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基于自动图像识别的可运行的机器人花粉监测网络。

An operational robotic pollen monitoring network based on automatic image recognition.

作者信息

Oteros Jose, Weber Alisa, Kutzora Suzanne, Rojo Jesús, Heinze Stefanie, Herr Caroline, Gebauer Robert, Schmidt-Weber Carsten B, Buters Jeroen T M

机构信息

Center of Allergy & Environment (ZAUM), Member of the German Center for Lung Research (DZL), Technische Universität München/Helmholtz Center, Munich, Germany; Department of Botany, Ecology and Plant Physiology, University of Córdoba, Córdoba, Spain.

Bayerisches Landesamt für Gesundheit und Lebensmittelsicherheit (LGL), Munich, Germany.

出版信息

Environ Res. 2020 Dec;191:110031. doi: 10.1016/j.envres.2020.110031. Epub 2020 Aug 16.

Abstract

There is high demand for online, real-time and high-quality pollen data. To the moment pollen monitoring has been done manually by highly specialized experts. Here we evaluate the electronic Pollen Information Network (ePIN) comprising 8 automatic BAA500 pollen monitors in Bavaria, Germany. Automatic BAA500 and manual Hirst-type pollen traps were run simultaneously at the same locations for one pollen season. Classifications by BAA500 were checked by experts in pollen identification, which is traditionally considered to be the "gold standard" for pollen monitoring. BAA500 had a multiclass accuracy of over 90%. Correct identification of any individual pollen taxa was always >85%, except for Populus (73%) and Alnus (64%). The BAA500 was more precise than the manual method, with less discrepancies between determinations by pairs of automatic pollen monitors than between pairs of humans. The BAA500 was online for 97% of the time. There was a significant correlation of 0.84 between airborne pollen concentrations from the BAA500 and Hirst-type pollen traps. Due to the lack of calibration samples it is unknown which instrument gives the true concentration. The automatic BAA500 network delivered pollen data rapidly (3 h delay with real-time), reliably and online. We consider the ability to retrospectively check the accuracy of the reported classification essential for any automatic system.

摘要

对在线、实时和高质量的花粉数据有很高的需求。目前,花粉监测一直由高度专业化的专家手动进行。在此,我们评估了由德国巴伐利亚州的8台自动BAA500花粉监测仪组成的电子花粉信息网络(ePIN)。在同一个花粉季节,自动BAA500和手动赫斯特型花粉捕集器在相同地点同时运行。BAA500的分类结果由花粉鉴定专家进行核对,传统上花粉鉴定被认为是花粉监测的“金标准”。BAA500的多类准确率超过90%。除了杨树(73%)和桤木(64%)外,任何单个花粉类群的正确识别率始终>85%。BAA500比手动方法更精确,自动花粉监测仪两两之间的测定差异比人工两两之间的差异更小。BAA500有97%的时间处于在线状态。BAA500的空气中花粉浓度与赫斯特型花粉捕集器之间存在显著的0.84相关性。由于缺乏校准样本,尚不清楚哪种仪器给出的是真实浓度。自动BAA500网络能够快速(实时延迟3小时)、可靠且在线地提供花粉数据。我们认为,对于任何自动系统来说,能够追溯检查所报告分类的准确性至关重要。

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