Towards Automatic Honey Bee Flower-Patch Assays with Paint Marking Re-Identification

Meyers, Luke, Cordero, Josué Rodríguez, Bravo, Carlos Corrada, Noel, Fanfan, Agosto-Rivera, José, Giray, Tugrul, Mégret, Rémi
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Abstract

In this paper, we show that paint markings are a feasible approach to automatize the analysis of behavioral assays involving honey bees in the field where marking has to be as lightweight as possible. We contribute a novel dataset for bees re-identification with paint-markings with 4392 images and 27 identities. Contrastive learning with a ResNet backbone and triplet loss led to identity representation features with almost perfect recognition in closed setting where identities are known in advance. Diverse experiments evaluate the capability to generalize to separate IDs, and show the impact of using different body parts for identification, such as using the unmarked abdomen only. In addition, we show the potential to fully automate the visit detection and provide preliminary results of compute time for future real-time deployment in the field on an edge device.
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用油漆标记重新识别的蜜蜂花斑自动测定方法的研究
在本文中,我们表明,油漆标记是一种可行的方法,以自动化的行为分析涉及蜜蜂的领域,其中标记必须尽可能轻。我们贡献了一个新的数据集,用4392个图像和27个身份的油漆标记重新识别蜜蜂。使用ResNet主干和三元丢失的对比学习导致在预先知道身份的封闭环境中几乎完全识别身份表示特征。不同的实验评估了推广到单独id的能力,并展示了使用不同身体部位进行识别的影响,例如仅使用未标记的腹部。此外,我们还展示了完全自动化访问检测的潜力,并为未来在边缘设备上的现场实时部署提供了计算时间的初步结果。
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