Inverse Learning for Data-Driven Calibration of Model-Based Statistical Path Planning

Volume: 6, Issue: 1, Pages: 131 - 145
Published: Mar 1, 2021
Abstract
This paper presents a method for inverse learning of a control objective defined in terms of requirements and their joint probability distribution from data. The probability distribution characterizes tolerated deviations from the deterministic requirements and is learned using maximum likelihood estimation from data. Further, this paper introduces both parametrized requirements for motion planning in autonomous driving applications and methods...
Paper Details
Title
Inverse Learning for Data-Driven Calibration of Model-Based Statistical Path Planning
Published Date
Mar 1, 2021
Volume
6
Issue
1
Pages
131 - 145
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