基于深度学习的遥感图像道路语义分割系统

Shutong Xie
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引用次数: 0

摘要

随着当前我国计算机科学深度学习的快速发展,学术研究的许多领域都感受到了深度学习强大而高效的优势,并开始将其与自身的研究相结合。具体来说,在遥感领域,利用深度学习技术可以有效解决从原始图像中提取道路的难题。高精度的道路提取不仅能帮助科学家及时更新道路地图,还能加快大城市道路数字化的进程。然而,到目前为止,与人工道路提取相比,深度学习模型的精度还不足以满足高精度道路提取的需求,因为该模型无法在村庄等复杂情况下精确提取道路。然而,本研究仅使用大城市的数据集训练了一种基于 UNet 模型的新道路提取模型,可以获得相当高的大城市道路提取精度。毫无疑问,这可能会导致过度拟合,但其特有的高精度确保了该模型的道路提取能力在大城市的情况下能够得到很好的利用,帮助研究人员更方便快捷地更新大城市的道路地图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A road semantic segmentation system for remote sensing images based on deep learning
With the rapid development of deep learning of computer science nowadays in China, many fields in academic research have experienced the powerful and efficient advantages of deep learning and have begun to integrate it with their own research. To be specific, in the field of remote sensing, the challenge of road extraction from the original images can be effectively solved by using deep learning technology. Getting a high precision in road extraction can not only help scientists to update their road map in time but also speed up the process of digitization of roads in big cities. However, until now, compared to manual road extraction, the accuracy is not high enough to meet the needs of high-precision road extraction for the deep learning model because the model cannot extract the roads exactly in complex situations such as villages. However, this study trained a new road extraction model based on UNet model by using only datasets from large cities and can get a pretty high precision in extraction for roads in big cities. Undoubtedly, this can lead to over-fitting, but its unique high accuracy ensures that the model's ability to extract roads can be well utilized under the situations of large cities, helping researchers to update road maps more conveniently and quickly in large cities.
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