基于Google卫星图像的数字地图U-Net语义分割

Loi Nguyen-Khanh, Vy Nguyen-Ngoc-Yen, Hung Dinh-Quoc
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引用次数: 0

摘要

卫星图像包含一个巨大的数据仓库,为我们提供了地球表面正在发生的事情的总体视角的细节。这些图像对于农业发展研究、城市规划、测量,特别是评价广播站的位置设计、电信覆盖模拟的输入和信号质量至关重要。大量复杂卫星图像的分析具有挑战性,而基于卷积神经网络(CNN)的不断发展的语义分割方法可以帮助分析这一数据量。本文介绍了一种利用谷歌提供的数据集构建数字地图的方法。我们利用高效的U-Net架构,即高效的效率网络与高效的效率网络的结合,即高效的效率网络- b0作为编码器,提取地理特征,U-Net作为解码器,重建详细的特征地图。我们使用谷歌卫星图像来评估我们的模型,这些图像证明了在骰子损失和分类交叉熵方面的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
U-Net Semantic Segmentation of Digital Maps Using Google Satellite Images
Satellite images contain an enormous data warehouse and give us details to the general perspective of what is happening on the earth’s surface. These images are essential for agricultural development research, urban planning, surveying and, especially for evaluating the location design of broadcast stations, the input of coverage simulation and signal quality in telecommunications. The analysis of large amounts of complex satellite imagery is challenging while the evolving semantic segmentation approaches based on convolution neural network (CNN) can assist in analyzing this amount of data. In this paper, we introduce an approach for constructing digital maps with dataset provided by Google. We utilize the efficient U-Net architecture, which is an efficient combination of EfficientNet, namely EfficientNet-B0 as the encoder to extract the geographic features with U-Net as decoder to reconstruct the detailed features map. We evaluate our models using Google satellite images which demonstrate the efficiency in terms of Dice Loss and Categorical Cross-Entropy.
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