In recent years, the monarch butterfly's iconic migration patterns have come under threat from a number of factors, from climate change to pesticide use. To track trends in their populations, scientists as well as citizen scientists must identify individuals accurately. This is uniquely key for the study of monarch butterflies because there exist other species of butterfly, such as viceroy butterflies, that are "look-alikes" (coined by the Convention on International Trade in Endangered Species of Wild Fauna and Flora), having similar phenotypes. To tackle this problem and to aid in more efficient identification, we present MonarchNet, the first comprehensive dataset consisting of butterfly imagery for monarchs and five look-alike species. We train a baseline deep-learning classification model to serve as a tool for differentiating monarch butterflies and its various look-alikes. We seek to contribute to the study of biodiversity and butterfly ecology by providing a novel method for computational classification of these particular butterfly species. The ultimate aim is to help scientists track monarch butterfly population and migration trends in the most precise and efficient manner possible.
翻译:近年来,君主蝴蝶的标志性移徙模式受到许多因素的威胁,从气候变化到杀虫剂的使用。为了跟踪其人口趋势,科学家和公民科学家必须准确地识别个人。这是研究君主蝴蝶的独特关键,因为存在其他蝴蝶种类,如“外观相似的蝴蝶,如副皇帝蝴蝶”(由《濒危野生动植物种国际贸易公约》所结合),具有类似的类同。为了解决这一问题并帮助更有效地识别问题,我们介绍了由君主和5种类似物种的蝴蝶图像组成的第一个综合数据集“MonarchNet ” 。我们训练了一个深造基线分类模型,作为区分君主蝴蝶及其各种类类的工具。我们力求为生物多样性和蝴蝶生态的研究作出贡献,为这些特定蝴蝶物种的计算分类提供一种新颖方法。最终目的是帮助科学家以尽可能精确和高效的方式跟踪君主蝴蝶群和迁移趋势。