Scenario-based Compositional Verification of Autonomous Systems with Neural Perception
Scenario-based Compositional Verification of Autonomous Systems with Neural Perception
Recent advances in deep learning have enabled the development of autonomous systems that use deep neural networks for perception. Formal verification of these systems is challenging due to the size and complexity of the perception DNNs as well as hard-to-quantify, changing environment conditions. To address these challenges, we propose a probabilistic verification framework for autonomous systems based on the following key concepts: (1) Scenario-based Modeling: We decompose the task (e.g., car navigation) into a composition of scenarios, each representing a different environment condition. (2) Probabilistic Abstractions: For each scenario, we build a compact abstraction of perception based on the DNN's performance on an offline dataset that represents the scenario's environment condition. (3) Symbolic Reasoning and Acceleration: The abstractions enable efficient compositional verification of the autonomous system via symbolic reasoning and a novel acceleration proof rule that bounds the error probability of the system under arbitrary variations of environment conditions. We illustrate our approach on two case studies: an experimental autonomous system that guides airplanes on taxiways using high-dimensional perception DNNs and a simulation model of an F1Tenth autonomous car using LiDAR observations.
Divya Gopinath、Ravi Mangal、Corina S. Pasareanu、Christopher Watson、Rajeev Alur
自动化技术、自动化技术设备计算技术、计算机技术
Divya Gopinath,Ravi Mangal,Corina S. Pasareanu,Christopher Watson,Rajeev Alur.Scenario-based Compositional Verification of Autonomous Systems with Neural Perception[EB/OL].(2025-04-29)[2025-05-31].https://arxiv.org/abs/2504.20942.点此复制
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