基于空间-空间-光谱联合网络的高光谱成像全尺寸语义分割

Hao Wu, Canhai Li, Yongchang Li
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摘要

摘要高光谱图像包含数十个甚至数百个光谱带,其中包含丰富的光谱信息,有助于区分不同的地面物体。高光谱图像在城市规划、环境监测等领域有着广泛的应用。高光谱图像的语义分割是当前的研究热点之一。其难点在于高光谱图像具有丰富的光谱信息和较强的相关性。传统的语义分割方法无法充分提取信息,影响了分类的准确性。本文利用编码解码结构同时提取图像的深层和浅层特征。利用群卷积的思想构建了一个 REGCS 卷积模块,以提取图像的光谱和空间特征。我们将 Salinas Valley 数据集和 MUUFL 数据集与各种分类算法进行了比较。实验结果表明,与其他分类模型相比,RESSU 模型在高光谱图像分类实验中取得了稳定而优异的结果。其中,在萨利纳斯谷数据集的分类实验中,单类分类准确率达到 92% 以上。在效果分析实验中,我们计算了不同的模型参数量来验证方法的性能,最终取得了良好的效果。
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Full-scale semantic segmentation of hyperspectral imaging based on spatial spatial-spectral joint network
Abstract. Hyperspectral images contain dozens or even hundreds of spectral bands, which contain rich spectral information and help distinguish different ground objects. Hyperspectral images have a wide range of applications in urban planning, environmental monitoring, and other fields. The semantic segmentation of hyperspectral images is one of the current research hotspots. The difficulty lies in the rich spectral information and strong correlation of hyperspectral images. Traditional semantic segmentation methods cannot fully extract information, which affects the accuracy of classification. This article utilizes an encoding decoding structure to simultaneously extract deep and shallow features of images. A REGCS convolution module was constructed using the idea of group convolution to extract spectral and spatial features of images. We compared the Salinas Valley dataset and MUUFL dataset with various classification algorithms. The experimental results show that compared with other classification models, the RESSU model has achieved stable and excellent results in hyperspectral image classification experiments. Among them, in the classification experiment of the Salinas Valley dataset, the accuracy of single class classification reached over 92%. In the effectiveness analysis experiment, we calculated different model parameter quantities to verify the performance of our method, and ultimately achieved good results.
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