Keyword search (4,163 papers available)

"Wang J" Authored Publications:

Title Authors PubMed ID
1 First report of synthetic antioxidants in baby wipes: Insights into occurrence, sources, and infant exposure Wang X; Liu W; Wang J; Johannessen C; Zhang X; Xia K; Wu X; Liu Q; 41259909
CHEMBIOCHEM
2 International interlaboratory study to normalize liquid chromatography-based mycotoxin retention times through implementation of a retention index system Kelman MJ; Renaud JB; McCarron P; Hoogstra S; Chow W; Wang J; Varga E; Patriarca A; Vaya AM; Visintin L; Nguyen T; De Boevre M; De Saeger S; Karanghat V; Vuckovic D; McMullin DR; Dall' Asta C; Ayeni K; Warth B; Huang M; Tittlemier S; Mats L; Cao R; Sulyok M; Xu K; Berthiller F; Kuhn M; Cramer B; Ciasca B; Lattanzio V; De Baere S; Croubels S; DesRochers N; Sura S; Bates J; Wright EJ; Thapa I; Blackwell BA; Zhang K; Wong J; Burns L; Borts DJ; Sumarah MW; 39913989
CHEMBIOCHEM
3 Guest editorial: Papers from the 18th joint workshop on Augmented Environments for Computer Assisted Interventions (AE-CAI) at MICCAI 2024: Guest editors' foreword Linte CA; Yaniv Z; Chen E; Drouin S; Kersten-Oertel M; McLeod J; Sarikaya D; Wang J; 39834896
ENCS
4 Crowd Counting Using Meta-Test-Time Adaptation Ma C; Neri F; Gu L; Wang Z; Wang J; Qing A; Wang Y; 39252679
ENCS
5 Factors associated with change in moderate or severe symptoms of anxiety and depression in community-living adults and older adults during the COVID-19 pandemic Vasiliadis HM; Spagnolo J; Bartram M; Fleury MJ; Gouin JP; Grenier S; Roberge P; Shen-Tu G; Vena JE; Lamoureux-Lamarche C; Wang J; 38117417
PSYCHOLOGY
6 Factors associated with mental health service use during the pandemic: Initiation and barriers Vasiliadis HM; Spagnolo J; Fleury MJ; Gouin JP; Roberge P; Bartram M; Grenier S; Shen-Tu G; Vena JE; Wang J; 37646244
PSYCHOLOGY
7 Refined design of ventilation systems to mitigate infection risk in hospital wards: Perspective from ventilation openings setting Ren C; Wang J; Feng Z; Kim MK; Haghighat F; Cao SJ; 37336354
ENCS
8 Mental health service use and associated predisposing, enabling and need factors in community living adults and older adults across Canada Vasiliadis HM; Spagnolo J; Fleury MJ; Gouin JP; Roberge P; Bartram M; Grenier S; Shen-Tu G; Vena JE; Wang J; 37046270
PSYCHOLOGY
9 Intelligent operation, maintenance, and control system for public building: Towards infection risk mitigation and energy efficiency Ren C; Zhu HC; Wang J; Feng Z; Chen G; Haghighat F; Cao SJ; 36941886
ENCS
10 Perfluoroalkyl and polyfluoroalkyl substances (PFASs) in groundwater: current understandings and challenges to overcome Zhao Z; Li J; Zhang X; Wang L; Wang J; Lin T; 35593984
CHEMBIOCHEM
11 Seasonal source identification and source-specific health risk assessment of pollutants in road dust Wang J; Huang JJ; Mulligan C; 34510345
ENCS
12 Flame-Retardant and Polysulfide-Suppressed Ether-Based Electrolytes for High-Temperature Li-S Batteries He M; Li X; Holmes NG; Li R; Wang J; Yin G; Zuo P; Sun X; 34370436
ENCS
13 Mitigating COVID-19 infection disease transmission in indoor environment using physical barriers Ren C; Xi C; Wang J; Feng Z; Nasiri F; Cao SJ; Haghighat F; 34306996
ENCS
14 Indoor airborne disinfection with electrostatic disinfector (ESD): Numerical simulations of ESD performance and reduction of computing time Feng Z; Cao SJ; Wang J; Kumar P; Haghighat F; 33994653
ENCS
15 Cost-Effective Water-Soluble Poly(vinyl alcohol) as a Functional Binder for High-Sulfur-Loading Cathodes in Lithium-Sulfur Batteries. Liao J, Liu Z, Wang J, Ye Z 32309738
ENCS
16 Preservation of organic matter in marine sediments by inner-sphere interactions with reactive iron. Barber A, Brandes J, Leri A, Lalonde K, Balind K, Wirick S, Wang J, Gélinas Y 28336935
CHEMBIOCHEM

 

Title:Crowd Counting Using Meta-Test-Time Adaptation
Authors:Ma CNeri FGu LWang ZWang JQing AWang Y
Link:https://pubmed.ncbi.nlm.nih.gov/39252679/
DOI:10.1142/S0129065724500618
Publication:International journal of neural systems
Keywords:Crowd countingdropoutmeta-learningpseudo labelstest-time adaptation
PMID:39252679 Category: Date Added:2024-09-10
Dept Affiliation: ENCS
1 School of Electrical Engineering, Southwest Jiaotong University, Chengdu 611756, P. R. China.
2 NICE Group, School of Computer Science and Electronic Engineering, University of Surrey, Guildford, Surrey GU2 7XH, UK.
3 Department of Computer Science and Software Engineering, Concordia University, Montreal, QC H3H 2L9, Canada.
4 Faculty of Electric Power Engineering, Kunming University of Science and Technology, Kunming 650500, P. R. China.

Description:

Machine learning algorithms are commonly used for quickly and efficiently counting people from a crowd. Test-time adaptation methods for crowd counting adjust model parameters and employ additional data augmentation to better adapt the model to the specific conditions encountered during testing. The majority of current studies concentrate on unsupervised domain adaptation. These approaches commonly perform hundreds of epochs of training iterations, requiring a sizable number of unannotated data of every new target domain apart from annotated data of the source domain. Unlike these methods, we propose a meta-test-time adaptive crowd counting approach called CrowdTTA, which integrates the concept of test-time adaptation into the meta-learning framework and makes it easier for the counting model to adapt to the unknown test distributions. To facilitate the reliable supervision signal at the pixel level, we introduce uncertainty by inserting the dropout layer into the counting model. The uncertainty is then used to generate valuable pseudo labels, serving as effective supervisory signals for adapting the model. In the context of meta-learning, one image can be regarded as one task for crowd counting. In each iteration, our approach is a dual-level optimization process. In the inner update, we employ a self-supervised consistency loss function to optimize the model so as to simulate the parameters update process that occurs during the test phase. In the outer update, we authentically update the parameters based on the image with ground truth, improving the model's performance and making the pseudo labels more accurate in the next iteration. At test time, the input image is used for adapting the model before testing the image. In comparison to various supervised learning and domain adaptation methods, our results via extensive experiments on diverse datasets showcase the general adaptive capability of our approach across datasets with varying crowd densities and scales.





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