Reducing Spatial Labeling Redundancy for Active Semi-Supervised Crowd Counting

Labeling is onerous for crowd counting as it should annotate each individual in crowd images. Recently, several methods have been proposed for semi-supervised crowd counting to reduce the labeling efforts. Given a limited labeling budget, they typically select a few crowd images and densely label al...

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Main Authors: LIU, Yongtuo, REN, Sucheng, CHAI, Liangyu, WU, Hanjie, XU, Dan, QIN, Jing, HE, Shengfeng
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Language:English
Published: Institutional Knowledge at Singapore Management University 2023
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Online Access:https://ink.library.smu.edu.sg/sis_research/8435
https://ink.library.smu.edu.sg/context/sis_research/article/9438/viewcontent/Reducing_Spatial_Labeling_Redundancy_for_Active_Semi_Supervised_Crowd_Counting__1_.pdf
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spelling sg-smu-ink.sis_research-94382024-01-04T10:00:55Z Reducing Spatial Labeling Redundancy for Active Semi-Supervised Crowd Counting LIU, Yongtuo REN, Sucheng CHAI, Liangyu WU, Hanjie XU, Dan QIN, Jing HE, Shengfeng Labeling is onerous for crowd counting as it should annotate each individual in crowd images. Recently, several methods have been proposed for semi-supervised crowd counting to reduce the labeling efforts. Given a limited labeling budget, they typically select a few crowd images and densely label all individuals in each of them. Despite the promising results, we argue the None-or-All labeling strategy is suboptimal as the densely labeled individuals in each crowd image usually appear similar while the massive unlabeled crowd images may contain entirely diverse individuals. To this end, we propose to break the labeling chain of previous methods and make the first attempt to reduce spatial labeling redundancy for semi-supervised crowd counting. First, instead of annotating all the regions in each crowd image, we propose to annotate the representative ones only. We analyze the region representativeness from both vertical and horizontal directions of initially estimated density maps, and formulate them as cluster centers of Gaussian Mixture Models. Additionally, to leverage the rich unlabeled regions, we exploit the similarities among individuals in each crowd image to directly supervise the unlabeled regions via feature propagation instead of the error-prone label propagation employed in the previous methods. In this way, we can transfer the original spatial labeling redundancy caused by individual similarities to effective supervision signals on the unlabeled regions. Extensive experiments on the widely-used benchmarks demonstrate that our method can outperform previous best approaches by a large margin. 2023-07-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/8435 info:doi/10.1109/TPAMI.2022.3232712 https://ink.library.smu.edu.sg/context/sis_research/article/9438/viewcontent/Reducing_Spatial_Labeling_Redundancy_for_Active_Semi_Supervised_Crowd_Counting__1_.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 Crowd counting Features extraction Head Labelings Semi-supervised Semi-supervised learning Spatial labeling redundancy Technological innovation Termination of employment Databases and Information Systems Technology and Innovation
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic Crowd counting
Features extraction
Head
Labelings
Semi-supervised
Semi-supervised learning
Spatial labeling redundancy
Technological innovation
Termination of employment
Databases and Information Systems
Technology and Innovation
spellingShingle Crowd counting
Features extraction
Head
Labelings
Semi-supervised
Semi-supervised learning
Spatial labeling redundancy
Technological innovation
Termination of employment
Databases and Information Systems
Technology and Innovation
LIU, Yongtuo
REN, Sucheng
CHAI, Liangyu
WU, Hanjie
XU, Dan
QIN, Jing
HE, Shengfeng
Reducing Spatial Labeling Redundancy for Active Semi-Supervised Crowd Counting
description Labeling is onerous for crowd counting as it should annotate each individual in crowd images. Recently, several methods have been proposed for semi-supervised crowd counting to reduce the labeling efforts. Given a limited labeling budget, they typically select a few crowd images and densely label all individuals in each of them. Despite the promising results, we argue the None-or-All labeling strategy is suboptimal as the densely labeled individuals in each crowd image usually appear similar while the massive unlabeled crowd images may contain entirely diverse individuals. To this end, we propose to break the labeling chain of previous methods and make the first attempt to reduce spatial labeling redundancy for semi-supervised crowd counting. First, instead of annotating all the regions in each crowd image, we propose to annotate the representative ones only. We analyze the region representativeness from both vertical and horizontal directions of initially estimated density maps, and formulate them as cluster centers of Gaussian Mixture Models. Additionally, to leverage the rich unlabeled regions, we exploit the similarities among individuals in each crowd image to directly supervise the unlabeled regions via feature propagation instead of the error-prone label propagation employed in the previous methods. In this way, we can transfer the original spatial labeling redundancy caused by individual similarities to effective supervision signals on the unlabeled regions. Extensive experiments on the widely-used benchmarks demonstrate that our method can outperform previous best approaches by a large margin.
format text
author LIU, Yongtuo
REN, Sucheng
CHAI, Liangyu
WU, Hanjie
XU, Dan
QIN, Jing
HE, Shengfeng
author_facet LIU, Yongtuo
REN, Sucheng
CHAI, Liangyu
WU, Hanjie
XU, Dan
QIN, Jing
HE, Shengfeng
author_sort LIU, Yongtuo
title Reducing Spatial Labeling Redundancy for Active Semi-Supervised Crowd Counting
title_short Reducing Spatial Labeling Redundancy for Active Semi-Supervised Crowd Counting
title_full Reducing Spatial Labeling Redundancy for Active Semi-Supervised Crowd Counting
title_fullStr Reducing Spatial Labeling Redundancy for Active Semi-Supervised Crowd Counting
title_full_unstemmed Reducing Spatial Labeling Redundancy for Active Semi-Supervised Crowd Counting
title_sort reducing spatial labeling redundancy for active semi-supervised crowd counting
publisher Institutional Knowledge at Singapore Management University
publishDate 2023
url https://ink.library.smu.edu.sg/sis_research/8435
https://ink.library.smu.edu.sg/context/sis_research/article/9438/viewcontent/Reducing_Spatial_Labeling_Redundancy_for_Active_Semi_Supervised_Crowd_Counting__1_.pdf
_version_ 1787590749004496896