Probability based road network detection in satellite images

K. Maithili, K. Vani
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引用次数: 2

Abstract

Road network detection is the process of detecting and extracting the road network from very high resolution satellite and aerial images. It is essential for many applications like map generation and updating. To do this road network detection, resolution of satellite and aerial images plays an important role. If experts try to label the road pixels manually, it will take more time and will lead to errors. Hence an automatic method is proposed here. Major operations of the proposed system are road network detection, estimation of road center pixel and road shape extraction. First, edge pixels are detected. Then, they are refined. Based on probability, road center pixels are estimated using edge pixels as observations. Next, road shape is extracted from the estimated center pixels using graph theory. The proposed method is tested on satellite (Quick bird and Ikonos) images. Obtained results indicate that the proposed method works well with 94% of accuracy when compared with the one existing in the literature. This work can be envisaged as a potential contribution to the science of automatic road network extraction from high resolution imagery.
基于概率的卫星图像路网检测
道路网检测是从超高分辨率的卫星和航空图像中检测和提取道路网的过程。对于地图生成和更新等许多应用程序来说,它是必不可少的。要做到这一点,卫星和航空图像的分辨率起着至关重要的作用。如果专家试图手动标记道路像素,将花费更多的时间,并将导致错误。因此,本文提出了一种自动方法。该系统的主要工作是道路网络检测、道路中心像素估计和道路形状提取。首先,检测边缘像素。然后,他们被提炼。基于概率,以边缘像素为观测值估计道路中心像素。其次,利用图论从估计的中心像素提取道路形状。在卫星(Quick bird和Ikonos)图像上进行了测试。实验结果表明,与已有的方法相比,该方法的准确率达到了94%。这项工作可以被设想为从高分辨率图像中自动提取道路网络科学的潜在贡献。
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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