海量InSAR点云在线可视化与解译平台
Web-based visualization and interpretation platform for massive InSAR point clouds
- 2023年27卷第7期 页码:1744-1753
纸质出版日期: 2023-07-07
DOI: 10.11834/jrs.20232131
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纸质出版日期: 2023-07-07 ,
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郭绍琨,董杰,张路,廖明生.2023.海量InSAR点云在线可视化与解译平台.遥感学报,27(7): 1744-1753
Guo S K, Dong J, Zhang L and Liao M S. 2023. Web-based visualization and interpretation platform for massive InSAR point clouds. National Remote Sensing Bulletin, 27(7):1744-1753
干涉合成孔径雷达(InSAR)技术可获取大范围地表形变信息,在地质灾害监测与防治中发挥着巨大的作用。然而,现有数字地球产品难以支撑海量InSAR点云及形变序列的流畅显示、快速查询与综合解译,不利于InSAR技术的应用与推广。本文在分析海量InSAR点云三维显示难点的基础上,提出InSAR点云数据预处理、存储、浏览和查询等问题的工程解决方案,基于Cesium数字地球开发一套海量InSAR点云在线可视化与解译平台(简称WIMAP),并在两个典型的应用场景下测试平台性能。结果表明,WIMAP平台能够实现上亿InSAR点云及形变序列的流畅三维展示、单点时序查询、形变速率剖面查询、多期形变剖面查询等功能。平台实现了InSAR形变数据的便捷分发,允许用户在线查看海量形变点云,并结合三维地形和光学影像解译InSAR形变,为科研人员和工程技术人员提供实用的InSAR形变结果展示与解译工具。
Synthetic Aperture Radar Interferometry (InSAR) is a powerful tool for monitoring ground deformation over large areas
with applications in geological disaster monitoring
inversion of groundwater status
building health analysis
earthquake parameter extraction
post-disaster relief
and more. However
existing digital earth platforms
such as Google Earth and ArcGIS
face challenges in supporting the exploration and querying of vast InSAR datasets
including slow processing speeds
unsupported data formats
and difficulties with secondary development. This study examines the challenges associated with online visualization of time-series point clouds and proposes principles for pre-processing
storage
exploration
and querying of such datasets. Challenges include slow graphics rendering on webpages
limited network bandwidth that hinders real-time updates during exploration
and large data sizes that can pose storage challenges. To overcome these challenges
we suggest separating position and colorc information from temporal information
partitioning data using an octree structure
and using various compression techniques. Based on these principles
we utilize Cesium.js
a JavaScript library that enables developers to create 3D globes and maps in a web browser with high performance and precision to develop a platform for the visualization and interpretation of InSAR point clouds
which we call WIMAP. This allows us to easily create interactive visualizations of geospatial data. To test the platform
we processed two SAR datasets covering a plain and a mountainous area
respectively
and obtained corresponding time-series point clouds. We tested the performance of the platform using these point clouds and demonstrated its ability to run smoothly under such conditions. Specifically
on a computer equipped with a mid-range graphics card
it was able to maintain a frame rate of over 30 FPS while browsing time-series point clouds containing tens of millions points. Additionally
compared to the original plain binary format
the size of binary data stored on server could be reduced to approximately one quarter using preprocessing tools provided by the platform. All deformation analysis tools
including single point time-series query
deformation rate along profile line query
and multi-temporal deformation along profile line query
work properly. Spatial profile analysis
which included spatial interpolation with a buffering radius of 200 meters
was performed on time-series point cloud datasets with over 100 epochs and took less than 20 seconds to complete. This performance is comparable to that of locally conducted queries based on Kd-tree on available computers. The WIMAP platform allows users to explore InSAR point clouds in their browser and facilitates the distribution of InSAR results. Individual organizations and research institutions can upload their processed InSAR results to the platform's server
providing geoscientific information for users in various industries. With the visualization and interpretation tools bundled
users can analyze InSAR multi-temporal observations
combined with three-dimensional terrains and optical images
to gain insights into various geological phenomena. This may accelerate the research progress in several areas
such as landslide studies
earthquake monitoring
volcanic deformation analysis
and coastal erosion monitoring.
InSAR点云处理数据可视化WebGL形变数据
InSARpoint cloud processingdata visualizationWebGLdeformation data
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