Fish Tracking Challenge 2024: A Multi-Object Tracking Competition with Sweetfish Schooling Data
Makoto M. Itoh, Qingrui Hu, Takayuki Niizato, Hiroaki Kawashima,, Keisuke Fujii

TL;DR
The Fish Tracking Challenge 2024 is a competition that uses the SweetFish dataset to develop and evaluate multi-object tracking algorithms for schooling sweetfish, aiming to advance aquatic animal movement analysis.
Contribution
It introduces a new dataset and competition focused on multi-object tracking of schooling fish, fostering innovation in aquatic animal tracking methods.
Findings
Baseline and winning approaches analyzed
Enhanced tracking accuracy demonstrated
Potential for scientific insights into fish behavior
Abstract
The study of collective animal behavior, especially in aquatic environments, presents unique challenges and opportunities for understanding movement and interaction patterns in the field of ethology, ecology, and bio-navigation. The Fish Tracking Challenge 2024 (https://ftc-2024.github.io/) introduces a multi-object tracking competition focused on the intricate behaviors of schooling sweetfish. Using the SweetFish dataset, participants are tasked with developing advanced tracking models to accurately monitor the locations of 10 sweetfishes simultaneously. This paper introduces the competition's background, objectives, the SweetFish dataset, and the appraoches of the 1st to 3rd winners and our baseline. By leveraging video data and bounding box annotations, the competition aims to foster innovation in automatic detection and tracking algorithms, addressing the complexities of aquatic…
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Taxonomy
TopicsWater Quality Monitoring Technologies · Fish Ecology and Management Studies
