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Mapping land-cover modifications over large areas: A comparison of machine learning algorithms

机译:在大面积上绘制土地覆被的变化:机器学习算法的比较

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摘要

Large area land-cover monitoring scenarios, involving large volumes of data, are becoming more prevalent in remote sensing applications. Thus, there is a pressing need for increased automation in the change mapping process. The objective of this research is to compare the performance of three machine learning algorithms (MLAs); two classification tree software routines (S-plus and C4.5) and an artificial neural network (ARTMAP), in the context of mapping land-cover modifications in northern and southern California study sites between 1990/91 and 1996. Comparisons were based on several criteria: overall accuracy, sensitivity to data set size and variation, and noise. ARTMAP produced the most accurate maps overall (similar to 84%), for two study areas - in southern and northern California, and was most resistant to training data deficiencies. The change map generated using ARTMAP has similar accuracies to a human-interpreted map produced by the U.S. Forest Service in the southern study area. ARTMAP appears to be robust and accurate for automated, large area change monitoring as it performed equally well across the diverse study areas with minimal human intervention in the classification process. (C) 2007 Elsevier Inc. All rights reserved.
机译:涉及大量数据的大面积土地覆盖监测方案在遥感应用中变得越来越普遍。因此,迫切需要在变更映射过程中增加自动化。本研究的目的是比较三种机器学习算法(MLA)的性能。在绘制1990/91年至1996年加利福尼亚北部和南部研究地点的土地覆盖变化图的背景下,使用了两个分类树软件例程(S-plus和C4.5)和一个人工神经网络(ARTMAP)。比较是基于几个标准:整体准确性,对数据集大小和变化的敏感性以及噪声。对于两个研究区域-加利福尼亚南部和北部,ARTMAP制作了总体上最准确的地图(大约占84%),并且对训练数据的缺陷最有抵抗力。使用ARTMAP生成的变化图具有与美国森林服务局在南部研究区生产的人类解释图相似的精度。 ARTMAP对于自动化的大面积变化监测似乎是可靠且准确的,因为它在分类研究过程中在不同研究区域中表现出色,而人工干预最少。 (C)2007 Elsevier Inc.保留所有权利。

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