Many studies of animal distributions use habitat and climactic variables to explain patterns of observed space use. However, without behavioral information, we can only speculate as to why and how these characteristics are important to species persistence. Animal-borne accelerometer and magnetometer data loggers can be used to detect behaviors and when coupled with telemetry improve our understanding of animal space use and habitat requirements. However, these loggers collect tremendous quantities of data requiring automated machine learning techniques to identify patterns in the data. Supervised machine learning requires a set of training signals with known behaviors to train the model to identify the unique signal characteristics associa...
Animal-borne data loggers today often house several sensors recording simultaneously at high frequen...
Background Inertial measurement units (IMUs) with high-resolution sensors such as accelerometers ...
Remotely tracking distinct behaviours of animals using acceleration data and machine learning has be...
Abstract Background Animal-attached devices can be used on cryptic species to measure their movement...
Abstract Sophisticated animal‐borne sensor systems are increasingly providing novel insight into how...
Studies of animal spatial distributions typically use prior knowledge of animal habitat requirements...
International audienceAbstract Animal-borne tagging (bio-logging) generates large and complex datase...
1. Use of accelerometers is now widespread within animal biologging as they provide a means of measu...
The study described in this paper developed a model of animal movement, which explicitly recognised ...
Studies of animal behavior are crucial to understanding animal-ecosystem interactions, but require s...
Accelerometers are a valuable tool for studying animal behaviour and physiology where direct observa...
Abstract Collecting quantitative information on animal behaviours is difficult, especially from cryp...
<div><p>Studies of animal behavior are crucial to understanding animal-ecosystem interactions, but r...
Background: Animal-borne data loggers today often house several sensors recording simultaneously at ...
Animal behavioural responses to the environment ultimately affect their survival. Monitoring animal ...
Animal-borne data loggers today often house several sensors recording simultaneously at high frequen...
Background Inertial measurement units (IMUs) with high-resolution sensors such as accelerometers ...
Remotely tracking distinct behaviours of animals using acceleration data and machine learning has be...
Abstract Background Animal-attached devices can be used on cryptic species to measure their movement...
Abstract Sophisticated animal‐borne sensor systems are increasingly providing novel insight into how...
Studies of animal spatial distributions typically use prior knowledge of animal habitat requirements...
International audienceAbstract Animal-borne tagging (bio-logging) generates large and complex datase...
1. Use of accelerometers is now widespread within animal biologging as they provide a means of measu...
The study described in this paper developed a model of animal movement, which explicitly recognised ...
Studies of animal behavior are crucial to understanding animal-ecosystem interactions, but require s...
Accelerometers are a valuable tool for studying animal behaviour and physiology where direct observa...
Abstract Collecting quantitative information on animal behaviours is difficult, especially from cryp...
<div><p>Studies of animal behavior are crucial to understanding animal-ecosystem interactions, but r...
Background: Animal-borne data loggers today often house several sensors recording simultaneously at ...
Animal behavioural responses to the environment ultimately affect their survival. Monitoring animal ...
Animal-borne data loggers today often house several sensors recording simultaneously at high frequen...
Background Inertial measurement units (IMUs) with high-resolution sensors such as accelerometers ...
Remotely tracking distinct behaviours of animals using acceleration data and machine learning has be...