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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Modeling of microscope images for early detection of fatigue cracks in structural materials
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Modeling of microscope images for early detection of fatigue cracks in structural materials

机译:显微镜图像的建模,以便早期检测结构材料疲劳裂缝

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From the perspectives of health monitoring and life extension of structural materials, this paper addresses the problem of early detection of fatigue cracks in metallic materials (e.g., polycrystalline alloys). To this end, optical images have been collected from an ensemble of test specimens to construct computationally efficient models of crack evolution; these images are segmented into two major categories. The first category comprises images of (structurally) healthy specimens, while the second category contains images of specimens with cracks, including those in early stages of crack evolution. Based on this information, algorithms for early detection of crack formation are formulated in the setting of image classification, where the bag-of-words (BoW) technique has been used to develop models of the sensed images from a microscope, resulting in computationally efficient crack detection algorithms. To evaluate the performance of these crack detection algorithms, experiments have been conducted on a special-purpose fatigue testing apparatus, equipped with a computer-controlled and computer-instrumented confocal microscope system. The results of experimentation with multiple test specimens show excellent crack detection capabilities when the proposed BoW-based feature extraction is combined with quadratic support vector machine (QSVM) for pattern classification. Comparative evaluation with other classification tools establishes superiority of the proposed BoW/QSVM technique.
机译:从健康监测和生命延伸的结构材料的角度来看,本文解决了金属材料中疲劳裂缝的早期检测问题(例如,多晶合金)。为此,已从测试样本的集合收集光学图像,以构建裂纹演化的计算有效模型;这些图像被分为两大类。第一类包括(结构上)健康标本的图像,而第二类别包含具有裂缝的标本的图像,包括裂纹进化的早期阶段的图像。基于该信息,用于早期检测裂缝形成的算法在图像分类的设置中配制,其中袋式(弓)技术已被用于从显微镜开发所感测图像的模型,从而导致计算效率裂缝检测算法。为了评估这些裂纹检测算法的性能,在特殊用途疲劳检测装置上进行了实验,配备有计算机控制和计算机仪器的共聚焦显微镜系统。多种试样的实验结果表明,当建议的弓形特征提取与二次支撑载体机(QSVM)结合以进行图案分类时,具有出色的裂缝检测能力。与其他分类工具的比较评估建立了所提出的弓/ QSVM技术的优越性。

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