基于高分辨率图像的道路网提取方法比较

P. K. Soni, N. Rajpal, R. Mehta
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引用次数: 2

摘要

与高分辨率遥感(RS)图像相关的研究已经适用于许多领域,对我们有益的信息涉及领土,公共,天气和农业,RS应用的主要目的是提取适当的信息,这将有助于我们得出有意义的结论。道路网络提取是一个重要且具有挑战性的研究领域,道路网络是人类必不可少的,因为它们提供了交通和其他支持系统。不同的因素,如传感器、天气、分辨率和光照等,都会影响RS图像中的道路特征,这给道路网提取带来了问题。本文综合分析了从RS图像中提取道路网的道路特征、道路网提取中存在的问题,最后根据道路网的局部特征和全局特征、自动化程度和使用的算法对不同的道路网提取方法进行了分类。根据提取的特征、使用的数据数量和类型(航空、高光谱、遥感、城市和半城市)、不同定性参数的性能以及不同方法的优缺点,对不同道路提取技术进行了比较。着重对道路提取方法进行了比较分析,发现仅利用一种特征是不能得到精确的道路网的。因此,多种道路特征应该结合在一起,但这取决于应用程序和数据的类型。从遥感图像中提取道路网仍然是一个具有挑战性和重要的研究领域。
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A comparison of road network extraction from High Resolution Images
Study related to high resolution remote sensing (RS) images has been applicable to many areas that are beneficial to us for information related to territory, public, weather and agriculture, the main aim of RS applications is extract appropriate information that will help us to draw meaningful conclusions. Road network extraction is an important and challenging research field, road networks are essential for humans as they provide transportation and other support systems. Distinct factors like sensor, weather, resolution and light etc., can affect the road features from a RS image which imposes the problems in road network extraction. This paper presents a comprehensive analysis of various aspects of road network extraction from RS images like road features, problems in road network extraction and finally different road network methods are classified on the basis of local and global features, automation and algorithm used. Different road extraction techniques are compared on the basis of features used in extraction, number and type of data (aerial, hyper-spectral, remote sensing, urban and semi-urban) used, performance on the basis of different qualitative parameters and the advantage and disadvantages of different methods are discussed. The comparative analysis of road extraction methods is presented emphatically and it is observable that in order to obtain precise road network from RS images only one type of feature is not sufficient. Hence, multiple road features should be combined together but it depends on type of application and data. Road network extraction from RS image is still remains a challenging and important research field.
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