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Multi- and Single-output Support Vector Regression for Spectral Reflectance Recovery

机译:用于光谱反射率恢复的多输出和单输出支持向量回归

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摘要

In this paper, we deal with the problem of reflectance recovery from multispectral camera output using Support Vector Regression (SVR). As standard, SVR is unidimensional, the spectral reflectance recovery requires a multi-dimensional output. We propose two ways of adaptation: the transformation of the dataset (camera output) to a scalar-valued composite data model on the one hand, and the adaptation of a recent multi-output SVR on the other hand. We compare both performances to a Wiener-based reflectance recovery. The results are quite satisfactory and the comparison points out the advantages and drawbacks of each one of the proposed methods.
机译:在本文中,我们使用支持向量回归(SVR)处理多光谱相机输出的反射率恢复问题。作为标准,SVR是一维的,光谱反射率的恢复需要多维输出。我们提出了两种适应方法:一方面将数据集(相机输出)转换为标量值复合数据模型,另一方面对最近的多输出SVR进行适应。我们将两种性能与基于维纳的反射率恢复进行比较。结果是相当令人满意的,并且比较指出了每种所提出方法的优缺点。

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