基于最大熵阈值法的卫星图像道路提取

Miaolan Zhou, Nuo Chen, Wenjing Hu, Xiaojia Zhong, C. Wong
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引用次数: 0

摘要

交通管理对城市可持续发展、智慧城市、交通导航和城市规划具有重要意义。随着现代航空航天技术、遥感技术和计算机技术的发展,利用计算机视觉从卫星遥感图像中提取道路已成为道路信息获取的主要手段。如今,卫星道路提取被广泛应用于地图和智慧城市,因此进行精确的道路提取是非常必要的。卫星图像通常包含噪声和多个目标,这些噪声和目标会影响提取的道路边缘。本文提出了一种基于考虑道路几何特征的方法。它利用了道路几何特征变化小、道路两侧边缘信息明显的特点。通过最大熵阈值法、膨胀处理、骨架处理、毛刺处理和侵蚀处理,得到具有规则形状特征的路面图形。实验结果表明,该方法能够准确提取道路信息,具有较高的提取精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Road Extraction from Satellite Images Using Maximum Entropy Threshold Method
Traffic management is important for sustainable urban development, smart cities, traffic navigation, and urban planning. With the development of modern aerospace technology, remote sensing technology, and computer technology, the use of computer vision to extract roads from satellite remote sensing images has become the main means of road information acquisition. Nowadays, satellite road extraction is widely used for maps and smart cities, so it is very necessary to carry out accurate road extraction. Satellite images often contain noise and multiple objects, which can affect the edges of the extracted roads. This paper proposes a method that is based on considering the geometric characteristics of the road. It uses the characteristics of small changes in the geometric characteristics of the road and obvious edge information on both sides of the road. The road surface graphics with regular shape characteristics are obtained by the maximum entropy threshold method, dilation processing, skeleton processing, burring, and erosion. Experimental results show that road information can be extracted accurately with high precision.
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