Loading…

Two-phase Pseudo Label Densification for Self-training based Domain Adaptation

Recently, deep self-training approaches emerged as a powerful solution to the unsupervised domain adaptation. The self-training scheme involves iterative processing of target data; it generates target pseudo labels and retrains the network. However, since only the confident predictions are taken as...

Full description

Saved in:
Bibliographic Details
Published in:arXiv.org 2020-12
Main Authors: Shin, Inkyu, Woo, Sanghyun, Pan, Fei, Kweon, InSo
Format: Article
Language:English
Subjects:
Online Access:Get full text
Tags: Add Tag
No Tags, Be the first to tag this record!
cited_by
cites
container_end_page
container_issue
container_start_page
container_title arXiv.org
container_volume
creator Shin, Inkyu
Woo, Sanghyun
Pan, Fei
Kweon, InSo
description Recently, deep self-training approaches emerged as a powerful solution to the unsupervised domain adaptation. The self-training scheme involves iterative processing of target data; it generates target pseudo labels and retrains the network. However, since only the confident predictions are taken as pseudo labels, existing self-training approaches inevitably produce sparse pseudo labels in practice. We see this is critical because the resulting insufficient training-signals lead to a suboptimal, error-prone model. In order to tackle this problem, we propose a novel Two-phase Pseudo Label Densification framework, referred to as TPLD. In the first phase, we use sliding window voting to propagate the confident predictions, utilizing intrinsic spatial-correlations in the images. In the second phase, we perform a confidence-based easy-hard classification. For the easy samples, we now employ their full pseudo labels. For the hard ones, we instead adopt adversarial learning to enforce hard-to-easy feature alignment. To ease the training process and avoid noisy predictions, we introduce the bootstrapping mechanism to the original self-training loss. We show the proposed TPLD can be easily integrated into existing self-training based approaches and improves the performance significantly. Combined with the recently proposed CRST self-training framework, we achieve new state-of-the-art results on two standard UDA benchmarks.
format article
fullrecord <record><control><sourceid>proquest</sourceid><recordid>TN_cdi_proquest_journals_2468829519</recordid><sourceformat>XML</sourceformat><sourcesystem>PC</sourcesystem><sourcerecordid>2468829519</sourcerecordid><originalsourceid>FETCH-proquest_journals_24688295193</originalsourceid><addsrcrecordid>eNqNi9EKgjAYRkcQJOU7_ND1QDc1vYwsuogI8l5mbjWx_bZNev0keoCuPg7nfDMSMM5jmieMLUjoXBdFEcs2LE15QM7VG-nwEE7CxcmxRTiJRvZQSuO00jfhNRpQaOEqe0W9Fdpoc4dmerRQ4nNi2LZi8N9yReZK9E6Gv12S9WFf7Y50sPgapfN1h6M1k6pZkuU5K9K44P9VH6c9Pf0</addsrcrecordid><sourcetype>Aggregation Database</sourcetype><iscdi>true</iscdi><recordtype>article</recordtype><pqid>2468829519</pqid></control><display><type>article</type><title>Two-phase Pseudo Label Densification for Self-training based Domain Adaptation</title><source>Publicly Available Content (ProQuest)</source><creator>Shin, Inkyu ; Woo, Sanghyun ; Pan, Fei ; Kweon, InSo</creator><creatorcontrib>Shin, Inkyu ; Woo, Sanghyun ; Pan, Fei ; Kweon, InSo</creatorcontrib><description>Recently, deep self-training approaches emerged as a powerful solution to the unsupervised domain adaptation. The self-training scheme involves iterative processing of target data; it generates target pseudo labels and retrains the network. However, since only the confident predictions are taken as pseudo labels, existing self-training approaches inevitably produce sparse pseudo labels in practice. We see this is critical because the resulting insufficient training-signals lead to a suboptimal, error-prone model. In order to tackle this problem, we propose a novel Two-phase Pseudo Label Densification framework, referred to as TPLD. In the first phase, we use sliding window voting to propagate the confident predictions, utilizing intrinsic spatial-correlations in the images. In the second phase, we perform a confidence-based easy-hard classification. For the easy samples, we now employ their full pseudo labels. For the hard ones, we instead adopt adversarial learning to enforce hard-to-easy feature alignment. To ease the training process and avoid noisy predictions, we introduce the bootstrapping mechanism to the original self-training loss. We show the proposed TPLD can be easily integrated into existing self-training based approaches and improves the performance significantly. Combined with the recently proposed CRST self-training framework, we achieve new state-of-the-art results on two standard UDA benchmarks.