English

Multi-modal Feedback for Affordance-driven Interactive Reinforcement Learning

Artificial Intelligence 2018-07-27 v1 Robotics

Abstract

Interactive reinforcement learning (IRL) extends traditional reinforcement learning (RL) by allowing an agent to interact with parent-like trainers during a task. In this paper, we present an IRL approach using dynamic audio-visual input in terms of vocal commands and hand gestures as feedback. Our architecture integrates multi-modal information to provide robust commands from multiple sensory cues along with a confidence value indicating the trustworthiness of the feedback. The integration process also considers the case in which the two modalities convey incongruent information. Additionally, we modulate the influence of sensory-driven feedback in the IRL task using goal-oriented knowledge in terms of contextual affordances. We implement a neural network architecture to predict the effect of performed actions with different objects to avoid failed-states, i.e., states from which it is not possible to accomplish the task. In our experimental setup, we explore the interplay of multimodal feedback and task-specific affordances in a robot cleaning scenario. We compare the learning performance of the agent under four different conditions: traditional RL, multi-modal IRL, and each of these two setups with the use of contextual affordances. Our experiments show that the best performance is obtained by using audio-visual feedback with affordancemodulated IRL. The obtained results demonstrate the importance of multi-modal sensory processing integrated with goal-oriented knowledge in IRL tasks.

Keywords

Cite

@article{arxiv.1807.09991,
  title  = {Multi-modal Feedback for Affordance-driven Interactive Reinforcement Learning},
  author = {Francisco Cruz and German I. Parisi and Stefan Wermter},
  journal= {arXiv preprint arXiv:1807.09991},
  year   = {2018}
}

Comments

Accepted at IEEE IJCNN 2018, Rio de Janeiro, Brazil

R2 v1 2026-06-23T03:14:59.896Z