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Quantifying and visualizing variations in sets of images using continuous linear optimal transport

机译:使用连续线性最佳传输来量化和可视化图像集中的变化

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Modern advancements in imaging devices have enabled us to explore the subcellular structure of living organisms and extract vast amounts of information. However, interpreting the biological information mined in the captured images is not a trivial task. Utilizing predetermined numerical features is usually the only hope for quantifying this information. Nonetheless, direct visual or biological interpretation of results obtained from these selected features is non-intuitive and difficult. In this paper, we describe an automatic method for modeling visual variations in a set of images, which allows for direct visual interpretation of the most significant differences, without the need for predefined features. The method is based on a linearized version of the continuous optimal transport (OT) metric, which provides a natural linear embedding for the image data set, in which linear combination of images leads to a visually meaningful image. This enables us to apply linear geometric data analysis techniques such as principal component analysis and linear discriminant analysis in the linearly embedded space and visualize the most prominent modes, as well as the most discriminant modes of variations, in the dataset. Using the continuous OT framework, we are able to analyze variations in shape and texture in a set of images utilizing each image at full resolution, that otherwise cannot be done by existing methods. The proposed method is applied to a set of nuclei images segmented from Feulgen stained liver tissues in order to investigate the major visual differences in chromatin distribution of Fetal-Type Hepatoblastoma (FHB) cells compared to the normal cells.
机译:成像设备的现代进步使我们能够探讨生物体的亚细胞结构,并提取大量信息。但是,解释捕获图像中所开采的生物信息不是一个微不足道的任务。利用预定的数值特征通常是唯一用于量化此信息的希望。尽管如此,从这些所选特征获得的结果的直接视觉或生物学解释是非直观的并且困难。在本文中,我们描述了一种用于在一组图像中建模视觉变化的自动方法,这允许直接视觉解释最显着的差异,而无需预定义的特征。该方法基于连续最佳传输(OT)度量的线性化版本,其为图像数据集提供自然线性嵌入,其中图像的线性组合导致视觉上有意义的图像。这使我们能够在线嵌入式空间中应用线性几何数据分析技术,例如在线性嵌入式空间中的主成分分析和线性判别分析,并在数据集中可视化最突出的模式,以及最判别的模式,以及最判断的变化模式。使用连续OT框架,我们能够以完整分辨率的每个图像分析一组图像中的形状和纹理的变化,否则无法通过现有方法完成。将该方法应用于从Feulgen染色肝组织分段的一组核图像中,以研究与正常细胞相比胎儿型肝细胞瘤(FHB)细胞的染色质分布的主要视觉差异。

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