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Detection of Anolis carolinensis using drone images and a deep neural network: an effective tool for controlling invasive species

机译:使用无人机图像和深神经网络检测AnOLIS Carolinensis:一种用于控制侵入性物种的有效工具

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摘要

Invasive species greatly disrupt island ecosystems, risk assessment and the conservation of native ecosystems have therefore become pressing concerns. However, the cost of monitoring invasive species by humans is often high. In this study, we developed a system to detect an invasive lizard species, Anolis carolinensis, that threatens the native insect ecosystem of the Ogasawara Islands in Japan. Surveying these forest lizards requires specialized field observers, a challenge that prevents the government of Japan from efficient conservation and management of this ecosystem. The proposed system detects these lizards in drone images using a type of machine learning called deep neural network. Data were collected using a drone on Ani-jima in the Ogasawara Islands, and the trained network shows approximately 70% precision of detecting A. carolinensis. This study shows the combination of remote sensing and machine learning have the potential to contribute to an efficient and effective approach to conserving ecosystems.
机译:入侵物种极大地破坏了岛屿生态系统,因此,风险评估和保护本地生态系统已成为紧迫的问题。然而,人类监测入侵物种的成本往往很高。在这项研究中,我们开发了一个系统来检测入侵蜥蜴物种Anolis carolinensis,它威胁着日本小笠原群岛的原生昆虫生态系统。调查这些森林蜥蜴需要专业的实地观察人员,这一挑战阻碍了日本政府对这一生态系统的有效保护和管理。该系统使用一种称为深度神经网络的机器学习,在无人机图像中检测这些蜥蜴。数据是在小笠原群岛的Ani jima上使用无人机收集的,经过训练的网络显示,检测卡罗莱纳支原体的精度约为70%。这项研究表明,遥感和机器学习的结合有可能成为保护生态系统的有效方法。

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