Author
Listed:
- Takuya Maekawa
(Osaka University)
- Kazuya Ohara
(Osaka University)
- Yizhe Zhang
(Osaka University)
- Matasaburo Fukutomi
(Hokkaido University)
- Sakiko Matsumoto
(Nagoya University)
- Kentarou Matsumura
(Okayama University)
- Hisashi Shidara
(Hokkaido University)
- Shuhei J. Yamazaki
(Osaka University)
- Ryusuke Fujisawa
(Kyushu Institute of Technology)
- Kaoru Ide
(Doshisha University)
- Naohisa Nagaya
(Kyoto Sangyo University)
- Koji Yamazaki
(Tokyo University of Agriculture)
- Shinsuke Koike
(Tokyo University of Agriculture and Technology)
- Takahisa Miyatake
(Okayama University)
- Koutarou D. Kimura
(Osaka University
Nagoya City University)
- Hiroto Ogawa
(Hokkaido University)
- Susumu Takahashi
(Doshisha University)
- Ken Yoda
(Nagoya University)
Abstract
A comparative analysis of animal behavior (e.g., male vs. female groups) has been widely used to elucidate behavior specific to one group since pre-Darwinian times. However, big data generated by new sensing technologies, e.g., GPS, makes it difficult for them to contrast group differences manually. This study introduces DeepHL, a deep learning-assisted platform for the comparative analysis of animal movement data, i.e., trajectories. This software uses a deep neural network based on an attention mechanism to automatically detect segments in trajectories that are characteristic of one group. It then highlights these segments in visualized trajectories, enabling biologists to focus on these segments, and helps them reveal the underlying meaning of the highlighted segments to facilitate formulating new hypotheses. We tested the platform on a variety of trajectories of worms, insects, mice, bears, and seabirds across a scale from millimeters to hundreds of kilometers, revealing new movement features of these animals.
Suggested Citation
Takuya Maekawa & Kazuya Ohara & Yizhe Zhang & Matasaburo Fukutomi & Sakiko Matsumoto & Kentarou Matsumura & Hisashi Shidara & Shuhei J. Yamazaki & Ryusuke Fujisawa & Kaoru Ide & Naohisa Nagaya & Koji , 2020.
"Deep learning-assisted comparative analysis of animal trajectories with DeepHL,"
Nature Communications, Nature, vol. 11(1), pages 1-15, December.
Handle:
RePEc:nat:natcom:v:11:y:2020:i:1:d:10.1038_s41467-020-19105-0
DOI: 10.1038/s41467-020-19105-0
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