Causality-driven Testing of Autonomous Driving Systems

Author:

Giamattei Luca1,Guerriero Antonio1,Pietrantuono Roberto1,Russo Stefano1

Affiliation:

1. DIETI, Università degli Studi di Napoli Federico II, Italy

Abstract

Testing Autonomous Driving Systems (ADS) is essential for safe development of self-driving cars. For thorough and realistic testing, ADS are usually embedded in a simulator and tested in interaction with the simulated environment. However, their high complexity and the multiple safety requirements lead to costly and ineffective testing. Recent techniques exploit many-objective strategies and ML to efficiently search the huge input space. Despite the indubitable advances, the need for smartening the search keep being pressing. This article presents CART ( CAusal-Reasoning-driven Testing ), a new technique that formulates testing as a causal reasoning task. Learning causation, unlike correlation, allows assessing the effect of actively changing an input on the output, net of possible confounding variables. CART first infers the causal relations between test inputs and outputs, then looks for promising tests by querying the learnt model. Only tests suggested by the model are run on the simulator. An extensive empirical evaluation, using Pylot as ADS and CARLA as simulator, compares CART with state-of-the-art algorithms used recently on ADS. CART shows a significant gain in exposing more safety violations and more efficiently. More broadly, the work opens to a wider exploitation of causal learning beside (or on top of) ML for testing-related tasks.

Publisher

Association for Computing Machinery (ACM)

Subject

Software

Reference102 articles.

1. NUMFL: Localizing Faults in Numerical Software Using a Value-Based Causal Model

2. R. Ben Abdessalem , S. Nejati , L.  C. Briand , and T. Stifter . 2016. Testing advanced driver assistance systems using multi-objective search and neural networks . In 31st IEEE/ACM International Conference on Automated Software Engineering (ASE). IEEE, 63–74 . R. Ben Abdessalem, S. Nejati, L. C. Briand, and T. Stifter. 2016. Testing advanced driver assistance systems using multi-objective search and neural networks. In 31st IEEE/ACM International Conference on Automated Software Engineering (ASE). IEEE, 63–74.

3. R. Ben Abdessalem , S. Nejati , L. C.  Briand , and T. Stifter . 2018 . Testing Vision-Based Control Systems Using Learnable Evolutionary Algorithms. In 40th International Conference on Software Engineering (ICSE). ACM, 1016–1026 . R. Ben Abdessalem, S. Nejati, L. C. Briand, and T. Stifter. 2018. Testing Vision-Based Control Systems Using Learnable Evolutionary Algorithms. In 40th International Conference on Software Engineering (ICSE). ACM, 1016–1026.

4. R. Ben Abdessalem , A. Panichella , S. Nejati , L.  C. Briand , and T. Stifter . 2018. Testing Autonomous Cars for Feature Interaction Failures using Many-Objective Search . In 33rd ACM/IEEE International Conference on Automated Software Engineering (ASE). ACM, 143–154 . R. Ben Abdessalem, A. Panichella, S. Nejati, L. C. Briand, and T. Stifter. 2018. Testing Autonomous Cars for Feature Interaction Failures using Many-Objective Search. In 33rd ACM/IEEE International Conference on Automated Software Engineering (ASE). ACM, 143–154.

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1. Boundary State Generation for Testing and Improvement of Autonomous Driving Systems;IEEE Transactions on Software Engineering;2024-08

2. Adversarial Testing with Reinforcement Learning: A Case Study on Autonomous Driving;2024 IEEE Conference on Software Testing, Verification and Validation (ICST);2024-05-27

3. Can Causal Thinking Render AI-Driven Systems More Robust?;SSRN Electronic Journal;2024

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