基于彩色特征的遥感图像道路检测

B. Sirmaçek, C. Unsalan
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引用次数: 10

摘要

城市区域是动态的环境。特别是他们的路线图随着城市区域的扩张而改变。因此,从超高分辨率航空和卫星图像中自动检测道路是一个非常重要的研究领域。不幸的是,通过使用基本的图像处理和计算机视觉算法,解决方案并不简单。因此,从航空和卫星图像中检测道路网需要先进的方法。在这项研究中,我们提出了一种从非常高分辨率彩色航空和卫星图像中自动检测路段的新方法。我们的方法依赖于手动从输入图像中选择一个训练集。我们使用像素的色度值作为判别特征。由于道路像素具有相似的颜色特征,训练区域的色度特征值分布在特征空间的某一点上有一个峰值,表示道路的类别。利用这些信息和一类分类方法,我们在给定的遥感图像中标记道路段。最后,在检测路段上拟合路网形状。彩色航空和Ikonos卫星图像的实验结果表明,颜色特征在道路检测应用中的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Road detection from remotely sensed images using color features
Urban regions are dynamic environments. Especially their road maps change by the expansion of the urban region. Therefore, automatic detection of roads from very high resolution aerial and satellite images is a very important research field. Unfortunately, the solution is not straightforward by using basic image processing and computer vision algorithms. Therefore, advanced methods are needed for road network detection from aerial and satellite images. In this study, we propose a novel method for automatic detection of road segments from very high resolution color aerial and satellite images. Our method depends on choosing a training set from the input image manually. We use color chroma values of pixels as the discriminative features. Since road pixels have similar color characteristics, the distribution of color chroma feature values of the training region have a peak at a certain point in the feature space which shows the road class. Using this information and one-class classification methodology, we label road segments in a given remotely sensed image. Finally, we fit a road network shape on the detected segment. Experimental results on color aerial and Ikonos satellite images show the importance of color features in road detection applications.
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