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Insect detect: An open-source DIY camera trap for automated insect monitoring

GND
1242996591
ORCID
0000-0002-4096-8556
Zugehörigkeit
Julius Kühn Institute (JKI), Institute for Biological Control, Germany
Sittinger, Maximilian;
GND
1300667818
ORCID
0000-0003-3022-1229
Zugehörigkeit
Julius Kühn Institute (JKI), Institute for Biological Control, Germany
Uhler, Johannes;
GND
1300666927
ORCID
0009-0002-3246-7118
Zugehörigkeit
Julius Kühn Institute (JKI), Institute for Biological Control, Germany
Pink, Maximilian;
GND
115662456
Zugehörigkeit
Julius Kühn Institute (JKI), Institute for Biological Control, Germany
Herz, Annette

Insect monitoring is essential to design effective conservation strategies, which are indispensable to mitigate worldwide declines and biodiversity loss. For this purpose, traditional monitoring methods are widely established and can provide data with a high taxonomic resolution. However, processing of captured insect samples is often time-consuming and expensive, which limits the number of potential replicates. Automated monitoring methods can facilitate data collection at a higher spatiotemporal resolution with a comparatively lower effort and cost. Here, we present the Insect Detect DIY (do-it-yourself) camera trap for non-invasive automated monitoring of flower-visiting insects, which is based on low-cost off-the-shelf hardware components combined with open-source software. Custom trained deep learning models detect and track insects landing on an artificial flower platform in real time on-device and subsequently classify the cropped detections on a local computer. Field deployment of the solar-powered camera trap confirmed its resistance to high temperatures and humidity, which enables autonomous deployment during a whole season. On-device detection and tracking can estimate insect activity/abundance after metadata post-processing. Our insect classification model achieved a high top-1 accuracy on the test dataset and generalized well on a real-world dataset with captured insect images. The camera trap design and open-source software are highly customizable and can be adapted to different use cases. With custom trained detection and classification models, as well as accessible software programming, many possible applications surpassing our proposed deployment method can be realized.

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Rechteinhaber: 2024 Sittinger et al.

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