Noise adaptive matrix edge field analysis of small sized heterogeneous onion layered textures for characterizing human embryonic stem cell nuclei

Mukund Desai, R. Mangoubi, P. Sammak
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引用次数: 4

Abstract

We present a methodology for characterizing small size heterogeneous textures that are hard to analyze in general due to the paucity of pixels and textural heterogeneity. The methodology overcomes the limitation for a large class of heterogeneous textures that exhibit onion layer type textural variation, where we may assume that within a layer the behavior is homogeneous, but may vary from layer to layer. The shape of the onion layers is data dependent; radial symmetry is not required. We use an energy functional approach for simultaneous smoothing and segmentation that relies on two key innovations: a matrix edge field, and adaptive weighting of the measurements relative to the smoothing process model. The matrix edge function adaptively and implicitly modulates the shape, size, and orientation of smoothing neighborhoods over different regions of the texture. It thus provides directional information on the texture that is not available in the more conventional scalar edge field based approaches. The adaptive measurement weighting varies the weighting between the measurements at each pixel. Image based analysis of human embryonic stem cells is the motivating application for this new approach, and we show how the features extracted using this approach can be used to automate the classification of pluripotent vs. differentiated stem cell nuclei based on confocal images of fluorescent GFP-labeled chromatin.
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小尺寸异质洋葱层状纹理的噪声自适应矩阵边缘场分析用于人胚胎干细胞细胞核的表征
我们提出了一种表征小尺寸异构纹理的方法,这种方法由于像素的缺乏和纹理的异质性而难以分析。该方法克服了一大类异构纹理的局限性,这些纹理表现出洋葱层类型的纹理变化,我们可以假设在一个层内的行为是均匀的,但可能在层与层之间有所不同。洋葱层的形状依赖于数据;径向对称不是必需的。我们使用能量函数方法进行同步平滑和分割,该方法依赖于两个关键的创新:矩阵边缘场和相对于平滑过程模型的测量的自适应加权。矩阵边缘函数自适应和隐式地调节纹理不同区域上平滑邻域的形状、大小和方向。因此,它提供了纹理的方向信息,这在更传统的基于标量边缘场的方法中是不可用的。自适应测量权重改变每个像素处测量值之间的权重。基于图像的人类胚胎干细胞分析是这种新方法的激励应用,我们展示了使用这种方法提取的特征如何用于基于荧光gfp标记的染色质的共聚焦图像自动分类多能和分化的干细胞细胞核。
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