Countering plant crime online: Cross-disciplinary collaboration in the FloraGuard study

D. Whitehead , C.R. Cowell , A. Lavorgna , S.E. Middleton
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引用次数: 6

Abstract

The illegal online trade in plants has potentially devastating impacts upon species poached for sale in digital markets, yet the scale of this threat to endangered species of flora remains relatively undetermined. Effectively monitoring and analysing the online trade in plants, requires an efficient means of searching the vastness of cyberspace, and the expertise to differentiate legal from potentially illegal wildlife trade (IWT). Artificial Intelligence (AI) offers a means of improving the efficiency of both search and analysis techniques, although the complexities of wildlife trade, and the need to monitor thousands of different species, makes the automation of this technology extremely challenging. In this contribution, we review a novel socio-technical approach to addressing this problem. Combining expertise in information and communications technology, criminology, law enforcement and conservation science, this cross-disciplinary technique combines AI algorithms with human judgement and expertise, to search for and iteratively analyse potentially relevant online content. We suggest that by coupling the scalability of search algorithms with a sufficient level of human input required to evaluate wildlife trade data, the proposed methodological approach offers significant advantages over manual search techniques. We conclude by examining the high level of cross-disciplinary collaboration required to develop this technique, which may provide a useful case study for conservation practitioners and law enforcement agencies, seeking to tackle this technology-driven threat to biodiversity.

在线打击植物犯罪:FloraGuard研究中的跨学科合作
非法在线植物贸易对在数字市场上偷猎出售的物种造成了潜在的破坏性影响,但这种威胁对濒危植物物种的威胁程度仍相对不确定。有效地监测和分析网上植物贸易,需要一种有效的手段来搜索广阔的网络空间,以及区分合法和潜在非法野生动物贸易(IWT)的专业知识。人工智能(AI)为提高搜索和分析技术的效率提供了一种手段,尽管野生动物贸易的复杂性,以及对数千种不同物种的监测需求,使得这项技术的自动化极具挑战性。在这篇文章中,我们回顾了一种新的社会技术方法来解决这个问题。这种跨学科技术结合了信息和通信技术、犯罪学、执法和保护科学的专业知识,将人工智能算法与人类的判断和专业知识相结合,搜索并迭代分析可能相关的在线内容。我们认为,通过将搜索算法的可扩展性与评估野生动物贸易数据所需的足够水平的人力投入相结合,所提出的方法方法比人工搜索技术具有显著的优势。最后,我们研究了开发这种技术所需的高水平跨学科合作,这可能为保护从业者和执法机构提供有用的案例研究,以寻求解决这种技术对生物多样性的威胁。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Forensic science international. Animals and environments
Forensic science international. Animals and environments Pollution, Law, Forensic Medicine, Veterinary Science and Veterinary Medicine (General)
CiteScore
2.00
自引率
0.00%
发文量
0
审稿时长
142 days
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