MetaLiDAR: Automated metamorphic testing of LiDAR‐based autonomous driving systems

Author:

Yang Zhen1ORCID,Huang Song1ORCID,Zheng Changyou1ORCID,Wang Xingya12ORCID,Wang Yang1ORCID,Xia Chunyan13

Affiliation:

1. College of Command and Control Engineering Army Engineering University of PLA Nanjing Jiangsu China

2. College of Computer Science and Technology Nanjing Tech University Nanjing Jiangsu China

3. College of Computer and Information Technology Mudanjiang Normal University Mudanjiang Heilongjiang China

Abstract

AbstractRecent advances in artificial intelligence technology and perception components have promoted the rapid development of autonomous vehicles. However, as safety‐critical software, autonomous driving systems often make wrong judgments, seriously threatening human and property safety. LiDAR is one of the most critical sensors in autonomous vehicles, capable of accurately perceiving the three‐dimensional information of the environment. Nevertheless, the high cost of manually collecting and labeling point cloud data leads to a dearth of testing methods for LiDAR‐based perception modules. To bridge the critical gap, we introduce MetaLiDAR, a novel automated metamorphic testing methodology for LiDAR‐based autonomous driving systems. First, we propose three object‐level metamorphic relations for the domain characteristics of autonomous driving systems. Next, we design three transformation modules so that MetaLiDAR can generate natural‐looking follow‐up point clouds. Finally, we define corresponding evaluation metrics based on metamorphic relations. MetaLiDAR automatically determines whether source and follow‐up test cases meet the metamorphic relations based on the evaluation metrics. Our empirical research on five state‐of‐the‐art LiDAR‐based object detection models shows that MetaLiDAR can not only generate natural‐looking test point clouds to detect 181,547 inconsistent behaviors of different models but also significantly enhance the robustness of models by retraining with synthetic point clouds.

Funder

National Basic Research Program of China

National Natural Science Foundation of China

Publisher

Wiley

Subject

Software

Reference56 articles.

1. NHTSA finalizes first occupant protection safety standards for vehicles without driving controls. Available athttps://www.nhtsa.gov/press-releases/nhtsa-finalizes-first-occupant-protection-safety-standards-vehicles-without-driving

2. Bundestag nimmt Gesetz zum au­tonomen Fahren an. Available athttps://www.bundestag.de/dokumente/textarchiv/2021/kw20-de-autonomes-fahren-840196

3. A comprehensive study of autonomous vehicle bugs

4. Tesla driver using Autopilot feature killed by tractor trailer. Available athttps://www.foxnews.com/auto/tesla-driver-using-autopilot-feature-killed-by-tractor-trailer

5. When a Tesla on autopilot kills someone who is responsible?Available athttps://www.nyu.edu/about/news-publications/news/2022/march/when-a-tesla-on-autopilot-kills-someone--who-is-responsible--.html

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