Learning to Understand Non-Categorical Physical Language for Human Robot Interactions
Luke E. Richards, Cynthia Matuszek
- Year
- 2021
- Citations
- 10
- Access
- Open access
Abstract
Learning the meaning of language with respect to the physical world in which a robot operates is a necessary step for shared autonomy systems in which natural language is part of a user-specific, customizable interface. We propose a learning system in which language is grounded in visual percepts without pre-defined category constraints by combining CNNbased visual identification with natural language labels, moving towards making it possible for people to use language as a highlevel control system for low-level world interactions, allowing a system to operate on shared visual/linguistic embeddings. We evaluate the efficacy of this learning by evaluating against a wellknown object dataset, and report preliminary results that outline the feasibility of pursuing a visual feature approach to domainfree language understanding.
Keywords
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