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An object-tracking algorithm based on particle filtering with region-based level set method

机译:基于区域水平集的粒子滤波的目标跟踪算法

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In this paper, to realize robust tracking, we propose a particle filter (PF) model to track a single paramecium. The proposed PF model consists of a system dynamical model and an observation model. The information about our tracking object is described by a state vector and the system state is assumed to evolve according to the system dynamical model. The parallel region-based level set method with displacement correction (PR-LSM-DC) proposed in our previous work now works as the measurements for the PF model. The tracking is achieved by estimating the state of a moving object from the observations. Experiments show that with motion prediction using the PF model, we increase the robustness of tracking and extend the duration of single paramecium tracking. The 2 [ms] computational time indicates that we developed an algorithm and a computer aided system which achieves nonrigid single micro-organisms tracking in real-time as they deform, move and collide with others under optical microscope.
机译:在本文中,为了实现鲁棒跟踪,我们提出了一种粒子过滤器(PF)模型来跟踪单个草履虫。所提出的PF模型由系统动力学模型和观测模型组成。关于我们的跟踪对象的信息由状态向量描述,并且假定系统状态根据系统动力学模型进行演化。我们之前的工作中提出的基于平行区域的带有位移校正的水平集方法(PR-LSM-DC)现在可以用作PF模型的度量。通过根据观察结果估计运动对象的状态来实现跟踪。实验表明,使用PF模型进行运动预测,可以提高跟踪的鲁棒性并延长单个草履虫跟踪的持续时间。 2 [ms]的计算时间表明,我们开发了一种算法和计算机辅助系统,可以在光学显微镜下实时监测非刚性单个微生物的变形,移动和碰撞情况。

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