{"title":"Critical Features Tracking on Triangulated Irregular Networks by a Scale-Space Method","authors":"Haoan Feng, Yunting Song, Leila De Floriani","doi":"arxiv-2409.06638","DOIUrl":null,"url":null,"abstract":"The scale-space method is a well-established framework that constructs a\nhierarchical representation of an input signal and facilitates coarse-to-fine\nvisual reasoning. Considering the terrain elevation function as the input\nsignal, the scale-space method can identify and track significant topographic\nfeatures across different scales. The number of scales a feature persists,\ncalled its life span, indicates the importance of that feature. In this way,\nimportant topographic features of a landscape can be selected, which are useful\nfor many applications, including cartography, nautical charting, and land-use\nplanning. The scale-space methods developed for terrain data use gridded\nDigital Elevation Models (DEMs) to represent the terrain. However, gridded DEMs\nlack the flexibility to adapt to the irregular distribution of input data and\nthe varied topological complexity of different regions. Instead, Triangulated\nIrregular Networks (TINs) can be directly generated from irregularly\ndistributed point clouds and accurately preserve important features. In this\nwork, we introduce a novel scale-space analysis pipeline for TINs, addressing\nthe multiple challenges in extending grid-based scale-space methods to TINs.\nOur pipeline can efficiently identify and track topologically important\nfeatures on TINs. Moreover, it is capable of analyzing terrains with irregular\nboundaries, which poses challenges for grid-based methods. Comprehensive\nexperiments show that, compared to grid-based methods, our TIN-based pipeline\nis more efficient, accurate, and has better resolution robustness.","PeriodicalId":501281,"journal":{"name":"arXiv - CS - Information Retrieval","volume":"16 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-09-10","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"arXiv - CS - Information Retrieval","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/arxiv-2409.06638","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
The scale-space method is a well-established framework that constructs a
hierarchical representation of an input signal and facilitates coarse-to-fine
visual reasoning. Considering the terrain elevation function as the input
signal, the scale-space method can identify and track significant topographic
features across different scales. The number of scales a feature persists,
called its life span, indicates the importance of that feature. In this way,
important topographic features of a landscape can be selected, which are useful
for many applications, including cartography, nautical charting, and land-use
planning. The scale-space methods developed for terrain data use gridded
Digital Elevation Models (DEMs) to represent the terrain. However, gridded DEMs
lack the flexibility to adapt to the irregular distribution of input data and
the varied topological complexity of different regions. Instead, Triangulated
Irregular Networks (TINs) can be directly generated from irregularly
distributed point clouds and accurately preserve important features. In this
work, we introduce a novel scale-space analysis pipeline for TINs, addressing
the multiple challenges in extending grid-based scale-space methods to TINs.
Our pipeline can efficiently identify and track topologically important
features on TINs. Moreover, it is capable of analyzing terrains with irregular
boundaries, which poses challenges for grid-based methods. Comprehensive
experiments show that, compared to grid-based methods, our TIN-based pipeline
is more efficient, accurate, and has better resolution robustness.
尺度空间法是一种成熟的框架,它能构建输入信号的层次表示法,便于进行从粗到细的视觉推理。将地形高程函数视为输入信号,尺度空间法可以识别和跟踪不同尺度上的重要地形特征。地貌特征持续存在的尺度数(称为其寿命)表明了该特征的重要性。通过这种方法,可以筛选出景观中重要的地形特征,这在制图、海图绘制和土地利用规划等许多应用中都非常有用。为地形数据开发的比例空间方法使用网格数字高程模型(DEM)来表示地形。然而,网格数字高程模型缺乏灵活性,无法适应输入数据的不规则分布和不同地区的不同地形复杂性。相反,三角不规则网络(TIN)可以直接从不规则分布的点云生成,并准确地保留重要特征。在这项工作中,我们为 TINs 引入了一个新颖的尺度空间分析管道,解决了将基于网格的尺度空间方法扩展到 TINs 时所面临的多重挑战。此外,它还能分析具有不规则边界的地形,这对基于网格的方法构成了挑战。综合实验表明,与基于网格的方法相比,我们基于 TIN 的管道更高效、更准确,并且具有更好的分辨率鲁棒性。