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Classification of Hyperspectral Imagery based on spectral gradient, SVM and spatial random forest

机译:基于光谱梯度,SVM和空间随机林的高光谱图像分类

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摘要

Recently, many spectral-spatial-based methods have increased attention in hyperspectral image (HSI) classification. This paper proposes a novel method combining spectral gradient, SVM and spatial random forest (RF) for hyperspectral image classification, to better characterize the details and edges of the hyperspectral image. At the same time, it integrates the spectral and spatial features based on multiscale fusion. First, a spectral gradient technique is used to deal with the original hyperspectral data to acquire more intrinsic and comprehensive information. Then, the updated data is sent into the SVM to obtain probability output, and the spatial context information with different scales are further extracted. Finally, the multiscale spatial features are fused with the corresponding weights, and are subsequently fed as input into the random forest classifier. In experimental results, effectiveness of the proposed approach is confirmed by extensive experiments on three HSI datasets including AVIRIS Indian Pines, Salinas and ROSIS Pavia University. Compared with state-of-the-art methods, the proposed method obtains higher classification accuracy in terms of the overall accuracy and Kappa coefficient. Additionally, the proposed approach consumes lower running time compared with the comparison methods.
机译:最近,许多基于频谱空间的方法在高光谱图像(HSI)分类中增加了关注。本文提出了一种组合光谱梯度,SVM和空间随机森林(RF)的新方法,用于更好地描述高光谱图像的细节和边缘。同时,它集成了基于多尺度融合的光谱和空间特征。首先,使用频谱梯度技术来处理原始高光谱数据以获取更多内在和全面的信息。然后,将更新的数据发送到SVM中以获得概率输出,并且进一步提取具有不同尺度的空间上下文信息。最后,多尺度空间特征与相应的权重融合,随后被馈送为随机林分类器。在实验结果中,拟议方法的有效性通过广泛的三个HSI数据集确认,包括Aviris Indian Pines,SalinaS和Ross Pavia大学。与最先进的方法相比,该方法在整体准确性和κ系数方面获得了更高的分类精度。另外,与比较方法相比,所提出的方法消耗较低的运行时间。

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