Back to Search Start Over

Safe Reinforcement Learning From Pixels Using a Stochastic Latent Representation

Authors :
Hogewind, Yannick
Simao, Thiago D.
Kachman, Tal
Jansen, Nils
Publication Year :
2022

Abstract

We address the problem of safe reinforcement learning from pixel observations. Inherent challenges in such settings are (1) a trade-off between reward optimization and adhering to safety constraints, (2) partial observability, and (3) high-dimensional observations. We formalize the problem in a constrained, partially observable Markov decision process framework, where an agent obtains distinct reward and safety signals. To address the curse of dimensionality, we employ a novel safety critic using the stochastic latent actor-critic (SLAC) approach. The latent variable model predicts rewards and safety violations, and we use the safety critic to train safe policies. Using well-known benchmark environments, we demonstrate competitive performance over existing approaches with respects to computational requirements, final reward return, and satisfying the safety constraints.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2210.01801
Document Type :
Working Paper