空间遥感数据用于林业道路图像识别

E. Podolskaia
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引用次数: 0

摘要

本文综述了利用空间遥感数据识别林业区域项目道路的历史和研究现状。本文综述了基于光学卫星图像的道路检测原理。组合使用的一组直接识别特征,如亮度和纹理、几何形状和亮度。提出了道路视觉识别、开发人员专用软件和库的使用、神经网络等三个研究方向,并给出了实例。对于道路网络检测,我们描述了方法和软件,图像的类型和空间分辨率。基于开放和商业来源的光学测量、机器学习方法和神经网络的道路图像识别。道路识别的最新任务如下:路面状况评估,现有道路位置建模,设计和建造新道路,道路季节性。给出了MapFlow插件在开放源代码QGIS中道路识别的功能概述。论文是区域林业运输模拟项目的一部分,旨在通过地面手段获取森林火灾和森林资源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Remote sensing data from Space for road image recognition in the forestry
Paper presents an overview of history and current research state on the use of remote sensing data from space to recognize roads for the regional projects in the forestry. We reviewed the principles of road detection on the optical satellite imagery. Group of direct recognition features used in combinations such as brightness and texture, geometry and brightness. Three research directions with examples were identified: visual roads recognition, use of special software and libraries for developers, and neural networks. For the road network detection we have described methods and software, type and spatial resolution of imagery. Road image recognition based on the optical survey from the open and commercial sources, machine learning methods and neural networks. Up-to-date tasks of road recognition are the following: evaluation of road surface condition, modeling of existing roads location, designing and building new roads, roads seasonality. A functional summary of MapFlow plugin for road recognition in Open Source QGIS is given. Paper is a part of regional forestry transport modeling project to access the forest fires and forest resources by ground means.
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