Faculty of Information Technology, Monash University, Melbourne, Australia.
Department of Physiology, Monash University, Melbourne, Australia.
PLoS One. 2021 Feb 11;16(2):e0239504. doi: 10.1371/journal.pone.0239504. eCollection 2021.
Monitoring animals in their natural habitat is essential for advancement of animal behavioural studies, especially in pollination studies. Non-invasive techniques are preferred for these purposes as they reduce opportunities for research apparatus to interfere with behaviour. One potentially valuable approach is image-based tracking. However, the complexity of tracking unmarked wild animals using video is challenging in uncontrolled outdoor environments. Out-of-the-box algorithms currently present several problems in this context that can compromise accuracy, especially in cases of occlusion in a 3D environment. To address the issue, we present a novel hybrid detection and tracking algorithm to monitor unmarked insects outdoors. Our software can detect an insect, identify when a tracked insect becomes occluded from view and when it re-emerges, determine when an insect exits the camera field of view, and our software assembles a series of insect locations into a coherent trajectory. The insect detecting component of the software uses background subtraction and deep learning-based detection together to accurately and efficiently locate the insect among a cluster of wildflowers. We applied our method to track honeybees foraging outdoors using a new dataset that includes complex background detail, wind-blown foliage, and insects moving into and out of occlusion beneath leaves and among three-dimensional plant structures. We evaluated our software against human observations and previous techniques. It tracked honeybees at a rate of 86.6% on our dataset, 43% higher than the computationally more expensive, standalone deep learning model YOLOv2. We illustrate the value of our approach to quantify fine-scale foraging of honeybees. The ability to track unmarked insect pollinators in this way will help researchers better understand pollination ecology. The increased efficiency of our hybrid approach paves the way for the application of deep learning-based techniques to animal tracking in real-time using low-powered devices suitable for continuous monitoring.
在自然栖息地监测动物对于推进动物行为研究至关重要,尤其是在授粉研究中。出于这些目的,首选非侵入性技术,因为它们减少了研究仪器干扰行为的机会。一种潜在有价值的方法是基于图像的跟踪。然而,在不受控制的户外环境中,使用视频跟踪未标记的野生动物的复杂性具有挑战性。现成的算法在这种情况下目前存在几个问题,可能会影响准确性,尤其是在 3D 环境中出现遮挡的情况下。为了解决这个问题,我们提出了一种新颖的混合检测和跟踪算法,用于户外监测未标记的昆虫。我们的软件可以检测昆虫,识别跟踪的昆虫何时从视野中被遮挡以及何时重新出现,确定昆虫何时离开摄像机的视野,以及我们的软件将一系列昆虫位置组装成一个连贯的轨迹。软件的昆虫检测组件使用背景减除和基于深度学习的检测相结合,以在野生花卉群中准确有效地定位昆虫。我们使用一个新的数据集来跟踪户外觅食的蜜蜂,该数据集包括复杂的背景细节、风吹的树叶以及昆虫在树叶和三维植物结构之间进出遮挡的情况。我们将我们的方法与人工观察和以前的技术进行了比较。它在我们的数据集上以 86.6%的速度跟踪蜜蜂,比计算成本更高、独立的深度学习模型 YOLOv2 高出 43%。我们展示了我们的方法对量化蜜蜂精细觅食的价值。以这种方式跟踪未标记的昆虫传粉者将有助于研究人员更好地了解授粉生态学。我们的混合方法的效率提高为在实时使用适合连续监测的低功耗设备将基于深度学习的技术应用于动物跟踪铺平了道路。