Language Understanding for Field and Service Robots in a Priori Unknown Environments
Matthew R. Walter, Siddharth Patki, Andrea F. Daniele, Ethan, Fahnestock, Felix Duvallet, Sachithra Hemachandra, Jean Oh, Anthony Stentz,, Nicholas Roy, and Thomas M. Howard

TL;DR
This paper introduces a novel learning framework enabling robots to interpret and execute natural-language commands in unknown, unstructured environments by inferring environment models from language.
Contribution
The work presents a new approach that uses language as a sensor to learn environment representations, allowing robots to operate without prior spatial maps in unfamiliar settings.
Findings
Successfully interpreted natural language in unknown environments
Demonstrated navigation and manipulation tasks with learned environment models
Outperformed traditional methods requiring prior environment maps
Abstract
Contemporary approaches to perception, planning, estimation, and control have allowed robots to operate robustly as our remote surrogates in uncertain, unstructured environments. This progress now creates an opportunity for robots to operate not only in isolation, but also with and alongside humans in our complex environments. Realizing this opportunity requires an efficient and flexible medium through which humans can communicate with collaborative robots. Natural language provides one such medium, and through significant progress in statistical methods for natural-language understanding, robots are now able to interpret a diverse array of free-form commands. However, most contemporary approaches require a detailed, prior spatial-semantic map of the robot's environment that models the space of possible referents of an utterance. Consequently, these methods fail when robots are deployed…
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Taxonomy
TopicsMultimodal Machine Learning Applications · Speech and dialogue systems · AI-based Problem Solving and Planning
Methodstravel james
