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首页> 外文期刊>Latin America Transactions, IEEE (Revista IEEE America Latina) >A Solution for Counting Aedes aegypti and Aedes albopictus Eggs in Paddles from Ovitraps Using Deep Learning
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A Solution for Counting Aedes aegypti and Aedes albopictus Eggs in Paddles from Ovitraps Using Deep Learning

机译:使用深度学习,将Aedes Aegypti和Aedes Albopictus鸡蛋中的划线划分为桨

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摘要

In 2018, the Epidemiological Record 36 of the World Health Organization (WHO) indicates that around 390 million people get infected from Arboviroses or mosquito-borne diseases. Among the transmission vectors of these diseases, the Aedes aegypti and Aedes albopictus are responsible for a considerable parcel of the infections since they can transmit a broad range of infections (e.g., dengue, yellow fever, and chikungunya). To reduce the number of infections and deaths caused by these mosquitoes, monitor and control the population of these insects is a key factor. In this sense, ovitraps can be employed to monitor the population of Aedes mosquitoes. Ovitrap is a dark container filled with water where a porous wooden paddle is inserted to serve as an oviposition substrate. These devices are installed in monitored areas and, periodically technicians collect them to count the number of eggs deposited in the paddles manually. Because the manual egg counting task can be time-consuming and susceptible to human errors, in this work we present a solution that uses deep learning algorithms to automate the counting process. Moreover, to further reduce the human effort in the counting process, hardware that automatically acquires the images of the wooden paddles is also presented. Experiments comparing the proposed solution, the manual counting method, and two other solutions, namely ICount and EggCounter, are performed. The results achieved indicate that the proposed method achieved a superior result than the two other methods. Moreover, the application of the Wilcoxon test with a confidence interval of 95% indicates that the solution presented can be as accurate as of the manual counting method which is currently adopted.
机译:2018年,世界卫生组织(世卫组织)的流行病学记录36表明约3.9亿人受到武术或蚊虫疾病的感染。在这些疾病的传输载体中,AEDES AEGYPTI和AEDES ALPOPICTUS负责大量的感染,因为它们可以传递广泛的感染(例如,登革热,黄热病和Chikungunya)。为了减少这些蚊子引起的感染和死亡的数量,监测和控制这些昆虫的人口是关键因素。从这个意义上讲,可以采用ovitraps监测艾德斯蚊子的人口。 ovitrap是一个填充有水的黑暗容器,其中插入多孔木质桨叶用作排卵基板。这些设备安装在受监控区域,并且定期技术人员收集它们以指定手动沉积在桨中的卵数。由于手动蛋计数任务可能是耗时并且容易受到人类错误的影响,因此在这项工作中,我们提出了一种使用深度学习算法来自动化计数过程的解决方案。此外,为了进一步降低计数过程中的人力努力,还呈现了自动获取木制桨叶图像的硬件。进行了比较所提出的解决方案,手动计数方法和另外两种解决方案,即iCound和EggCounter的实验。所达到的结果表明,所提出的方法比另外两种方法实现了优异的结果。此外,Wilcoxon试验的置信区间为95%的施用表明,呈现的解决方案可以是目前采用的手动计数方法的准确性。

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