</description><identifier>EISSN: 2331-8422</identifier><language>eng</language><publisher>Ithaca: Cornell University Library, arXiv.org</publisher><subject>Adaptation ; Confidence ; Densification ; Domains ; Image classification ; Iterative methods ; Labels ; Training</subject><ispartof>arXiv.org, 2020-12</ispartof><rights>2020. This work is published under http://creativecommons.org/licenses/by/4.0/ (the “License”). Notwithstanding the ProQuest Terms and Conditions, you may use this content in accordance with the terms of the License.</rights><oa>free_for_read</oa><woscitedreferencessubscribed>false</woscitedreferencessubscribed></display><links><openurl>$$Topenurl_article</openurl><openurlfulltext>$$Topenurlfull_article</openurlfulltext><thumbnail>$$Tsyndetics_thumb_exl</thumbnail><linktohtml>$$Uhttps://www.proquest.com/docview/2468829519?pq-origsite=primo$$EHTML$$P50$$Gproquest$$Hfree_for_read</linktohtml><link.rule.ids>780,784,25753,37012,44590</link.rule.ids></links><search><creatorcontrib>Shin, Inkyu</creatorcontrib><creatorcontrib>Woo, Sanghyun</creatorcontrib><creatorcontrib>Pan, Fei</creatorcontrib><creatorcontrib>Kweon, InSo</creatorcontrib><title>Two-phase Pseudo Label Densification for Self-training based Domain Adaptation</title><title>arXiv.org</title><description>Recently, deep self-training approaches emerged as a powerful solution to the unsupervised domain adaptation. The self-training scheme involves iterative processing of target data; it generates target pseudo labels and retrains the network. However, since only the confident predictions are taken as pseudo labels, existing self-training approaches inevitably produce sparse pseudo labels in practice. We see this is critical because the resulting insufficient training-signals lead to a suboptimal, error-prone model. In order to tackle this problem, we propose a novel Two-phase Pseudo Label Densification framework, referred to as TPLD. In the first phase, we use sliding window voting to propagate the confident predictions, utilizing intrinsic spatial-correlations in the images. In the second phase, we perform a confidence-based easy-hard classification. For the easy samples, we now employ their full pseudo labels. For the hard ones, we instead adopt adversarial learning to enforce hard-to-easy feature alignment. To ease the training process and avoid noisy predictions, we introduce the bootstrapping mechanism to the original self-training loss. We show the proposed TPLD can be easily integrated into existing self-training based approaches and improves the performance significantly. Combined with the recently proposed CRST self-training framework, we achieve new state-of-the-art results on two standard UDA benchmarks.</description><subject>Adaptation</subject><subject>Confidence</subject><subject>Densification</subject><subject>Domains</subject><subject>Image classification</subject><subject>Iterative methods</subject><subject>Labels</subject><subject>Training</subject><issn>2331-8422</issn><fulltext>true</fulltext><rsrctype>article</rsrctype><creationdate>2020</creationdate><recordtype>article</recordtype><sourceid>PIMPY</sourceid><recordid>eNqNi9EKgjAYRkcQJOU7_ND1QDc1vYwsuogI8l5mbjWx_bZNev0keoCuPg7nfDMSMM5jmieMLUjoXBdFEcs2LE15QM7VG-nwEE7CxcmxRTiJRvZQSuO00jfhNRpQaOEqe0W9Fdpoc4dmerRQ4nNi2LZi8N9yReZK9E6Gv12S9WFf7Y50sPgapfN1h6M1k6pZkuU5K9K44P9VH6c9Pf0</recordid><startdate>20201209</startdate><enddate>20201209</enddate><creator>Shin, Inkyu</creator><creator>Woo, Sanghyun</creator><creator>Pan, Fei</creator><creator>Kweon, InSo</creator><general>Cornell University Library, arXiv.org</general><scope>8FE</scope><scope>8FG</scope><scope>ABJCF</scope><scope>ABUWG</scope><scope>AFKRA</scope><scope>AZQEC</scope><scope>BENPR</scope><scope>BGLVJ</scope><scope>CCPQU</scope><scope>DWQXO</scope><scope>HCIFZ</scope><scope>L6V</scope><scope>M7S</scope><scope>PIMPY</scope><scope>PQEST</scope><scope>PQQKQ</scope><scope>PQUKI</scope><scope>PRINS</scope><scope>PTHSS</scope></search><sort><creationdate>20201209</creationdate><title>Two-phase Pseudo Label Densification for Self-training based Domain Adaptation</title><author>Shin, Inkyu ; Woo, Sanghyun ; Pan, Fei ; Kweon, InSo</author></sort><facets><frbrtype>5</frbrtype><frbrgroupid>cdi_FETCH-proquest_journals_24688295193</frbrgroupid><rsrctype>articles</rsrctype><prefilter>articles</prefilter><language>eng</language><creationdate>2020</creationdate><topic>Adaptation</topic><topic>Confidence</topic><topic>Densification</topic><topic>Domains</topic><topic>Image