Data prediction and imputation are important parts of marine animal movement trajectory analysis as they can help researchers understand animal movement patterns and address missing data issues. Compared with traditional methods, deep learning methods can usually provide enhanced pattern extraction capabilities, but their applications in marine data analysis are still limited. In this research, we propose a composite deep learning model to improve the accuracy of marine animal trajectory prediction and imputation. The model extracts patterns from the trajectories with an encoder network and reconstructs the trajectories using these patterns with a decoder network. We use attention mechanisms to highlight certain extracted patterns as well for the decoder. We also feed these patterns into a second decoder for prediction and imputation. Therefore, our approach is a coupling of unsupervised learning with the encoder and the first decoder and supervised learning with the encoder and the second decoder. Experimental results demonstrate that our approach can reduce errors by at least 10% on average comparing with other methods.
A prediction and imputation method for marine animal movement data
Xinqing Li,Tanguy Tresor Sindihebura,Carlos M. Duarte,D. Costa,M. Hindell,C. McMahon,M. Muelbert,Xiangliang Zhang,Chengbin Peng
Published 2021 in PeerJ Computer Science
ABSTRACT
PUBLICATION RECORD
- Publication year
2021
- Venue
PeerJ Computer Science
- Publication date
2021-08-03
- Fields of study
Medicine, Computer Science, Environmental Science
- Identifiers
- External record
- Source metadata
Semantic Scholar, PubMed
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