Traffic Accident Detection Method Using Trajectory Tracking and Influence Maps
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Published:2023-04-05
Issue:7
Volume:11
Page:1743
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ISSN:2227-7390
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Container-title:Mathematics
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language:en
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Short-container-title:Mathematics
Author:
Zhang Yihang1, Sung Yunsick2ORCID
Affiliation:
1. Department of Autonomous Things Intelligence, Dongguk University–Seoul, Seoul 04620, Republic of Korea 2. Division of AI Software Convergence, Dongguk University–Seoul, Seoul 04620, Republic of Korea
Abstract
With the development of artificial intelligence, techniques such as machine learning, object detection, and trajectory tracking have been applied to various traffic fields to detect accidents and analyze their causes. However, detecting traffic accidents using closed-circuit television (CCTV) as an emerging subject in machine learning remains challenging because of complex traffic environments and limited vision. Traditional research has limitations in deducing the trajectories of accident-related objects and extracting the spatiotemporal relationships among objects. This paper proposes a traffic accident detection method that helps to determine whether each frame shows accidents by generating and considering object trajectories using influence maps and a convolutional neural network (CNN). The influence maps with spatiotemporal relationships were enhanced to improve the detection of traffic accidents. A CNN is utilized to extract latent representations from the influence maps produced by object trajectories. Car Accident Detection and Prediction (CADP) was utilized in the experiments to train our model, which achieved a traffic accident detection accuracy of approximately 95%. Thus, the proposed method attained remarkable results in terms of performance improvement compared to methods that only rely on CNN-based detection.
Subject
General Mathematics,Engineering (miscellaneous),Computer Science (miscellaneous)
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1. A Vision-Based Traffic Accident Analysis and Tracking system from Traffic Surveillance Video;2024 Third International Conference on Intelligent Techniques in Control, Optimization and Signal Processing (INCOS);2024-03-14 2. TRAMON: An automated traffic monitoring system for high density, mixed and lane-free traffic;IATSS Research;2023-12 3. Transfer Learning and CNN-Based Vehicle Identification Approach for Hit-and-Run Cases;2023 3rd International Conference on Advancement in Electronics & Communication Engineering (AECE);2023-11-23
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