Literature DB >> 32558902

Automated video monitoring of insect pollinators in the field.

Luca Pegoraro1,2, Oriane Hidalgo1,3, Ilia J Leitch1, Jaume Pellicer1,4, Sarah E Barlow5.   

Abstract

Ecosystems are at increasing risk from the global pollination crisis. Gaining better knowledge about pollinators and their interactions with plants is an urgent need. However, conventional methods of manually recording pollinator activity in the field can be time- and cost-consuming in terms of labour. Field-deployable video recording systems have become more common in ecological studies as they enable the capture of plant-insect interactions in fine detail. Standard video recording can be effective, although there are issues with hardware reliability under field-conditions (e.g. weatherproofing), and reviewing raw video manually is a time-consuming task. Automated video monitoring systems based on motion detection partly overcome these issues by only recording when activity occurs hence reducing the time needed to review footage during post-processing. Another advantage of these systems is that the hardware has relatively low power requirements. A few systems have been tested in the field which permit the collection of large datasets. Compared with other systems, automated monitoring allows vast increases in sampling at broad spatiotemporal scales. Some tools such as post-recording computer vision software and data-import scripts exist, further reducing users' time spent processing and analysing the data. Integrated computer vision and automated species recognition using machine learning models have great potential to further the study of pollinators in the field. Together, it is predicted that future advances in technology-based field monitoring methods will contribute significantly to understanding the causes underpinning pollinator declines and, hence, developing effective solutions for dealing with this global challenge.
© 2020 The Author(s). Published by Portland Press Limited on behalf of the Biochemical Society and the Royal Society of Biology.

Keywords:  computer vision; pollination ecology; pollinators; video monitoring

Year:  2020        PMID: 32558902     DOI: 10.1042/ETLS20190074

Source DB:  PubMed          Journal:  Emerg Top Life Sci        ISSN: 2397-8554


  6 in total

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2.  Camera traps are an effective tool for monitoring insect-plant interactions.

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5.  Accurate image-based identification of macroinvertebrate specimens using deep learning-How much training data is needed?

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6.  Periodically taken photographs reveal the effect of pollinator insects on seed set in lotus flowers.

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  6 in total

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