A Machine Learning Framework for Automated Accident Detection Based on Multimodal Sensors in Cars

Author:

Hozhabr Pour HawzhinORCID,Li FrédéricORCID,Wegmeth LukasORCID,Trense ChristianORCID,Doniec RafałORCID,Grzegorzek MarcinORCID,Wismüller RolandORCID

Abstract

Identifying accident patterns is one of the most vital research foci of driving analysis. Environmental or safety applications and the growing area of fleet management all benefit from accident detection contributions by minimizing the risk vehicles and drivers are subject to, improving their service and reducing overhead costs. Some solutions have been proposed in the past literature for automated accident detection that are mainly based on traffic data or external sensors. However, traffic data can be difficult to access, while external sensors can end up being difficult to set up and unreliable, depending on how they are used. Additionally, the scarcity of accident detection data has limited the type of approaches used in the past, leaving in particular, machine learning (ML) relatively unexplored. Thus, in this paper, we propose a ML framework for automated car accident detection based on mutimodal in-car sensors. Our work is a unique and innovative study on detecting real-world driving accidents by applying state-of-the-art feature extraction methods using basic sensors in cars. In total, five different feature extraction approaches, including techniques based on feature engineering and feature learning with deep learning are evaluated on the strategic highway research program (SHRP2) naturalistic driving study (NDS) crash data set. The main observations of this study are as follows: (1) CNN features with a SVM classifier obtain very promising results, outperforming all other tested approaches. (2) Feature engineering and feature learning approaches were finding different best performing features. Therefore, our fusion experiment indicates that these two feature sets can be efficiently combined. (3) Unsupervised feature extraction remarkably achieves a notable performance score.

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

Reference74 articles.

Cited by 22 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Enhanced Image Processing for Automobile Accident Detection Using Deep Learning;2024 Third International Conference on Smart Technologies and Systems for Next Generation Computing (ICSTSN);2024-07-18

2. 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

3. Cross-Modality Interaction-Based Traffic Accident Classification;Applied Sciences;2024-02-27

4. Real time Alert AI and IoT based accident prevention and detection;Proceedings of the 2024 13th International Conference on Software and Computer Applications;2024-02

5. Responsibility Evaluation in Vehicle Collisions From Driving Recorder Videos Using Open Data;IEEE Access;2024

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