论文标题
使用计算机视觉技术自动从被困标本中对蚊子向量的监视
Automating the Surveillance of Mosquito Vectors from Trapped Specimens Using Computer Vision Techniques
论文作者
论文摘要
在所有动物中,蚊子是全世界大多数死亡的原因。有趣的是,并非所有类型的蚊子都会传播疾病,而是单独使用的几个人足够胜任。在任何疾病爆发的情况下,重要的第一步是监视向量(即那些能够传播疾病的蚊子)。为此,公共卫生工作者在感兴趣的领域设置了几个蚊子陷阱。数以百计的蚊子会被困。自然,在这数百名中,分类学家必须仅确定向量来评估其密度。当今的此过程是手动的,需要复杂的专业/培训,并且基于对显微镜下每个捕获标本的目视检查。这是漫长,压力和自我限制的。本文为这个问题提供了一种创新的解决方案。我们的技术假设存在嵌入式相机(类似于智能手机中的摄像头),可以拍摄被困蚊子的照片。然后,我们在这里提出的技术将处理这些图像以自动对属和物种类型进行分类。我们的CNN模型基于Inpection-Resnet V2和转移学习,当对通过许多智能手机摄像机捕获的250个捕获蚊子矢量标本的25,867张图像进行培训时,在对蚊子进行分类时,总体准确性为80%。特别是,我们的模型在对伊蚊和蚊子蚊子分类中的准确性(这都是致命的媒介)是最高的。我们介绍了我们技术对本文结尾的重要经验教训和实际影响。
Among all animals, mosquitoes are responsible for the most deaths worldwide. Interestingly, not all types of mosquitoes spread diseases, but rather, a select few alone are competent enough to do so. In the case of any disease outbreak, an important first step is surveillance of vectors (i.e., those mosquitoes capable of spreading diseases). To do this today, public health workers lay several mosquito traps in the area of interest. Hundreds of mosquitoes will get trapped. Naturally, among these hundreds, taxonomists have to identify only the vectors to gauge their density. This process today is manual, requires complex expertise/ training, and is based on visual inspection of each trapped specimen under a microscope. It is long, stressful and self-limiting. This paper presents an innovative solution to this problem. Our technique assumes the presence of an embedded camera (similar to those in smart-phones) that can take pictures of trapped mosquitoes. Our techniques proposed here will then process these images to automatically classify the genus and species type. Our CNN model based on Inception-ResNet V2 and Transfer Learning yielded an overall accuracy of 80% in classifying mosquitoes when trained on 25,867 images of 250 trapped mosquito vector specimens captured via many smart-phone cameras. In particular, the accuracy of our model in classifying Aedes aegypti and Anopheles stephensi mosquitoes (both of which are deadly vectors) is amongst the highest. We present important lessons learned and practical impact of our techniques towards the end of the paper.