论文标题

连续蜂巢监控应用中的机器学习和计算机视觉技术:一项调查

Machine Learning and Computer Vision Techniques in Continuous Beehive Monitoring Applications: A survey

论文作者

Bilik, Simon, Zemcik, Tomas, Kratochvila, Lukas, Ricanek, Dominik, Richter, Milos, Zambanini, Sebastian, Horak, Karel

论文摘要

机器学习和计算机视觉技术的广泛使用和可用性允许在许多域中开发相对复杂的监视系统。除了传统的工业领域外,新应用也出现在生物学和农业中,我们可以谈论发现感染,寄生虫和杂草的检测,还可以谈论自动监测和预警系统。这也与引入易于访问的硬件和开发套件(例如Arduino或Raspberrypi家族)有关。在本文中,我们调查了50篇现有论文,重点介绍了使用计算机视觉技术的自动蜂巢监测方法的方法,尤其是在花粉和Varroa mite检测以及蜜蜂交通监控方面。此类系统也可以用于监测蜜蜂菌落和检查其健康状态,在这种情况至关重要之前,可以确定潜在的危险状态,或者更好地计划定期的蜜蜂殖民地检查,从而节省大量费用。后来,我们还包括对该应用领域的研究趋势的分析,并概述了新探索的可能方向。我们的论文还针对兽医和迁移术专业人员和专家,他们可能不熟悉机器学习以向其介绍其可能性,因此,每个应用程序都通过与基本方法相关的简短理论介绍和动机来打开。我们希望本文能够激发其他科学家在蜂巢监测中使用机器学习技术进行其他应用。

Wide use and availability of the machine learning and computer vision techniques allows development of relatively complex monitoring systems in many domains. Besides the traditional industrial domain, new application appears also in biology and agriculture, where we could speak about the detection of infections, parasites and weeds, but also about automated monitoring and early warning systems. This is also connected with the introduction of the easily accessible hardware and development kits such as Arduino, or RaspberryPi family. In this paper, we survey 50 existing papers focusing on the methods of automated beehive monitoring methods using the computer vision techniques, particularly on the pollen and Varroa mite detection together with the bee traffic monitoring. Such systems could also be used for the monitoring of the honeybee colonies and for the inspection of their health state, which could identify potentially dangerous states before the situation is critical, or to better plan periodic bee colony inspections and therefore save significant costs. Later, we also include analysis of the research trends in this application field and we outline the possible direction of the new explorations. Our paper is aimed also at veterinary and apidology professionals and experts, who might not be familiar with machine learning to introduce them to its possibilities, therefore each family of applications is opened by a brief theoretical introduction and motivation related to its base method. We hope that this paper will inspire other scientists to use machine learning techniques for other applications in beehive monitoring.

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