[期刊论文]


Reconstruction of long-distance bird migration routes using advanced machine learning techniques on geolocator data

作   者:
Mattia Pancerasa;Matteo Sangiorgio;Roberto Ambrosini;Nicola Saino;David W. Winkler;Renato Casagrandi;

出版年:2019

页    码:20190031 - 20190031
出版社:The Royal Society


摘   要:

Geolocators are a well-established technology to reconstruct migration routes of animals that are too small to carry satellite tags (e.g. passerine birds). These devices record environmental light-level data that enable the reconstruction of daily positions from the time of twilight. However, all current methods for analysing geolocator data require manual pre-processing of raw records to eliminate twilight events showing unnatural variation in light levels, a step that is time-consuming and must be accomplished by a trained expert. Here, we propose and implement advanced machine learning techniques to automate this procedure and we apply them to 108 migration tracks of barn swallows ( Hirundo rustica). We show that routes reconstructed from the automated pre-processing are comparable to those obtained from manual selection accomplished by a human expert. This raises the possibility of fully automating light-level geolocator data analysis and possibly analysing the large amount of data already collected on several species.



关键字:

light-level tag;movement ecology;migratory species;path estimation;random forest;deep neural network


所属期刊
Journal of The Royal Society Interface
ISSN: 1742-5689
来自:The Royal Society