遥感图像拓扑方向图的类不可知性提取

Bingnan Yang, Mi Zhang, Zhang Zhang, Zhili Zhang, Xiangyun Hu
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引用次数: 1

摘要

近年来,遥感图像矢量自动提取技术得到了迅速发展。然而,现有的作品绝大多数集中在一个特定的目标上,对品类的变化很脆弱,很难实现跨品类的稳定表现。在这项工作中,我们提出了一个创新的类别不可知论模型,即TopDiG,可以直接从遥感图像中提取拓扑方向图,并解决这些问题。首先,TopDiG采用拓扑集中节点检测器(TCND)检测节点,获得拓扑组件的紧凑感知。其次,提出了一种动态图监督(DGS)策略,从无序节点动态生成邻接图标签。最后,设计了方向图(DiG)生成模块,从预测节点构建拓扑方向图。在Inria、CrowdAI、GID、GF2和Massachusetts数据集上的实验经验表明,TopDiG是类不可知的,并且在所有数据集上都取得了具有竞争力的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TopDiG: Class-agnostic Topological Directional Graph Extraction from Remote Sensing Images
Rapid development in automatic vector extraction from remote sensing images has been witnessed in recent years. However, the vast majority of existing works concentrate on a specific target, fragile to category variety, and hardly achieve stable performance crossing different categories. In this work, we propose an innovative class-agnostic model, namely TopDiG, to directly extract topological directional graphs from remote sensing images and solve these issues. Firstly, TopDiG employs a topology-concentrated node detector (TCND) to detect nodes and obtain compact perception of topological components. Secondly, we propose a dynamic graph supervision (DGS) strategy to dynamically generate adjacency graph labels from unordered nodes. Finally, the directional graph (DiG) generator module is designed to construct topological directional graphs from predicted nodes. Experiments on the Inria, CrowdAI, GID, GF2 and Massachusetts datasets empirically demonstrate that TopDiG is class-agnostic and achieves competitive performance on all datasets.
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