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Multi-feature Classification of Hyperspectral Image via Probabilistic SVM and Guided Filter

机译:通过概率SVM和引导滤波器多特征分类Hyperspectral图像

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To deal with “curse of dimensionality” caused by high-dimensional data and the underutilization of spatial information in the classification of hyperspectral imagery (HSI), a new spectral-spatial classification method based on probabilistic support vector machine (SVM) and guided filter is proposed. The proposed method utilizes spatial information in two aspects. Firstly, the extended morphological profiles (EMP), differential morphological profiles (DMP) and Gabor textural features of hyperspectral image are extracted, which can preserve the texture, outline and shape of the original image. The spectral and extracted spatial features are joint classified by probabilistic SVM to obtain the initial classification probabilistic maps. Secondly, the guided filter is used to regularize the initial classification probabilistic maps, which can enhance the smoothness of local neighbourhood and preserve the edge information. The proposed algorithm is examined by the Indian Pines and University of Pavia hyperspectral datasets. On the same experimental conditions, the proposed method achieves the highest classification accuracy and the most reasonable classification map, demonstrating the proposed algorithm has obvious advantages in hyperspectral remote image classification.
机译:为了处理所造成的高维数据“维数灾”和空间信息在高光谱图像的(HSI),一个新的谱空间分类方法分类利用不足基于概率支持向量机(SVM)上,并且被引导过滤器是建议的。该方法利用了两个方面的空间信息。首先,扩展的形态配置文件(EMP),差分形态型材(DMP)和Gabor光谱图像的纹理特征提取,其可以保留原始图像的纹理,轮廓和形状。谱和提取的空间特征是通过联合概率SVM分类来得到初始分类概率的地图。其次,引导过滤器用于正规化初始分类概率的地图,这可以增强局部邻域的平滑性和保存边缘信息。该算法是由印度松树和帕维亚大学的高光谱数据集检查。在相同的实验条件下,所提出的方法实现了最高的分类精度和最合理的分类图,展示了该算法具有高光谱远程图像分类明显的优势。

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