Bhuiyan Tanvir, Carney Ryan M, Chellappan Sriram
Computer Science and Engineering, University of South Florida, Tampa, FL 33620, USA.
Integrative Biology, University of South Florida, Tampa, FL 33620, USA.
iScience. 2022 Aug 13;25(9):104924. doi: 10.1016/j.isci.2022.104924. eCollection 2022 Sep 16.
Many groups of stingless insects have independently evolved mimicry of bees to fool would-be predators. To investigate this mimicry, we trained artificial intelligence (AI) algorithms-specifically, computer vision-to classify citizen scientist images of bees, bumble bees, and diverse bee mimics. For detecting bees and bumble bees, our models achieved accuracies of and , respectively. As a proxy for a natural predator, our models were poorest in detecting bee mimics that exhibit both aggressive and defensive mimicry. Using the explainable AI method of class activation maps, we validated that our models learn from appropriate components within the image, which in turn provided anatomical insights. Our t-SNE plot yielded perfect within-group clustering, as well as between-group clustering that grossly replicated the phylogeny. Ultimately, the transdisciplinary approaches herein can enhance global citizen science efforts as well as investigations of mimicry and morphology of bees and other insects.
许多无刺昆虫群体都独立进化出了模仿蜜蜂的能力,以欺骗潜在的捕食者。为了研究这种拟态现象,我们训练了人工智能(AI)算法,具体来说是计算机视觉,对公民科学家提供的蜜蜂、大黄蜂和各种蜜蜂模仿者的图像进行分类。对于检测蜜蜂和大黄蜂,我们的模型准确率分别达到了 和 。作为自然捕食者的替代,我们的模型在检测同时表现出攻击性和防御性拟态的蜜蜂模仿者方面表现最差。使用类激活映射这种可解释人工智能方法,我们验证了我们的模型是从图像中的适当组件进行学习的,这反过来又提供了解剖学见解。我们的t-SNE图产生了完美的组内聚类,以及大致复制系统发育的组间聚类。最终,本文中的跨学科方法可以加强全球公民科学工作,以及对蜜蜂和其他昆虫的拟态和形态学的研究。