Non-Linear Spectral Unmixing: A Case Study On Mangalore Aviris-Ng Hyperspectral Data

Dharambhai Shah, Y. Trivedi, T. Zaveri
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引用次数: 1

Abstract

Due to the low spatial resolution of the sensor, multiple scattering and intimate mixing at the ground, the majority of the pixels in the hyperspectral image are of mixed type. In this case, spectral unmixing is used to decompose this mixing effect. From the literature, it is clear that non-linear unmixing is more accurate and robust compared to linear unmixing. In this paper, we take a Mangalore dataset captured using Airborne Visible/ Infrared Imaging Spectrometer-Next Generation (AVIRIS-NG) camera to compare various non-linear unmixing. The paper presents and extensive comparison of various endmember extraction algorithms and abundance estimation algorithms. The performance of algorithms was assessed using two quality metrics (Spectral Angle Mapper and Reconstruction Error). Three types of experiments were carried out; endmember extraction accuracy assessment, testing of abundance estimation efficacy and comparison of linear and non-linear models. The simulation results conclude that Energy-based Convex Set (ECS) and Polynomial PostNonlinear Model (PPNM) give accurate results on the considered study site for endmember extraction and abundance estimation respectively.
非线性光谱分解:以Mangalore病毒- ng高光谱数据为例
由于传感器的空间分辨率较低,加之地面的多次散射和密切混合,使得高光谱图像中大部分像元为混合像元。在这种情况下,使用光谱解混来分解这种混合效应。从文献中可以清楚地看出,与线性解混相比,非线性解混更加精确和鲁棒。本文采用机载可见光/红外成像光谱仪-下一代(AVIRIS-NG)相机拍摄的Mangalore数据集来比较各种非线性解混。本文对各种端元提取算法和丰度估计算法进行了比较。使用两个质量指标(谱角映射器和重建误差)评估算法的性能。进行了三类实验;端元提取精度评估、丰度估计效果测试以及线性和非线性模型的比较。仿真结果表明,基于能量的凸集(ECS)和多项式后非线性模型(PPNM)分别在考虑的研究点上给出了准确的端元提取和丰度估计结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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