Videos captured using Transmission Electron Microscopy (TEM) can encode details regarding the morphological and temporal evolution of a material by taking snapshots of the microstructure sequentially. However, manual analysis of such video is tedious, error-prone, unreliable, and prohibitively time-consuming if one wishes to analyze a significant fraction of frames for even videos of modest length. In this work, we developed an automated TEM video analysis system for microstructural features based on the advanced object detection model called YOLO and tested the system on an in-situ ion irradiation TEM video of dislocation loops formed in a FeCrAl alloy. The system provides analysis of features observed in TEM including both static and dynamic properties using the YOLO-based defect detection module coupled to a geometry analysis module and a dynamic tracking module. Results show that the system can achieve human comparable performance with an F1 score of 0.89 for fast, consistent, and scalable frame-level defect analysis. This result is obtained on a real but exceptionally clean and stable data set and more challenging data sets may not achieve this performance. The dynamic tracking also enabled evaluation of individual defect evolution like per defect growth rate at a fidelity never before achieved using common human analysis methods. Our work shows that automatically detecting and tracking interesting microstructures and properties contained in TEM videos is viable and opens new doors for evaluating materials dynamics.
翻译:使用传输电子显微镜(TEM)拍摄的视频,可以对材料的形态和时间演变细节进行编码,按顺序对微结构进行截图,但是,如果想要分析相当一部分的短视视频,用传输电子显微镜(TEM)拍摄的视频,这种视频的手工分析是乏味的、容易出错的、不可靠和耗时的。在这项工作中,我们根据称为YOLO的高级物体探测模型,为微结构特征开发了一个自动的TEM视频分析系统,对系统进行了测试,对在FeCrAl合金中生成的移动环的现场辐射 TEM视频进行了现场辐照 TEM视频。该系统对在TEM中观察到的特征进行了分析,包括静态和动态特性,使用以YOLO为基础的缺陷检测模块,加上一个甚小的图像分析模块和动态跟踪模块。结果显示,该系统可以达到可比较的F1分为0.89,用于快速、一致和可缩定框架级的缺陷分析。这一结果来自真实但非常清洁和稳定的数据集,可能无法实现这种动态动态动态动态动态动态动态动态动态动态的动态动态分析。