弱光三维共聚焦图像序列中中心体跟踪的泊松卡尔曼粒子滤波

Hugh Gribben, P. Miller, Jianguo Zhang, M. Browne
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引用次数: 1

摘要

研制了一种自动跟踪器,能够从受噪声干扰的三维共聚焦图像序列中跟踪活细胞的细胞内特征。该方法采用泊松MAP-MRF分类作为目标检测的初始阶段。这些然后用于更新由三维泊松卡尔曼粒子滤波器(PKPF)生成的多个目标位置。提出了一种用于目标关联的概率最近邻搜索策略,以提高目标位置的预测精度。我们的方法在具有挑战性的照明条件下的真实3D共聚焦图像序列中进行了测试。结果表明,我们的泊松卡尔曼粒子滤波方法取得了很好的效果,并且优于其他三种跟踪方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Poisson Kalman Particle Filtering for Tracking Centrosomes in Low-Light 3-D Confocal Image Sequences
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.
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