학술논문

Poisson Kalman Particle Filtering for Tracking Centrosomes in Low-Light 3-D Confocal Image Sequences
Document Type
Conference
Source
2009 13th International Machine Vision and Image Processing Conference Machine Vision and Image Processing Conference, 2009. IMVIP '09. 13th International. :83-88 Sep, 2009
Subject
Computing and Processing
Bioengineering
Signal Processing and Analysis
Kalman filters
Filtering
Particle tracking
Image sequences
Particle filters
Microscopy
Biological system modeling
Target tracking
Fluorescence
Image segmentation
Poisson Kalman particle filtering
probabilistic object association
centrosomes
low-light confocal microscopy
Language
Abstract
An automatic tracker is developed, which is capable of tracking intra-cellular features in living cells from 3-D confocal image sequences corrupted by noise. The proposed approach takes a Poisson MAP-MRF classification as an initial stage to detect objects. These are then used to update the multiple target locations generated by 3D Poisson Kalman Particle filters (PKPF). A probabilistic nearest neighbour search strategy for object association is developed to produce improved prediction of target locations. Our approach is tested in real 3D confocal image sequences with challenging illumination conditions. Results show that our Poisson Kalman particle filter approach obtains very promising results and outperforms three other tracking approaches.