Deep Reinforcement Learning with Interactive Feedback in a Human-Robot Environment
Ithan Moreira, Javier Rivas, Francisco Cruz, Richard Dazeley, Angel, Ayala, Bruno Fernandes

TL;DR
This paper introduces a deep reinforcement learning method enhanced with interactive feedback from either a human or an artificial agent to accelerate learning in a domestic robot task, demonstrating improved efficiency and accuracy.
Contribution
It presents a novel interactive deep reinforcement learning framework incorporating human and artificial advisors to improve learning speed and performance in robotic tasks.
Findings
Interactive feedback reduces learning time.
Agents with feedback make fewer mistakes.
Both human and artificial advisors enhance learning efficiency.
Abstract
Robots are extending their presence in domestic environments every day, being more common to see them carrying out tasks in home scenarios. In the future, robots are expected to increasingly perform more complex tasks and, therefore, be able to acquire experience from different sources as quickly as possible. A plausible approach to address this issue is interactive feedback, where a trainer advises a learner on which actions should be taken from specific states to speed up the learning process. Moreover, deep reinforcement learning has been recently widely utilized in robotics to learn the environment and acquire new skills autonomously. However, an open issue when using deep reinforcement learning is the excessive time needed to learn a task from raw input images. In this work, we propose a deep reinforcement learning approach with interactive feedback to learn a domestic task in a…
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Taxonomy
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
