Abandoned Land Classification Using Classical Theory Method

Jūratė Sužiedelytė Visockienė, E. Tumeliene
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引用次数: 2

Abstract

According to the official statistics the areas of abandoned agricultural land in Lithuania are gradually decreasing, but very slightly. The aim of this study is to research spatial determination and abandoned land classification in the territory of Vilnius District Municipality. Vilnius District Municipality was chosen for the research because it, although located near the capital of the country and has a high population density, it is still the district having the largest percent of abandoned land plots. A fast, cost-effective and sufficiently accurate method for determination of abandoned land plots would allow to constantly monitor, to fix changes and foresee the abandoned land plots reduction possibilities. In the study there was used the multispectral RGB and NIR color Sentinel-2 satellite images, the layer of the administrative boundary of Vilnius County and layer of abandoned agriculture land, which is available in Lithuanian Spatial Information Portal (www.geoportal.lt). The data was processed by Geographic Information System (GIS) techniques using classical classification Region Growing Algorithm. The research shows that NIR image classification result is more reliable than the result from RGB images.
利用经典理论方法进行撂荒土地分类
根据官方统计,立陶宛的废弃农业用地面积正在逐渐减少,但幅度很小。本研究的目的是研究维尔纽斯区市境内的空间确定和撂荒土地分类。维尔纽斯区被选中进行研究,因为它虽然位于该国首都附近,人口密度高,但它仍然是拥有最大比例的废弃土地的地区。一种快速、具有成本效益和足够准确的确定废弃地块的方法将能够不断监测、修正变化和预见减少废弃地块的可能性。本研究使用了多光谱RGB和NIR彩色Sentinel-2卫星图像,维尔纽斯县行政边界层和废弃农业用地层,该数据可在立陶宛空间信息门户网站(www.geoportal.lt)上获得。利用地理信息系统(GIS)技术,采用经典分类区域增长算法对数据进行处理。研究表明,近红外图像分类结果比RGB图像分类结果更可靠。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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