Identifying minimally redundant wavenumbers for vibrational microspectroscopic image analysis

Qiaoyong Zhong, D. Niedieker, Dennis Petersen, K. Gerwert, A. Mosig
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引用次数: 0

Abstract

Recent approaches to multispectral microscopy such as infrared, Raman and CARS microscopy produce large amounts of high-dimensional spectra at high spatial resolution. In this context, we propose and validate a method for unsupervised feature selection. Unsupervised feature selection is of relevance in several applications of multispectral imaging techniques, most notably in reducing the measurement time of CARS microscopic experiments. Our feature selection is based on minimizing a mutual-information based measure of redundancy, and can be seen as the unsupervised version of the well established minimal-redundancy-maximal-relevance approach to supervised feature selection. We compare our approach to previously proposed unsupervised feature selection approaches and demonstrate its advantages on two types of multispectral imaging techniques as well as on synthetic data.
识别振动显微光谱图像分析的最小冗余波数
最近的多光谱显微镜方法,如红外、拉曼和CARS显微镜,在高空间分辨率下产生大量的高维光谱。在此背景下,我们提出并验证了一种无监督特征选择方法。无监督特征选择在多光谱成像技术的一些应用中具有相关性,尤其是在减少CARS显微实验的测量时间方面。我们的特征选择是基于最小化基于相互信息的冗余度量,并且可以被视为监督特征选择的已建立的最小冗余-最大相关方法的无监督版本。我们将我们的方法与之前提出的无监督特征选择方法进行了比较,并展示了它在两种类型的多光谱成像技术以及合成数据上的优势。
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