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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing. >Junction-Aware Extraction and Regularization of Urban Road Networks in High-Resolution SAR Images
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Junction-Aware Extraction and Regularization of Urban Road Networks in High-Resolution SAR Images

机译:高分辨率SAR图像中的城市路网节点感知提取与正则化。

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摘要

A general processing framework for urban road network extraction in high-resolution synthetic aperture radar images is proposed. It is based on novel multiscale detection of street candidates, followed by optimization using a Markov random field description of the road network. The latter step, in the path of recent technical literature, is enriched by the inclusion of a priori knowledge about road junctions and the automatic choice of most of the involved parameters. Advantages over existing and previous extraction and optimization procedures are proved by comparison using data from different sensors and locations.
机译:提出了高分辨率合成孔径雷达图像中城市道路网提取的通用处理框架。它基于新颖的街道候选者多尺度检测,然后使用道路网络的马尔可夫随机场描述进行优化。通过包含有关道路交叉口的先验知识和自动选择大多数相关参数,可以丰富最新技术文献中的后一步。通过使用来自不同传感器和位置的数据进行比较,证明了优于现有和以前的提取和优化程序的优势。

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