利用自动分类检测哥伦比亚圣马塔塔省ci日新月异的覆盖变化

J. S. Vinasco, D. Rodríguez, S. Velásquez, D. F. Quintero, L. Livni, F. L. Hernández
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引用次数: 0

摘要

圣玛尔塔的cisamnaga Grande是哥伦比亚同类生态系统中最大、最多样化的生态系统。它的主要功能是作为有机碳循环的过滤器。最近,由于周围发生的人为活动,这个地方受到了破坏。本文以2013 - 2018年哥伦比亚马格达莱纳省圣玛尔塔省cisamuaga Grande, Santa Marta, Magdalena为研究对象,利用Landsat 8遥感高分辨率数据,采用半自动探测方法对其地表变化进行了研究。研究区分为6类地表:1)人工领土,2)农田,3)森林和半自然区域,4)潮湿区域,5)深水表面和6)与云作为掩蔽方法相关的地表。采用随机森林分类器,同时对Feed For Ward多层感知器神经网络(ANN)进行评估。这两种方法的训练阶段在每个覆盖类上以等量分布的300个样本进行。半自动化分类是按年频率进行的,但监测是通过归一化植被指数(NDVI)、增强植被指数(EVI)和归一化差水指数(NDWI)三个指标的表现进行的。从混淆矩阵中发现,随机森林方法可以更准确地分类4个类别,而神经网络分析(NNA)只能准确分类3个类别。最后,考虑随机森林的结果,发现农业扩张从7%增加到9%,城区从20%增加到30%。此外,潮湿地区从27%减少到12%,森林从4%减少到3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Coverage Changes Detection At Ciénaga Grande, Santa Martacolombia Using Automatic Classification
The Ciénaga Grande, Santa Marta is the largest and most diverse ecosystem of its kind in Colombia. Its primary function is acting as a filter for the organic carbon cycle. Recently, this place has been suffering disruptions due to the anthropic activities taking place in its surroundings. The present study, the changes in the surface of Ciénaga Grande, Santa Marta, Magdalena, Colombia between 2013 and 2018 were determined using semiautomatic detection methods with high resolution data from remote sensors (Landsat 8). The zone of studies was classified in six kinds of surfaces: 1) artificial territories, 2) agricultural temtories, 3) forests and semi-natural areas, 4) wet areas, 5) deep water surfaces& 6) wich is related to clouds as a masking method. Random Forest classifiers were utilized and the Feed For Ward multilayer perceptron neuronal network (ANN) was simultaneously assessed. The training stage for both methods was performed with 300 samples, distributed in equal quantities, over each coverage class. The semi-automatic classification was camed out with an annual frequency, but the monitoring was camed out throughout the analysis period through the performance of three indicators Normalized Difference Vegetation Index (NDVI), Enhanced Vegetation Index (EVI) and Normalized Difference Water Index (NDWI). It was found from the confusion matrix that the Random Forest method more accurately classified four classes while Neural Networks Analysis (NNA) just three. Finally, taking the Random Forest results into account, it was found that the agricultural expansion increased from 7% to 9% and the urban zone increased from 20% to 30% of the total area. As well as a decrease of damp areas from 27% to 12% and forests from 4% to 3% of the total area of study.
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