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Hybrid Dimensionality Reduction Technique for Hyperspectral Images Using Random Projection and Manifold Learning

机译:使用随机投影和多菱形学习的Hybrad DiveNaly降低技术

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摘要

Hyperspectral images (HSI) are contiguous band images having hundreds of bands. However, most of the bands are redundant and irrelevant. Curse of dimensionality is a significant problem in hyperspectral image analysis. The band extraction technique is one of the dimensionality reduction (DR) method applicable in HSI. Linear dimensionality reduction techniques fail for hyperspectral images due to its nonlinear-ity nature. Nonlinear reduction techniques are computationally complex. Therefore this paper introduces a hybrid dimensionality reduction technique for band extraction in hyperspectral images. It is a combination of linear random projection (RP) and nonlinear technique. The random projection method reduces the dimensionality of hyperspectral images linearly using either Gaussian or Sparse distribution matrix. Sparse random projection (SRP) is computationally less complex. This reduced image is fed into a nonlinear technique and performs band extraction in minimal computational time and maximum classification accuracy. For experimental analysis of the proposed method, the hybrid technique is compared with Kernel PCA (KPCA) using different random matrix and found a promising improvement in results for their hybrid models in minimum computation time than classic nonlinear technique.
机译:高光谱图像(HSI)是具有数百个频带的连续频带图像。然而,大多数频段都是冗余和无关紧要的。维度诅咒是高光谱图像分析中的一个重要问题。频带提取技术是适用于HSI的维度减少(DR)方法之一。由于其非线性的性质,线性维度降低技术失败了高光谱图像。非线性减少技术是计算复杂的。因此,本文介绍了高光谱图像中的带提取的混合维度降低技术。它是线性随机投影(RP)和非线性技术的组合。随机投影方法使用高斯或稀疏分布矩阵线性地降低了线性的高光谱图像的维度。稀疏随机投影(SRP)在计算不那么复杂。将该缩减图像馈入非线性技术,并以最小的计算时间和最大分类精度执行频带提取。对于所提出的方法的实验分析,使用不同随机矩阵将杂化技术与核PCA(KPCA)进行比较,发现它们的混合模型在比经典非线性技术的最小计算时间中的结果的有望改善。

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