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Parallel Fish School Tracking Based on Multiple Appearance Feature Detection

机译:基于多种外观特征检测的平行鱼学校跟踪

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摘要

A parallel fish school tracking based on multiple-feature fish detection has been proposed in this paper to obtain accurate movement trajectories of a large number of zebrafish. Zebrafish are widely adapted in many fields as an excellent model organism. Due to the non-rigid body, similar appearance, rapid transition, and frequent occlusions, vision-based behavioral monitoring is still a challenge. A multiple appearance feature based fish detection scheme was developed by examining the fish head and center of the fish body based on shape index features. The proposed fish detection has the advantage of locating individual fishes from occlusions and estimating their motion states, which could ensure the stability of tracking multiple fishes. Moreover, a parallel tracking scheme was developed based on the SORT framework by fusing multiple features of individual fish and motion states. The proposed method was evaluated in seven video clips taken under different conditions. These videos contained various scales of fishes, different arena sizes, different frame rates, and various image resolutions. The maximal number of tracking targets reached 100 individuals. The correct tracking ratio was 98.60% to 99.86%, and the correct identification ratio ranged from 97.73% to 100%. The experimental results demonstrate that the proposed method is superior to advanced deep learning-based methods. Nevertheless, this method has real-time tracking ability, which can acquire online trajectory data without high-cost hardware configuration.
机译:本文提出了一种基于多型鱼类检测的平行鱼学校跟踪,以获得大量斑马鱼的精确运动轨迹。斑马鱼广泛适应许多领域,作为一个优秀的模型生物。由于非刚性体,类似的外观,快速过渡和频繁的闭塞,基于视觉的行为监测仍然是一个挑战。通过基于形状指数特征检查鱼体的鱼头和中心,开发了一种多种外观特征的鱼类检测方案。所提出的鱼类检测具有从闭塞定位各个鱼类并估算其动作状态的优势,这可以确保跟踪多种鱼类的稳定性。此外,通过融合各个鱼类和运动状态的多个特征,基于排序框架开发了并行跟踪方案。在不同条件下采取的七个视频剪辑中评估所提出的方法。这些视频包含各种鱼类,不同的舞台尺寸,不同的帧速率和各种图像分辨率。跟踪目标的最大数量达到了100个个人。正确的跟踪率为98.60%至99.86%,正确的识别比率范围为97.73%至100%。实验结果表明,该方法优于先进的深度学习的方法。尽管如此,该方法具有实时跟踪能力,可以在没有高成本硬件配置的情况下获取在线轨迹数据。

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