Multiscale Cascaded Network for the Semantic Segmentation of High-Resolution Remote Sensing Images

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Xiaolu Zhang, Zhaoshun Wang, Anlei Wei
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引用次数: 0

Abstract

As remote sensing images have complex backgrounds and varying object sizes, their semantic segmentation is challenging. This study proposes a multiscale cascaded network (MSCNet) for semantic segmentation. The resolutions employed with respect to the input remote sensing images are 1, 1/2, and 1/4, which represent high, medium, and low resolutions. First, 3 backbone networks extract features with different resolutions. Then, using a multiscale attention network, the fused features are input into the dense atrous spatial pyramid pooling network to obtain multiscale information. The proposed MSCNet introduces multiscale feature extraction and attention mechanism modules suitable for remote sensing land-cover classification. Experiments are performed using the Deepglobe, Vaihingen, and Potsdam datasets; the results are compared with those of the existing classical semantic segmentation networks. The findings indicate that the mean intersection over union (mIoU) of the MSCNet is 4.73% higher than that of DeepLabv3+ with the Deepglobe datasets. For the Vaihingen datasets, the mIoU of the MSCNet is 15.3%, and 6.4% higher than those of a segmented network (SegNet), and DeepLabv3+, respectively. For the Potsdam datasets, the mIoU of the MSCNet is higher than those of a fully convolutional network, Res-U-Net, SegNet, and DeepLabv3+ by 11.18%, 5.89%, 4.78%, and 3.03%, respectively.
高分辨率遥感图像语义分割的多尺度级联网络
由于遥感图像具有复杂的背景和不同的目标大小,其语义分割具有挑战性。本研究提出一种多尺度级联网络(MSCNet)用于语义分割。输入遥感图像的分辨率分别为1、1/2和1/4,分别表示高、中、低分辨率。首先,3个骨干网提取不同分辨率的特征。然后,利用多尺度关注网络,将融合后的特征输入到密集的空间金字塔池化网络中,获得多尺度信息。提出的MSCNet引入了适合遥感土地覆盖分类的多尺度特征提取和关注机制模块。实验使用Deepglobe, Vaihingen和Potsdam数据集进行;将所得结果与已有的经典语义分割网络进行了比较。结果表明,MSCNet的平均交联(mIoU)比Deepglobe数据集的DeepLabv3+高4.73%。对于Vaihingen数据集,MSCNet的mIoU分别比分段网络(SegNet)和DeepLabv3+高6.4%和15.3%。对于波波坦数据集,MSCNet的mIoU分别比全卷积网络Res-U-Net、SegNet和DeepLabv3+高出11.18%、5.89%、4.78%和3.03%。
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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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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