Interaction modeling and classification scheme for augmenting the response accuracy of human-robot interaction systems

Work. 2021;68(3):903-912. doi: 10.3233/WOR-203424.

Abstract

Background: Human-robot interaction (HRI) is becoming a current research field for providing granular real-time applications and services through physical observation. Robotic systems are designed to handle the roles of humans and assist them through intrinsic sensing and commutative interactions. These systems handle inputs from multiple sources, process them, and deliver reliable responses to the users without delay. Input analysis and processing is the prime concern for the robotic systems to understand and resolve the queries of the users.

Objectives: In this manuscript, the Interaction Modeling and Classification Scheme (IMCS) is introduced to improve the accuracy of HRI. This scheme consists of two phases, namely error classification and input mapping. In the error classification process, the input is analyzed for its events and conditional discrepancies to assign appropriate responses in the input mapping phase. The joint process is aided by a linear learning model to analyze the different conditions in the event and input detection.

Results: The performance of the proposed scheme shows that it is capable of improving the interaction accuracy by reducing the ratio of errors and interaction response by leveraging the information extraction from the discrete and successive human inputs.

Conclusion: The fetched data are analyzed by classifying the errors at the initial stage to achieve reliable responses.

Keywords: Linear processing; input mapping; interaction response; recognition; robotic systems.

MeSH terms

  • Humans
  • Learning
  • Robotics*