一种基于支持向量机的方法,用于从超光谱图像中提高末端成员估计的准确性

Sunil Kumar, Bhuvana J, Rakhi Gupta
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引用次数: 0

摘要

本研究提供了一种完全基于帮助向量系统(SVMB)的技术,以提高从高光谱快照中估计内含物的准确性。研究将 SVMB 方法应用于高光谱照片的波段选择和内元提取,并使用向导向量回归(SVR)方法从高光谱像素中正确提取内元。我们使用由四种物质组成的人工数据集和由四种土壤组成的真实国际数据集对所提出的模型进行了检验,以说明该模型从像素中估计内含物的有效性。与现有技术相比,该版本在准确性方面有显著提高。所提出的技术将特征提取程序、合适波段的选择和内含物提取系统整合到一个统一的层面,从而提高了高光谱照片评估的准确性并减少了所需的时间。研究还提出了一种在 SVR 帮助下选择合适波段的方法,以锐化光谱数据。拟议版本的结果表明,拟议方法能有效地从高光谱快照中正确估计末端成员。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Support Vector Machine Based Approach for Accuracy Enhancement in End Member Estimation from Hyper Spectral Images
This study affords a help vector system-based totally (SVMB) technique to beautify the accuracy of endmember estimation from hyperspectral snapshots. The research applies the SVMB method to the hyperspectral photograph band selection and endmember extraction using the guide vector regression (SVR) method to extract endmembers correctly from hyperspectral pix. The proposed model is examined with an artificial dataset composed of four substances and a real-international dataset of 4 forms of soil to illustrate the model's effectiveness as it should be estimating endmembers from the pix. The version is located to have significant improvement in phrases of accuracy compared with existing techniques. The proposed technique merges the characteristic extraction procedure, the selection of suitable bands, and the endmember extraction system into an unmarried level to decorate accuracy and reduce the time needed for hyperspectral photograph evaluation. The studies also propose a method to select appropriate bands with the assistance of SVR to sharpen the spectral data. The proposed version's outcomes show the proposed method's effectiveness for correctly estimating end members from hyperspectral snapshots.
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