Safety of Perception Systems for Automated Driving: A Case Study on Apollo

Author:

Kochanthara Sangeeth1,Singh Tajinder2,Forrai Alexandru2,Cleophas Loek1

Affiliation:

1. Eindhoven University of Technology, The Netherlands

2. Siemens Digital Industries Software, The Netherlands

Abstract

The automotive industry is now known for its software-intensive and safety-critical nature. The industry is on a path to the holy grail of completely automating driving, starting from relatively simple operational areas like highways. One of the most challenging, evolving, and essential parts of automated driving is the software that enables understanding of surroundings and the vehicle’s own as well as surrounding objects’ relative position, otherwise known as the perception system. Current generation perception systems are formed by a combination of traditional software and machine learning-related software. With automated driving systems transitioning from research to production, it is imperative to assess their safety. We assess the safety of Apollo, the most popular open-source automotive software, at the design level for its use on a Dutch highway. We identified 58 safety requirements, 38 of which are found to be fulfilled at the design level. We observe that all requirements relating to traditional software are fulfilled, while most requirements specific to machine learning systems are not. This study unveils issues that need immediate attention; and directions for future research to make automated driving safe.

Publisher

Association for Computing Machinery (ACM)

Subject

Software

Reference106 articles.

1. [n. d.]. Apollo automated driving platform. https://github.com/ApolloAuto/apollo. Accessed: 2022-02-01. [n. d.]. Apollo automated driving platform. https://github.com/ApolloAuto/apollo. Accessed: 2022-02-01.

2. [n. d.]. ISO/PAS 21448:2019 Road vehicles — Safety of the intended functionality. https://www.iso.org/standard/70939.html. Accessed: 2021-01-24. [n. d.]. ISO/PAS 21448:2019 Road vehicles — Safety of the intended functionality. https://www.iso.org/standard/70939.html. Accessed: 2021-01-24.

3. [n. d.]. Replication Package: Safety of Perception Systems for Automated Driving: A Case Study on Apollo. https://doi.org/10.5281/zenodo.8226271. [Online ; accessed on 08- August - 2023 ]. 10.5281/zenodo.8226271 [n. d.]. Replication Package: Safety of Perception Systems for Automated Driving: A Case Study on Apollo. https://doi.org/10.5281/zenodo.8226271. [Online; accessed on 08-August-2023].

4. [n. d.]. Road design - Which road categories are distinguished in the Netherlands?https://www.swov.nl/en/facts-figures/fact/road-design-which-road-categories-are-distinguished-netherlands. Accessed: 2021-03-13. [n. d.]. Road design - Which road categories are distinguished in the Netherlands?https://www.swov.nl/en/facts-figures/fact/road-design-which-road-categories-are-distinguished-netherlands. Accessed: 2021-03-13.

5. [n. d.]. Road traffic signs and regulations in the Netherlands. https://www.universiteitleiden.nl/binaries/content/assets/customsites/study-abroad-exchange-students/road_traffic_signs_and_regulations_jan_2013_uk.pdf. Accessed: 2021-06-14. [n. d.]. Road traffic signs and regulations in the Netherlands. https://www.universiteitleiden.nl/binaries/content/assets/customsites/study-abroad-exchange-students/road_traffic_signs_and_regulations_jan_2013_uk.pdf. Accessed: 2021-06-14.

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