论文标题

基于粒子过滤器的斑马鱼的多目标跟踪

Multi-target Tracking of Zebrafish based on Particle Filter

论文作者

Cong, Heng, Sun, Mingzhu, Zhou, Duoying, Zhao, Xin

论文摘要

斑马鱼是一种出色的模型生物,已在生物实验,药物筛查和群智能领域广泛使用。近年来,有许多用于跟踪斑马鱼与行为研究有关的技术,这使其攻击了许多领域的科学家的注意。斑马鱼的多目标跟踪仍面临许多挑战。高流动性和不确定性使得难以预测其运动。相似的外观和纹理特征使得难以建立外观模型。由于频繁的阻塞,甚至很难连接轨迹。在本文中,我们使用粒子过滤器来近似运动的不确定性。首先,通过分析斑马鱼的运动特性,我们建立了一个有效的混合运动模型来预测其位置。然后,我们根据预测位置建立一个外观模型,以预测每个目标的姿势,同时通过比较预测的姿势和观察姿势的差来称量颗粒;最后,我们通过加权位置获得了单斑马鱼的最佳位置,并使用关节颗粒滤波器来处理多个斑马鱼的过程轨迹链接。

Zebrafish is an excellent model organism, which has been widely used in the fields of biological experiments, drug screening, and swarm intelligence. In recent years, there are a large number of techniques for tracking of zebrafish involved in the study of behaviors, which makes it attack much attention of scientists from many fields. Multi-target tracking of zebrafish is still facing many challenges. The high mobility and uncertainty make it difficult to predict its motion; the similar appearances and texture features make it difficult to establish an appearance model; it is even hard to link the trajectories because of the frequent occlusion. In this paper, we use particle filter to approximate the uncertainty of the motion. Firstly, by analyzing the motion characteristics of zebrafish, we establish an efficient hybrid motion model to predict its positions; then we establish an appearance model based on the predicted positions to predict the postures of every targets, meanwhile weigh the particles by comparing the difference of predicted pose and observation pose ; finally, we get the optimal position of single zebrafish through the weighted position, and use the joint particle filter to process trajectory linking of multiple zebrafish.

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