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Application of Deep-Learning Methods to Bird Detection Using Unmanned Aerial Vehicle Imagery

机译:深度学习方法在无人机图像鸟类探测中的应用

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摘要

Wild birds are monitored with the important objectives of identifying their habitats and estimating the size of their populations. Especially in the case of migratory bird, they are significantly recorded during specific periods of time to forecast any possible spread of animal disease such as avian influenza. This study led to the construction of deep-learning-based object-detection models with the aid of aerial photographs collected by an unmanned aerial vehicle (UAV). The dataset containing the aerial photographs includes diverse images of birds in various bird habitats and in the vicinity of lakes and on farmland. In addition, aerial images of bird decoys are captured to achieve various bird patterns and more accurate bird information. Bird detection models such as Faster Region-based Convolutional Neural Network (R-CNN), Region-based Fully Convolutional Network (R-FCN), Single Shot MultiBox Detector (SSD), Retinanet, and You Only Look Once (YOLO) were created and the performance of all models was estimated by comparing their computing speed and average precision. The test results show Faster R-CNN to be the most accurate and YOLO to be the fastest among the models. The combined results demonstrate that the use of deep-learning-based detection methods in combination with UAV aerial imagery is fairly suitable for bird detection in various environments.
机译:监视野生鸟类的主要目标是确定其栖息地并估算其种群数量。特别是在候鸟的情况下,在特定时间段会对其进行大量记录,以预测动物疾病(如禽流感)的任何可能传播。这项研究借助无人飞行器(UAV)收集的航拍照片,构建了基于深度学习的对象检测模型。包含航空照片的数据集包括各种鸟类栖息地以及湖泊附近和农田中鸟类的各种图像。另外,捕获鸟类诱饵的航空图像以实现各种鸟类模式和更准确的鸟类信息。创建了鸟类检测模型,例如基于区域的更快卷积神经网络(R-CNN),基于区域的完全卷积网络(R-FCN),单发多盒检测器(SSD),视网膜网络和一次只看一次(YOLO)通过比较它们的计算速度和平均精度来评估所有模型的性能。测试结果表明,在这些模型中,Faster R-CNN最为准确,YOLO最快。组合结果表明,将基于深度学习的检测方法与无人机航拍图像结合使用,非常适合在各种环境中进行鸟类检测。

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