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Metallographic Specimen Imaging Classification: A Machine Learning Approach

机译:金相试样成像分类:机器学习方法

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Metallography is a field of study focused on metal analysis of microstructure, defects, etc, and material identification. ASTM International provides E112 protocol [1] to support material observation based on average grain size. This method requires to count total of grain cut on a circular area of 645 mm~2 or 1 inch 2 and following directions to identify the material. However, this process demands high accuracy and knowledge, it is very handwork and subject to human errors. Moreover, previous knowledge about the material is required to choose the most suitable protocol. In this work we present an approach for metallographic specimen identification based on imaging classification with classic machine learning algorithms. We prepared specimens following ASTM [2] for six different materials and collected sample images on a microscope. We compared K-Nearest Neighbor, Decision Tree and Linear Discriminant Analysis algorithms, using flatten raw pixels, gray histogram and GLCM features as input data. Our experiments were performed with 1, 200 patch samples with different pixel set size reaching an average accuracy of 96.8%. Thus, the proposed approach presents a path toward automated metallographic studies.
机译:金相术是一种专注于微观结构,缺陷等和材料鉴定的金属分析的研究领域。 ASTM International提供E112协议[1]以支持基于平均粒度的材料观察。该方法需要在645mm〜2或1英寸2的圆面积和后续方向上计算颗粒的总粒子以识别材料。然而,这种过程需要高精度和知识,它非常手动,受到人类错误的影响。此外,先前关于这些材料的知识是选择最合适的协议。在这项工作中,我们提出了一种基于具有经典机器学习算法的成像分类的金相标本识别方法。我们在ASTM [2]后的标本为六种不同的材料和显微镜上收集的样品图像。我们将K-Collect邻居,决策树和线性判别分析算法比较,使用扁平原始像素,灰色直方图和GLCM功能作为输入数据。我们的实验用1,200个贴剂样品进行,具有不同像素设定尺寸的平均精度为96.8%。因此,所提出的方法呈现了对自动化金相研究的路径。

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