首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >LOCAL BINARY GRAPH FEATURE REDUCTION FOR THREE-DIMENSIONAL GABOR FILTER BASED HYPERSPECTRAL IMAGE CLASSIFICATION
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LOCAL BINARY GRAPH FEATURE REDUCTION FOR THREE-DIMENSIONAL GABOR FILTER BASED HYPERSPECTRAL IMAGE CLASSIFICATION

机译:基于三维Gabor滤波器的超细图像分类的本地二进制图特征减少

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One of the challenges of the hyperspectral image classification is the fusing spectral and spatial features. There are several methods for fusing features in hyperspectral image classification. Three-Dimensional Gabor Filters are the best method to extract spectral and spatial features simultaneously. However, one of the problems with using the 3D Gabor filter is the high number of extracted features. In this paper, to reducing extracted features from 3D-Gabor filters and increasing the classification accuracy in hyperspectral images, a novel method named Local Binary Graph (LBG) is used. The LBG method uses a local graph to solve the optimization problem, which maps each pixel to the reduced dimension image and improves the McNemar test result in comparison with the existing methods. Finally, the result of the proposed method achieved 96.2% and 92.6% overall accuracy for Pavia University and Indian Pines data set, respectively.
机译:高光谱图像分类的挑战之一是融合光谱和空间特征。在高光谱图像分类中有几种融合功能的方法。三维Gabor滤波器是同时提取光谱和空间特征的最佳方法。然而,使用3D Gabor滤波器的问题之一是大量提取功能。在本文中,为了减少3D-Gabor滤波器的提取特征并增加高光谱图像中的分类精度,使用了一种名为局部二进制图(LBG)的新方法。 LBG方法使用本地图来解决优化问题,其将每个像素映射到减小的尺寸图像并改善与现有方法相比的McNemar测试结果。最后,拟议方法的结果分别为Pavia大学和印度松树数据集的总体准确度分别实现了96.2%和92.6%。

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