利用智能手机摄像头识别蚊子种类

M. Minakshi, Pratool Bharti, S. Chellappan
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引用次数: 14

摘要

蚊子传播的疾病一直是最重要的卫生保健问题之一。在任何有兴趣的地理区域,防治感染传播的一个重要组成部分是确定该区域流行的物种类型。截至今天,大多数(如果不是全部)国家都指派了专门的人员来捕获和识别样本。不幸的是,目前鉴定蚊子实际种类的过程是一个人工过程,需要训练有素的人员在显微镜下逐个目视检查每个标本以进行鉴定。在本文中,我们提出了一个自动化这一过程的系统。具体来说,我们展示了我们进行的一项实验的结果,其中设计了学习算法来处理通过智能手机相机捕获的蚊子样本的图像,以识别实际物种。利用希尔斯堡县蚊虫和水草控制中心(位于坦帕市)收集的包括7种蚊虫在内的60幅图像的总样本量,我们提出的随机森林技术在正确识别蚊虫种类方面的总体准确率为83:3%,具有良好的精度和召回率。虽然我们提出的技术将极大地有利于最先进的物种鉴定,但我们也相信,普通公民也可以使用我们提出的系统来改善全球现有的蚊子控制计划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying mosquito species using smart-phone cameras
Mosquito borne diseases have been amongst the most important healthcare concerns since time. An important component in combating the spread of infections in any geographic region of interest has been to identify the type of species that are prevalent in that region. As of today, dedicated personnel are assigned in most (if not all nations) to trap samples and identify them. Unfortunately, the process of identifying the actual species of mosquito is currently a manual process requiring highly trained personnel to visually inspect each specimen one by one under a microscope to make the identification. In this paper, we propose a system to automate this process. Specifically, we demonstrate results of an experiment we conducted where learning algorithms were designed to process images of captured mosquito samples taken via a smart-phone camera in order to identify the actual species. Using a total sample size of 60 images that included 7 species collected by the Hillsborough County Mosquito and Aquatic Weed Control Unit (in the city of Tampa) our proposed technique using Random Forests achieved an overall accuracy of 83:3% in correctly identifying the species of mosquito with good precision and recall. While our proposed technique will greatly benefit the state-of-the-art in species identification, we also believe that common citizens can also use our proposed system to improve existing mosquito control programs across the globe.
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