MARBEC, Univ Montpellier, CNRS, Ifremer, IRD, Montpellier, France.
ENTROPIE (IRD, Université de la Réunion, Université de la Nouvelle Calédonie, CNRS, Ifremer), Laboratoire Excellence LABEX Corail, Centre IRD Nouméa, Nouméa, New Caledonia.
Conserv Biol. 2022 Feb;36(1):e13798. doi: 10.1111/cobi.13798. Epub 2021 Aug 6.
Deep learning has become a key tool for the automated monitoring of animal populations with video surveys. However, obtaining large numbers of images to train such models is a major challenge for rare and elusive species because field video surveys provide few sightings. We designed a method that takes advantage of videos accumulated on social media for training deep-learning models to detect rare megafauna species in the field. We trained convolutional neural networks (CNNs) with social media images and tested them on images collected from field surveys. We applied our method to aerial video surveys of dugongs (Dugong dugon) in New Caledonia (southwestern Pacific). CNNs trained with 1303 social media images yielded 25% false positives and 38% false negatives when tested on independent field video surveys. Incorporating a small number of images from New Caledonia (equivalent to 12% of social media images) in the training data set resulted in a nearly 50% decrease in false negatives. Our results highlight how and the extent to which images collected on social media can offer a solid basis for training deep-learning models for rare megafauna detection and that the incorporation of a few images from the study site further boosts detection accuracy. Our method provides a new generation of deep-learning models that can be used to rapidly and accurately process field video surveys for the monitoring of rare megafauna.
深度学习已成为利用视频调查自动监测动物种群的重要工具。然而,对于稀有和难以捉摸的物种来说,获取大量的图像来训练此类模型是一个主要挑战,因为实地视频调查提供的目击次数很少。我们设计了一种利用社交媒体上积累的视频来训练深度学习模型以在野外检测稀有大型动物物种的方法。我们使用社交媒体图像训练卷积神经网络(CNN),并在实地调查收集的图像上对其进行测试。我们将该方法应用于新喀里多尼亚(太平洋西南部)的儒艮( Dugong dugon )空中视频调查。在独立的实地视频调查中,使用 1303 张社交媒体图像训练的 CNN 的假阳性率为 25%,假阴性率为 38%。将来自新喀里多尼亚的少量图像(相当于社交媒体图像的 12%)纳入训练数据集,可使假阴性率降低近 50%。我们的结果突出了从社交媒体上收集的图像可以在何种程度上为训练用于稀有大型动物检测的深度学习模型提供坚实的基础,以及纳入来自研究地点的少量图像可进一步提高检测精度。我们的方法提供了新一代的深度学习模型,可以用于快速准确地处理实地视频调查,以监测稀有大型动物。