen_AU
local.contributor.authoruidZheng, Liang, u1064892en_AU
local.description.embargo2099-12-31
local.description.notesImported from ARIESen_AU
local.description.refereedYes
local.identifier.absfor461103 - Deep learningen_AU
local.identifier.absfor460304 - Computer visionen_AU
local.identifier.ariespublicationu3102795xPUB3111en_AU
local.identifier.doi10.1007/978-3-030-01252-6_25en_AU
local.identifier.scopusID2-s2.0-85055092834
local.identifier.thomsonIDWOS:000594238900025
local.publisher.urlhttps://link.springer.com/en_AU
local.type.statusPublished Versionen_AU

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