Abstract
Road segmentation for synthetic aperture radar (SAR) images is of great practical signifi-cance. With the rapid development and wide application of SAR imaging technology, this problem has attracted much attention. At present, there are numerous road segmentation methods. This pa-per analyzes and summarizes the road segmentation methods for SAR images over the years. Firstly, the traditional road segmentation algorithms are classified according to the degree of automation and the principle. Advantages and disadvantages are introduced successively for each traditional method. Then, the popular segmentation methods based on deep learning in recent years are systematically introduced. Finally, novel deep segmentation neural networks based on the capsule paradigm and the self-attention mechanism are forecasted as future research for SAR images.
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Sun, Z., Geng, H., Lu, Z., Scherer, R., & Woźniak, M. (2021, March 1). Review of road segmentation for sar images. Remote Sensing. MDPI AG. https://doi.org/10.3390/rs13051011
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