The Winning Solution to the iFLYTEK Challenge 2021 Cultivated Land Extraction from High-Resolution Remote Sensing Images

Z. Zhao, Yuqiu Liu, Gang Zhang, Liang Tang, Xiao-Ning Hu
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引用次数: 3

Abstract

Extracting cultivated land accurately from high-resolution remote images is a basic task for precision agriculture. This paper introduces our solution to iFLYTEK challenge 2021 cultivated land extraction from high-resolution remote sensing images. We established a highly effective and efficient pipeline to solve this problem. We first divided the original images into small tiles and separately performed instance segmentation on each tile. We explored several instance segmentation algorithms that work well on natural images and developed a set of effective methods that are applicable to remote sensing images. Then we merged the prediction results of all small tiles into seamless, continuous segmentation results through our proposed overlap-tile fusion strategy. We achieved first place among 486 teams in the challenge.
科大讯飞挑战赛2021从高分辨率遥感图像中提取耕地
从高分辨率遥感影像中准确提取耕地是精准农业的一项基本任务。本文介绍了科大讯飞挑战2021高分辨率遥感影像耕地提取的解决方案。我们建立了一个高效的管道来解决这个问题。我们首先将原始图像分割成小块,并对每个小块分别进行实例分割。我们探索了几种适用于自然图像的实例分割算法,并开发了一套适用于遥感图像的有效方法。然后通过我们提出的重叠块融合策略,将所有小块的预测结果合并为无缝连续的分割结果。我们在486支队伍中获得了第一名。
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