The Inadequacy of Discrete Scenarios in Assessing Deep Neural Networks

被引:1
|
作者
Mori, Ken T. [1 ]
Liang, Xu [1 ]
Elster, Lukas [1 ]
Peters, Steven [1 ]
机构
[1] Tech Univ Darmstadt, Inst Automot Engn, Darmstadt, Germany
来源
IEEE ACCESS | 2022年 / 10卷
关键词
Artificial intelligence; autonomous vehicles; concrete scenarios; deep learning; error testing; intelligent vehicles; logical scenarios; machine learning; neural networks; software testing;
D O I
10.1109/ACCESS.2022.3220904
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Many recent approaches for automated driving (AD) functions currently include components relying on deep neural networks (DNNs). One approach in order to test AD functions is the scenario-based approach. This work formalizes and evaluates the parameter discretization process required in order to yield concrete scenarios for which an AD function can be tested. Using a common perception algorithm for camera images, a simulation case study is conducted for a simple static scenario containing one other vehicle. The results are analyzed with methods akin to those applied in the domain of computational fluid dynamics (CFD). The performance of the perception algorithm shows strong fluctuations even for small input changes and displays unpredictable outliers even at very small discretization steps. The convergence criteria as known from CFD fail, meaning that no parametrization is found which is sufficient for the validation of the perception component. Indeed, the results do not indicate consistent improvement with a finer discretization. These results agree well with theoretical attributes known for existing neural networks. However, the impact appears to be large even for the most basic scenario without malicious input. This indicates the necessity of directing more attention towards the parameter discretization process of the scenario-based testing approach to enable the safety argumentation of AD functions.
引用
收藏
页码:118236 / 118242
页数:7
相关论文
共 50 条
  • [31] Symplectic Momentum Neural Networks - Using Discrete Variational Mechanics as a prior in Deep Learning
    Santos, Saul
    Ekal, Monica
    Ventura, Rodrigo
    LEARNING FOR DYNAMICS AND CONTROL CONFERENCE, VOL 168, 2022, 168
  • [32] Equality of opportunity in travel behavior prediction with deep neural networks and discrete choice models
    Zheng, Yunhan
    Wang, Shenhao
    Zhao, Jinhua
    TRANSPORTATION RESEARCH PART C-EMERGING TECHNOLOGIES, 2021, 132
  • [33] An Optimal Control Approach to Deep Learning and Applications to Discrete-Weight Neural Networks
    Li, Qianxiao
    Hao, Shuji
    INTERNATIONAL CONFERENCE ON MACHINE LEARNING, VOL 80, 2018, 80
  • [34] Assessing the prevalence of nutrient inadequacy
    Carriquiry, Alicia L.
    PUBLIC HEALTH NUTRITION, 1999, 2 (01) : 23 - 33
  • [35] Validation of Photonic Neural Networks in Health Scenarios
    Paolini, E.
    De Marinis, L.
    Contestabile, G.
    Gupta, S.
    Maggiani, L.
    Andriolli, N.
    2023 INTERNATIONAL CONFERENCE ON PHOTONICS IN SWITCHING AND COMPUTING, PSC, 2023,
  • [36] Modelling and assessing ad hoc networks in disaster scenarios
    Reina, D. G.
    Toral, S. L.
    Barrero, F.
    Bessis, N.
    Asimakopoulou, E.
    JOURNAL OF AMBIENT INTELLIGENCE AND HUMANIZED COMPUTING, 2013, 4 (05) : 571 - 579
  • [37] Modelling and assessing ad hoc networks in disaster scenarios
    D. G. Reina
    S. L. Toral
    F. Barrero
    N. Bessis
    E. Asimakopoulou
    Journal of Ambient Intelligence and Humanized Computing, 2013, 4 : 571 - 579
  • [38] Assessing the Robustness of Frequency-Domain Ultrasound Beamforming Using Deep Neural Networks
    Luchies, Adam C.
    Byram, Brett C.
    IEEE TRANSACTIONS ON ULTRASONICS FERROELECTRICS AND FREQUENCY CONTROL, 2020, 67 (11) : 2321 - 2335
  • [39] Longitudinal deep neural networks for assessing metastatic brain cancer on a large open benchmark
    Link, Katherine E.
    Schnurman, Zane
    Liu, Chris
    Kwon, Young Joon
    Jiang, Lavender Yao
    Nasir-Moin, Mustafa
    Neifert, Sean
    Alzate, Juan Diego
    Bernstein, Kenneth
    Qu, Tanxia
    Chen, Viola
    Yang, Eunice
    Golfinos, John G.
    Orringer, Daniel
    Kondziolka, Douglas
    Oermann, Eric Karl
    NATURE COMMUNICATIONS, 2024, 15 (01)
  • [40] Testing prediction algorithms as null hypotheses: Application to assessing the performance of deep neural networks
    Bickel, David R.
    STAT, 2020, 9 (01):