无人机-一个方法论工具,用于在gis中生成基础层

A. Enea, M. Iosub, C. Stoleriu, A. Ursu, G. Romanescu
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引用次数: 1

摘要

当今地球科学跨学科研究的最新范例之一,包括使用最新、最准确和相关的可用数据集,以强调干扰人类的不同现象的外观、因果关系或影响。因此,有一个永久的努力,在地理分析相关的数据,这是高度准确的,也具有成本效益。由于无人机技术的最新发展和生产成本的降低,无人机已被整合到世界各地的方法论工作流程中,在许多领域,从栖息地划定到地貌测绘。大多数此类研究要么使用数字表面模型(DSM),要么使用无人机航拍图像生成的地形图像。此外,运动结构算法(SFM)最近得到了高度发展,用于检测更复杂的形状和物体。这意味着无人机已经成为生成任何基于gis的研究中使用的基础层的不可或缺的工具,因为它生成快速、高精度、可重复、按需数据集。本文旨在揭示一种方法方法,用于生成两个最重要的栅格层,用于大多数空间分析:数字表面模型/数字高程模型和ortophoto。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
THE DRONE - A METHODOLOGICAL TOOL, FOR GENERATING BASE LAYERS IN GIS
One of the latest paradigms of today's interdisciplinary studies in geosciences, consists of the implementation of the newest, most accurate, and relevant datasets available, in order to emphasize the appearance, causality or effects of different phenomena, which interfere with humans. Therefore, there is a permanent strive for data, relevant in geographical analysis, which is highly accurate, and also cost-effective. Due to the recent developments in UAV technology, and lowering of production costs, drones have been integrated into methodological workflows all around the world, in numerous fields, ranging from habitat delineation, to geomorphologic mapping. Most such studies use either a digital surface model (DSM) or ortophoto imagery generated from drone aerial images. Also, Structure From Motion algorithms (SFM) have been highly developed recently, into detecting ever more complicated shapes and objects. This means that the drone has turned into an indispensable tool for generating base layers used in any GIS-based study, because it generates fast, high accuracy, repeatable, on demand data sets. This paper intends to reveal a methodological approach towards generating the two, most important raster layers for the majority of spatial analyses: the digital surface model/digital elevation model, and the ortophoto, respectively.
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