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Delineation of Road Networks Using Deep Residual Neural Networks and Iterative Hough Transform

机译:利用深剩余的神经网络和迭代Hough变换描写道路网络

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In this paper we present a complete pipeline for extracting road network vector data from satellite RGB orthophotos of urban areas. Firstly, a network based on the SegNeXt architecture with a novel loss function is employed for the semantic segmentation of the roads. Results show that the proposed network produces on average better results than other state-of-the-art semantic segmentation techniques. Secondly, we propose a fast post-processing technique for vectorizing the rasterized segmentation result, removing erroneous lines, and refining the road network. The result is a set of vectors representing the road network. We have extensively tested the proposed pipeline and provide quantitative and qualitative comparisons with other state-of-the-art based on a number of known metrics.
机译:在本文中,我们提出了一个完整的管道,用于从城市地区的卫星RGB矫正器中提取道路网络矢量数据。首先,基于具有新损耗函数的SEGNEXT架构的网络用于道路的语义分割。结果表明,所提出的网络在平均更好的结果上产生比其他最先进的语义分割技术。其次,我们提出了一种快速的后处理技术,用于将光栅化分割结果的矢量化,去除错误的线路,并精炼道路网络。结果是代表道路网络的一组矢量。我们已经广泛测试了所提出的管道,并根据许多已知度量提供与其他最先进的定量和定性比较。

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