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CW-ERM: Improving Autonomous Driving Planning with Closed-loop Weighted Empirical Risk Minimization

Authors :
Kumar, Eesha
Zhang, Yiming
Pini, Stefano
Stent, Simon
Ferreira, Ana
Zagoruyko, Sergey
Perone, Christian S.
Publication Year :
2022

Abstract

The imitation learning of self-driving vehicle policies through behavioral cloning is often carried out in an open-loop fashion, ignoring the effect of actions to future states. Training such policies purely with Empirical Risk Minimization (ERM) can be detrimental to real-world performance, as it biases policy networks towards matching only open-loop behavior, showing poor results when evaluated in closed-loop. In this work, we develop an efficient and simple-to-implement principle called Closed-loop Weighted Empirical Risk Minimization (CW-ERM), in which a closed-loop evaluation procedure is first used to identify training data samples that are important for practical driving performance and then we these samples to help debias the policy network. We evaluate CW-ERM in a challenging urban driving dataset and show that this procedure yields a significant reduction in collisions as well as other non-differentiable closed-loop metrics.<br />Comment: v2: minor update in dataset and results (no changes in improvements or conclusions)

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2210.02174
Document Type :
Working Paper