论文标题

线性特征从空中图像分割

Linear features segmentation from aerial images

论文作者

Chang, Zhipeng, Jha, Siddharth, Xia, Yunfei

论文摘要

遥感技术的快速发展由于其从空中图像中精确定位,分类和细分对象的能力而引起了极大的关注。这些技术通常用于配备高分辨率摄像机或传感器的无人机(UAV)中,以捕获大面积的数据。该数据对于各种应用程序有用,例如监视和检查城市,城镇和地形。在本文中,我们提出了一种使用深度学习模型(例如U-NET和SEGNET)对航空图像进行分类和细分城市道路交通线的方法。注释的数据用于训练这些模型,然后将其用于对空中图像进行分类和将空中图像分为两个类:虚线和非破坏线。但是,深度学习模型可能无法识别由于树木或阴影的绘画或遮挡不佳而导致的所有虚线。为了解决此问题,我们提出了一种将丢失的线添加到分段输出中的方法。我们还从分段输出中提取了每条虚线的X和Y坐标,城市规划人员可以将其用于构建一个CAD文件以进行数字可视化道路。

The rapid development of remote sensing technologies have gained significant attention due to their ability to accurately localize, classify, and segment objects from aerial images. These technologies are commonly used in unmanned aerial vehicles (UAVs) equipped with high-resolution cameras or sensors to capture data over large areas. This data is useful for various applications, such as monitoring and inspecting cities, towns, and terrains. In this paper, we presented a method for classifying and segmenting city road traffic dashed lines from aerial images using deep learning models such as U-Net and SegNet. The annotated data is used to train these models, which are then used to classify and segment the aerial image into two classes: dashed lines and non-dashed lines. However, the deep learning model may not be able to identify all dashed lines due to poor painting or occlusion by trees or shadows. To address this issue, we proposed a method to add missed lines to the segmentation output. We also extracted the x and y coordinates of each dashed line from the segmentation output, which can be used by city planners to construct a CAD file for digital visualization of the roads.

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