Author:
Sainju Rajat,Chen Wei-Ying,Schaefer Samuel,Yang Qian,Ding Caiwen,Li Meimei,Zhu Yuanyuan
Abstract
AbstractIn-situ irradiation transmission electron microscopy (TEM) offers unique insights into the millisecond-timescale post-cascade process, such as the lifetime and thermal stability of defect clusters, vital to the mechanistic understanding of irradiation damage in nuclear materials. Converting in-situ irradiation TEM video data into meaningful information on defect cluster dynamic properties (e.g., lifetime) has become the major technical bottleneck. Here, we present a solution called theDefectTrack, the first dedicated deep learning-based one-shot multi-object tracking (MOT) model capable of tracking cascade-induced defect clusters in in-situ TEM videos in real-time.DefectTrackhas achieved a Multi-Object Tracking Accuracy (MOTA) of 66.43% and a Mostly Tracked (MT) of 67.81% on the test set, which are comparable to state-of-the-art MOT algorithms. We discuss the MOT framework, model selection, training, and evaluation strategies for in-situ TEM applications. Further, we compare theDefectTrackwith four human experts in quantifying defect cluster lifetime distributions using statistical tests and discuss the relationship between the material science domain metrics and MOT metrics. Our statistical evaluations on the defect lifetime distribution suggest that theDefectTrackoutperforms human experts in accuracy and speed.
Funder
Institute of Materials Science at the University of Connecticut
Argonne National Laboratory
Publisher
Springer Science and Business Media LLC
Cited by
17 articles.
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