基于卷积神经网络序列模型的声信号登革热矢量监测

Ahmad Hasham, Ayesha Hakim, J. Jabeen, Samra Naseem
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引用次数: 0

摘要

登革热是通过受感染的埃及伊蚊叮咬传播的最危险的传染性病毒疾病之一。减少登革热传播的一种方法是通过持续监测提高社区对蚊子栖息地的认识。埃及伊蚊的传统监测技术困难且耗时,并可能导致严重的健康风险。本文提出了一种利用埃及伊蚊翅拍产生的声信号,利用卷积神经网络序列模型进行登革热媒介监测的可能方法。给出mel频谱作为序列模型的输入特征,显著提高了分类性能,准确率高达93%。该系统通过一个专门设计的移动应用程序生成通知,提醒该地区已发现的登革热病媒。对登革热病媒进行持续监测,及早采取预防措施,有效控制和预防。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dengue Vector Surveillance using Acoustic Signals through Sequential Model of Convolutional Neural Networks
Dengue fever is among the most dangerous infectious viral diseases transmitted through the bite of infected Aedes Aegypti mosquitoes. One way to decline the spread of dengue is by raising awareness to the community about mosquito habitats through continuous surveillance. The traditional surveillance techniques of Aedes Aegypti are difficult, time taking, and can lead to severe health risks. This paper presents a possible way of dengue vector surveillance through acoustic signals generated by wingbeat of Aedes Aegypti using the sequential model of convolutional neural network. Mel-frequency spectrum is given as an input feature to the sequential model that significantly improves classification performance up to 93% accuracy. The system generates notification through a specially designed mobile application to alert detected dengue vectors in the region. It is helpful in continuous monitoring of dengue vectors to take early precautionary measures for effective control and prevention.
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