利用机器学习分析土地利用和土地覆盖的长期变化:一个案例研究

Rajeswari Harini Bikkasani, Dhanya M, Veena S V
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引用次数: 0

摘要

曼尼普尔邦是印度东北部的一个邦,经历了森林覆盖的巨大变化和城市化的快速增长。在过去的20年中,该地区的地表特征发生了相对的变化,主要是由于人类活动。检测土地利用、土地覆被特征的变化有助于确保区域的可持续发展。为了实现这一目标,本研究使用了2000年至2022年期间来自sentinel-2A和Landsat 7,8平台的遥感数据。机器学习算法已被证明在绘制各种土地覆盖特征方面是有用的。本文采用随机森林法将土地利用、土地覆被(LULC)特征分为茂密林、开阔林、农业、建成区、水体、荒地6类。该方法在2000年、2008年、2016年和2022年的总体准确率(OA)分别为94.5、93.32、93.58和94.61%,kappa系数指数分别为0.912、0.925、0.914和0.938。研究结果表明,近年来曼尼普尔邦的森林覆盖率显著下降。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Long-term Changes for Land Use and Land Cover using Machine Learning: A case study
Manipur is one of the states in the northeastern part of India that has experienced a tremendous change in forest cover and a rapid increase in urbanization. Over the past two decades, this region has relatively changed in land surface features mostly due to anthropogenic activities. Detection of the changes in the land use land cover features helps to ensure sustainable development of the region. To achieve this goal, the present study uses remotely sensed data from sentinel-2A and Landsat 7,8 platforms for the period from the year 2000 to 2022. Machine learning algorithms have been proven to be useful in mapping the various land cover features. Here the land uses land cover (LULC) features are classified into six categories namely dense forest, open forest, agriculture, built-up area, water body, and barren land using random forest method. The classification method yielded an overall accuracy(OA) of 94.5, 93.32, 93.58, and 94.61% and a kappa coefficient index of 0.912, 0.925, 0.914, and 0.938 for 2000, 2008, 2016, and 2022 respectively. The results of the study indicate that the forest cover over Manipur has decreased significantly over recent years.
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