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Principal component analysis in the spectral analysis of the dynamic laser speckle patterns

机译:动态激光散斑图谱分析中的主成分分析

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摘要

Dynamic laser speckle is a phenomenon that interprets an optical patterns formed by illuminating a surface under changes with coherent light. Therefore, the dynamic change of the speckle patterns caused by biological material is known as biospeckle. Usually, these patterns of optical interference evolving in time are analyzed by graphical or numerical methods, and the analysis in frequency domain has also been an option, however involving large computational requirements which demands new approaches to filter the images in time. Principal component analysis (PCA) works with the statistical decorrelation of data and it can be used as a data filtering. In this context, the present work evaluated the PCA technique to filter in time the data from the biospeckle images aiming the reduction of time computer consuming and improving the robustness of the filtering. It was used 64 images of biospeckle in time observed in a maize seed. The images were arranged in a data matrix and statistically uncorrelated by PCA technique, and the reconstructed signals were analyzed using the routine graphical and numerical methods to analyze the biospeckle. Results showed the potential of the PCA tool in filtering the dynamic laser speckle data, with the definition of markers of principal components related to the biological phenomena and with the advantage of fast computational processing.
机译:动态激光斑点是一种现象,它解释了在相干光变化下照亮表面而形成的光学图案。因此,由生物材料引起的斑点图案的动态变化被称为生物斑点。通常,通过图形或数值方法分析这些随时间变化的光学干涉图案,并且频域分析也是一种选择,但是涉及大量的计算需求,这需要采用新的方法来对图像进行及时滤波。主成分分析(PCA)与数据的统计去相关一起使用,并且可以用作数据过滤。在这种情况下,本工作评估了PCA技术,以对生物斑点图像中的数据进行及时过滤,旨在减少计算机消耗的时间并提高过滤的鲁棒性。在玉米种子中及时使用了64张生物斑点图像。图像排列在数据矩阵中,并且通过PCA技术在统计上不相关,并且使用常规的图形和数值方法分析重构的信号以分析生物斑点。结果表明,PCA工具具有过滤动态激光散斑数据的潜力,具有定义与生物现象有关的主要成分的标记以及具有快速计算处理的优势。

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