Abstract
AbstractDrone-person tracking in uniform appearance crowds poses unique challenges due to the difficulty in distinguishing individuals with similar attire and multi-scale variations. To address this issue and facilitate the development of effective tracking algorithms, we present a novel dataset named D-PTUAC (Drone-Person Tracking in Uniform Appearance Crowd). The dataset comprises 138 sequences comprising over 121 K frames, each manually annotated with bounding boxes and attributes. During dataset creation, we carefully consider 18 challenging attributes encompassing a wide range of viewpoints and scene complexities. These attributes are annotated to facilitate the analysis of performance based on specific attributes. Extensive experiments are conducted using 44 state-of-the-art (SOTA) trackers, and the performance gap between the visual object trackers on existing benchmarks compared to our proposed dataset demonstrate the need for a dedicated end-to-end aerial visual object tracker that accounts the inherent properties of aerial environment.
Funder
Khalifa University of Science, Technology and Research
This work was supported by the Khalifa University of Science and Technology under Award RC1-2018-KUCARS.
Publisher
Springer Science and Business Media LLC
Reference47 articles.
1. Wu, X. et al. Deep learning for unmanned aerial vehicle-based object detection and tracking: A survey. IEEE Geoscience and RS Magazine 10, 91–124 (2021).
2. Portmann, J. et al. People detection and tracking from aerial thermal views. In 2014 IEEE ICRA, 1794–1800 (IEEE, 2014).
3. Mishra, B. et al. Drone-surveillance for search and rescue in natural disaster. Computer Communications 156, 1–10 (2020).
4. Kyrarini, M. et al. A survey of robots in healthcare. Technologies 9, 8 (2021).
5. Kim, S. J. et al. Drone-aided healthcare services for patients with chronic diseases in rural areas. Journal of Intelligent & Robotic Systems 88, 163–180 (2017).