Schoombie Stefan, Jeantet Lorène, Chimienti Marianna, Sutton Grace J, Pistorius Pierre A, Dufourq Emmanuel, Lowther Andrew D, Oosthuizen W Chris
Department of Statistical Sciences, Centre for Statistics in Ecology, Environment and Conservation (SEEC), University of Cape Town, Cape Town 7701, South Africa.
National Institute for Theoretical and Computational Sciences, South Africa.
R Soc Open Sci. 2024 Jun 19;11(6):240271. doi: 10.1098/rsos.240271. eCollection 2024 Jun.
Marine predators are integral to the functioning of marine ecosystems, and their consumption requirements should be integrated into ecosystem-based management policies. However, estimating prey consumption in diving marine predators requires innovative methods as predator-prey interactions are rarely observable. We developed a novel method, validated by animal-borne video, that uses tri-axial acceleration and depth data to quantify prey capture rates in chinstrap penguins (). These penguins are important consumers of Antarctic krill (), a commercially harvested crustacean central to the Southern Ocean food web. We collected a large data set ( = 41 individuals) comprising overlapping video, accelerometer and depth data from foraging penguins. Prey captures were manually identified in videos, and those observations were used in supervised training of two deep learning neural networks (convolutional neural network (CNN) and V-Net). Although the CNN and V-Net architectures and input data pipelines differed, both trained models were able to predict prey captures from new acceleration and depth data (linear regression slope of predictions against video-observed prey captures = 1.13; ≈ 0.86). Our results illustrate that deep learning algorithms offer a means to process the large quantities of data generated by contemporary bio-logging sensors to robustly estimate prey capture events in diving marine predators.
海洋捕食者对于海洋生态系统的运作至关重要,其捕食需求应纳入基于生态系统的管理政策之中。然而,由于捕食者与猎物之间的相互作用很少能被观察到,因此估算潜水海洋捕食者的猎物消耗量需要创新方法。我们开发了一种通过动物携带视频验证的新方法,该方法利用三轴加速度和深度数据来量化南极帽带企鹅的猎物捕获率。这些企鹅是南极磷虾的重要捕食者,南极磷虾是南大洋食物网核心的一种商业捕捞甲壳类动物。我们收集了一个大型数据集(n = 41 只个体),其中包括觅食企鹅的重叠视频、加速度计和深度数据。在视频中人工识别猎物捕获情况,并将这些观察结果用于两个深度学习神经网络(卷积神经网络(CNN)和 V-Net)的监督训练。尽管 CNN 和 V-Net 的架构以及输入数据管道不同,但两个经过训练的模型都能够根据新的加速度和深度数据预测猎物捕获情况(预测值与视频观察到的猎物捕获情况的线性回归斜率 = 1.13;R² ≈ 0.86)。我们的结果表明,深度学习算法提供了一种手段,可处理当代生物记录传感器生成的大量数据,以可靠地估算潜水海洋捕食者的猎物捕获事件。