Deep unsupervised learning for 3D ALS point clouds change detection

Iris de Gélis , Sudipan Saha , Muhammad Shahzad , Thomas Corpetti , Sébastien Lefèvre , Xiao Xiang Zhu
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引用次数: 4

Abstract

Change detection from traditional 2D optical images has limited capability to model the changes in the height or shape of objects. Change detection using 3D point cloud from photogrammetry or LiDAR surveying can fill this gap by providing critical depth information. While most existing machine learning based 3D point cloud change detection methods are supervised, they severely depend on the availability of annotated training data, which is in practice a critical point. To circumnavigate this dependence, we propose an unsupervised 3D point cloud change detection method mainly based on self-supervised learning using deep clustering and contrastive learning. The proposed method also relies on an adaptation of deep change vector analysis to 3D point cloud via nearest point comparison. Experiments conducted on an aerial LiDAR survey dataset show that the proposed method obtains higher performance in comparison to the traditional unsupervised methods, with a gain of about 9% in mean accuracy (to reach more than 85%). Thus, it appears to be a relevant choice in scenario where prior knowledge (labels) is not ensured. The code will be made available at https://github.com/IdeGelis/torch-points3d-SSL-DCVA.

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三维ALS点云变化检测的深度无监督学习
来自传统2D光学图像的变化检测对物体高度或形状的变化建模的能力有限。使用摄影测量或激光雷达测量的3D点云进行变化检测可以通过提供关键深度信息来填补这一空白。虽然大多数现有的基于机器学习的3D点云变化检测方法都受到监督,但它们严重依赖于注释训练数据的可用性,而注释训练数据在实践中是一个关键点。为了克服这种依赖性,我们提出了一种无监督的3D点云变化检测方法,该方法主要基于深度聚类和对比学习的自监督学习。所提出的方法还依赖于通过最近点比较将深度变化向量分析适应于3D点云。在航空LiDAR调查数据集上进行的实验表明,与传统的无监督方法相比,该方法获得了更高的性能,平均精度提高了约9%(达到85%以上)。因此,在无法确保先验知识(标签)的情况下,这似乎是一个相关的选择。该代码将在https://github.com/IdeGelis/torch-points3d-SSL-DCVA.
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