Machine learning-based bee recognition and tracking for advancing insect behavior research

IF 10.7 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Artificial Intelligence Review Pub Date : 2024-08-12 DOI:10.1007/s10462-024-10879-z
Erez Rozenbaum, Tammar Shrot, Hadassa Daltrophe, Yehuda Kunya, Sharoni Shafir
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Abstract

The study of insect behavior, particularly that of honey bees, has a broad scope and significance. Tracking bee flying patterns grants much helpful information about bee behavior. However, tracking a small yet fast-moving object, such as a bee, is difficult. Hence, we present artificial intelligence, machine-learning-based bee recognition, and tracking systems to assist the researcher in studying the bee’s behavior. To develop a machine learning system, a labeled database is required for model training. To address this, we implemented an automated system for analyzing and labeling bee videos. This labeled database served as the foundation for two distinct bee-tracking solutions. The first solution (planar bee tracking system) tracked individual bees in closed mazes using a neural network. The second solution (spatial bee tracking system) utilized a neural network and a tracking algorithm to identify and track flying bees in open environments. Both systems tackle the challenge of tracking small-bodied creatures with rapid and diverse movement patterns. Although we applied these systems to entomological cognition research in this paper, their relevance extends to general insect research and developing tracking solutions for small organisms with swift movements. We present the complete architecture and detailed methodologies to facilitate the utilization of these models in future research endeavors. Our approach is a simple and inexpensive method that contributes to the growing number of image-analysis tools used for tracking animal movement, with future potential applications under less sterile field conditions. The tools presented in this paper could assist the study of movement ecology, specifically in insects, by providing accurate movement specifications. Following the movement of pollinators or natural enemies, for example, greatly contributes to the study of pollination or biological control, respectively, in natural and agro-ecosystems.

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基于机器学习的蜜蜂识别和跟踪技术,促进昆虫行为研究
昆虫行为研究,尤其是蜜蜂行为研究,范围广泛,意义重大。跟踪蜜蜂的飞行模式可以获得许多有关蜜蜂行为的有用信息。然而,跟踪蜜蜂这样体积小但移动速度快的物体却很困难。因此,我们提出了基于人工智能、机器学习的蜜蜂识别和跟踪系统,以帮助研究人员研究蜜蜂的行为。要开发机器学习系统,需要一个标注数据库来进行模型训练。为此,我们实施了一套自动系统,用于分析和标注蜜蜂视频。该标记数据库是两种不同蜜蜂跟踪解决方案的基础。第一种方案(平面蜜蜂跟踪系统)使用神经网络在封闭迷宫中跟踪单个蜜蜂。第二种解决方案(空间蜜蜂跟踪系统)利用神经网络和跟踪算法来识别和跟踪开放环境中的飞行蜜蜂。这两个系统都解决了追踪具有快速和多样化运动模式的小型生物的难题。虽然我们在本文中将这些系统应用于昆虫学认知研究,但它们的相关性可扩展到一般昆虫研究以及为具有快速运动的小型生物开发追踪解决方案。我们介绍了完整的结构和详细的方法,以方便在未来的研究工作中使用这些模型。我们的方法是一种简单而廉价的方法,为越来越多的用于追踪动物运动的图像分析工具做出了贡献,未来有可能应用于无菌条件较差的野外环境。本文介绍的工具可以通过提供准确的运动规格来帮助研究运动生态学,特别是昆虫的运动生态学。例如,跟踪传粉昆虫或天敌的移动,可极大地促进对自然和农业生态系统中传粉或生物控制的研究。
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来源期刊
Artificial Intelligence Review
Artificial Intelligence Review 工程技术-计算机:人工智能
CiteScore
22.00
自引率
3.30%
发文量
194
审稿时长
5.3 months
期刊介绍: Artificial Intelligence Review, a fully open access journal, publishes cutting-edge research in artificial intelligence and cognitive science. It features critical evaluations of applications, techniques, and algorithms, providing a platform for both researchers and application developers. The journal includes refereed survey and tutorial articles, along with reviews and commentary on significant developments in the field.
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