Detection of small-scale landscape elements with remote sensing

Nikita Murin, A. Kmoch, E. Uuemaa
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Abstract

Abstract. Landscape elements located on agricultural fields or on their edges play a crucial role in the biodiversity of agricultural land. The landscape elements’ database in Estonia is updated in accordance with the applications of the field owners, and usually it does not represent a real situation of the landscape elements on the field. Hence, the analysis and control over landscape elements are limited. The main aim of this study is to create a methodology to map landscape elements in Estonia with remote sensing data. The first method was created considering the importance of computational efficiency and therefore fast and non-complex map algebra solution was developed. The second, more precise but more computationally expensive way to map landscape elements, was the object-based image analysis method utilizing machine learning classification. Both methods displayed high overall accuracies, but users’ and producers’ accuracies were lower. Taking into account the computational time and accuracy, it was concluded that the map algebra method is better suitable for fast landscape elements’ detection. However, the object-based image analysis method is more suitable for identifying more exact classes of landscape elements.
小尺度景观要素的遥感检测
摘要位于农田或农田边缘的景观要素对农业用地的生物多样性起着至关重要的作用。爱沙尼亚的景观要素数据库是根据场地所有者的申请进行更新的,通常它并不代表场地上景观要素的真实情况。因此,对景观要素的分析和控制是有限的。这项研究的主要目的是建立一种利用遥感数据绘制爱沙尼亚景观要素的方法。第一种方法是考虑到计算效率的重要性,从而开发出快速且不复杂的映射代数解。第二种更精确但计算成本更高的方法是利用机器学习分类的基于对象的图像分析方法。两种方法均显示出较高的总体准确性,但用户和生产者的准确性较低。考虑到计算时间和精度,地图代数方法更适合于快速的景观要素检测。然而,基于对象的图像分析方法更适合于识别更精确的景观元素类别。
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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