An Intelligent System for Automatic Evaluation and Reporting of Vehicle Accidents Based on EfficientNet Model and CBAM Attention Mechanism

Authors

Keywords:

Accident Detection, EfficientNet, CBAM Attention Mechanism, Severity Classification, Deep Learning

Abstract

Road traffic accidents remain a critical challenge in road safety, where rapid detection and accurate severity assessment play a vital role in reducing fatalities. This study presents an intelligent system for the automatic evaluation of vehicle accidents based on the EfficientNet-B0 model enhanced with the Convolutional Block Attention Module (CBAM). The primary objective is to overcome the severe class imbalance issue, particularly in the “low-risk” class, and to improve detection accuracy under real-world conditions. The proposed architecture consists of two main modules: a multi-task convolutional neural network for accident detection and severity classification, and a YOLOv8-Nano module for real-time fire and smoke identification. To address data imbalance, a combined strategy involving external data augmentation, oversampling, and an eight-stage training pipeline was employed. Experimental evaluation on the Accident Images Analysis dataset demonstrated that adding the CBAM mechanism led to a 38% improvement in the F1-score of the minority class. The final system achieved an accuracy of 94% in accident detection and 74% in severity classification (with a Macro F1 score of 0.61). Comparison with Pashaei et al. (2020) on the public version of the dataset showed a 4.49% improvement in the Macro F1 metric. The results confirm that integrating attention mechanisms with efficient architectures and smart data management significantly enhances the performance of emergency response support systems.

Published

2027-03-01

Issue

Section

Articles

How to Cite

Torkzadeh, V., & Mohammadpoor Abdolabadi, N. . (2027). An Intelligent System for Automatic Evaluation and Reporting of Vehicle Accidents Based on EfficientNet Model and CBAM Attention Mechanism. Management Strategies and Engineering Sciences. https://msesj.com/index.php/mses/article/view/415

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