A Deep Reinforcement Learning Approach with Visual Semantic Navigation with Memory for Mobile Robots in Indoor Home Context

Published in Journal of Intelligent and Robotic Systems (JINT) , 2022

Recommended citation: Santos, I.B.d.A., Romero, R.A.F. A Deep Reinforcement Learning Approach with Visual Semantic Navigation with Memory for Mobile Robots in Indoor Home Context. J Intell Robot Syst 104, 40 (2022). https://doi.org/10.1007/s10846-021-01566-0 https://link.springer.com/article/10.1007/s10846-021-01566-0

Navigate is a crucial task to be performed by social robot agents in complex and uncertain environments like homes and offices. Search for specific target objects is usually a required activity. This work aimed to propose a visual semantic navigation with memory architecture model. Based on recent advances in convolutional neural networks and graph neural networks, a visual semantic navigation architecture model (GCN-MLP) was extended with recurrent neural networks for memory mechanisms (GCN-GRU and GCN-LSTM) while exposing a robot agent in navigation experiences to learn navigation policies. The models were evaluated quantitatively and qualitatively, where memory enhanced models demonstrated early convergence, better performance in evaluation metrics, increased successfully terminated episodes, more efficient path trajectories, and lower decrease in performance when exposed to challenger test scheme, presenting a more exploratory behavior. Finally, were analyzed differences between GRU and LSTM, where GRU performed similarly to LSTM in some cases, being a viable option.

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Recommended citation: Santos, I.B.d.A., Romero, R.A.F. A Deep Reinforcement Learning Approach with Visual Semantic Navigation with Memory for Mobile Robots in Indoor Home Context. J Intell Robot Syst 104, 40 (2022). https://doi.org/10.1007/s10846-021-01566-0