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Camera settings and biome influence the accuracy of citizen science approaches to camera trap image classification

机译:相机设置和生物群系会影响公民科学方法对相机陷阱图像分类的准确性

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摘要

Scientists are increasingly using volunteer efforts of citizen scientists to classify images captured by motion‐activated trail cameras. The rising popularity of citizen science reflects its potential to engage the public in conservation science and accelerate processing of the large volume of images generated by trail cameras. While image classification accuracy by citizen scientists can vary across species, the influence of other factors on accuracy is poorly understood. Inaccuracy diminishes the value of citizen science derived data and prompts the need for specific best‐practice protocols to decrease error. We compare the accuracy between three programs that use crowdsourced citizen scientists to process images online: Snapshot Serengeti, Wildwatch Kenya, and AmazonCam Tambopata. We hypothesized that habitat type and camera settings would influence accuracy. To evaluate these factors, each photograph was circulated to multiple volunteers. All volunteer classifications were aggregated to a single best answer for each photograph using a plurality algorithm. Subsequently, a subset of these images underwent expert review and were compared to the citizen scientist results. Classification errors were categorized by the nature of the error (e.g., false species or false empty), and reason for the false classification (e.g., misidentification). Our results show that Snapshot Serengeti had the highest accuracy (97.9%), followed by AmazonCam Tambopata (93.5%), then Wildwatch Kenya (83.4%). Error type was influenced by habitat, with false empty images more prevalent in open‐grassy habitat (27%) compared to woodlands (10%). For medium to large animal surveys across all habitat types, our results suggest that to significantly improve accuracy in crowdsourced projects, researchers should use a trail camera set up protocol with a burst of three consecutive photographs, a short field of view, and determine camera sensitivity settings based on in situ testing. Accuracy level comparisons such as this study can improve reliability of future citizen science projects, and subsequently encourage the increased use of such data.
机译:科学家们越来越多地利用公民科学家的志愿者努力来分类由运动激活的跟踪摄像头捕获的图像。公民科学的普及不断普及反映其潜力将公众参与养护科学,加速处理普通摄像机产生的大量图像。虽然公民科学家的图像分类准确性可以各种各样的物种,但其他因素对准确性的影响很差。不准确性减少公民科学派生数据的价值,并提示需要特定的最佳实践协议来减少错误。我们比较三个程序之间的准确性,这些程序使用众群公民科学家在线处理图像:Snapshot Serengeti,WildWatch Kenya和Amazoncam Tambopata。我们假设栖息地类型和相机设置会影响准确性。为了评估这些因素,每张照片都会传播到多个志愿者。使用多种算法将所有志愿分类汇总为每个照片的单一最佳答案。随后,这些图像的子集接受了专家评审,并与公民科学家结果进行了比较。误差的性质(例如,假物种或假)分类,以及错误分类的原因(例如,错误识别)。我们的结果表明,快照Serengeti具有最高的精度(97.9%),其次是Amazoncam Tambopata(93.5%),然后是WildWatch Kenya(83.4%)。误差类型受到栖息地的影响,与林地(10%)相比,开放草地栖息地(27%)更普遍的假空图像。对于所有栖息地类型的大型动物调查,我们的结果表明,为了显着提高众群项目的准确性,研究人员应该使用迹线相机设置协议,其中三个连续照片的爆发,一个短的视野,并确定相机敏感性基于原位测试的设置。本研究的准确度比较可以提高未来公民科学项目的可靠性,随后鼓励增加这些数据的使用。

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