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RoadNet: Learning to Comprehensively Analyze Road Networks in Complex Urban Scenes From High-Resolution Remotely Sensed Images

机译:Roadnet:学习从高分辨率感测图像中全面分析复杂城市场景中的道路网络

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It is a classical task to automatically extract road networks from very high-resolution (VHR) images in remote sensing. This paper presents a novel method for extracting road networks from VHR remotely sensed images in complex urban scenes. Inspired by image segmentation, edge detection, and object skeleton extraction, we develop a multitask convolutional neural network (CNN), called RoadNet, to simultaneously predict road surfaces, edges, and centerlines, which is the first work in such field. The RoadNet solves seven important issues in this vision problem: 1) automatically learning multiscale and multilevel features [gained by the deeply supervised nets (USN) providing integrated direct supervision] to cope with the roads in various scenes and scales; 2) holistically training the mentioned tasks in a cascaded end-to-end CNN model; 3) correlating the predictions of road surfaces, edges, and centerlines in a network model to improve the multitask prediction; 4) designing elaborate architecture and loss function, by which the well-trained model produces approximately single-pixel width road edges/centerlines without nonmaximum suppression postprocessing; 5) cropping and bilinear blending to deal with the large VHR images with finite-computing resources; 6) introducing rough and simple user interaction to obtain desired predictions in the challenging regions; and 7) establishing a benchmark data set which consists of a series of VHR remote sensing images with pixelwise annotation. Different from the previous works, we pay more attention to the challenging situations, in which there are lots of shadows and occlusions along the road regions. Experimental results on two benchmark data sets show the superiority of our proposed approaches.
机译:它是一种经典任务,可以在遥感中从非常高分辨率(VHR)图像中提取道路网络。本文提出了一种新的方法,用于在复杂的城市场景中从VHR远程感测图像中提取道路网络。灵感来自图像分割,边缘检测和对象骨架提取,我们开发了一个Multitask卷积神经网络(CNN),称为RoadNet,同时预测道路表面,边缘和中心线,这是此类领域的第一工作。该Roadnet在这一愿景中解决了七个重要问题问题:1)自动学习多尺度和多级特征[通过提供综合直接监督的深度监督网(USN),以应对各种场景和秤的道路; 2)在级联端到端CNN模型中全能训练提到的任务; 3)在网络模型中与路面,边缘和中心线的预测相关,以改善多任务预测; 4)设计精心培训的架构和损失功能,训练有素的模型产生大约单像素的宽度道路边/中心线,而没有非抑制的后处理; 5)裁剪和双线性混合,以处理具有有限计算资源的大VHR图像; 6)引入粗糙和简单的用户交互,以获得具有挑战性地区的所需预测; 7)建立基准数据集,该数据集包括一系列具有PixelWike注释的VHR遥感图像。与以前的作品不同,我们更加关注挑战性情况,其中有很多沿路地区的阴影和闭塞。两个基准数据集的实验结果显示了我们提出的方法的优越性。

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