classification</topic><topic>Iterative methods</topic><topic>Labels</topic><topic>Training</topic><toplevel>online_resources</toplevel><creatorcontrib>Shin, Inkyu</creatorcontrib><creatorcontrib>Woo, Sanghyun</creatorcontrib><creatorcontrib>Pan, Fei</creatorcontrib><creatorcontrib>Kweon, InSo</creatorcontrib><collection>ProQuest SciTech Collection</collection><collection>ProQuest Technology Collection</collection><collection>Materials Science &amp; Engineering Collection</collection><collection>ProQuest Central (Alumni)</collection><collection>ProQuest Central</collection><collection>ProQuest Central Essentials</collection><collection>ProQuest Central</collection><collection>Technology Collection</collection><collection>ProQuest One Community College</collection><collection>ProQuest Central</collection><collection>SciTech Premium Collection (Proquest) (PQ_SDU_P3)</collection><collection>ProQuest Engineering Collection</collection><collection>Engineering Database</collection><collection>Publicly Available Content (ProQuest)</collection><collection>ProQuest One Academic Eastern Edition (DO NOT USE)</collection><collection>ProQuest One Academic</collection><collection>ProQuest One Academic UKI Edition</collection><collection>ProQuest Central China</collection><collection>Engineering Collection</collection></facets><delivery><delcategory>Remote Search Resource</delcategory><fulltext>fulltext</fulltext></delivery><addata><au>Shin, Inkyu</au><au>Woo, Sanghyun</au><au>Pan, Fei</au><au>Kweon, InSo</au><format>book</format><genre>document</genre><ristype>GEN</ristype><atitle>Two-phase Pseudo Label Densification for Self-training based Domain Adaptation</atitle><jtitle>arXiv.org</jtitle><date>2020-12-09</date><risdate>2020</risdate><eissn>2331-8422</eissn><abstract>Recently, deep self-training approaches emerged as a powerful solution to the unsupervised domain adaptation. The self-training scheme involves iterative processing of target data; it generates target pseudo labels and retrains the network. However, since only the confident predictions are taken as pseudo labels, existing self-training approaches inevitably produce sparse pseudo labels in practice. We see this is critical because the resulting insufficient training-signals lead to a suboptimal, error-prone model. In order to tackle this problem, we propose a novel Two-phase Pseudo Label Densification framework, referred to as TPLD. In the first phase, we use sliding window voting to propagate the confident predictions, utilizing intrinsic spatial-correlations in the images. In the second phase, we perform a confidence-based easy-hard classification. For the easy samples, we now employ their full pseudo labels. For the hard ones, we instead adopt adversarial learning to enforce hard-to-easy feature alignment. To ease the training process and avoid noisy predictions, we introduce the bootstrapping mechanism to the original self-training loss. We show the proposed TPLD can be easily integrated into existing self-training based approaches and improves the performance significantly. Combined with the recently proposed CRST self-training framework, we achieve new state-of-the-art results on two standard UDA benchmarks.</abstract><cop>Ithaca</cop><pub>Cornell University Library, arXiv.org</pub><oa>free_for_read</oa></addata></record>
fulltext fulltext
identifier EISSN: 2331-8422
ispartof arXiv.org, 2020-12
issn 2331-8422
language eng
recordid cdi_proquest_journals_2468829519
source Publicly Available Content (ProQuest)
subjects Adaptation
Confidence
Densification
Domains
Image classification
Iterative methods
Labels
Training
title Two-phase Pseudo Label Densification for Self-training based Domain Adaptation
url http://sfxeu10.hosted.exlibrisgroup.com/loughborough?ctx_ver=Z39.88-2004&ctx_enc=info:ofi/enc:UTF-8&ctx_tim=2024-12-21T08%3A16%3A48IST&url_ver=Z39.88-2004&url_ctx_fmt=infofi/fmt:kev:mtx:ctx&rfr_id=info:sid/primo.exlibrisgroup.com:primo3-Article-proquest&rft_val_fmt=info:ofi/fmt:kev:mtx:book&rft.genre=document&rft.atitle=Two-phase%20Pseudo%20Label%20Densification%20for%20Self-training%20based%20Domain%20Adaptation&rft.jtitle=arXiv.org&rft.au=Shin,%20Inkyu&rft.date=2020-12-09&rft.eissn=2331-8422&rft_id=info:doi/&rft_dat=%3Cproquest%3E2468829519%3C/proquest%3E%3Cgrp_id%3Ecdi_FETCH-proquest_journals_24688295193%3C/grp_id%3E%3Coa%3E%3C/oa%3E%3Curl%3E%3C/url%3E&rft_id=info:oai/&rft_pqid=2468829519&rft_id=info:pmid/&rfr_iscdi=true