TL;DR
This paper introduces an evolutionary test generation method for autonomous vehicle pedestrian detection systems, demonstrating improved failure detection and diversity over baseline methods within a simulation environment.
Contribution
It proposes a novel evolutionary approach for generating failure-revealing test scenarios in autonomous driving simulation, enhancing testing efficiency and effectiveness.
Findings
Higher failure detection rate than random baseline
Greater diversity in generated failure scenarios
Effective in early-stage testing of autonomous systems
Abstract
With the growing capabilities of autonomous vehicles, there is a higher demand for sophisticated and pragmatic quality assurance approaches for machine learning-enabled systems in the automotive AI context. The use of simulation-based prototyping platforms provides the possibility for early-stage testing, enabling inexpensive testing and the ability to capture critical corner-case test scenarios. Simulation-based testing properly complements conventional on-road testing. However, due to the large space of test input parameters in these systems, the efficient generation of effective test scenarios leading to the unveiling of failures is a challenge. This paper presents a study on testing pedestrian detection and emergency braking system of the Baidu Apollo autonomous driving platform within the SVL simulator. We propose an evolutionary automated test generation technique that generates…
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Taxonomy
MethodsTest · Adaptive Parameter-wise Diagonal Quasi-Newton Method
