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Cooperative Forward Collision Avoidance System Based on Deep Learning

Self-driving vehicles can move autonomously without involving a human pilot by sensing the surrounding environment. Having a forward collision avoidance system will help improve road safety and prevent car accidents. However, this system has drawbacks in terms of crash avoidance (i.e., lack of warni...

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Main Authors: Farhat, Wajdi, Rhaiem, Olfa Ben, Faiedh, Hassene, Souani, Chokri
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Language:English
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creator Farhat, Wajdi
Rhaiem, Olfa Ben
Faiedh, Hassene
Souani, Chokri
description Self-driving vehicles can move autonomously without involving a human pilot by sensing the surrounding environment. Having a forward collision avoidance system will help improve road safety and prevent car accidents. However, this system has drawbacks in terms of crash avoidance (i.e., lack of warning messages, complexity of driving situations and weather conditions). Recently, deep learning algorithms become more suitable to overcome this issue, which have better accuracy and adaptive capability to different environments. In this paper, we propose a Cooperative Forward Collision Avoidance System (CFCA) based on deep learning method. Particularly, this system alerts the driver and broadcast a multi-hop warning messages using vehicle-to-infrastructure (V2I) and vehicle-to-vehicle (V2V) communication based ITS-G5. The experimental results show that the proposed system performs better than existing systems and can efficiently help drivers avoid collisions. In fact, we have considered two databases (KITTI and a private database). Our model achieved 94.04% accuracy with approximately 5% loss rate using KITTI database. While performance accuracy of approximately 92.42% was achieved using a private database.
doi_str_mv 10.1109/DeSE54285.2021.9719448
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subjects Autonomous Driving
Collision Avoidance
Deep learning
Internet of Vehicles
Road safety
Sensors
Spread spectrum communication
Vehicle-to-infrastructure
Vehicular ad hoc networks
title Cooperative Forward Collision Avoidance System Based on Deep Learning
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