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Pattern recognition with machine learning on optical microscopy images of typical metallurgical microstructures

机译:与机器学习在典型冶金微观结构上的光学显微镜图像上的模式识别

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For advanced materials characterization, a novel and extremely effective approach of pattern recognition in optical microscopic images of steels is demonstrated. It is based on fast Random Forest statistical algorithm of machine learning for reliable and automated segmentation of typical steel microstructures. Their percentage and location areas excellently agreed between machine learning and manual examination results. The accurate microstructure pattern recognition/segmentation technique in combination with other suitable mathematical methods of image processing and analysis can help to handle the large volumes of image data in a short time for quality control and for the quest of new steels with desirable properties.
机译:对于先进的材料表征,证明了钢的光学显微图像中的一种新颖和极其有效的模式识别方法。基于快速随机林统计算法的机器学习,可靠,自动分割典型钢微结构。他们的百分比和位置区域在机器学习和手动检查结果之间非常商定。结合其他合适的图像处理和分析方法的准确组织模式识别/分段技术可以帮助在短时间内处理大量的图像数据,以便具有所需性能的新钢的探索。

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