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Application of Least Square Denoising to Improve ADMM Based Hyperspectral Image Classification

机译:最小二乘降噪技术在基于ADMM的高光谱图像分类中的应用

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Hyperspectral images contain a huge amount of spatial and spectral information so that, almost any type of Earth feature can be discriminated from any other feature. But, for this classification to be possible, it is to be ensured that there is as less noise as possible in the captured data. Unfortunately, noise is unavoidable in nature and most hyperspectral images need denoising before they can be processed for classification work. In this paper, we are presenting a new approach for denoising hyperspectral images based on Least Square Regularization. Then, the hyperspectral data is classified using Basis Pursuit classifier, a constrained L1 minimization problem. To improve the time requirement for classification, Alternating Direction Method of Multipliers (ADMM) solver is used instead of CVX (convex optimization) solver. The method proposed is compared with other existing denoising methods such as Legendre-Fenchel (LF), Wavelet thresholding and Total Variation (TV). It is observed that the proposed Least Square (LS) denoising method improves classification accuracy much better than other existing denoising techniques. Even with fewer training sets, the proposed denoising technique yields better classification accuracy, thus proving least square denoising to be a powerful denoising technique.
机译:高光谱图像包含大量的空间和光谱信息,因此几乎可以将任何类型的地球特征与任何其他特征区分开。但是,为了使这种分类成为可能,必须确保在捕获的数据中尽可能少的噪声。不幸的是,噪声在本质上是不可避免的,并且大多数高光谱图像需要经过降噪处理才能进行分类工作。在本文中,我们提出了一种基于最小二乘正则化的高光谱图像降噪新方法。然后,使用约束追踪L1最小化问题基础追踪分类器对高光谱数据进行分类。为了提高分类的时间要求,使用了交替方向乘数法(ADMM)求解器,而不是CVX(凸优化)求解器。将该方法与其他现有的降噪方法进行了比较,例如Legendre-Fenchel(LF),小波阈值处理和Total Variation(TV)。可以看出,提出的最小二乘(LS)去噪方法比其他现有的去噪技术改善了分类精度。即使使用较少的训练集,所提出的去噪技术也可以产生更好的分类精度,因此证明最小二乘去噪是一种强大的去噪技术。

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