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A linear optimal transportation framework for quantifying and visualizing variations in sets of images

机译:用于量化和可视化图像集中变化的线性最佳运输框架

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摘要

Transportation-based metrics for comparing images have long been applied to analyze images, especially where one can interpret the pixel intensities (or derived quantities) as a distribution of 'mass' that can be transported without strict geometric constraints. Here we describe a new transportation-based framework for analyzing sets of images. More specifically, we describe a new transportation-related distance between pairs of images, which we denote as linear optimal transportation (LOT). The LOT can be used directly on pixel intensities, and is based on a linearized version of the Kantorovich-Wasserstein metric (an optimal transportation distance, as is the earth mover's distance). The new framework is especially well suited for computing all pairwise distances for a large database of images efficiently, and thus it can be used for pattern recognition in sets of images. In addition, the new LOT framework also allows for an isometric linear embedding, greatly facilitating the ability to visualize discriminant information in different classes of images. We demonstrate the application of the framework to several tasks such as discriminating nuclear chromatin patterns in cancer cells, decoding differences in facial expressions, galaxy morphologies, as well as sub cellular protein distributions.
机译:长期以来,用于比较图像的基于运输的度量标准一直被用于分析图像,尤其是在人们可以将像素强度(或导出的数量)解释为“质量”的分布的情况下,可以不受严格的几何约束地进行运输。在这里,我们描述了一种用于分析图像集的基于运输的新框架。更具体地说,我们描述了成对的图像之间与运输有关的新距离,我们将其称为线性最佳运输(LOT)。 LOT可直接用于像素强度,并且基于Kantorovich-Wasserstein度量的线性化版本(最佳运输距离,即土方距离)。新框架特别适合有效地计算大型图像数据库的所有成对距离,因此可以用于图像组中的模式识别。此外,新的LOT框架还允许等距线性嵌入,极大地促进了可视化不同类别图像中判别信息的能力。我们证明了该框架在多项任务中的应用,例如区分癌细胞中的核染色质模式,解码面部表情,星系形态以及亚细胞蛋白质分布的差异。

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