Siamese NestedUNet Networks for Change Detection of High Resolution Satellite Image

Kaiyu Li, Zhe Li, Sheng Fang
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引用次数: 11

Abstract

Change detection is an important task in remote sensing (RS) image analysis. With the development of deep learning and the increase of RS data, there are more and more change detection methods based on supervised learning. In this paper, we improve the semantic segmentation network UNet++ and propose a fully convolutional siamese network (Siam-NestedUNet) for change detection. We combine three types of siamese structures with UNet++ respectively to explore the impact of siamese structures on the change detection task under the condition of a backbone network with strong feature extraction capabilities. In addition, for the characteristics of multiple outputs in Siam-NestedUNet, we design a set of experiments to explore the importance level of the output at different semantic levels. According to the experimental results, our method improves greatly on a number of indicators, including precision, recall, F1-Score and overall accuracy, and has better performance than other SOTA change detection methods. Our implementation will be released at https://github.com/likyoo/Siam-NestedUNet.
高分辨率卫星图像变化检测的Siamese NestedUNet网络
变化检测是遥感图像分析中的一项重要任务。随着深度学习的发展和遥感数据的增加,基于监督学习的变化检测方法越来越多。本文对语义分割网络unet++进行了改进,提出了一种用于变化检测的全卷积连体网络(Siam-NestedUNet)。我们将三种类型的连体结构分别与UNet++结合,探讨在具有较强特征提取能力的骨干网条件下,连体结构对变化检测任务的影响。此外,针对Siam-NestedUNet中多输出的特点,我们设计了一组实验来探索不同语义层次上输出的重要程度。实验结果表明,我们的方法在精密度、召回率、F1-Score和整体准确率等多个指标上都有很大的提高,比其他SOTA变化检测方法具有更好的性能。我们的实现将在https://github.com/likyoo/Siam-NestedUNet上发布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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