Unsupervised anomaly detection in MeV ultrafast electron diffraction
Unsupervised anomaly detection in MeV ultrafast electron diffraction
This study focus in the construction of an unsupervised anomaly detection methodology to detect faulty images in MUED. We believe that unsupervised techniques are the best choice for our purposes because the data used to train the detector does not need to be manually labeled, and instead, the machine is intended to detect by itself the anomalies in the dataset, which liberates the user of tedious, time-consuming initial image examination. The structure must, additionally, provide the user with some measure of uncertainty in the detection, so the user can take decisions based on this measure.
Mariana A. Fazio、Salvador Sosa Güitron、Marcus Babzien、Mikhail Fedurin、Junjie Li、Mark Palmer、Sandra S. Biedron、Manel Martinez-Ramon
电子技术应用
Mariana A. Fazio,Salvador Sosa Güitron,Marcus Babzien,Mikhail Fedurin,Junjie Li,Mark Palmer,Sandra S. Biedron,Manel Martinez-Ramon.Unsupervised anomaly detection in MeV ultrafast electron diffraction[EB/OL].(2025-05-19)[2025-07-02].https://arxiv.org/abs/2505.13702.点此复制
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