Smart City Gnosys

Smart city article details

Title Yolo-Fusion And Internet Of Things: Advancing Object Detection In Smart Transportation
ID_Doc 62117
Authors Tang J.; Ye C.; Zhou X.; Xu L.
Year 2024
Published Alexandria Engineering Journal, 107
DOI http://dx.doi.org/10.1016/j.aej.2024.09.012
Abstract In intelligent transportation systems, traditional object detection algorithms struggle to handle complex environments and varying lighting conditions, particularly when detecting small targets and processing multimodal data. Furthermore, existing IoT frameworks are limited in their efficiency for real-time data collection and processing, leading to data transmission delays and increased resource consumption, which constrains the overall performance of intelligent transportation systems. To address these issues, this paper proposes a novel deep learning model, YOLO-Fusion. Based on the YOLOv8 architecture, this model innovatively integrates infrared and visible-light images, utilizing FusionAttention and Dynamic Fusion modules to optimize the fusion of multimodal information. To further enhance detection performance, this paper designs a Fusion-Dynamic Loss, improving the model's performance in complex intelligent transportation scenarios. To support the efficient operation of YOLO-Fusion, this paper also introduces an IoT framework that uses intelligent sensors and edge computing technology to achieve real-time collection, transmission and processing of traffic data, significantly improving data timeliness and accuracy. Experimental results demonstrate that YOLO-Fusion significantly outperforms traditional methods on the DroneVehicle and FLIR datasets, showcasing its broad application potential in intelligent traffic monitoring and management. © 2024 Faculty of Engineering, Alexandria University
Author Keywords Internet of Things; Multimodal data fusion; Smart city; Smart transportation; YOLO-Fusion


Similar Articles


Id Similarity Authors Title Published
17853 View0.896Dadheech A.; Bhavsar M.; Verma J.P.; Prasad V.K.Deep Learning Based Smart Traffic Management Using Video Analytics And Iot Sensor FusionSoft Computing, 28, 23 (2024)
60904 View0.894Shihabudeen H.; Rajeesh J.Vehicle Detection And Classification Using Yolov5 On Fused Infrared And Visible Images6th International Conference on Inventive Computation Technologies, ICICT 2023 - Proceedings (2023)
7536 View0.893Khalid M.; Ashraf A.; Bangyal W.H.; Iqbal M.An Android Application For Unwanted Vehicle Detection And CountingProceedings - 2023 Human-Centered Cognitive Systems, HCCS 2023 (2023)
32281 View0.885Varshney A.; Arya D.; Katiyar A.; Dubey A.K.Intelligent And Smart Traffic System Based On Yo-Lo Version-8 Through Video Streaming For Longer Distance LevelProceedings - International Conference on Computing, Power, and Communication Technologies, IC2PCT 2024 (2024)
765 View0.88Shokri D.; Larouche C.; Homayouni S.A Comparative Analysis Of Multi-Label Deep Learning Classifiers For Real-Time Vehicle Detection To Support Intelligent Transportation SystemsSmart Cities, 6, 5 (2023)
30764 View0.88Zhang L.; Yan X.; Jin M.Improved Yolo-Based Algorithm For Urban Traffic Object DetectionProceedings of SPIE - The International Society for Optical Engineering, 13224 (2024)
40259 View0.879Yang Q.; Song L.; Zhou H.Opportunities And Challenges Of Yolo -World In Smart City SurveillanceProceedings - 2024 2nd International Conference on Mechatronics, IoT and Industrial Informatics, ICMIII 2024 (2024)
17852 View0.877Rangari A.P.; Chouthmol A.R.; Kadadas C.; Pal P.; Kumar Singh S.Deep Learning Based Smart Traffic Light System Using Image Processing With Yolo V74th International Conference on Circuits, Control, Communication and Computing, I4C 2022 (2022)
44409 View0.873Alahdal N.M.; Abukhodair F.; Meftah L.H.; Cherif A.Real-Time Object Detection In Autonomous Vehicles With YoloProcedia Computer Science, 246, C (2024)
39607 View0.873Du L.Object Detectors In Autonomous Vehicles: Analysis Of Deep Learning TechniquesInternational Journal of Advanced Computer Science and Applications, 14, 10 (2023)