The Proceedings of JSME annual Conference on Robotics and Mechatronics (Robomec)
Online ISSN : 2424-3124
2024
Session ID : 1P1-R10
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Sim2Real LiDAR Segmentation with Synthetic Raydrop Noise
*Tomoya MIYAWAKIKazuto NAKASHIMAXiaowen LIUYumi IWASHITARyo KURAZUME
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Abstract

In 3D scene understanding tasks using LiDAR data, constructing training data poses a challenge due to its high annotation cost. To this end, annotation-free simulator-based training has recently been gaining attention, while the domain gap between simulators and real environments often leads to decreased generalization performance. This paper introduces a Sim2Real domain adaptation method that mitigates the domain gap by reproducing realistic raydrop noise onto labeled simulation data using deep generative models, enhancing its applicability to real-world scenarios. We demonstrate the effectiveness of our approach in multiple segmentation tasks.

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© 2024 The Japan Society of Mechanical Engineers
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