Nowadays, the hyperspectral remote sensing imagery HSI becomes an important tool to observe the Earth's surface, detect the climatic changes and many other applications. The classification of HSI is one of the most challenging tasks due to the large amount of spectral information and the presence of redundant and irrelevant bands. Although great progresses have been made on classification techniques, few studies have been done to provide practical guidelines to determine the appropriate classifier for HSI. In this paper, we investigate the performance of four supervised learning algorithms, namely, Support Vector Machines SVM, Random Forest RF, K-Nearest Neighbors KNN and Linear Discriminant Analysis LDA with different kernels in terms of classification accuracies. The experiments have been performed on three real hyperspectral datasets taken from the NASA's Airborne Visible/Infrared Imaging Spectrometer Sensor AVIRIS and the Reflective Optics System Imaging Spectrometer ROSIS sensors. The mutual information had been used to reduce the dimensionality of the used datasets for better classification efficiency. The extensive experiments demonstrate that the SVM classifier with RBF kernel and RF produced statistically better results and seems to be respectively the more suitable as supervised classifiers for the hyperspectral remote sensing images. Keywords: hyperspectral images, mutual information, dimension reduction, Support Vector Machines, K-Nearest Neighbors, Random Forest, Linear Discriminant Analysis.
翻译:目前,超光谱遥感图像HSI已成为观测地球表面、探测气候变化和许多其他应用的重要工具。HSI的分类是最具挑战性的任务之一,因为光谱信息量巨大,而且存在多余和无关的波段。虽然在分类技术方面取得了很大进展,但很少研究为确定HSI的适当分类器提供实用指南。在本文中,我们调查了四种受监督的学习算法的性能,即支持矢量机SVM、随机森林RF、K-Nearest Nearbors KNNN和线状分辨分析LDA,在分类精度方面,是使用不同内核的内核分析内核分析最具有挑战性。在从美国航天局的空载可见度/红外成像Spectrographor Sensor Sensormationor AVIRIS和反射光光光系统模拟Spectricors Spectrographors ROSIS传感器方面,相互信息被用来减少数据集度的尺寸,用于更好的分类效率。广泛实验显示SBIS的SBRAL结果, 分别显示SLILILA, 和SILILIL 分别是用于更精确的SLILILLILIL。