Akçay Hüseyin Gökhan, Kabasakal Bekir, Aksu Duygugül, Demir Nusret, Öz Melih, Erdoğan Ali
Department of Computer Engineering, Akdeniz University, Antalya 07058, Turkey.
Department of Biology, Akdeniz University, Antalya 07058, Turkey.
Animals (Basel). 2020 Jul 16;10(7):1207. doi: 10.3390/ani10071207.
A challenging problem in the field of avian ecology is deriving information on bird population movement trends. This necessitates the regular counting of birds which is usually not an easily-achievable task. A promising attempt towards solving the bird counting problem in a more consistent and fast way is to predict the number of birds in different regions from their photos. For this purpose, we exploit the ability of computers to learn from past data through deep learning which has been a leading sub-field of AI for image understanding. Our data source is a collection of on-ground photos taken during our long run of birding activity. We employ several state-of-the-art generic object-detection algorithms to learn to detect birds, each being a member of one of the 38 identified species, in natural scenes. The experiments revealed that computer-aided counting outperformed the manual counting with respect to both accuracy and time. As a real-world application of image-based bird counting, we prepared the spatial bird order distribution and species diversity maps of Turkey by utilizing the geographic information system (GIS) technology. Our results suggested that deep learning can assist humans in bird monitoring activities and increase citizen scientists' participation in large-scale bird surveys.
鸟类生态学领域一个具有挑战性的问题是获取有关鸟类种群移动趋势的信息。这需要定期对鸟类进行计数,而这通常并非易事。以更一致、快速的方式解决鸟类计数问题的一个有前景的尝试是根据照片预测不同区域的鸟类数量。为此,我们利用计算机通过深度学习从过去的数据中学习的能力,深度学习一直是人工智能中用于图像理解的一个领先子领域。我们的数据源是在长期观鸟活动期间拍摄的一组地面照片。我们采用几种最先进的通用目标检测算法来学习在自然场景中检测鸟类,每只鸟都属于已识别的38个物种之一。实验表明,计算机辅助计数在准确性和时间方面均优于人工计数。作为基于图像的鸟类计数的实际应用,我们利用地理信息系统(GIS)技术绘制了土耳其的鸟类空间分布和物种多样性地图。我们的结果表明,深度学习可以帮助人类进行鸟类监测活动,并提高公民科学家对大规模鸟类调查的参与度。