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Tracking All Members of a Honey Bee Colony Over Their Lifetime Using Learned Models of Correspondence

机译:使用学习的对应模型跟踪蜜蜂殖民地的所有成员的一生

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Computational approaches to the analysis of collective behavior in social insects increasingly rely on motion paths as an intermediate data layer from which one can infer individual behaviors or social interactions. Honey bees are a popular model for learning and memory. Previous experience has been shown to affect and modulate future social interactions. So far, no lifetime history observations have been reported for all bees of a colony. In a previous work we introduced a recording setup customized to track up to 4000 marked bees over several weeks. Due to detection and decoding errors of the bee markers, linking the correct correspondences through time is non-trivial. In this contribution we present an in-depth description of the underlying multi-step algorithm which produces motion paths, and also improves the marker decoding accuracy significantly. The proposed solution employs two classifiers to predict the correspondence of two consecutive detections in the first step, and two tracklets in the second. We automatically tracked ~2000 marked honey bees over 10 weeks with inexpensive recording hardware using markers without any error correction bits. We found that the proposed two-step tracking reduced incorrect ID decodings from initially ~13 % to around 2 % post-tracking. Alongside this paper, we publish the first trajectory dataset for all bees in a colony, extracted from ~3 million images covering three days. We invite researchers to join the collective scientific effort to investigate this intriguing animal system. All components of our system are open-source.
机译:用于分析社会昆虫集体行为的计算方法越来越依赖于运动路径作为中间数据层,从中可以推断出个体行为或社会互动。蜜蜂是一种流行的学习和记忆模型。以往的经验已经显示出会影响和调节未来的社交互动。到目前为止,还没有关于一个殖民地的所有蜜蜂的一生历史观察报告。在以前的工作中,我们引入了一种录制设置,该录制设置经过自定义,可以在几周内跟踪多达4000只带标记的蜜蜂。由于蜜蜂标记的检测和解码错误,通过时间链接正确的对应关系并非易事。在这一贡献中,我们对底层多步算法进行了深入的描述,该算法产生了运动路径,并且还大大提高了标记解码的准确性。所提出的解决方案采用两个分类器来预测第一步中两个连续检测的对应关系,并在第二步中预测两个小轨迹的对应关系。我们使用廉价的记录硬件,使用标记器,在没有任何错误校正位的情况下,在10周内自动跟踪了大约2000只标记为蜜蜂的蜜蜂。我们发现建议的两步跟踪将错误的ID解码从最初的〜13%减少到跟踪后的约2%。除了本文,我们还发布了殖民地所有蜜蜂的第一个轨迹数据集,该数据集是从三天的约300万张图像中提取的。我们邀请研究人员加入集体科学研究,以研究这个有趣的动物系统。我们系统的所有组件都是开源的。

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