ROAR: Robust Accident Recognition and Anticipation for Autonomous Driving
Xingcheng Liu, Yanchen Guan, Haicheng Liao, Zhengbing He, Zhenning Li

TL;DR
ROAR is a robust accident prediction framework for autonomous vehicles that effectively handles noisy data, sensor failures, and class imbalance, outperforming existing methods across multiple datasets.
Contribution
Introduces ROAR, combining DWT, an object aware module, and dynamic focal loss to improve accident anticipation under real-world challenges.
Findings
Outperforms existing baselines in AP and mTTA metrics
Demonstrates robustness against sensor failures and environmental noise
Effective in handling class imbalance in accident datasets
Abstract
Accurate accident anticipation is essential for enhancing the safety of autonomous vehicles (AVs). However, existing methods often assume ideal conditions, overlooking challenges such as sensor failures, environmental disturbances, and data imperfections, which can significantly degrade prediction accuracy. Additionally, previous models have not adequately addressed the considerable variability in driver behavior and accident rates across different vehicle types. To overcome these limitations, this study introduces ROAR, a novel approach for accident detection and prediction. ROAR combines Discrete Wavelet Transform (DWT), a self adaptive object aware module, and dynamic focal loss to tackle these challenges. The DWT effectively extracts features from noisy and incomplete data, while the object aware module improves accident prediction by focusing on high-risk vehicles and modeling the…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Traffic and Road Safety · IoT and GPS-based Vehicle Safety Systems
