CT-UNet:一种基于U-Net的改进神经网络用于遥感图像中建筑物分割

Huanran Ye, Sheng Liu, K. Jin, Haohao Cheng
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引用次数: 6

摘要

随着遥感图像的激增,如何在遥感图像中更准确地分割建筑物是一个关键的挑战。首先,高分辨率导致提取的建筑地图边界模糊。其次,建筑和背景的相似性导致了类内不一致。为了解决这两个问题,我们提出了一个基于unet的网络,称为上下文传输unet (CT-UNet)。具体来说,我们设计了密集边界块(DBB)。稠密块利用重用机制来细化特征,提高识别能力。边界块引入底层空间信息,解决模糊边界问题。然后,为了处理类内不一致性,我们构建了空间通道注意块(SCAB)。它结合上下文空间信息,从空间和通道中选择更多可区分的特征。最后,我们提出了一种新的损失函数,通过增加评价指标来增强损失的目的。基于我们提出的CT-UNet,我们在Inria数据集上实现了85.33%的平均IoU,在WHU数据集上实现了91.00%的平均IoU,比我们的基线(U-Net ResNet-34)高3.76%,比Web-Net高2.24%。
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CT-UNet: An Improved Neural Network Based on U-Net for Building Segmentation in Remote Sensing Images
With the proliferation of remote sensing images, how to segment buildings more accurately in remote sensing images is a critical challenge. First, the high resolution leads to blurred boundaries in the extracted building maps. Second, the similarity between buildings and background results in intra-class inconsistency. To address these two problems, we propose an UNet-based network named Context-Transfer-UNet (CT-UNet). Specifically, we design Dense Boundary Block (DBB). Dense Block utilizes reuse mechanism to refine features and increase recognition capabilities. Boundary Block introduces the low-level spatial information to solve the fuzzy boundary problem. Then, to handle intra-class inconsistency, we construct Spatial Channel Attention Block (SCAB). It combines context space information and selects more distinguishable features from space and channel. Finally, we propose a novel loss function to enhance the purpose of loss by adding evaluation indicator. Based on our proposed CT-UNet, we achieve 85.33% mean IoU on the Inria dataset and 91.00% mean IoU on the WHU dataset, which outperforms our baseline (U-Net ResNet-34) by 3.76% and Web-Net by 2.24%.
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