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Flying Insect Classification with Inexpensive Sensors

机译:廉价传感器实现飞行昆虫分类

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The ability to use inexpensive, noninvasive sensors to accurately classify flying insects would have significant implications for entomological research, and allow for the development of many useful applications in vector control for both medical and agricultural entomology. Given this, the last sixty years have seen many research efforts on this task. To date, however, none of this research has had a lasting impact. In this work, we explain this lack of progress. We attribute the stagnation on this problem to several factors, including the use of acoustic sensing devices, the overreliance on the single feature of wingbeat frequency, and the attempts to learn complex models with relatively little data. In contrast, we show that pseudo-acoustic optical sensors can produce vastly superior data, that we can exploit additional features, both intrinsic and extrinsic to the insect's flight behavior, and that a Bayesian classification approach allows us to efficiently learn classification models that are very robust to overfitting. We demonstrate our findings with large scale experiments, as measured both by the number of insects and the number of species considered.
机译:使用廉价的无创传感器对飞行昆虫进行准确分类的能力将对昆虫学研究产生重大影响,并允许在医学和农业昆虫学的媒介控制中开发许多有用的应用程序。鉴于此,在过去的60年中,已经在此任务上进行了许多研究。但是,迄今为止,这些研究都没有产生持久的影响。在这项工作中,我们解释了这种不足。我们将此问题的停滞归因于几个因素,包括使用声学传感设备,过分依赖翼拍频率的单个特征以及尝试以相对较少的数据学习复杂模型的尝试。相比之下,我们表明伪声光学传感器可以产生非常出色的数据,可以利用昆虫飞行行为的内在和外在附加特征,并且贝叶斯分类方法使我们能够有效地学习非常昆虫的分类模型。过度拟合的能力强。我们通过大规模实验证明了我们的发现,该实验通过昆虫数量和所考虑物种的数量来衡量。

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