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Spotting Insects from Satellites: Modeling the Presence of Culicoides Imicola Through Deep CNNs

机译:来自卫星的昆虫:通过深CNNS模拟核苷酸Imicola的存在

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Nowadays, Vector-Borne Diseases (VBDs) raise a severe threat for public health, accounting for a considerable amount of human illnesses. Recently, several surveillance plans have been put in place for limiting the spread of such diseases, typically involving on-field measurements. Such a systematic and effective plan still misses, due to the high costs and efforts required for implementing it. Ideally, any attempt in this field should consider the triangle vectors-host-pathogen, which is strictly linked to the environmental and climatic conditions. In this paper, we exploit satellite imagery from Sentinel-2 mission, as we believe they encode the environmental factors responsible for the vector's spread. Our analysis - conducted in a data-driver fashion - couples spectral images with ground-truth information on the abundance of Culicoides imicola. In this respect, we frame our task as a binary classification problem, underpinning Convolutional Neural Networks (CNNs) as being able to learn useful representation from multi-band images. Additionally, we provide a multi-instance variant, aimed at extracting temporal patterns from a short sequence of spectral images. Experiments show promising results, providing the foundations for novel supportive tools, which could depict where surveillance and prevention measures could be prioritized.
机译:如今,向量传染疾病(VBDS)对公共卫生的严重威胁,占了相当数量的人类疾病。最近,已经提出了几种监测计划,以限制这种疾病的传播,通常涉及现场测量。由于实施它所需的高成本和努力,这种系统和有效的计划仍在错过。理想情况下,该领域的任何尝试都应考虑三角形载体 - 宿主病原体,这与环境和气候条件严格相关。在本文中,我们从Sentinel-2任务中利用卫星图像,因为我们认为他们编码负责载体传播的环境因素。我们的分析 - 以数据司机时尚进行的 - 耦合光谱图像,具有关于核苷酸丰度的地面真实信息。在这方面,我们将任务框架作为二进制分类问题,支持卷积神经网络(CNNS)作为能够从多频带图像学习有用的表示。另外,我们提供多实例变体,旨在从短序列的光谱图像中提取时间模式。实验表明了有希望的结果,为新颖的支持工具提供了基础,这可能描绘了可以优先考虑监测和预防措施的地方。

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