We propose a new method, based on machine learning techniques, for the analysis of a combination of continuous data from dataloggers and a sampling of contemporaneous behaviour observations. This data combination provides an opportunity for biologists to study behaviour at a previously unknown level of detail and accuracy; however, continuously recorded data are of little use unless the resulting large volumes of raw data can be reliably translated into actual behaviour. We address this problem by applying a Support Vector Machine and a Hidden-Markov Model that allows us to classify an animal's behaviour using a small set of field observations to calibrate continuously recorded activity data. Such classified data can be applied quantitative...
Data from animal‐borne inertial sensors are widely used to investigate several aspects of an animal'...
Studies of animal behavior are crucial to understanding animal-ecosystem interactions, but require s...
1. Remotely tracking distinct behaviours of animals using acceleration data and machine learning has...
We propose a new method, based on machine learning techniques, for the analysis of a combination of ...
We propose a new method, based on machine learning techniques, for the analysis of a combination of ...
Behavioural studies of elusive wildlife species are challenging but important when they are threaten...
In many areas of animal behaviour research, improvements in our ability to collect large and detaile...
Current tracking technology such as GPS data loggers allows biologists to remotely collect large amo...
We present a methodology for distinguishing between three types of animal movement behavior (foragin...
The development of multisensor animal-attached tags, recording data at high frequencies, has enormou...
The application of accelerometer sensors for automated animal behaviour monitoring is becoming incre...
Identification and classification of behavior states in animal movement data can be complex, tempora...
<div><p>Studies of animal behavior are crucial to understanding animal-ecosystem interactions, but r...
Camera-trapping methods have been used to monitor movement and behavioural ecology parameters of wil...
<div><p>Identification and classification of behavior states in animal movement data can be complex,...
Data from animal‐borne inertial sensors are widely used to investigate several aspects of an animal'...
Studies of animal behavior are crucial to understanding animal-ecosystem interactions, but require s...
1. Remotely tracking distinct behaviours of animals using acceleration data and machine learning has...
We propose a new method, based on machine learning techniques, for the analysis of a combination of ...
We propose a new method, based on machine learning techniques, for the analysis of a combination of ...
Behavioural studies of elusive wildlife species are challenging but important when they are threaten...
In many areas of animal behaviour research, improvements in our ability to collect large and detaile...
Current tracking technology such as GPS data loggers allows biologists to remotely collect large amo...
We present a methodology for distinguishing between three types of animal movement behavior (foragin...
The development of multisensor animal-attached tags, recording data at high frequencies, has enormou...
The application of accelerometer sensors for automated animal behaviour monitoring is becoming incre...
Identification and classification of behavior states in animal movement data can be complex, tempora...
<div><p>Studies of animal behavior are crucial to understanding animal-ecosystem interactions, but r...
Camera-trapping methods have been used to monitor movement and behavioural ecology parameters of wil...
<div><p>Identification and classification of behavior states in animal movement data can be complex,...
Data from animal‐borne inertial sensors are widely used to investigate several aspects of an animal'...
Studies of animal behavior are crucial to understanding animal-ecosystem interactions, but require s...
1. Remotely tracking distinct behaviours of animals using acceleration data and machine learning has...