Litcius/Paper detail

Drone-Person Tracking in Uniform Appearance Crowd: A New Dataset

Mohamad Alansari, Oussama Abdul Hay, Sara Alansari, Sajid Javed, Abdulhadi Shoufan, Yahya Zweiri, Naoufel Werghi

2024Scientific Data14 citationsDOIOpen Access PDF

Abstract

Drone-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.

Topics & Concepts

Computer scienceBitTorrent trackerDroneArtificial intelligenceCrowdsBounding overwatchViewpointsTracking (education)Computer visionObject (grammar)Video trackingEye trackingComputer securityPedagogyVisual artsArtPsychologyBiologyGeneticsVideo Surveillance and Tracking MethodsHuman-Animal Interaction StudiesHuman Pose and Action Recognition