土地覆盖
基本事实
计算机科学
遥感
稳健性(进化)
卫星图像
图像分辨率
分辨率(逻辑)
高分辨率
比例(比率)
深度学习
人工智能
数据挖掘
土地利用
地图学
地理
土木工程
工程类
生物化学
化学
基因
作者
Caleb Robinson,Le Hou,Kolya Malkin,Rachel Soobitsky,Jacob Czawlytko,Bistra Dilkina,Nebojša Jojić
标识
DOI:10.1109/cvpr.2019.01301
摘要
In this paper we propose multi-resolution data fusion methods for deep learning-based high-resolution land cover mapping from aerial imagery. The land cover mapping problem, at country-level scales, is challenging for common deep learning methods due to the scarcity of high-resolution labels, as well as variation in geography and quality of input images. On the other hand, multiple satellite imagery and low-resolution ground truth label sources are widely available, and can be used to improve model training efforts. Our methods include: introducing low-resolution satellite data to smooth quality differences in high-resolution input, exploiting low-resolution labels with a dual loss function, and pairing scarce high-resolution labels with inputs from several points in time. We train models that are able to generalize from a portion of the Northeast United States, where we have high-resolution land cover labels, to the rest of the US. With these models, we produce the first high-resolution (1-meter) land cover map of the contiguous US, consisting of over 8 trillion pixels. We demonstrate the robustness and potential applications of this data in a case study with domain experts and develop a web application to share our results. This work is practically useful, and can be applied to other locations over the earth as high-resolution imagery becomes more widely available even as high-resolution labeled land cover data remains sparse.
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