有限训练标签的地形表面地球图像分割:一种基于物理引导图协同训练的半监督方法

Wenchong He, Arpan Man Sainju, Zhe Jiang, Da Yan, Yang Zhou
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引用次数: 3

摘要

针对具有光谱特征的地表影像,研究了基于解释特征和地表拓扑的地表分割方法。该问题在许多空间和时空应用中具有重要意义,例如水文学中的洪水范围测绘。这个问题具有独特的挑战性,原因有几个:首先,地形表面上的地球图像的大小通常比流行的深度卷积神经网络的输入大得多;其次,曲面上像素类之间存在拓扑结构依赖关系,这种依赖关系可能遵循未知的非线性分布;第三,培训标签往往有限。现有的地球图像分割方法通常将图像分割成小块,并将高程作为附加的特征通道。这些方法没有充分考虑表面斑块内部和表面斑块之间的空间拓扑结构约束,因此通常显示较差的结果,特别是在训练标签有限的情况下。现有的地球图像半监督和无监督学习方法往往侧重于学习表征,而没有明确地考虑表面拓扑结构。相比之下,我们提出了一种新的框架,该框架通过物理约束(例如,地形上的水流方向)的指导,通过计算拓扑中的轮廓树明确地建模地形表面的拓扑骨架。我们的框架由两个神经网络组成:一个是卷积神经网络(CNN),用于学习二维图像网格上的空间上下文特征,另一个是图神经网络(GNN),用于学习物理引导的空间拓扑依赖在轮廓树上的统计分布。通过变分EM对两种模型进行了联合训练。对真实洪水地图数据集的评估表明,所提出的模型在分类精度上优于基线方法,特别是在训练标签有限的情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Earth Imagery Segmentation on Terrain Surface with Limited Training Labels: A Semi-supervised Approach based on Physics-Guided Graph Co-Training
Given earth imagery with spectral features on a terrain surface, this paper studies surface segmentation based on both explanatory features and surface topology. The problem is important in many spatial and spatiotemporal applications such as flood extent mapping in hydrology. The problem is uniquely challenging for several reasons: first, the size of earth imagery on a terrain surface is often much larger than the input of popular deep convolutional neural networks; second, there exists topological structure dependency between pixel classes on the surface, and such dependency can follow an unknown and non-linear distribution; third, there are often limited training labels. Existing methods for earth imagery segmentation often divide the imagery into patches and consider the elevation as an additional feature channel. These methods do not fully incorporate the spatial topological structural constraint within and across surface patches and thus often show poor results, especially when training labels are limited. Existing methods on semi-supervised and unsupervised learning for earth imagery often focus on learning representation without explicitly incorporating surface topology. In contrast, we propose a novel framework that explicitly models the topological skeleton of a terrain surface with a contour tree from computational topology, which is guided by the physical constraint (e.g., water flow direction on terrains). Our framework consists of two neural networks: a convolutional neural network (CNN) to learn spatial contextual features on a 2D image grid, and a graph neural network (GNN) to learn the statistical distribution of physics-guided spatial topological dependency on the contour tree. The two models are co-trained via variational EM. Evaluations on the real-world flood mapping datasets show that the proposed models outperform baseline methods in classification accuracy, especially when training labels are limited.
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