计算机科学
共发射极
磁道(磁盘驱动器)
跟踪(教育)
超分辨率
人工智能
计算机视觉
贝叶斯概率
物理
图像(数学)
光电子学
心理学
教育学
操作系统
作者
Ioannis Sgouralis,Lance W.Q. Xu,Ameya P. Jalihal,Zeliha Kilic,Nils G. Walter,Steve Pressé
标识
DOI:10.1038/s41592-024-02349-9
摘要
Abstract Superresolution tools, such as PALM and STORM, provide nanoscale localization accuracy by relying on rare photophysical events, limiting these methods to static samples. By contrast, here, we extend superresolution to dynamics without relying on photodynamics by simultaneously determining emitter numbers and their tracks (localization and linking) with the same localization accuracy per frame as widefield superresolution on immobilized emitters under similar imaging conditions (≈50 nm). We demonstrate our Bayesian nonparametric track (BNP-Track) framework on both in cellulo and synthetic data. BNP-Track develops a joint (posterior) distribution that learns and quantifies uncertainty over emitter numbers and their associated tracks propagated from shot noise, camera artifacts, pixelation, background and out-of-focus motion. In doing so, we integrate spatiotemporal information into our distribution, which is otherwise compromised by modularly determining emitter numbers and localizing and linking emitter positions across frames. For this reason, BNP-Track remains accurate in crowding regimens beyond those accessible to other single-particle tracking tools.
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