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Singular Spectrum Analysis for effective noise removal and improved data classification in Hyperspectral Imaging

机译:奇异谱分析,用于高光谱成像中有效噪声去除和改进数据分类

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Based on the well-known Singular Value Decomposition (SVD), Singular Spectrum Analysis (SSA) has been widely employed for time series analysis and forecasting in decomposing the original series into a sum of components. As such, each 1-D signal can be represented with varying trend, oscillations and noise for easy enhancement of the signal. Taking each spectral signature in Hyperspectral Imaging (HSI) as a 1-D signal, SSA has been successfully applied for signal decomposition and noise removal whilst preserving the discriminating power of the spectral profile. Two well-known remote sensing datasets for land cover analysis, AVIRIS 92AV3C and Salinas C, are used for performance assessment. Experimental results using Support Vector Machine (SVM) in pixel based classification have indicated that SSA has suppressed the noise in significantly improving the classification accuracy.
机译:基于众所周知的奇异值分解(SVD),奇异频谱分析(SSA)已广泛用于时间序列分析和预测,以将原始系列分解成组件的总和。因此,每个1-D信号可以用不同的趋势,振荡和噪声表示,以便于信号的易于增强。在高光谱成像(HSI)中以1-D信号进行每个光谱签名,已经成功地应用于信号分解和噪声去除,同时保留光谱分布的辨别力。用于土地覆盖分析,Aviris 92AV3C和Salinas C的两个众所周知的遥感数据集用于性能评估。基于像素的分类中的使用支持向量机(SVM)的实验结果表明,SSA抑制了显着提高了分类精度的噪声。

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