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Challenges and Opportunities of Multimodality and Data Fusion in Remote Sensing

机译:遥感中多模式和数据融合的挑战与机遇

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摘要

Remote sensing is one of the most common ways to extract relevant information about Earth and our environment. Remote sensing acquisitions can be done by both active (synthetic aperture radar, LiDAR) and passive (optical and thermal range, multispectral and hyperspectral) devices. According to the sensor, a variety of information about the Earth's surface can be obtained. The data acquired by these sensors can provide information about the structure (optical, synthetic aperture radar), elevation (LiDAR), and material content (multispectral and hyperspectral) of the objects in the image. Once considered together their complementarity can be helpful for characterizing land use (urban analysis, precision agriculture), damage detection (e.g., in natural disasters such as floods, hurricanes, earthquakes, oil spills in seas), and give insights to potential exploitation of resources (oil fields, minerals). In addition, repeated acquisitions of a scene at different times allows one to monitor natural resources and environmental variables (vegetation phenology, snow cover), anthropological effects (urban sprawl, deforestation), climate changes (desertification, coastal erosion), among others. In this paper, we sketch the current opportunities and challenges related to the exploitation of multimodal data for Earth observation. This is done by leveraging the outcomes of the data fusion contests, organized by the IEEE Geoscience and Remote Sensing Society since 2006. We will report on the outcomes of these contests, presenting the multimodal sets of data made available to the community each year, the targeted applications, and an analysis of the submitted methods and results: How was multimodality considered and integrated in the processing chain? What were the improvementsew opportunities offered by the fusion? What were the objectives to be addressed and the reported solutions? And from this, what will be the next challenges?
机译:遥感是提取有关地球和我们环境的相关信息的最常用方法之一。可以通过有源(合成孔径雷达,LiDAR)和无源(光学和热范围,多光谱和高光谱)设备进行遥感采集。根据该传感器,可以获得有关地球表面的各种信息。这些传感器获取的数据可以提供有关图像中对象的结构(光学,合成孔径雷达),高程(LiDAR)和材料含量(多光谱和高光谱)的信息。一旦一起考虑,它们的互补性将有助于表征土地利用(城市分析,精准农业),损害检测(例如在自然灾害中,例如洪水,飓风,地震,海洋溢油),并为潜在的资源开发提供见解(油田,矿产)。此外,在不同时间重复获取场景可以使人们监视自然资源和环境变量(植被物候,积雪),人类学影响(城市蔓延,森林砍伐),气候变化(荒漠化,沿海侵蚀)等。在本文中,我们概述了与开发用于地球观测的多峰数据相关的当前机遇和挑战。这是通过利用IEEE地理科学与遥感学会自2006年以来组织的数据融合竞赛的成果来实现的。我们将报告这些竞赛的成果,介绍每年向社区提供的多模式数据集。有针对性的应用程序,以及对提交的方法和结果的分析:如何在处理链中考虑和集成多模式?融合提供了哪些改进/新机会?要解决的目标和报告的解决方案是什么?因此,接下来的挑战是什么?

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