基于航拍影像的城市绿地面积测量创新实践

A. Tashk, A. Pakfetrat, M. Taghvaei, M. A. Alavianmehr
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引用次数: 0

摘要

在现代遥感程序中,最重要的问题之一是区分土地覆盖的具体类型。在城市测量中,土地覆被的区分是非常重要的,前面的文明工程基本依赖于它们。本文采用一种创新的图像处理策略,在航空成像中将绿地与其他都市区域区分开来。该项目的主要目的是为即将到来的市政项目审核公共或私人绿地区域。该方法主要分为四个阶段。在第一步中,将获取的航拍视频帧,即使处于或离线模式,也转换为静态图像。在第二和第三阶段,部署两个不同的预处理阶段。这两个预处理阶段的输出被分割成两个部分,包括绿地和其他城市区域。评价和实验结果表明,F-score标准的公平适用性接近90%(平均86%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An innovative practical surveying green-land areas in metropolitan zones based on aerial video images
In modern remote sensing procedures, one of the most important issues is to distinguish specific types of land coverage. Discrimination between different land coverages especially in metropolitan surveying is so important that the in front civilization projects are basically dependent to them. In this paper, an innovative image processing strategy is employed for distinguishing green lands from other metropolitan areas in aerial imaging. The main purpose of this project is to audit green land areas, either public or private, for forthcoming municipal projects. The proposed method is constituted of four main stages. In the first step, the acquired aerial video frames, even in or offline modes, are converted into static images. In the second and third stages, two distinct pre-processing stages are deployed. The output of these two preprocessing stages is segmented into two parts comprising of green land and other urban areas. The evaluation and experimental results demonstrate the fair and applicable performance near 90% (86% in average) in F-score criterion.
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