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首页> 外文期刊>Microscopy and microanalysis: The official journal of Microscopy Society of America, Microbeam Analysis Society, Microscopical Society of Canada >Mathematical Mirroring for Identification of Local Symmetry Centers in Microscopic Images Local Symmetry Detection in FIJI
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Mathematical Mirroring for Identification of Local Symmetry Centers in Microscopic Images Local Symmetry Detection in FIJI

机译:斐济微观图像局部对称检测中局部对称中心鉴定的数学镜像

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摘要

Symmetry is omnipresent in nature and we encounter symmetry routinely in our everyday life. It is also common on the microscopic level, where symmetry is often key to the proper function of core biological processes. The human brain is exquisitely well suited to recognize such symmetrical features with ease. In contrast, computational recognition of such patterns in images is still surprisingly challenging. In this paper we describe a mathematical approach to identifying smaller local symmetrical structures within larger images. Our algorithm attributes a local symmetry score to each image pixel, which subsequently allows the identification of the symmetrical centers of an object. Though there are already many methods available to detect symmetry in images, to the best of our knowledge, our algorithm is the first that is easily applicable in ImageJ/FIJI. We have created an interactive plugin in FIJI that allows the detection and thresholding of local symmetry values. The plugin combines the different reflection symmetry axis of a square to get a good coverage of reflection symmetry in all directions. To demonstrate the plugins potential, we analyzed images of bacterial chemoreceptor arrays and intracellular vesicle trafficking events, which are two prominent examples of biological systems with symmetrical patterns.
机译:对称性本质上是全美的,我们在日常生活中常规遇到对称性。在微观水平上也是常见的,其中对称性通常是核心生物过程的适当功能的关键。人类大脑精致非常适合承认这种对称特征。相比之下,图像中的这种模式的计算识别仍然令人惊讶地具有挑战性。在本文中,我们描述了一种识别较大图像内较小的局部对称结构的数学方法。我们的算法将局部对称性得分属性对每个图像像素属性,随后允许识别物体的对称中心。虽然已经有许多可用于图像中的对称性的方法,但据我们所知,我们的算法是第一个易于应用在imagej / fiji中的方法。我们在Fiji创建了一个互动插件,允许检测和阈值对局部对称值的阈值。该插件组合了一个正方形的不同反射对称轴来获得各个方向的反射对称的良好覆盖。为了证明插件电位,我们分析了细菌化学感受器阵列和细胞内囊泡贩运事件的图像,这是具有对称模式的生物系统的两个突出的实例。

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