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Common reduced spaces of representation applied to multispectral texture analysis in cosmetology

机译:常见的减少表示空间应用于美容的多光谱纹理分析

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Principal Component Analysis (PCA) is a technique of multivariate data analysis widely used in various fields like biology, ecology or economy to reduce data dimensionality while retaining most important information. It is becoming a standard practice in multispectral/hyperspectral imaging since those multivariate data generally suffer from a high redundancy level. Nevertheless, by definition, PCA is meant to be applied to a single multispectral/hyperspectral image at a time. When several images have to be treated, running a PCA on each image would generate specific reduced spaces, which is not suitable for comparison between results. Thus, we focus on two PCA based algorithms that could define common reduced spaces of representation. The first method arises from literature and is computed with the barycenter covariance matrix. On the contrary, we designed the second algorithm with the idea of correcting standard PCA using permutations and inversions of eigenvectors. These dimensionality reduction methods are used within the context of a cosmetological study of a foundation make-up. Available data are in-vivo multispectral images of skin acquired on different volunteers in time series. The main purpose of this study is to characterize the make-up degradation especially in terms of texture analysis. Results have to be validate by statistical prediction of time since applying the product. PCA algorithms produce eigenimages that separately enhance skin components (pores, radiance, vessels...). From these eigenimages, we extract morphological texture descriptors and intent a time prediction. Accuracy of common reduced spaces outperform classical PCA one. In this paper, we detail how PCA is extended to the multiple groups case and explain what are the advantages of common reduced spaces when it comes to study several multispectral images.
机译:主成分分析(PCA)是一种多元数据分析技术,广泛用于生物学,生态学或经济等各个领域,以减少数据维数,同时保留最重要的信息。由于那些多变量数据通常遭受高冗余级别的困扰,这已成为多光谱/高光谱成像中的标准实践。然而,根据定义,PCA旨在一次应用于单个多光谱/高光谱图像。当必须处理多个图像时,在每个图像上运行PCA会产生特定的缩小空间,这不适合在结果之间进行比较。因此,我们专注于两种基于PCA的算法,它们可以定义共同的缩减表示空间。第一种方法来自文献,并使用重心协方差矩阵进行计算。相反,我们设计了第二种算法,其思想是使用特征向量的置换和反演来校正标准PCA。这些降维方法用于基础粉底液的美容研究。可用数据是按时间序列在不同志愿者上获得的皮肤的体内多光谱图像。这项研究的主要目的是表征化妆品的降解,尤其是在质地分析方面。自使用该产品以来,必须通过对时间的统计预测来验证结果。 PCA算法产生的特征图像可分别增强皮肤成分(毛孔,容光焕发,血管...)。从这些特征图像中,我们提取出形态纹理描述符,并进行时间预测。常见缩减空间的精度优于经典PCA。在本文中,我们详细介绍了如何将PCA扩展到多组情况,并解释了在研究多个多光谱图像时,常见的缩减空间的优点是什么。

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