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Towards Automatic Classification on Flying Insects Using Inexpensive Sensors

机译:使用廉价传感器实现对飞行昆虫的自动分类

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Insects are intimately connected to human life and well being, in both positive and negative senses. While it is estimated that insects pollinate at least two-thirds of the all food consumed by humans, malaria, a disease transmitted by the female mosquito of the Anopheles genus, kills approximately one million people per year. Due to the importance of insects to humans, researchers have developed an arsenal of mechanical, chemical, biological and educational tools to help mitigate insects' harmful effects, and to enhance their beneficial effects. However, the efficiency of such tools depends on knowing the time and location of migrations/infestations/population as early as possible. Insect detection and counting is typically performed by means of traps, usually "sticky traps", which are regularly collected and manually analyzed. The main problem is that this procedure is expensive in terms of materials and human time, and creates a lag between the time the trap is placed and inspected. This lag may only be a week, but in the case of say, mosquitoes or sand flies, this can be more than half their adult life span. We are developing an inexpensive optical sensor that uses a laser beam to detect, count and ultimately classify flying insects from distance. Our objective is to use classification techniques to provide accurate real-time counts of disease vectors down to the species/sex level. This information can be used by public health workers, government and non-government organizations to plan the optimal intervention strategies in the face of limited resources. In this work, we present some preliminary results of our research, conducted with three insect species. We show that using our simple sensor we can accurately classify these species using their wing-beat frequency as feature. We further discuss how we can augment the sensor with other sources of information in order to scale our ideas to classify a larger number of species.
机译:从正面和负面的意义上讲,昆虫都与人类的生活和福祉息息相关。据估计,昆虫对人类所食用的食物至少有三分之二的授粉,而疟疾是按蚊属的女性蚊子传播的疾病,每年造成约一百万人死亡。由于昆虫对人类的重要性,研究人员开发了一系列机械,化学,生物学和教育工具,以帮助减轻昆虫的有害影响并增强其有益作用。但是,此类工具的效率取决于尽早了解迁移/侵染/人口的时间和位置。昆虫的检测和计数通常是通过定期收集并手动分析的陷阱(通常是“粘性陷阱”)来进行的。主要问题是,此过程在材料和人工上都非常昂贵,并且会在放置和检查疏水阀之间产生时间差。这种滞后可能只有一周,但就蚊子或沙蝇而言,可能会超过其成年寿命的一半。我们正在开发一种廉价的光学传感器,该传感器使用激光束从远处检测,计数并最终对飞虫进行分类。我们的目标是使用分类技术,以准确实时地统计出疾病传播的物种/性别水平。面对有限的资源,公共卫生工作者,政府和非政府组织可以使用此信息来计划最佳干预策略。在这项工作中,我们介绍了我们对三种昆虫进行的研究的一些初步结果。我们表明,使用我们的简单传感器,我们可以使用它们的拍打频率作为特征来对这些物种进行准确分类。我们将进一步讨论如何使用其他信息源来增强传感器,以扩展我们的想法以对更多种类的物种进行分类。

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