论文标题
使用对象检测技术访问多晶微结构的拓扑特征
Accessing topological feature of polycrystalline microstructure using object detection technique
论文作者
论文摘要
面部谷物类(通常称为拓扑特征)在很大程度上决定了谷物生长过程中多晶微观结构的演变。意识到这些拓扑特征通常是一项艰巨的任务,通常需要精致的技术。在目前的工作中,首次扩展了一种独特的机器学习算法,以理解构成多晶连续体的谷物的拓扑分布。这种基于回归的对象检测方法除了显着降低人类效力并确保计算效率外,还通过引入适当的边界框来预测晶粒的面阶层。经过足够的训练和验证,超过500个时期,当前的模型与地面真理表现出显着的重叠,其中包括手动实现多晶微观结构的拓扑特征。相关的统计研究(包括精确核心分析)进一步证实了这种治疗方法的准确性。该模型暴露于未知的测试数据集,并通过将其预测与标记的微结构进行比较来评估其性能。反映统计准确性,算法预测与地面真理之间的强烈一致性在这些比较研究中很明显,这些研究涉及晶粒数量不同的多晶系统。
Faces-classes of grains, often referred to as topological features, largely dictate the evolution of polycrystalline microstructures during grain growth. Realising these topological features is generally an arduous task, often demanding sophisticated techniques. In the present work, a distinct machine-learning algorithm is extended for the first time to comprehend the topological distribution of the grains constituting a polycrystalline continuum. This regression-based object-detection approach, besides significantly reducing human-efforts and ensuring computational efficiency, predicts the face-class of the grains by introducing appropriate bounding boxes. After sufficient training and validation, over 500 epochs, the current model exhibits a remarkable overlap with the ground truth that encompasses manually realised topological features of the polycrystalline microstructures. Accuracy of this treatment is further substantiated by relevant statistical studies including precision-recall analysis. The model is exposed to unknown test dataset and its performance is assessed by comparing its predictions with the labelled microstructures. Reflecting the statistical accuracy, a strong agreement between the algorithm-predictions and the ground truth is noticeable in these comparative studies involving polycrystalline systems with varying number of grains.