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Stochastic Perturbations on Low-Rank Hyperspectral Data for Image Classification

机译:用于图像分类的低级高光谱数据的随机扰动

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Hyperspectral imagery (HSI) contains hundreds of narrow contiguous bands of spectral signals. These signals, which form spectral signatures, provide a wealth of information that can be used to characterize material substances. In recent years machine learning has been used extensively to classify HSI data. While many excellent HSI classifiers have been proposed and deployed, the focus has been more on the design of the algorithms. This paper presents a novel data preprocessing method (LRSP) to improve classification accuracy by applying stochastic perturbations to the low-rank constituent of the dataset. The proposed architecture is composed of a low-rank and sparse decomposition, a degradation function and a constraint least squares filter. Experimental results confirm that popular state-of-the-art HSI classifiers can produce better classification results if supplied by LRSP-altered datasets rather than the original HSI datasets.
机译:高光谱图像(HSI)包含数百个窄的频谱信号带。这些信号形成光谱签名,提供了大量信息,可用于表征材料物质。近年来,机器学习已广泛用于分类HSI数据。虽然已经提出并部署了许多优秀的HSI分类器,但重点在于算法的设计。本文介绍了一种新颖的数据预处理方法(LRSP),通过将随机扰动应用于数据集的低级别组成来提高分类精度。所提出的架构由低级和稀疏分解,劣化函数和约束最小二乘滤波器组成。实验结果证实,如果由LRSP更改的数据集而不是原始的HSI数据集提供,流行的最先进的HSI分类器可以产生更好的分类结果。

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