类不平衡激光雷达野外测量中昆虫的检测

Trevor C. Vannoy, Trey P. Scofield, Joseph A. Shaw, Riley D. Logan, Bradley M. Whitaker, Elizabeth M. Rehbein
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引用次数: 4

摘要

近年来,基于激光雷达的遥感技术在昆虫学研究中得到了广泛的应用,因为它能够对昆虫的自然栖息地进行非侵入性的感知。然而,之前将昆虫学激光雷达和机器学习结合起来进行昆虫分类任务的研究都是在受控的实验室条件下进行的。在本研究中,我们比较了几种机器学习算法在类不平衡为7667:1的野外数据中检测昆虫的能力。使用单隐层神经网络,我们检测到61.19%的昆虫,能够丢弃98.25%的测试数据。与人工检测昆虫的现场研究相比,我们的研究结果是朝着现场实验中昆虫自动检测和分类迈出的重要一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Insects in Class-Imbalanced Lidar Field Measurements
In recent years, lidar-based remote sensing has gained popularity in entomological studies due to its ability to non-invasively sense insects in their natural habitat. However, previous studies that combined entomological lidar and machine learning for insect classification tasks have all been performed under controlled laboratory conditions. In this study, we compared several machine learning algorithms' ability to detect insects in field data with a high class imbalance of 7667:1. Using a single-hidden-layer neural network, we detected 61.19% of the insects, and were able to discard 98.25% of the testing data. Compared to state-of-the-art field studies where researchers manually detect insects, our results are a significant step towards automated insect detection and classification in field experiments.
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