Keyword search (4,164 papers available)

"Wang S" Authored Publications:

Title Authors PubMed ID
1 Pedestrian detection in aerial image based on convolutional neural network with attention mechanism and multi-scale prediction Yang J; Shen J; Wang S; 41387459
ENCS
2 Comprehensive DFT investigation of small-molecule adsorption on the paradigm M-MOF-74 family of metal-organic frameworks Jodaeeasl N; Wang S; Hu A; Peslherbe GH; 39829319
CERMM
3 Ammonium transporters achieve charge transfer by fragmenting their substrate Wang S; Orabi EA; Baday S; Bernèche S; Lamoureux G; 22631217
CERMM
4 Duplicated antagonistic EPF peptides optimize grass stomatal initiation Jangra R; Brunetti SC; Wang X; Kaushik P; Gulick PJ; Foroud NA; Wang S; Lee JS; 34328169
BIOLOGY
5 A polygenic score for acute vaso-occlusive pain in pediatric sickle cell disease Rampersaud E; Kang G; Palmer LE; Rashkin SR; Wang S; Bi W; Alberts NM; Anghelescu D; Barton M; Birch K; Boulos N; Brandow AM; Brooke RJ; Chang TC; Chen W; Cheng Y; Ding J; Easton J; Hodges JR; Kanne CK; Levy S; Mulder H; Patel AP; Puri L; Rosencrance C; Rusch M; Sapkota Y; Sioson E; Sharma A; Tang X; Thrasher A; Wang W; Yao Y; Yasui Y; Yergeau D; Hankins JS; Sheehan VA; Downing JR; Estepp JH; Zhang J; DeBaun M; Wu G; Weiss MJ; 34283174
PSYCHOLOGY

 

Title:Pedestrian detection in aerial image based on convolutional neural network with attention mechanism and multi-scale prediction
Authors:Yang JShen JWang S
Link:https://pubmed.ncbi.nlm.nih.gov/41387459/
DOI:10.1038/s41598-025-27441-8
Publication:Scientific reports
Keywords:
PMID:41387459 Category: Date Added:2025-12-13
Dept Affiliation: ENCS
1 School of Computer Engineering and Big Data, Zhengzhou Business University, Zhengzhou, 451200, China.
2 Department of Electrical and Computer Engineering, Concordia University, Montreal, H3G 2W1, Canada.
3 School of Information and Technology, Luoyang Normal University, Luoyang, 471000, China. shenjiaquan_cv@163.com.
4 School of Computer Science, Universiti Sains Malaysia, 11800, Gelugor, Malaysia.

Description:

Pedestrian object detection is crucial in intelligent systems such as traffic management and surveillance. Traditional machine learning methods have shown drawbacks, including low accuracy and slow processing. Convolutional Neural Network (CNN)-based algorithms have achieved notable progress, but mainstream CNNs still struggle with slow speed and low accuracy, particularly for small and occluded targets from aerial perspectives. In this paper, we propose a Multi-Scale Attention YOLO (MSA-YOLO) algorithm to address these issues. MSA-YOLO incorporates a Squeeze, Excitation, and Cross Stage Partial (SECSP) channel attention module to extract richer pedestrian features with minimal additional parameters. A multi-scale prediction module is also introduced to capture information across different scales, improving small object detection and reducing missed detections. To evaluate our approach, we manually collect and annotate the Aerial Pedestrian dataset (AP dataset), which, to our knowledge, provides more annotations, varied scenes, and diverse view angles than comparable existing datasets. The high-resolution images in the AP dataset allow for capturing more detailed pedestrian features, which can enhance model performance. Experimental results show that, on the AP dataset, MSA-YOLO demonstrates clear advantages over several widely used object detection and pedestrian detection models developed in recent years, indicating its potential dual benefits in terms of accuracy and efficiency.





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