DeepGuard: A Framework for Safeguarding Autonomous Driving Systems from Inconsistent Behavior
Manzoor Hussain, Nazakat Ali, and Jang-Eui Hong

TL;DR
DeepGuard is a framework that detects and prevents unsafe behaviors in autonomous driving systems using autoencoders and time series analysis, significantly improving safety by predicting and mitigating inconsistent driving scenarios in real-time.
Contribution
This paper introduces DeepGuard, a novel anomaly detection and safety enforcement framework for autonomous driving systems that effectively predicts and prevents unsafe behaviors during operation.
Findings
Predicts up to 93% of anomalous scenarios in tested ADSs.
Prevents up to 89% of predicted unsafe behaviors.
Outperforms existing methods like SELFORACLE and DeepRoad.
Abstract
The deep neural networks (DNNs)based autonomous driving systems (ADSs) are expected to reduce road accidents and improve safety in the transportation domain as it removes the factor of human error from driving tasks. The DNN based ADS sometimes may exhibit erroneous or unexpected behaviors due to unexpected driving conditions which may cause accidents. It is not possible to generalize the DNN model performance for all driving conditions. Therefore, the driving conditions that were not considered during the training of the ADS may lead to unpredictable consequences for the safety of autonomous vehicles. This study proposes an autoencoder and time series analysis based anomaly detection system to prevent the safety critical inconsistent behavior of autonomous vehicles at runtime. Our approach called DeepGuard consists of two components. The first component, the inconsistent behavior…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Autonomous Vehicle Technology and Safety · Adversarial Robustness in Machine Learning
