Keyword search (4,163 papers available)

"Wang Y" Authored Publications:

Title Authors PubMed ID
1 A novel span and syntax enhanced large language model based framework for fine-grained sentiment analysis Zou H; Wang Y; Huang A; 40876298
ENCS
2 Solid solvation structure design improves all-solid-state organic batteries Hu Y; Su H; Fu J; Luo J; Yu Q; Zhao F; Li W; Deng S; Liu Y; Yuan Y; Gan Y; Wang Y; Kim JT; Chen N; Shakouri M; Hao X; Gao Y; Pang T; Zhang N; Jiang M; Li X; Zhao Y; Tu J; Wang C; Sun X; 40759737
ENCS
3 Adaptive finite-time synchronized control of multi-robotic fiber placement system with model uncertainties and disturbances Zhang R; Wang Y; Xie W; Li P; Tan H; Jiang Y; 40461302
ENCS
4 Spectral and network investigation reveals distinct power and connectivity patterns between phasic and tonic REM sleep Avigdor T; Peter-Derex L; Ho A; Schiller K; Wang Y; Abdallah C; Delaire E; Jaber K; Travnicek V; Grova C; Frauscher B; 40394955
SOH
5 Infants' Social Evaluation of Helpers and Hinderers: A Large-Scale, Multi-Lab, Coordinated Replication Study Lucca K; Yuen F; Wang Y; Alessandroni N; Allison O; Alvarez M; Axelsson EL; Baumer J; Baumgartner HA; Bertels J; Bhavsar M; Byers-Heinlein K; Capelier-Mourguy A; Chijiiwa H; Chin CS; Christner N; Cirelli LK; Corbit J; Daum MM; Doan T; Dresel M; Exner A; Fei W; Forbes SH; Franchin L; Frank MC; Geraci A; Giraud M; Gornik ME; Wiesmann CG; Grossmann T; Hadley IM; Havron N; Henderson AME; Matzner EH; Immel BA; Jankiewicz G; Jedryczka W; Kanakogi Y; Kominsky JF; Lew-Williams C; Liberman Z; Liu L; Liu Y; Loeffler MT; Martin A; Mayor J; Meng X; Misiak M; Moreau D; Nencheva ML; Oña LS; Otálora Y; Paulus M; Pepe B; Pickron CB; Powell LJ; Proft M; Quinn AA; Rakoczy H; Reschke PJ; Roth-Hanania R; Rothmaler K; Schlegelmilch K; Schlingloff-Nemecz L; Schmuckler MA; Schuwerk T; Seehagen S; Sen HH; Shainy MR; Silvestri V; Soderstrom M; Sommerville J; Song HJ; Sorokowski P; Stutz SE; Su Y; Taborda-Osorio H; Tan AWM; Tatone D; Taylor-Partridge T; Tsang CKA; Urbanek A; Uzefovsky F; Visser I; Wertz AE; Williams M; Wolsey K; Wong TT; Woodward AM; Wu Y; Zeng Z; Zimmer L; Hamlin JK; 39600132
PSYCHOLOGY
6 Crowd Counting Using Meta-Test-Time Adaptation Ma C; Neri F; Gu L; Wang Z; Wang J; Qing A; Wang Y; 39252679
ENCS
7 NREM sleep brain networks modulate cognitive recovery from sleep deprivation Lee K; Wang Y; Cross NE; Jegou A; Razavipour F; Pomares FB; Perrault AA; Nguyen A; Aydin Ü; Uji M; Abdallah C; Anticevic A; Frauscher B; Benali H; Dang-Vu TT; Grova C; 39005401
PERFORM
8 Bioretention Design Modifications Increase the Simulated Capture of Hydrophobic and Hydrophilic Trace Organic Compounds Rodgers TFM; Spraakman S; Wang Y; Johannessen C; Scholes RC; Giang A; 38483320
CHEMBIOCHEM
9 Hydrothermal synthesis and electrochemical properties of Sn-based peanut shell biochar electrode materials Wang Y; Wang H; Ji J; You T; Lu C; Liu C; Song Y; Chen Z; Zhu S; 38380232
ENCS
10 Advances in Drug Design and Development for Human Therapeutics Using Artificial Intelligence-II Wei D; Peslherbe GH; Selvaraj G; Wang Y; 38136606
