Green Siân E, Rees Jonathan P, Stephens Philip A, Hill Russell A, Giordano Anthony J
Department of Anthropology, Durham University, Durham DH1 3LE, UK.
Conservation Ecology Group, Department of Biosciences, Durham University, Durham DH1 3LE, UK.
Animals (Basel). 2020 Jan 14;10(1):132. doi: 10.3390/ani10010132.
Camera trapping has become an increasingly reliable and mainstream tool for surveying a diversity of wildlife species. Concurrent with this has been an increasing effort to involve the wider public in the research process, in an approach known as 'citizen science'. To date, millions of people have contributed to research across a wide variety of disciplines as a result. Although their value for public engagement was recognised early on, camera traps were initially ill-suited for citizen science. As camera trap technology has evolved, cameras have become more user-friendly and the enormous quantities of data they now collect has led researchers to seek assistance in classifying footage. This has now made camera trap research a prime candidate for citizen science, as reflected by the large number of camera trap projects now integrating public participation. Researchers are also turning to Artificial Intelligence (AI) to assist with classification of footage. Although this rapidly-advancing field is already proving a useful tool, accuracy is variable and AI does not provide the social and engagement benefits associated with citizen science approaches. We propose, as a solution, more efforts to combine citizen science with AI to improve classification accuracy and efficiency while maintaining public involvement.
相机陷阱已成为一种越来越可靠且主流的工具,用于调查各种野生动物物种。与此同时,人们越来越努力让更广泛的公众参与到研究过程中,这种方法被称为“公民科学”。到目前为止,数百万人因此为跨学科的研究做出了贡献。尽管相机陷阱对公众参与的价值很早就得到了认可,但它最初并不适合公民科学。随着相机陷阱技术的发展,相机变得更加用户友好,它们现在收集的大量数据促使研究人员在分类影像方面寻求帮助。这使得相机陷阱研究成为公民科学的主要候选对象,大量整合公众参与的相机陷阱项目就反映了这一点。研究人员也在转向人工智能(AI)来协助影像分类。尽管这个快速发展的领域已经证明是一个有用的工具,但准确性参差不齐,而且人工智能并不能提供与公民科学方法相关的社会和参与效益。作为一种解决方案,我们建议做出更多努力,将公民科学与人工智能相结合,以提高分类准确性和效率,同时保持公众的参与度。