使用MCSC自动道路检测

Syed Yasser Arafat, A. Y. Butt, Nadia Liaqat
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引用次数: 3

摘要

道路是生活中交通出行系统的重要组成部分。地图是常用的导航和识别道路的工具。由于人口的扩张,变化发生在城市内部或郊区。我们必须针对这种情况重新设计地图,手动更新地图是非常复杂和耗时的任务。本文提出了一种基于多简单色彩空间分量(Multiple Simple Color Space Components, MCSC)的卫星图像道路区域检测方法。在我们的研究中,我们利用谷歌地球的卫星图像(SI),尝试了多种颜色空间分量来提取米尔普尔市的道路。我们使用了各种颜色空间模型的选择性成分,即YCbCr, HSV和L*a*b*。从卫星图像中获取道路区域需要经过特征提取、分割和分组等步骤。为了提取特征,我们在不同的卫星图像上使用了以下颜色分量(即亮度(Y),饱和度(S),色相(H)和色度层“a*”和“b*”)。通过对S、H、a*和b*图像进行阈值分割和相乘,消除非道路区域。将该过程的结果(H-S和a*-b*图像)与亮度(Y)相结合,对道路区域进行检测。所提出的MCSC处理方法可以方便地检测道路,并在1秒内快速生成结果。这是一个非常简单,快速和全自动的算法来检测道路(s)区域。此外,该系统在复杂环境/背景下也具有良好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic road detection using MCSC
Roads are an important part of life for travelling & transportation system. Map is the tool which is used commonly for navigating and recognizing the roads. Due to sprawl of population, changes happen within or in suburbs of cities. We have to redesign the map(s) for such situation and manually updating the map is very complex and time consuming task. For automatic map generation from satellite images it's essential to extract the roads first We propose a new method Multiple Simple Color Space Components (MCSC) to detect the road region(s) from satellite images. In our research we experimented with multiple color space components to extract the roads of Mirpur city by using satellite images (SI) from Google Earth. We used selective components of various color space models namely YCbCr, HSV and L*a*b*. To obtain the road region(s) from satellite images different steps were followed i.e. feature extraction, segmentation and grouping. For extracting feature, we used following color components (i.e. Luminance (Y), Saturation (S), Hue (H) and chromaticity layers ‘a*’ and ‘b*’) on different satellite images. Segmentation was done by Thresholding and multiplication of the S, H, a* and b* images with each other to eliminate the non road regions. Result of this process (H-S and a*-b* images) are combined with the luminance (Y) to detect the road region. The proposed MCSC processing method can detect roads easily and generate results quickly within a second. It's a very simple, fast and fully automatic algorithm to detect the road(s) region(s). Furthermore, the proposed system also gives good results in complex environments/backgrounds.
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