自监督预训练增强激光雷达数据的语义场景分割

Mariona Carós, Ariadna Just, S. Seguí, Jordi Vitrià
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引用次数: 0

摘要

机载激光雷达系统能够通过生成主要由3D坐标定义的点组成的大量点云数据来捕获地球表面。然而,为监督学习任务标记这些点是很耗时的。因此,有必要研究可以从未标记数据中学习的技术,以显着减少注释样本的数量。在这项工作中,我们提出用Barlow Twins训练一个自监督编码器,并将其用作语义场景分割任务的预训练网络。实验结果表明,一旦对监督任务进行微调,我们的无监督预训练可以提高性能,特别是对于代表性不足的类别。
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Self-Supervised Pre-Training Boosts Semantic Scene Segmentation on LiDAR data
Airborne LiDAR systems have the capability to capture the Earth’s surface by generating extensive point cloud data comprised of points mainly defined by 3D coordinates. However, labeling such points for supervised learning tasks is time-consuming. As a result, there is a need to investigate techniques that can learn from unlabeled data to significantly reduce the number of annotated samples. In this work, we propose to train a self-supervised encoder with Barlow Twins and use it as a pre-trained network in the task of semantic scene segmentation. The experimental results demonstrate that our unsupervised pre-training boosts performance once fine-tuned on the supervised task, especially for under-represented categories.
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