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An accurate SVM-based classification approach for hyperspectral image classification

机译:一种基于SVM的准确分类方法用于高光谱图像分类

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One of the important tasks in analyzing hyperspectral image data is the classification process. Support Vector Machine (SVM) is the most popular and widely used classifier, and its performance is ongoing to be further improved. Recently, methods that exploit both spatial and spectral information are more sufficient, robust, useful, and accurate than those accounting for the spectral signature of pixels only. In this paper, regional texture information is extracted from the hyperspectral data by using a Spatial Pixel Association (SPA) processing to further improve the classification performance of SVM techniques. A novel approaches over SVM by exploiting SPA characteristics is proposed in order to increase the classification accuracy. Moreover, a new method that can be used to solve the misclassified-pixels problem, Control Process of Growing Classes (CPoGC), is also proposed in this manuscript. In order to demonstrate the effectiveness of the proposed scheme, experiments on AVIRIS hyperspectral data over Indian Pine Site (IPS) are conducted to compare the performance of the proposed classification approaches against some existing SVM based techniques such as SC-SVM and PSO-SVM, and some traditional methods like K-NN and K-means. Experimental results demonstrate that the proposed method clearly outperforms these well-known classification algorithms.
机译:分类过程是分析高光谱图像数据的重要任务之一。支持向量机(SVM)是最流行和使用最广泛的分类器,其性能正在不断提高。近来,与仅考虑像素的光谱特征的方法相比,利用空间和光谱信息的方法更加充分,鲁棒,有用和准确。在本文中,通过使用空间像素关联(SPA)处理从高光谱数据中提取区域纹理信息,以进一步提高SVM技术的分类性能。为了提高分类的准确性,提出了一种利用SPA特征的支持向量机的新方法。此外,该手稿中还提出了一种新的方法,可用于解决像素分类错误的问题,即“增长类的控制过程”(CPoGC)。为了证明所提方案的有效性,我们进行了印度松站点(IPS)上的AVIRIS高光谱数据实验,以将所提出的分类方法与一些现有的基于SVM的技术(例如SC-SVM和PSO-SVM)进行比较,以及一些传统的方法,例如K-NN和K-means。实验结果表明,所提出的方法明显优于这些众所周知的分类算法。

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