A new detection scheme for multiple object tracking in fluorescence microscopy by joint probabilistic data association filtering

Ihor Smal, W. Niessen, E. Meijering
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引用次数: 64

Abstract

Tracking of multiple objects in biological image data is a challenging problem due largely to poor imaging conditions and complicated motion scenarios. Existing tracking algorithms for this purpose often do not provide sufficient robustness and/or are computationally expensive. In this paper we propose a new object detection scheme, based on importance sampling from image intensity distributions, and show how it can be easily incorporated into a probabilistic tracking framework based on Kalman or particle filtering. Experiments on synthetic as well as real fluorescence microscopy image data from different biological studies show that the resulting tracking algorithm yields smaller localization errors at much lower execution times compared to other available methods.
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基于联合概率数据关联滤波的荧光显微镜多目标跟踪检测新方案
生物图像数据中多目标的跟踪是一个具有挑战性的问题,主要是由于成像条件差和运动场景复杂。用于此目的的现有跟踪算法通常不能提供足够的鲁棒性和/或计算成本很高。在本文中,我们提出了一种新的目标检测方案,基于图像强度分布的重要性采样,并展示了如何将其轻松地纳入基于卡尔曼或粒子滤波的概率跟踪框架。对不同生物学研究的合成和真实荧光显微镜图像数据的实验表明,与其他可用方法相比,所得到的跟踪算法在更短的执行时间内产生更小的定位误差。
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