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Fusion of Spectral and Spatial Information for Classification of Hyperspectral Remote-Sensed Imagery by Local Graph

机译:光谱和空间信息的融合,用于基于局部图的高光谱遥感影像分类

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摘要

Hyperspectral imagery contains a wealth of spectral and spatial information that can improve target detection and recognition performance. Conventional feature extraction methods cannot fully exploit both spectral and spatial information. Data fusion by simply stacking different feature sources together does not take into account the differences between feature sources. In this paper, a local graph-based fusion (LGF) method is proposed to couple dimension reduction and feature fusion of the spectral information (i.e., the spectra in the HS image) and the spatial information [extracted by morphological profiles (MPs)]. In the proposed method, the fusion graph is built on the full data by moving a sliding window from the first pixel to the last one. This yields a clear improvement over a previous approach with fusion graph built on randomly selected samples. Experimental results on real hyperspectral images are very encouraging. Compared to the methods using only single feature and stacking all the features together, the proposed LGF method improves the overall classification accuracy on one of the data sets for more than 20% and 5%, respectively.
机译:高光谱图像包含大量的光谱和空间信息,可以改善目标检测和识别性能。传统的特征提取方法无法充分利用光谱和空间信息。通过简单地将不同要素源堆叠在一起来进行数据融合,并没有考虑要素源之间的差异。本文提出了一种基于局部图的融合(LGF)方法,以结合光谱信息(即HS图像中的光谱)和空间信息[由形态学轮廓(MPs)提取]的降维和特征融合。 。在提出的方法中,通过将滑动窗口从第一个像素移动到最后一个像素,将融合图构建在完整数据上。与基于随机选择样本构建的融合图的先前方法相比,这产生了明显的改进。在真实的高光谱图像上的实验结果非常令人鼓舞。与仅使用单个特征并将所有特征堆叠在一起的方法相比,所提出的LGF方法将其中一个数据集的整体分类精度分别提高了20%和5%以上。

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