DeepGuard: a framework for safeguarding autonomous driving systems from inconsistent behaviour

被引:0
|
作者
Manzoor Hussain
Nazakat Ali
Jang-Eui Hong
机构
[1] Chungbuk National University,School of Electrical and Computer Engineering
来源
关键词
Autonomous driving systems; Anomaly detection; Deep learning; Safety guards; DNN;
D O I
暂无
中图分类号
学科分类号
摘要
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 behaviours due to unexpected driving conditions which may cause accidents. Therefore, safety assurance is vital to the ADS. However, DNN-based ADS is a highly complex system that puts forward a strong demand for robustness, more specifically, the ability to predict unexpected driving conditions to prevent potential inconsistent behaviour. It is not possible to generalize the DNN model’s 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 behaviour of autonomous vehicles at runtime. Our approach called DeepGuard consists of two components. The first component- the inconsistent behaviour predictor, is based on an autoencoder and time series analysis to reconstruct the driving scenarios. Based on reconstruction error (e) and threshold (θ), it determines the normal and unexpected driving scenarios and predicts potential inconsistent behaviour. The second component provides on-the-fly safety guards, that is, it automatically activates healing strategies to prevent inconsistencies in the behaviour. We evaluated the performance of DeepGuard in predicting the injected anomalous driving scenarios using already available open-sourced DNN-based ADSs in the Udacity simulator. Our simulation results show that the best variant of DeepGuard can predict up to 93% on the CHAUFFEUR ADS, 83% on DAVE-2 ADS, and 80% of inconsistent behaviour on the EPOCH ADS model, outperforming SELFORACLE and DeepRoad. Overall, DeepGuard can prevent up to 89% of all predicted inconsistent behaviours of ADS by executing predefined safety guards.
引用
收藏
相关论文
共 50 条
  • [41] A decentralised asynchronous federated learning framework for autonomous driving
    Li, Xiaoli
    Cai, Ting
    Xiong, Wei
    Xu, Degang
    International Journal of Vehicle Autonomous Systems, 2023, 17 (3-4) : 133 - 149
  • [42] A formal framework for the safe design of the Autonomous Driving supervision
    Cuer, Romain
    Pietrac, Laurent
    Niel, Eric
    Diallo, Saidou
    Minoiu-Enache, Nicoleta
    Dang-Van-Nhan, Christophe
    RELIABILITY ENGINEERING & SYSTEM SAFETY, 2018, 174 : 29 - 40
  • [43] Subjective Scoring Framework for VQA Models in Autonomous Driving
    Rekanar, Kaavya
    Ahmed, Abbirah
    Mohandas, Reenu
    Sistu, Ganesh
    Eising, Ciaran
    Hayes, Martin
    IEEE ACCESS, 2024, 12 : 141306 - 141323
  • [44] Autonomous Convoy Driving—A Coalitional Game Framework for Highway
    Sumbal Malik
    Hesham El Sayed
    Manzoor Ahmed Khan
    Jalal Khan
    SN Computer Science, 6 (2)
  • [45] Point Cloud Automatic Annotation Framework for Autonomous Driving
    Zhao, Chaoran
    Peng, Bo
    Azumi, Takuya
    2024 35TH IEEE INTELLIGENT VEHICLES SYMPOSIUM, IEEE IV 2024, 2024, : 3063 - 3070
  • [46] A 'Cognitive Driving Framework' for Collision Avoidance in Autonomous Vehicles
    Hamlet, Alan J.
    Crane, Carl D.
    INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2015, 6 (05) : 117 - 124
  • [47] From the Autonomy Framework towards Networks and Systems Approaches for 'Autonomous' Weapons Systems
    Liu, Hin-Yan
    JOURNAL OF INTERNATIONAL HUMANITARIAN LEGAL STUDIES, 2019, 10 (01) : 89 - 110
  • [48] Traffic Light Detection in Autonomous Driving Systems
    Vitas, Dijana
    Tomic, Martina
    Burul, Matko
    IEEE CONSUMER ELECTRONICS MAGAZINE, 2020, 9 (04) : 90 - 95
  • [49] Correct by design coordination of autonomous driving systems
    Bozga, Marius
    Sifakis, Joseph
    INTERNATIONAL JOURNAL ON SOFTWARE TOOLS FOR TECHNOLOGY TRANSFER, 2023, 25 (5-6) : 625 - 639
  • [50] Towards Fully Autonomous Driving: Systems and Algorithms
    Levinson, Jesse
    Askeland, Jake
    Becker, Jan
    Dolson, Jennifer
    Held, David
    Kammel, Soeren
    Kolter, J. Zico
    Langer, Dirk
    Pink, Oliver
    Pratt, Vaughan
    Sokolsky, Michael
    Stanek, Ganymed
    Stavens, David
    Teichman, Alex
    Werling, Moritz
    Thrun, Sebastian
    2011 IEEE INTELLIGENT VEHICLES SYMPOSIUM (IV), 2011, : 163 - 168