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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 >Weka Trainable Segmentation Plugin in ImageJ: A Semi-Automatic Tool Applied to Crystal Size Distributions of Microlites in Volcanic Rocks
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Weka Trainable Segmentation Plugin in ImageJ: A Semi-Automatic Tool Applied to Crystal Size Distributions of Microlites in Volcanic Rocks

机译:imagej中的Weka培训分段插件:应用于火山岩中微岩晶体尺寸分布的半自动工具

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摘要

Crystals within volcanic rocks record geochemical and textural signatures during magmatic evolution before eruption. Clues to this magmatic history can be examined using crystal size distribution (CSD) studies. The analysis of CSDs is a standard petrological tool, but laborious due to manual hand-drawing of crystal margins. The trainable Weka segmentation (TWS) plugin in ImageJ is a promising alternative. It uses machine learning and image segmentation to classify an image. We recorded back-scattered electron (BSE) images of three volcanic samples with different crystallinity (35, 50 and ≥85 vol. %), using scanning electron microscopes (SEM) of variable image resolutions, which we then tested using TWS. Crystal measurements obtained from the automatically segmented images are compared with those of the manual segmentation. Samples up to 50 vol. % crystallinity are successfully segmented using TWS. Segmentation at significantly higher crystallinities fails, as crystal boundaries cannot be distinguished. Accuracy performance tests for the TWS classifiers yield high F-scores (>0.930), hence, TWS is a successful and fast computing tool for outlining crystals from BSE images of glassy rocks. Finally, reliable CSD’s can be derived using a low-cost desktop SEM, paving the way for a wide range of research to take advantage of this new petrological method.
机译:火山岩中的晶体在爆发前的岩浆进化期间记录地球化学和纹理签名。可以使用晶体尺寸分布(CSD)研究来检查该岩浆病史的线索。 CSD分析是标准的岩浆工具,但由于手动手绘晶体边距,艰难。 ImageJ中的培训Weka分段(TWS)插件是一个有前途的替代方案。它使用机器学习和图像分割来对图像进行分类。我们记录了三个火山样品的背部散射电子(BSE)图像,其具有不同的结晶度(35,50和≥85体积%),使用可变图像分辨率的扫描电子显微镜(SEM),然后我们使用TWS进行测试。将从自动分段图像获得的晶体测量与手动分割的图像进行比较。样品最多50卷。使用TWS成功分段%结晶度。在明显较高的晶体中的分割失败,因为不能区分晶体边界。 TWS分类器的精度性能测试产生高F分数(> 0.930),因此,TWS是一种成功且快速计算工具,用于从玻璃岩石的BSE图像概述晶体。最后,可以使用低成本的桌面SEM获得可靠的CSD,为广泛的研究铺平了借鉴了这种新的思科方法。

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