SatelliteChangeNet:用于检测和预测的深度学习方法

Dr. Sharda Chhabria, Mr. Aditya Bhagwat, Mr. Om Barde
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引用次数: 0

摘要

在地球科学领域,探测是利用地球观测数据分析地表变化以及揭示人类活动与环境现象之间联系的一种有用方法。遥感探测是一个快速发展的领域,与许多领域都息息相关。近年来,尽管这一难题远未解决,但已有大量论文发表并取得了进展。本综述将重点关注深度学习在多光谱遥感图像检测任务中的应用。在这项工作中,SatelliteChangeNet 解决了日益增长的需求,即需要一种准确有效的方法来监测和预测卫星图像的变化,这对环境监测、城市规划、农业和灾害管理等许多用途都很重要。变化总是旨在显示人体及其不同结构之间的斗争,并导致对深度学习过程的探索。该计划的重点是利用卫星数据探索新领域、分析城市发展、环境管理破坏以及在农业领域有重要应用的变化和预测。水资源和农田提供了有关我们星球的大量信息。分析这些随时间发生的变化对于了解土地利用、环境变化和自然灾害非常重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SatelliteChangeNet: Deep Learning approach for Detection & Prediction
In geoscience, Detection is a useful method for analyzing land surface changes using data from Earth observation and for uncovering links between human activities and environmental phenomena. Detection in remote sensing is a rapidly evolving area of interest that is relevant for a number of fields. Recent years have seen a large number of publications and progress, even though the challenge is far from solved. This review focuses on deep learning applied to the task of Detection in multispectral remote-sensing images. In this work, SatelliteChangeNet addresses the growing need for an accurate and effective method to monitor and predict changes in satellite imagery, which is important for many purposes such as environmental monitoring, urban planning, and agriculture and disaster management. The changes always aim to show the struggle with the body and its different structures and lead to the search for a deep learning process. The program focuses on the use of satellite data for exploration of new areas, urban development analysis, environmental management damage, and change and prediction with important applications in agriculture. Water resources and farmland provide a lot of information about our planet. Analyzing these changes over time is important for understanding land use, environmental change, and natural hazards
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