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基于Siam-UNet++的高分辨率遥感影像建筑物变化检测
引用本文:朱节中,陈永,柯福阳,张果荣.基于Siam-UNet++的高分辨率遥感影像建筑物变化检测[J].计算机应用研究,2021,38(11):3460-3465.
作者姓名:朱节中  陈永  柯福阳  张果荣
作者单位:南京信息工程大学滨江学院,江苏无锡214105;南京信息工程大学自动化学院,南京210044;南京信息工程大学自动化学院,南京210044;南京信息工程大学遥感与测绘工程学院,南京210044
基金项目:江苏省“六大人才高峰”高层次人才项目(XYDDX-045);西宁市科技计划项目(2019-Y-12);国家级大学生创新训练项目(201910300047);无锡市现代产业发展资金项目(003231911161)
摘    要:针对同—区域前后时序的高分辨率遥感影像背景复杂、变化类别多样、目标变化检测时存在漏检和边界识别粗糙问题,提出了一种基于Siam-UNet++深度神经网络的高分辨率遥感影像建筑物变化检测算法.该算法采用UNet++作为骨干提取网络,在其编码器部分应用Siam-diff(Siamese-difference)结构提取前后两时序图像的变化特征,并在解码阶段的上采样和横向跳跃路径连接之后引入注意力机制,突出建筑物变化的特征,抑制网络对其他类别特征的学习;同时使用多边输出融合(multiple side-output fusion,MSOF)策略加权融合不同语义层次的特征信息,提高了建筑物变化检测的精度;最后采取滑窗的方法对大尺度遥感影像进行预测,减少拼接过程中变化结果图产生的空洞图斑.在大型建筑物变化检测数据集上的实验结果表明,该算法有效提升了建筑物的变化检测效果.

关 键 词:深度学习  Siam-UNet++  变化检测  注意力机制  多边输出融合
收稿时间:2021/1/18 0:00:00
修稿时间:2021/10/14 0:00:00

Building change detection from high resolution remote sensing imagery based on Siam-UNet++
Zhu Jiezhong,Chen Yong,Ke Fuyang and Zhang Guorong.Building change detection from high resolution remote sensing imagery based on Siam-UNet++[J].Application Research of Computers,2021,38(11):3460-3465.
Authors:Zhu Jiezhong  Chen Yong  Ke Fuyang and Zhang Guorong
Affiliation:Nanjing University of Information Science and Technology&School of Binjiang, Nanjing University of Information Science and Technology,,,
Abstract:Aiming at the problems of complex background, variety of change types, missing detection and rough boundary recognition in high-resolution remote sensing image of the same region, this paper proposed a high-resolution remote sensing image building change detection algorithm based on Siam-UNet++ network. The algorithm used UNet++ as the backbone extraction network. In the encoder phase, it applied the Siam-diff structure to extract the change features of the two sequential images, and employed the attention mechanism after the up sampling and lateral jump path connection in the decoding stage to highlight the building change features and inhibit the network learning from other types of features. Meanwhile, it used the MSOF strategy to weight and fuse feature information of different semantic levels, which improved the accuracy of building change detection. Finally, it adopted a sliding window method to predict large-scale remote sensing images, reducing the hole pattern generated by the change result map during the splicing process. The experimental results demonstrate that proposed algorithm shows better performance than other models.
Keywords:deep learning  Siam-UNet++  change detection  attention mechanism  multiple side-output fusion strategy
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