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HYPERSPECTRAL HYPERION IMAGERY ANALYSIS AND ITS APPLICATION USING SPECTRAL ANALYSIS

机译:高光凝高度图像分析及其应用光谱分析

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Rapid advancement in remote sensing open new avenues to explore the hyperspectral Hyperion imagery pre-processing techniques, analysis and application for land use mapping. The hyperspectral data consists of 242 bands out of which 196 calibrated/useful bands are available for hyperspectral applications. Atmospheric correction applied to the hyperspectral calibrated bands make the data more useful for its further processing/ application. Principal component (PC) analysis applied to the hyperspectral calibrated bands reduced the dimensionality of the data and it is found that 99% of the data is held in first 10 PCs. Feature extraction is one of the important application by using vegetation delineation and normalized difference vegetation index. The machine learning classifiers uses the technique to identify the pixels having significant difference in the spectral signature which is very useful for classification of an image. Supervised machine learning classifier technique has been used for classification of hyperspectral image which resulted in overall efficiency of 86.6703 and Kappa co-efficient of 0.7998.
机译:遥感开放式新途径的快速进步探索高光高度图像预处理技术,分析和应用土地利用映射。高光谱数据由242个频段组成,其中有196个校准/有用带可用于高光谱应用。应用于高光谱校准频段的大气校正使得数据对其进一步的加工/应用更有用。应用于高光谱校准频带的主成分(PC)分析减少了数据的维度,发现99%的数据在前10个PC中保持。特征提取是使用植被描绘和归一化差异植被指数的重要应用之一。机器学习分类器使用该技术来识别具有非常有用的对图像的分类非常有用的频谱签名具有显着差异的像素。监督机器学习分类器技术已用于高光谱图像的分类,导致总效率为86.6703和κ共同效率为0.7998。

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