Hyperspectral Image Classification Based on the Gabor Feature with Correlation Information

IF 2 4区 地球科学 Q3 REMOTE SENSING Canadian Journal of Remote Sensing Pub Date : 2023-01-02 DOI:10.1080/07038992.2023.2246158
Jianshang Liao, Liguo Wang, Genping Zhao
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引用次数: 0

Abstract

Gabor filter is widely used to extract spatial texture features of hyperspectral images (HSI) for HSI classification; however, a single Gabor filter cannot obtain the complete image features. In the paper, we propose an HSI classification method that combines the Gabor filter (GF) and domain-transformation standard convolution (DTNC) filter. First, we use the Gabor filter to extract spatial texture features from the first two principal components of the dimensionality-reduction HSI with PCA. Second, we use the DTNC filter to extract spatial correlation features from HSI in all bands. Finally, the Large Margin Distribution Machine (LDM) uses the linear fusion of the two kinds of spatial features to classify HSI. The experimental results show that the classification accuracy of Indian Pines, Pavia University, and Kennedy Space Center data sets is 96.64, 98.23, and 98.95% with only 4, 3, and 6% training samples, respectively; and these accuracies are 2–20% higher than the other tested methods. Compared with the hyperspectral information based on SVM, EPF, IFRF, PCA-EPFs, LDM-FL, and GFDN method, the proposed method, GFDTNCLDM, significantly improves the accuracy of HSI classification.
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基于Gabor特征的相关信息高光谱图像分类
Gabor滤波器被广泛用于提取高光谱图像的空间纹理特征,用于高光谱图像分类;然而,单一的Gabor滤波器无法获得完整的图像特征。本文提出了一种结合Gabor滤波器(GF)和域变换标准卷积滤波器(DTNC)的HSI分类方法。首先,我们使用Gabor滤波器从PCA降维HSI的前两个主成分中提取空间纹理特征。其次,我们使用DTNC滤波器从所有波段的HSI中提取空间相关特征。最后,利用大边际分布机(LDM)对两类空间特征进行线性融合,对恒生指数进行分类。实验结果表明,仅使用4个、3个和6%的训练样本,印第安松树、帕维亚大学和肯尼迪航天中心数据集的分类准确率分别为96.64、98.23和98.95%;与其他测试方法相比,准确度提高了2-20%。与基于SVM、EPF、IFRF、pca -EPF、LDM-FL和GFDN方法的高光谱信息相比,GFDTNCLDM方法显著提高了HSI分类的准确率。
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来源期刊
自引率
3.80%
发文量
40
期刊介绍: Canadian Journal of Remote Sensing / Journal canadien de télédétection is a publication of the Canadian Aeronautics and Space Institute (CASI) and the official journal of the Canadian Remote Sensing Society (CRSS-SCT). Canadian Journal of Remote Sensing provides a forum for the publication of scientific research and review articles. The journal publishes topics including sensor and algorithm development, image processing techniques and advances focused on a wide range of remote sensing applications including, but not restricted to; forestry and agriculture, ecology, hydrology and water resources, oceans and ice, geology, urban, atmosphere, and environmental science. Articles can cover local to global scales and can be directly relevant to the Canadian, or equally important, the international community. The international editorial board provides expertise in a wide range of remote sensing theory and applications.
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