UAVPorpoises dataset

This is a part of the "Particle Filter-guided Online Tracking of Marine Mammals in Challenging UAV-recorded Videos" publication.


aPoznań University of Technology bUniversity of Southern Denmark

Abstract

Tracking marine mammals is essential for gaining insights into their health, behaviour, and population dynamics. With the growing use of drones in ecological research, the demand for efficient, automated video analysis has increased. This paper introduces a novel tracking algorithm designed explicitly for online marine mammals tracking in UAV-recorded videos, addressing unique challenges such as complex seabed textures, water reflections, and irregular animal movements. By integrating particle filters with the widely used Simple Online and Real-time Tracking (SORT) algorithm, we tackle issues of missed detections in marine contexts, enhancing tracking robustness. We also present a new publicly available dataset for drone-based porpoise tracking and evaluate our SORT-PF against state-of-the-art tracking methods. The results demonstrate significant improvements, including a 9.3% increase in the HOTA metric, simultaneously keeping the lowest ID switches compared to baseline methods, highlighting the potential of the proposed SORT-PF for automated wildlife monitoring and other challenging tracking applications.

Example videos

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Note: The dataset is licensed under the Creative Commons Attribution Non-Commercial 4.0 International. If you want to use the dataset commercially, don't hesitate to contact the authors: vision@put.poznan.pl.

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