Using citizen science for early detection of tree pests and diseases: perceptions of professional and public participants

被引:0
|
作者
Nidhi Gupta
David D. Slawson
Andy J. Moffat
机构
[1] Imperial College London,Forest Research
[2] Alice Holt Lodge,undefined
来源
Biological Invasions | 2022年 / 24卷
关键词
Citizen science; Tree health; Invasive pests and pathogens; Policy; Perceptions; Motivations; Recognition; Reward;
D O I
暂无
中图分类号
学科分类号
摘要
Early detection of new tree pests and diseases is a vital element of national strategies to prevent their establishment and spread into a country or region, based on the rationale that it increases the chances of successful eradication. Given the limited capacity and financial resources of most national plant protection authorities, the use of public participants has recently been explored in a range of citizen science projects for its ability to supplement official surveillance. However, little is known about the motivations, expectations and experiences of members of the public involved in such activities and even less about the views of professionals and officials. In this study, evidence was obtained from structured interviews with professionals and volunteers engaged in five projects related to tree health surveillance. Some differences were noted between the two groups with a greater focus on personal aspects by members of the public and on strategic and institutional aspects by professionals. A striking feature was the agreement of the two groups that the projects had met or exceeded their expectations, and provided the proof of concept that tree health surveillance capacity can be increased by engaging and training citizens. Many participants shared concerns about the importance of securing both project longevity and volunteer participation over the long term. The paper discusses ways in which the motivations of tree health surveillance participants can be sustained over long periods with particular attention to recognition and reward.
引用
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页码:123 / 138
页数:15
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