Scenario‐Driven Metamorphic Testing for Autonomous Driving Simulators

Author:

Zhang Yifan1ORCID,Towey Dave1ORCID,Pike Matthew1ORCID,Cheng Han Jia2ORCID,Quan Zhou Zhi3ORCID,Yin Chenghao3,Wang Qian3,Xie Chen4

Affiliation:

1. School of Computer Science University of Nottingham Ningbo China Ningbo, Zhejiang China

2. Institute of Cybersecurity and Cryptology, School of Computing and Information Technology University of Wollongong Wollongong New South Wales Australia

3. Department of Autonomous Driving NIO Shanghai China

4. Lightwheel AI Shanghai China

Abstract

ABSTRACTThe proliferation of driver‐assistance features in vehicles has resulted in a growing interest among the public in fully autonomous driving systems (ADSs). However, the integration of software and hardware in these complex systems presents significant testing challenges, particularly with respect to ensuring passenger safety. To address these challenges, simulation has emerged as a crucial step in the testing of ADSs. This paper presents a solution to the challenges faced in testing ADSs, with a focus on the validation of ADS simulators. The proposed approach involves using simulations and metamorphic testing (MT) to generate multiple concrete metamorphic relations (MRs) for testing ADS simulators. In order to accomplish this goal, we introduce three metamorphic relation patterns (MRPs). Each MRP is accompanied by a metamorphic relation input pattern (MRIP) that aids in generating detailed MRs. These MRs are designed to identify potential issues within the ADS simulator. To simplify the testing process and facilitate MT for testers, a self‐evolving scenario‐testing framework is also presented. The framework allows testers to improve test cases and MRs iteratively until issues detected are confirmed. The benefits and limitations of the framework are demonstrated using an industry case study. Overall, this study offers a practical solution to the challenges in testing ADSs and provides useful insights into improving testing efficiency for researchers and practitioners in the field.

Publisher

Wiley

Reference57 articles.

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3. “Xpilot ” (2023) accessed June 11 2023 https://heyxpeng.com/intelligent/xpilot?parentId=4.

4. A.Geiger P.Lenz andR.Urtasun “Are We Ready for Autonomous Driving? The KITTI Vision Benchmark Suite ” 2012 IEEE Conference on Computer Vision and Pattern Recognition (IEEE 2012) 3354–3361.

5. The Oracle Problem in Software Testing: A Survey

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