论文标题
使用卫星图像和卷积神经网络进行疾病风险制图的自主蚊子栖息地检测
Autonomous Mosquito Habitat Detection Using Satellite Imagery and Convolutional Neural Networks for Disease Risk Mapping
论文作者
论文摘要
蚊子是疾病传播的媒介,每年在全球造成超过100万人死亡。大多数天然蚊子栖息地都是含有刻水的区域,在宏观规模上使用常规地面技术检测到具有挑战性的区域。实施时,当代方法,例如无人机,无人机和其他航空成像技术的成本很高,并且最准确的空间尺度最准确,而拟议的卷积神经网络(CNN)方法可以用于疾病风险映射,并在全球范围内进一步指导预防措施。通过评估自主蚊子栖息地检测技术的性能,可以以具有成本效益的方式预防蚊子传播疾病的传播。这种方法旨在确定蚊子栖息地在广泛地区的时空分布,这些蚊子栖息地在广泛的地区很难通过基于地面技术进行调查,通过在卫星图像上使用计算机愿景来进行概念证明。该研究提出了一种评估和3种不同CNN模型的结果,以确定它们预测大规模蚊子栖息地的准确性。对于这种方法,构建了一个包含各种地理特征的数据集。较大的土地覆盖变量(例如池塘/湖泊,入口和河流)被用来对蚊子栖息地进行分类,而省略地点则在更高的规模上被省略了。使用数据集,对多个CNN网络进行了训练和评估,以确保栖息地预测的准确性。与大多数航空成像技术不同,利用可用卫星图像的基于CNN的方法具有成本效益和可扩展性。测试表明,Yolov4在鉴定大型蚊子栖息地的蚊子栖息地检测中获得了更高的准确性。
Mosquitoes are known vectors for disease transmission that cause over one million deaths globally each year. The majority of natural mosquito habitats are areas containing standing water that are challenging to detect using conventional ground-based technology on a macro scale. Contemporary approaches, such as drones, UAVs, and other aerial imaging technology are costly when implemented and are only most accurate on a finer spatial scale whereas the proposed convolutional neural network(CNN) approach can be applied for disease risk mapping and further guide preventative efforts on a more global scale. By assessing the performance of autonomous mosquito habitat detection technology, the transmission of mosquito-borne diseases can be prevented in a cost-effective manner. This approach aims to identify the spatiotemporal distribution of mosquito habitats in extensive areas that are difficult to survey using ground-based technology by employing computer vision on satellite imagery for proof of concept. The research presents an evaluation and the results of 3 different CNN models to determine their accuracy of predicting large-scale mosquito habitats. For this approach, a dataset was constructed containing a variety of geographical features. Larger land cover variables such as ponds/lakes, inlets, and rivers were utilized to classify mosquito habitats while minute sites were omitted for higher accuracy on a larger scale. Using the dataset, multiple CNN networks were trained and evaluated for accuracy of habitat prediction. Utilizing a CNN-based approach on readily available satellite imagery is cost-effective and scalable, unlike most aerial imaging technology. Testing revealed that YOLOv4 obtained greater accuracy in mosquito habitat detection for identifying large-scale mosquito habitats.