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A Recurrent Neural Network for Particle Tracking in Microscopy Images Using Future Information, Track Hypotheses, and Multiple Detections

Roman Spilger, Andrea Imle, Jiyoung Lee, Bárbara Müller, O. Fackler, Ralf Bartenschlager, Karl Rohr

2020IEEE Transactions on Image Processing40 citationsDOI

Abstract

Automatic tracking of particles in time-lapse fluorescence microscopy images is essential for quantifying the dynamic behavior of subcellular structures and virus structures. We introduce a novel particle tracking approach based on a deep recurrent neural network architecture that exploits past and future information in both forward and backward direction. Assignment probabilities are determined jointly across multiple detections, and the probability of missing detections is computed. In addition, existence probabilities are determined by the network to handle track initiation and termination. For correspondence finding, track hypotheses are propagated to future time points so that information at later time points can be used to resolve ambiguities. A handcrafted similarity measure and handcrafted motion features are not necessary. Manually labeled data is not required for network training. We evaluated the performance of our approach using image data of the Particle Tracking Challenge as well as real fluorescence microscopy image sequences of virus structures. It turned out that the proposed approach outperforms previous methods.

Topics & Concepts

Tracking (education)Computer scienceArtificial intelligenceComputer visionSimilarity (geometry)Track (disk drive)Artificial neural networkPattern recognition (psychology)ExploitImage (mathematics)Data miningPsychologyComputer securityOperating systemPedagogyCell Image Analysis TechniquesImage Processing Techniques and ApplicationsImmunotherapy and Immune Responses
A Recurrent Neural Network for Particle Tracking in Microscopy Images Using Future Information, Track Hypotheses, and Multiple Detections | Litcius