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首页> 外文期刊>Journal of Imaging Science and Technology >The Learning-Based Principal Component Analysis Technique in Low Resolution and High Resolution Spectral Images
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The Learning-Based Principal Component Analysis Technique in Low Resolution and High Resolution Spectral Images

机译:低分辨率和高分辨率光谱图像中基于学习的主成分分析技术

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摘要

This paper presents a learning-based principal component analysis technique for accurate representation of spectral color in low and high resolution spectral images. Three learning techniques, LLE, ISOMAP, and regressive principal component analysis (PCA), are studied for this purpose. The basic concepts for the regressive PCA technique, which is computationally efficient and represents a combination of standard PCA and regression, are examined. To utilize dimensionality reduction techniques such as LLE and ISOMAP as parametric mapping procedures, the methods must be modified by combining them with a regression approach which provides data mapping from a low-dimensional space to the input space. The LLE, ISOMAP, and regressive PCA learning techniques are compared with standard PCA using low-resolution spectral images. We show that the LLE and ISOMAP approaches are computationally demanding and are not well suited to high resolution image analysis. Regressive and standard PCA are then used in a test with high resolution spectral images. The comparative study based on the S-CIELAB △E and RMSE employs regressive PCA measures to illustrate accurate color representation.
机译:本文提出了一种基于学习的主成分分析技术,可准确表示低分辨率和高分辨率光谱图像中的光谱颜色。为此,研究了三种学习技术,即LLE,ISOMAP和回归主成分分析(PCA)。考察了回归PCA技术的基本概念,该概念计算效率高,代表了标准PCA和回归的组合。为了将降维技术(例如LLE和ISOMAP)用作参数映射过程,必须通过将这些方法与提供从低维空间到输入空间的数据映射的回归方法相结合来修改这些方法。使用低分辨率光谱图像将LLE,ISOMAP和回归PCA学习技术与标准PCA进行比较。我们表明,LLE和ISOMAP方法对计算的要求很高,并且不太适合高分辨率图像分析。然后将回归PCA和标准PCA用于高分辨率光谱图像的测试中。基于S-CIELAB△E和RMSE的比较研究采用回归PCA措施来说明准确的颜色表示。

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