New publication in Methods in Ecology and Evolution

Chimienti et al. Reviewing seas of data: Integrating image-based bio-logging and artificial intelligence to enhance marine conservation

http://dx.doi.org/10.1111/2041-210X.70063

#biologging #ai #ecology #seabirds

"New" paper out in Journal of Biogeogrpahy by Anne-Sophie Bonnet-Lebrun.

The drivers of interspecific spatial segregation in two guillemot species at the scale of the North Atlantic/Arctic.

https://onlinelibrary.wiley.com/doi/10.1111/jbi.15042

#seabirds  #ecology #biologging

New paper out on identifying global seabird migration flyways using tracking data.

Led by Joanne Morten, involved several members of the Marine Predators team as co-authors.

https://onlinelibrary.wiley.com/doi/full/10.1111/geb.70004

#seabirds #biologging #ecology

GPS tracking reveals koalas Phascolarctos cinereus use mosaics of different forest ages after environmentally regulated timber harvesting

"We located koalas for capture using day searches, nocturnal spot-lighting, koala detection dogs and dawn drone flights. Once located, koalas were either captured by trapping or flagging by a tree climber using an extended pole. Animals were anesthetized to allow appropriate fitting of collars."
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Law, B., Gonsalves, L., Slade, C., Brassil, T. & Flanagan, C. (2024) GPS tracking reveals koalas Phascolarctos cinereus use mosaics of different forest ages after environmentally regulated timber harvesting. Austral Ecology, 49, e13518. Available from: https://doi.org/10.1111/aec.13518
#koalas #anaesthetisation #GPSCollaring #BioLogging #wildlife #ethics #LoggingIndustry #LoggingImpacts #MidNorthcCoast #telemetry #tracking #regulation #dogs

The challenges of independence: ontogeny of at-sea behaviour in a long-lived seabird

https://peercommunityjournal.org/articles/10.24072/pcjournal.386/

#ecology #seabirds #albatross #biologging

The challenges of independence: ontogeny of at-sea behaviour in a long-lived seabird

🚨new paper alert! 🚨 using #GPSAcc and 📷 recordings, Kirchner et al. distinguished 🤖📈seven main behaviors of captive moose 🫎🫎, see her work on model generalizability, variation in training data, effects of sex and subspecies. #biologging #proudsupervisor https://animalbiotelemetry.biomedcentral.com/articles/10.1186/s40317-023-00343-0
Predicting moose behaviors from tri-axial accelerometer data using a supervised classification algorithm - Animal Biotelemetry

Background Monitoring the behavior of wild animals in situ can improve our understanding of how their behavior is related to their habitat and affected by disturbances and changes in their environment. Moose (Alces alces) are keystone species in their boreal habitats, where they are facing environmental changes and disturbances from human activities. How these potential stressors can impact individuals and populations is unclear, in part due to our limited knowledge of the physiology and behavior of moose and how individuals can compensate for stress and disturbances they experience. We collected data from collar-mounted fine-scale tri-axial accelerometers deployed on captive moose in combination with detailed behavioral observations to train a random forest supervised classification algorithm to classify moose accelerometer data into discrete behaviors. To investigate the generalizability of our model to collared new individuals, we quantified the variation in classification performance among individuals. Results Our machine learning model successfully classified 3-s accelerometer data intervals from 12 Alaskan moose (A. a. gigas) and two European moose (A. a. alces) into seven behaviors comprising 97.6% of the 395 h of behavioral observations conducted in summer, fall and spring. Classification performance varied among behaviors and individuals and was generally dependent on sample size. Classification performance was highest for the most common behaviors lying with the head elevated, ruminating and foraging (precision and recall across all individuals between 0.74 and 0.90) comprising 79% of our data, and lower and more variable among individuals for the four less common behaviors lying with head down or tucked, standing, walking and running (precision and recall across all individuals between 0.28 and 0.79) comprising 21% of our data. Conclusions We demonstrate the use of animal-borne accelerometer data to distinguish among seven main behaviors of captive moose and discuss generalizability of the results to individuals in the wild. Our results can support future efforts to investigate the detailed behavior of collared wild moose, for example in the context of disturbance responses, time budgets and behavior-specific habitat selection.

BioMed Central
2am thoughts on #biologging. Right now you could build an envyable monitoring setup dirt cheap using smarthome tech. #esphome with 5 buck esp cams into duck or bat boxes, traipsing through the forest setting up a ZigBee mesh for temperature loggers, all sort of sensors slapdash to a adafruit dev board. Lora or wifi for data backhaul. You could afford to have half your sensors eaten by bears and still have mountains of data for a fraction of 'professional' systems.

Attending #BES2022 and interested in animal movement? Join us at the Movement Ecology Social at 19:15 on Monday in the Mentheith room in the Conference Centre (free drinks and cool activities!). We'll continue the evening in the nearby Fox & Faun pub from 20:45

#MovementEcology #biologging @BritishEcolSoc

I'm presenting a poster at #BES2022! Come learn about our ongoing work on rural and urban foxes, from capture techniques to biologging data to animal welfare 🦊

#moa #biologging #canids

#asab22 begins with an outreach plenary- what a great idea! Lucy Hawkes dazzles us with stories of white storks going to war and the joys of catching penguins on ice. Brilliant entertaining talk about how we track animals in air and the sea. #biologging #animalbehaviour #animalbehavior #migration #science