Local–global dual attention network (LGANet) for population estimation using remote sensing imagery

IF 12.4 Q1 ENVIRONMENTAL SCIENCES
Yanxiao Jiang , Zhou Huang , Linna Li , Quanhua Dong
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引用次数: 0

Abstract

Accurate and rapid censuses can provide detailed basic information for a country, which is useful for resource allocation, disease control, disaster prevention, urban planning, and business management. However, traditional censuses often take up much time, manpower, and financial resources. Population maps are created by national statistical institutes at statistical units. Remote sensing imagery combined with end-to-end deep learning models makes it possible to estimate a wide range of populations at a low cost. This study demonstrates the effectiveness of a local–global dual attention network (LGANet) for population estimation using remote sensing images. The LGANet contains a local attention embranchment and a global attention embranchment on the top of the backbone to adaptively learn and integrate two discriminative features simultaneously. To enhance the precision of population estimation, the outputs from the two attention modules are combined. This method utilizes daytime remote sensing images as input, complemented by nighttime light data, to estimate the population on 1 km grids. Our method exhibits superior accuracy compared to other deep learning methods, as evidenced by an experimental comparison between the estimated population and the ground-truth population in 1 km grids.

Abstract Image

利用遥感图像进行人口估计的本地-全球双重关注网络
准确快速的人口普查可以为一个国家提供详细的基本信息,这对资源分配、疾病控制、灾害预防、城市规划和商业管理都很有用。然而,传统的人口普查往往占用大量的时间、人力和财力。人口地图由国家统计机构按统计单位编制。遥感图像与端到端深度学习模型相结合,可以以低成本估计广泛的人口。这项研究证明了使用遥感图像进行人口估计的本地-全球双重关注网络(LGANet)的有效性。LGANet在主干顶部包含一个局部注意力分支和一个全局注意力分支,以同时自适应地学习和整合两个判别特征。为了提高人口估计的精度,将两个注意力模块的输出组合在一起。该方法利用白天的遥感图像作为输入,辅以夜间的光照数据,在1公里的网格上估计人口。与其他深度学习方法相比,我们的方法显示出优越的准确性,1公里网格中的估计种群和地面实况种群之间的实验比较证明了这一点。
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来源期刊
Resources Environment and Sustainability
Resources Environment and Sustainability Environmental Science-Environmental Science (miscellaneous)
CiteScore
15.10
自引率
0.00%
发文量
41
审稿时长
33 days
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