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Self-Improving Semantic Perception for Indoor Localisation

Authors :
Blum, Hermann
Milano, Francesco
Zurbrügg, René
Siegward, Roland
Cadena, Cesar
Gawel, Abel
Source :
CoRL 2021 https://openreview.net/forum?id=X2KJq-S11BC
Publication Year :
2021

Abstract

We propose a novel robotic system that can improve its perception during deployment. Contrary to the established approach of learning semantics from large datasets and deploying fixed models, we propose a framework in which semantic models are continuously updated on the robot to adapt to the deployment environments. By combining continual learning with self-supervision, our robotic system learns online during deployment without external supervision. We conduct real-world experiments with robots localising in 3D floorplans. Our experiments show how the robot's semantic perception improves during deployment and how this translates into improved localisation, even across drastically different environments. We further study the risk of catastrophic forgetting that such a continuous learning setting poses. We find memory replay an effective measure to reduce forgetting and show how the robotic system can improve even when switching between different environments. On average, our system improves by 60% in segmentation and 10% in localisation accuracy compared to deployment of a fixed model, and it maintains this improvement while adapting to further environments.<br />Comment: A summary video can be accessed at https://youtu.be/awsynhkkFpk

Details

Database :
arXiv
Journal :
CoRL 2021 https://openreview.net/forum?id=X2KJq-S11BC
Publication Type :
Report
Accession number :
edsarx.2105.01595
Document Type :
Working Paper