Multimodal estimation and communication of latent semantic knowledge for robust execution of robot instructions

Author:

Arkin Jacob1ORCID,Park Daehyung2ORCID,Roy Subhro2,Walter Matthew R3,Roy Nicholas2,Howard Thomas M1,Paul Rohan24

Affiliation:

1. Robotics and Artificial Intelligence Laboratory, University of Rochester, USA

2. Computer Science & Artificial Intelligence Laboratory, Massachusetts Institute of Technology, USA

3. Robot Intelligence through Perception Laboratory, Toyota Technological Institute at Chicago, USA

4. Department of Computer Science and Engineering, Indian Institute of Technology Delhi, India

Abstract

The goal of this article is to enable robots to perform robust task execution following human instructions in partially observable environments. A robot’s ability to interpret and execute commands is fundamentally tied to its semantic world knowledge. Commonly, robots use exteroceptive sensors, such as cameras or LiDAR, to detect entities in the workspace and infer their visual properties and spatial relationships. However, semantic world properties are often visually imperceptible. We posit the use of non-exteroceptive modalities including physical proprioception, factual descriptions, and domain knowledge as mechanisms for inferring semantic properties of objects. We introduce a probabilistic model that fuses linguistic knowledge with visual and haptic observations into a cumulative belief over latent world attributes to infer the meaning of instructions and execute the instructed tasks in a manner robust to erroneous, noisy, or contradictory evidence. In addition, we provide a method that allows the robot to communicate knowledge dissonance back to the human as a means of correcting errors in the operator’s world model. Finally, we propose an efficient framework that anticipates possible linguistic interactions and infers the associated groundings for the current world state, thereby bootstrapping both language understanding and generation. We present experiments on manipulators for tasks that require inference over partially observed semantic properties, and evaluate our framework’s ability to exploit expressed information and knowledge bases to facilitate convergence, and generate statements to correct declared facts that were observed to be inconsistent with the robot’s estimate of object properties.

Funder

Lockheed Martin

Toyota Research Institute

Robotics Consortium of the U.S. Army Research Laboratory under the Collaborative Technology Alliance Program

Publisher

SAGE Publications

Subject

Applied Mathematics,Artificial Intelligence,Electrical and Electronic Engineering,Mechanical Engineering,Modeling and Simulation,Software

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