Visual Representation Learning for Preference-Aware Path Planning
Kavan Singh Sikand, Sadegh Rabiee, Adam Uccello, Xuesu Xiao, Garrett, Warnell, Joydeep Biswas

TL;DR
VRL-PAP introduces a novel visual representation learning approach for preference-aware path planning that overcomes limitations of semantic segmentation, enabling autonomous terrain understanding and path optimization in outdoor environments using unlabeled demonstrations.
Contribution
It proposes a new method that learns terrain representations and costs from unlabeled human demonstrations, avoiding pre-defined terrain types and expensive annotations.
Findings
Successfully plans paths reflecting human preferences
Comparable in performance to detailed manual maps
Generalizes to new terrain types with minimal data
Abstract
Autonomous mobile robots deployed in outdoor environments must reason about different types of terrain for both safety (e.g., prefer dirt over mud) and deployer preferences (e.g., prefer dirt path over flower beds). Most existing solutions to this preference-aware path planning problem use semantic segmentation to classify terrain types from camera images, and then ascribe costs to each type. Unfortunately, there are three key limitations of such approaches -- they 1) require pre-enumeration of the discrete terrain types, 2) are unable to handle hybrid terrain types (e.g., grassy dirt), and 3) require expensive labelled data to train visual semantic segmentation. We introduce Visual Representation Learning for Preference-Aware Path Planning (VRL-PAP), an alternative approach that overcomes all three limitations: VRL-PAP leverages unlabeled human demonstrations of navigation to…
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Taxonomy
TopicsMultimodal Machine Learning Applications · Robotic Path Planning Algorithms · Robotics and Sensor-Based Localization
