基于视觉的道路网自动检测与提取系统

Charalambos (Charis) Poullis, Suya You, U. Neumann
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引用次数: 14

摘要

在本文中,我们提出了一种新的基于视觉的系统,用于从各种传感器资源(如航空照片,卫星图像和激光雷达)中自动检测和提取复杂的道路网络。独特的是,所提出的系统是一个集成的解决方案,它将感知分组理论(Gabor过滤,张量投票)和优化分割技术(使用图切割的全局优化)的力量合并到一个统一的框架中,以解决地理空间特征检测和分类的挑战性问题。首先,将Gabor滤波器的局部精度与张量投票的全局上下文相结合,产生准确的地理空间特征分类。此外,用于数据编码的张量表示消除了对任何阈值的需求,从而消除了任何数据依赖性。其次,提出了一种新的基于方向的分割方法,该方法结合了感知分组的分类,得到了边界更清晰、线性线段连续的分割方法。最后,采用一组高斯滤波器自动提取中心线信息(大小、宽度和方向)。然后使用这些信息创建道路段,然后将其转换为多边形表示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Vision-Based System For Automatic Detection and Extraction Of Road Networks
In this paper we present a novel vision-based system for automatic detection and extraction of complex road networks from various sensor resources such as aerial photographs, satellite images, and LiDAR. Uniquely, the proposed system is an integrated solution that merges the power of perceptual grouping theory (Gabor filtering, tensor voting) and optimized segmentation techniques (global optimization using graph-cuts) into a unified framework to address the challenging problems of geospatial feature detection and classification. Firstly, the local precision of the Gabor filters is combined with the global context of the tensor voting to produce accurate classification of the geospatial features. In addition, the tensorial representation used for the encoding of the data eliminates the need for any thresholds, therefore removing any data dependencies. Secondly, a novel orientation-based segmentation is presented which incorporates the classification of the perceptual grouping, and results in segmentations with better defined boundaries and continuous linear segments. Finally, a set of Gaussian-based filters are applied to automatically extract centerline information (magnitude, width and orientation). This information is then used for creating road segments and then transforming them to their polygonal representations.
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