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Road Network Extraction Using Edge Detection and Spatial Voting

机译:基于边缘检测和空间投票的路网提取

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Road network detection from very high resolution satellite images is important for two main reasons. First, the detection result can be used in automated map making. Second, the detected network can be used in trajectory planning for unmanned aerial vehicles. Although an expert can label road pixels in a given satellite image, this operation is prone to errors. Therefore, an automated system is needed to detect the road network in a given satellite image in a robust manner. In this study, we propose a novel approach to detect the road network from a given panchromatic Ikonos satellite image. Our method has five main steps. First, we apply a nonlinear bilateral filtering to smooth the given image. Then, we extract Canny edges and the gradient information as local features. Using these local features, we generate a spatial voting matrix. This voting matrix indicates the possible locations of the road network pixels. By processing this voting matrix in an iterative manner, we detect initial road pixels. Finally, we apply a tracking algorithm on the voting matrix to detect the missing road pixels. We tested our method on various satellite images and provided the extracted road networks in the experiments section.
机译:从高分辨率卫星图像中检测路网很重要,主要有两个原因。首先,检测结果可以用于自动地图制作。其次,检测到的网络可用于无人驾驶飞机的轨迹规划。尽管专家可以在给定的卫星图像中标记道路像素,但是此操作容易出错。因此,需要一种自动化系统以鲁棒的方式在给定的卫星图像中检测道路网络。在这项研究中,我们提出了一种从给定的全色Ikonos卫星图像检测道路网络的新颖方法。我们的方法有五个主要步骤。首先,我们应用非线性双边滤波来平滑给定图像。然后,我们提取Canny边缘和渐变信息作为局部特征。使用这些局部特征,我们生成一个空间投票矩阵。该投票矩阵指示道路网络像素的可能位置。通过以迭代方式处理此投票矩阵,我们可以检测出初始道路像素。最后,我们在投票矩阵上应用跟踪算法,以检测缺少的道路像素。我们在各种卫星图像上测试了我们的方法,并在实验部分提供了提取的道路网络。

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