Remote Sensing Image Classification Methods Based on CNN: Challenge and Trends

Li Yuan
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引用次数: 2

Abstract

Remote sensing image classification occupies a vital place in earth observation and has many applications in military and civil fields. It can be divided into two typical tasks: high-resolution remote sensing images and hyperspectral image classification. However, high-resolution remote sensing and hyperspectral image classification cannot facilitate all features and achieve good accuracy with traditional methods. As deep learning methods, especially the convolutional neural networks (CNN), are developing rapidly, image classification methods based on CNN can perform well and provide new ideas for remote sensing classification. In this paper, we first review the background of typical remote sensing images and CNN. Then, we provide an overview of the development of the CNN model. After that, we point out some existing problems that we need to overcome for the CNN methods. Finally, the corresponding solutions are provided, and future work is presented with the analysis of some popular methods.
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基于CNN的遥感图像分类方法:挑战与趋势
遥感图像分类在对地观测中占有重要地位,在军事和民用领域有着广泛的应用。它可以分为两个典型的任务:高分辨率遥感图像和高光谱图像分类。然而,高分辨率遥感和高光谱图像的分类不能满足所有的特征,也不能用传统的方法达到很好的分类精度。随着深度学习方法,特别是卷积神经网络(CNN)的快速发展,基于CNN的图像分类方法可以表现良好,为遥感分类提供新的思路。在本文中,我们首先回顾了典型遥感图像和CNN的背景。然后,我们概述了CNN模型的发展。在此基础上,指出了CNN方法存在的一些需要克服的问题。最后提出了相应的解决方案,并对目前流行的几种方法进行了分析,对今后的工作进行了展望。
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