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R2SNet: Scalable Domain Adaptation for Object Detection in Cloud-Based Robotic Ecosystems Via Proposal Refinement

Michele Antonazzi, Matteo Luperto, N. Alberto Borghese, Nicola Basilico

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Abstract

We introduce a novel approach for scalable do- main adaptation in cloud robotics scenarios where robots rely on third–party AI inference services powered by large pre– trained deep neural networks. Our method is based on a downstream proposal–refinement stage running locally on the robots, exploiting a new lightweight DNN architecture, R2SNet. This architecture aims to mitigate performance degradation from domain shifts by adapting the object detection process to the target environment, focusing on relabeling, rescoring, and suppression of bounding–box proposals. Our method al- lows for local execution on robots, addressing the scalability challenges of domain adaptation without incurring significant computational costs. Real–world results on mobile service robots performing door detection show the effectiveness of the proposed method in achieving scalable domain adaptation.

Index terms

Distributed Robot Systems Object Detection Segmentation and Categorization