美国华盛顿州大黄蜂入侵研究

Ye Qi
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引用次数: 0

摘要

近年来,一种新的入侵物种——柑橘(Vespa Mandarinia)已经成为美国华盛顿州及其附近地区的一个问题。在这项研究中,我们使用核密度估计、自然语言处理和卷积神经网络(CNN)来评估民用报告的地理和文本数据,以及在没有专业人员在场的情况下,我们如何检测新的入侵案例。研究结果表明,我们可以利用现有数据进行预测,但可能存在偏差。然而,基于CNN的图像分类技术可能会激励更多的数据输入,从而导致更好的模拟和估计。我们的研究方法也表明,这些技术可能对其他入侵物种有很大的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Vespa Mandarinia's Invasion in the State of Washington
In recent years, a new invasive species, Vespa Mandarinia has become a problem for the State of Washington, the U.S.A. and regions near it. In this research, we used Kernel Density Estimation, Natural Language Processing and Convolution Neural Network(CNN) to evaluate the geographical and textual data of civilian reports and in what way we can detect new invasion cases without a professional's presence. The results of the research show that we could perform prediction with data available but it could be biased. However, image classification techniques based on CNN could be an incentive for more data input, therefore lead to a better simulation and estimation. The method of our research also indicates that these techniques may have great applicability to other invasive species.
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