Knowledge Agora



Similar Articles

Title Traffic Monitoring using an Object Detection Framework with Limited Dataset
ID_Doc 43882
Authors Komasilovs, V; Zacepins, A; Kviesis, A; Estevez, C
Title Traffic Monitoring using an Object Detection Framework with Limited Dataset
Year 2019
Published
Abstract Vehicle detection and tracking is one of the key components of the smart traffic concept. Modern city planning and development is not achievable without proper knowledge of existing traffic flows within the city. Surveillance video is an undervalued source of traffic information, which can be discovered by variety of information technology tools and solutions, including machine learning techniques. A solution for real-time vehicle traffic monitoring, tracking and counting is proposed in Jelgava city, Latvia. It uses object detection model for locating vehicles on the image from outdoor surveillance camera. Detected vehicles are passed to tracking module, which is responsible for building vehicle trajectory and its counting. This research compares two different model training approaches (uniform and diverse data sets) used for vehicle detection in variety of weather and day-time conditions. The system demonstrates good accuracy of given test cases (about 92% accuracy in average). In addition, results are compared to non-machine learning vehicle tracking approach, where notable vehicle detection accuracy increase is demonstrated on congested traffic. This research is fulfilled within the RETRACT (Enabling resilient urban transportation systems in smart cities) project.
PDF https://doi.org/10.5220/0007586802910296

Similar Articles

ID Score Article
41299 Hua, S; Anastasiu, DC Effective Vehicle Tracking Algorithm for Smart Traffic Networks(2019)
43506 Kutlimuratov, A; Khamzaev, J; Kuchkorov, T; Anwar, MS; Choi, A Applying Enhanced Real-Time Monitoring and Counting Method for Effective Traffic Management in Tashkent(2023)Sensors, 23, 11
43941 Stuparu, DG; Ciobanu, RI; Dobre, C Vehicle Detection in Overhead Satellite Images Using a One-Stage Object Detection Model(2020)Sensors, 20, 22
44579 Ghosh, A; Sabtrj, MS; Sonet, HH; Shatabda, S; Farid, DM An Adaptive Video-based Vehicle Detection, Classification, Counting, and Speed-measurement System for Real-time Traffic Data Collection(2019)
42389 Zheng, Y; Li, XM; Xu, LC; Wen, N A Deep Learning-Based Approach for Moving Vehicle Counting and Short-Term Traffic Prediction From Video Images(2022)
37334 Trivedi, J; Devi, MS; Dhara, D Vehicle Counting Module Design in Small Scale for Traffic Management in Smart City(2018)
43104 Wei, Y; Song, NH; Ke, LP; Chang, MC; Lyu, SW Street Object Detection / Tracking For Ai City Traffic Analysis(2017)
40818 Lingani, GM; Rawat, DB; Garuba, M Smart Traffic Management System using Deep Learning for Smart City Applications(2019)
Scroll