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首页> 外文期刊>Medical Imaging, IEEE Transactions on >Tracking Multiple Particles in Fluorescence Time-Lapse Microscopy Images via Probabilistic Data Association
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Tracking Multiple Particles in Fluorescence Time-Lapse Microscopy Images via Probabilistic Data Association

机译:通过概率数据关联跟踪荧光延时显微镜图像中的多个粒子

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摘要

Tracking subcellular structures as well as viral structures displayed as ‘particles’ in fluorescence microscopy images yields quantitative information on the underlying dynamical processes. We have developed an approach for tracking multiple fluorescent particles based on probabilistic data association. The approach combines a localization scheme that uses a bottom-up strategy based on the spot-enhancing filter as well as a top-down strategy based on an ellipsoidal sampling scheme that uses the Gaussian probability distributions computed by a Kalman filter. The localization scheme yields multiple measurements that are incorporated into the Kalman filter via a combined innovation, where the association probabilities are interpreted as weights calculated using an image likelihood. To track objects in close proximity, we compute the support of each image position relative to the neighboring objects of a tracked object and use this support to recalculate the weights. To cope with multiple motion models, we integrated the interacting multiple model algorithm. The approach has been successfully applied to synthetic 2-D and 3-D images as well as to real 2-D and 3-D microscopy images, and the performance has been quantified. In addition, the approach was successfully applied to the 2-D and 3-D image data of the recent Particle Tracking Challenge at the IEEE International Symposium on Biomedical Imaging (ISBI) 2012.
机译:跟踪荧光显微镜图像中显示为“颗粒”的亚细胞结构和病毒结构,可得到有关潜在动力学过程的定量信息。我们已经开发了一种基于概率数据关联来跟踪多个荧光粒子的方法。该方法结合了一种本地化方案,该方案使用基于点增强滤波器的自下而上的策略,以及基于椭圆形采样方案的自上而下的策略,该方案使用由卡尔曼滤波器计算的高斯概率分布。定位方案产生多个测量值,这些测量值通过组合创新合并到卡尔曼滤波器中,其中关联概率被解释为使用图像似然性计算的权重。为了跟踪紧密接近的对象,我们计算相对于被跟踪对象的相邻对象的每个图像位置的支持度,并使用此支持度重新计算权重。为了应对多种运动模型,我们集成了交互的多种模型算法。该方法已成功应用于合成的2D和3D图像以及实际的2D和3D显微图像,并且已对性能进行了量化。此外,该方法已成功应用于2012年IEEE国际生物医学成像研讨会(ISBI)上的近期粒子跟踪挑战的2D和3D图像数据。

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