CellTrackVis: analyzing the performance of cell tracking algorithms.

W Li, X Zhang, A Stern, M Birtwistle, F Iuricich
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引用次数: 1

Abstract

Live-cell imaging is a common data acquisition technique used by biologists to analyze cell behavior. Since manually tracking cells in a video sequence is extremely time-consuming, many automatic algorithms have been developed in the last twenty years to accomplish the task. However, none of these algorithms can yet claim robust tracking performance at the varying of acquisition conditions (e.g., cell type, acquisition device, cell treatments). While many visualization tools exist to help with cell behavior analysis, there are no tools to help with the algorithm's validation. This paper proposes CellTrackVis, a new visualization tool for evaluating cell tracking algorithms. CellTrackVis allows comparing automatically generated cell tracks with ground truth data to help biologists select the best-suited algorithm for their experimented pipeline. Moreover, CellTackVis can be used as a debugging tool while developing a new cell tracking algorithm to investigate where, when, and why each tracking error occurred.

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CellTrackVis:分析细胞跟踪算法的性能。
活细胞成像是生物学家用来分析细胞行为的常用数据采集技术。由于手动跟踪视频序列中的细胞非常耗时,在过去的二十年中,许多自动算法被开发出来来完成这项任务。然而,这些算法都不能在不同的采集条件下(例如,细胞类型,采集设备,细胞处理)声称具有稳健的跟踪性能。虽然有许多可视化工具可以帮助进行细胞行为分析,但没有工具可以帮助进行算法验证。本文提出了一种新的可视化工具CellTrackVis,用于评估细胞跟踪算法。CellTrackVis允许将自动生成的细胞轨迹与地面真实数据进行比较,以帮助生物学家为他们的实验管道选择最适合的算法。此外,在开发新的细胞跟踪算法时,CellTackVis可以用作调试工具,以调查每个跟踪错误发生的地点、时间和原因。
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CellTrackVis: analyzing the performance of cell tracking algorithms. Visualization for Understanding Uncertainty in Activation Volumes for Deep Brain Stimulation Pattern Visualization of Human Connectome Data.
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