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Machine Learning Methods for Remote Sensing Applications: An Overview

机译:用于遥感应用的机器学习方法:概述

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Machine learning algorithms have shown a surprisingly successful development within the last years. Several data intensive technical and scientific fields-like search engines, speech recognition, and robotics-have an enormous benefit of these developments. Remote sensing tasks belong to data intensive applications as well. Today, remote sensing provides data over a wide range of the electromagnetic spectrum (UV, VIS, NIR, IR, and Radar). The capabilities of the sensors include single band images as well as multi- and even hyperspectral data. Due to the fact that remote sensing applications are often monitoring tasks, long time series data are in the focus of image exploitation. Several machine learning algorithms have been used in the remote sensing community since decades, ranging from basic algorithms such as PCA and K-Means to more sophisticated classification and regression frameworks like SVMs, decision trees, Random Forests, and artificial neural networks. Through a combination of data availability, algorithmic progress, and specialized hardware, deep learning methods and convolutional networks (ConvNets) came in the focus of the image exploitation community during the last years and are now on the verge between revolutionary success and illusionary hype. This overview aims to explore in which situations these new approaches are useful in remote sensing applications, which problems are actually solved, and which are still open.
机译:机器学习算法在过去几年中显示出令人惊讶的成功。几个数据密集型技术和科学领域,类似于搜索引擎,语音识别和机器人 - 对这些发展具有巨大的利益。遥感任务也属于数据密集型应用程序。如今,遥感提供了各种电磁频谱(UV,VI,NIR,IR和RADAR)的数据。传感器的能力包括单带图像以及多甚至超光谱数据。由于遥感应用程序经常监视任务,长时间序列数据处于图像剥削的焦点。几十年来,几个机器学习算法已在遥感社区中使用,从基本算法等基本算法等等,例如SVM,决策树,随机林和人工神经网络等更复杂的分类和回归框架。通过数据可用性,算法进度和专业硬件,深度学习方法和卷积网络(Convnets)在过去几年中的焦点上,目前正在革命成功与令人震惊的炒作之间的边缘。此概述旨在探索这些新方法在遥感应用中有用,哪些问题实际解决,其仍然是开放的。

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