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Sea You Later: Metadata-Guided Long-Term Re-Identification for UAV-Based Multi-Object Tracking

Cheng-Yen Yang, Hsiang-Wei Huang, Zhongyu Jiang, Heng-Cheng Kuo, Jie Mei, Chung‐I Huang, Jenq–Neng Hwang

202414 citationsDOI

Abstract

Re-identification (ReID) in multi-object tracking (MOT) for UAVs in maritime computer vision has been challenging for several reasons. More specifically, short-term re-identification (ReID) is difficult due to the nature of the characteristics of small targets and the sudden movement of the drone's gimbal. Long-term ReID suffers from the lack of useful appearance diversity. In response to these chal-lenges, we present an adaptable motion-based MOT algorithm, called Metadata Guided MOT (MG-MOT). This al-gorithm effectively merges short-term tracking data into co-herent long-term tracks, harnessing crucial metadata from UAVs, including GPS position, drone altitude, and camera orientations. Extensive experiments are conducted to vali-date the efficacy of our MOT algorithm. Utilizing the chal-lenging SeaDroneSee tracking dataset, which encompasses the aforementioned scenarios, we achieve a much-improved performance in the latest edition of the UAV-based Maritime Object Tracking Challenge with a state-of-the-art HOTA of 69.5% and an IDFI of85.9% on the testing split.

Topics & Concepts

MetadataComputer scienceTerm (time)Identification (biology)Tracking (education)Video trackingObject (grammar)Computer visionArtificial intelligenceWorld Wide WebPedagogyPhysicsQuantum mechanicsPsychologyBiologyBotanyVideo Surveillance and Tracking MethodsRobotics and Sensor-Based LocalizationInfrared Target Detection Methodologies
Sea You Later: Metadata-Guided Long-Term Re-Identification for UAV-Based Multi-Object Tracking | Litcius