When Environments Shift: Safe Planning with Generative Priors and Robust Conformal Prediction
Kaizer Rahaman, Jyotirmoy V. Deshmukh, Ashish R. Hota, Lars Lindemann

TL;DR
This paper introduces a robust planning framework for autonomous systems that maintains safety guarantees under distribution shifts by leveraging generative models conditioned on observable environment parameters and robust conformal prediction.
Contribution
It proposes a novel approach combining conditional diffusion models, online nuisance parameter estimation, and robust conformal prediction within an MPC to ensure safety during distribution shifts.
Findings
Demonstrates safety under diverse distribution shifts in simulation.
Provides probabilistic safety guarantees with robust conformal prediction.
Integrates generative priors with adaptive environment modeling.
Abstract
Autonomous systems operate in environments that may change over time. An example is the control of a self-driving vehicle among pedestrians and human-controlled vehicles whose behavior may change based on factors such as traffic density, road visibility, and social norms. Therefore, the environment encountered during deployment rarely mirrors the environment and data encountered during training -- a phenomenon known as distribution shift -- which can undermine the safety of autonomous systems. Conformal prediction (CP) has recently been used along with data from the training environment to provide prediction regions that capture the behavior of the environment with a desired probability. When embedded within a model predictive controller (MPC), one can provide probabilistic safety guarantees, but only when the deployment and training environments coincide. Once a distribution shift…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Autonomous Vehicle Technology and Safety · Reinforcement Learning in Robotics
