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A comparison of deep learning and citizen science techniques for counting wildlife in aerial survey images

机译:在空中调查图像中野生动物的深度学习和公民科学技术比较

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摘要

Fast and accurate estimates of wildlife abundance are an essential component of efforts to conserve ecosystems in the face of rapid environmental change. A widely used method for estimating species abundance involves flying aerial transects, taking photographs, counting animals within the images and then inferring total population size based on a statistical estimate of species density in the region. The intermediate task of manually counting the aerial images is highly labour intensive and is often the limiting step in making a population estimate. Here, we assess the use of two novel approaches to perform this task by deploying both citizen scientists and deep learning to count aerial images of the 2015 survey of wildebeest (Connochaetes taurinus) in Serengeti National Park, Tanzania. Through the use of the online platform Zooniverse, we collected multiple non-expert counts by citizen scientists and used three different aggregation methods to obtain a single count for the survey images. We also counted the images by developing a bespoke deep learning method via the use of a convolutional neural network. The results of both approaches were then compared. After filtering of the citizen science counts, both approaches provided highly accurate total estimates. The deep learning method was far faster and appears to be a more reliable and predictable approach; however, we note that citizen science volunteers played an important role when creating training data for the algorithm. Notably, our results show that accurate, species-specific, automated counting of aerial wildlife images is now possible.
机译:快速准确的野生动物丰富估计是在迅速环境变化面前保护生态系统的重要组成部分。用于估计物种丰度的广泛使用方法涉及飞行空中横断面,拍摄照片,在图像中计数动物,然后基于该区域物种密度的统计估计推断出总群体大小。手动计数空中图像的中间任务是高度劳动密集型的,并且通常是制作人口估计的限制步骤。在这里,我们通过部署公民科学家和深入学习来计算使用两种新颖的方法来执行这项任务,以计算2015年坦桑尼亚塞伦盖蒂国家公园的2015年康氏国家(Connochoetes Taurinus)的航拍图像。通过使用在线平台Zooniverse,我们通过公民科学家收集了多个非专家计数,并使用了三种不同的聚合方法来获得调查图像的单数。我们还通过使用卷积神经网络开发定制的深度学习方法来计算图像。然后比较两种方法的结果。过滤公民科学计数后,两种方法都提供了高度准确的总估计。深度学习方法更快,似乎是一种更可靠和可预测的方法;但是,我们注意到公民科学志愿者在为算法创建培训数据时发挥着重要作用。值得注意的是,我们的结果表明,现在可以准确,特异性,自动化的空中野生动物图像的自动计数。

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