整体视角下斑马鱼行为轨迹的在线三维重建

Zewei Wu, Wei Ke, Cui Wang, W. Zhang, Z. Xiong
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引用次数: 1

摘要

记录斑马鱼的活动是生物学研究的一项基本任务,旨在从多视点视频中准确跟踪个体并恢复其真实世界的运动轨迹。在本文中,我们提出了一种基于整体视角的新颖在线跟踪解决方案,该解决方案利用了视图中外观和位置的相关性。它首先逐帧重建目标的三维坐标,然后在三维空间中直接跟踪目标,而不是在二维图像平面上。然而,实现这样的解决方案并不简单,它需要在遮挡和视差失真的情况下跨视图关联目标和相邻帧。为了解决这一问题,我们提出了基于视图不变特征表示和基于卡尔曼滤波的三维状态估计,并结合两者的优点来生成鲁棒的三维轨迹。在公共数据集上的大量实验验证了该方法的效率和有效性。
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Online 3D Reconstruction of Zebrafish Behavioral Trajectories within A Holistic Perspective
Recording activities of zebrafish is a fundamental task in biological research that aims to accurately track individuals and recover their real-world movement trajectories from multiple viewpoint videos. In this paper, we propose a novel online tracking solution based on a holistic perspective that leverages the correlation of appearance and location across views. It first reconstructs the 3D coordinates of targets frame by frame and then tracks them directly in 3D space instead of a 2D image plane. However, it is not trivial to implement such a solution which requires the association of targets across views and neighboring frames under occlusion and parallax distortion. To cope with that, we propose the view-invariant feature representation and the Kalman filter-based 3D state estimation, and combine the advantages of both to generate robust 3D trajectories. Extensive experiments on public datasets verify the efficiency and effectiveness of the approach.
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