挖掘高分辨率地球观测数据立方体

Andreas Zuefle, K. Wessels, D. Pfoser
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引用次数: 2

摘要

地球观测数据是由不断扩大的卫星群收集的,包括Landsat1-8、Sentinel1和Sentinel2、SPOT1-7和WorldView1-3。这些卫星的空间分辨率(像素大小)从30米到31厘米不等,并提供每5天一次的重访率。这使我们不仅可以看到地球每个角落的高分辨率图像,还可以跟踪事件并观察随时间的变化。在过去的5年中,中等空间分辨率卫星数据(30 - 10m像素)已经发展出非常高的5-16天的时间重访频率,并且已经开发出时空结构来管理这些庞大的数据集。然而,高分辨率卫星图像和快速增加的重访率带来了重大的数据管理和挖掘挑战。本文讨论了将不同时间、不同传感器、不同空间分辨率和不同时间频率的观测数据整合到统一的地球观测数据立方体(即位置、时间和光谱波段张量)中的六个挑战。挑战包括从异构传感器创建统一的数据立方体,缩放地理配准(图像之间的映射像素),考虑观测结果之间的不确定性,输入缺失的观测结果,广域事件检测,以及最终预测我们星球的未来状态。有了这样一个统一的地球观测数据立方体,我们描述了潜在的应用领域,如检测人为的土地覆盖变化、自然灾害的早期预警、追踪动物的运动、寻找失踪的飞机和快速检测森林火灾。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mining High Resolution Earth Observation Data Cubes
Earth observation data is collected by ever-expanding fleets of satellites including Landsat1-8, Sentinel1 & Sentinel2, SPOT1-7 and WorldView1-3. These satellites generate at spatial resolutions (pixel size) from 30m to 31cm and provide revisit rates of as frequent as every 5 days. This allows us not only to look at high-resolution images of every corner of the Earth, but also to track events and observe change over time. During the past 5 years, medium spatial resolution satellite data (30 − 10m pixels) have developed very high temporal revisit frequencies of 5-16 days and spatial-temporal structures have been developed to manage these vast data sets. However, high resolution satellite images and rapidly increasing revisit rates create major data management and mining challenges. This work discusses six challenges of integrating observations at different times, from different sensors, at different spatial resolutions and different temporal frequencies into a unified Earth Observation Data Cube, that is, a tensor of location, time, and spectral bands. Challenges include creating a unified data cube from heterogeneous sensors, scaling geo-registration (mapping pixel between images), accounting for uncertainty across observations, imputing missing observations, broad area event detection, and ultimately, predicting the future state of our planet. With such a unified Earth Observation Data Cube in place, we describe potential application areas such as detecting anthropogenic land cover change, early warning of natural hazards, tracing movement of animals, finding missing airplanes, and rapid detection of forest fires.
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