CHEMBIOCHEM
11 Bioretention Cells Provide a 10-Fold Reduction in 6PPD-Quinone Mass Loadings to Receiving Waters: Evidence from a Field Experiment and Modeling Rodgers TFM; Wang Y; Humes C; Jeronimo M; Johannessen C; Spraakman S; Giang A; Scholes RC; 37455862
CHEMBIOCHEM
12 Cooperative Sensitization Upconversion in Solution Dispersions of Co-Crystal Assemblies of Mononuclear Yb3+ and Eu3+ Complexes Sun G; Xie Y; Wang Y; Mandl GA; Maurizio SL; Zhang H; Ottenwaelder X; Capobianco JA; Sun L; 37040148
CNSR
13 Proteomics-based vaccine targets annotation and design of subunit and mRNA-based vaccines for Monkeypox virus (MPXV) against the recent outbreak Jin Y; Fayyaz A; Liaqat A; Khan A; Alshammari A; Wang Y; Gu RX; Wei DQ; 37116237
CONCORDIA
14 Modeling and tracking control of dielectric elastomer actuators based on fractional calculus Wu J; Xu Z; Zhang Y; Su CY; Wang Y; 36792481
ENCS
15 Advances in Drug Design and Development for Human Therapeutics Using Artificial Intelligence-I Wei D; Peslherbe GH; Selvaraj G; Wang Y; 36551273
CHEMBIOCHEM
16 A green initiative for oiled sand cleanup using chitosan/rhamnolipid complex dispersion with pH-stimulus response Chen Z; An C; Wang Y; Zhang B; Tian X; Lee K; 34687682
ENCS
17 Long-term effects of PM2·5 on neurological disorders in the American Medicare population: a longitudinal cohort study. Shi L, Wu X, Danesh Yazdi M, Braun D, Abu Awad Y, Wei Y, Liu P, Di Q, Wang Y, Schwartz J, Dominici F, Kioumourtzoglou MA, Zanobetti A 33091388
PSYCHOLOGY
18 Dynamic modeling of dielectric elastomer actuator with conical shape. Huang P, Ye W, Wang Y 32797117
ENCS
19 Effect of ammonia fiber expansion-treated wheat straw and a recombinant fibrolytic enzyme on rumen microbiota and fermentation parameters, total tract digestibility, and performance of lambs. Ribeiro GO; Gruninger RJ; Jones DR; Beauchemin KA; Yang WZ; Wang Y; Abbott DW; Tsang A; McAllister TA; 32369600
CSFG
20 Change in PM2.5 exposure and mortality among Medicare recipients: Combining a semi-randomized approach and inverse probability weights in a low exposure population. Awad YA, Di Q, Wang Y, Choirat C, Coull BA, Zanobetti A, Schwartz J 31538135
PSYCHOLOGY
21 Identification of novel enzymes to enhance the ruminal digestion of barley straw Badhan A; Ribeiro GO; Jones DR; Wang Y; Abbott DW; Di Falco M; Tsang A; McAllister TA; 29621684
CSFG
22 Saccharification efficiencies of multi-enzyme complexes produced by aerobic fungi. Badhan A, Huang J, Wang Y, Abbott DW, Di Falco M, Tsang A, McAllister T 29803771
CSFG
23 New recombinant fibrolytic enzymes for improved in vitro ruminal fiber degradability of barley straw. Ribeiro GO, Badhan A, Huang J, Beauchemin KA, Yang W, Wang Y, Tsang A, McAllister TA 30053012
CSFG
24 Simulating micro-scale thermal interactions in different building environments for mitigating urban heat islands. Chatterjee S, Khan A, Dinda A, Mithun S, Khatun R, Akbari H, Kusaka H, Mitra C, Bhatti SS, Doan QV, Wang Y 30731408
ENCS

 

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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