MEVDT: Multi-modal event-based vehicle detection and tracking datasetDeep Blue Data

Autor: Zaid A. El Shair, Samir A. Rawashdeh
Jazyk: angličtina
Rok vydání: 2025
Předmět:
Zdroj: Data in Brief, Vol 58, Iss , Pp 111205- (2025)
Druh dokumentu: article
ISSN: 2352-3409
DOI: 10.1016/j.dib.2024.111205
Popis: In this data article, we introduce the Multi-Modal Event-based Vehicle Detection and Tracking (MEVDT) dataset. This dataset provides a synchronized stream of event data and grayscale images of traffic scenes, captured using the Dynamic and Active-Pixel Vision Sensor (DAVIS) 240c hybrid event-based camera. MEVDT comprises 63 multi-modal sequences with approximately 13k images, 5M events, 10k object labels, and 85 unique object tracking trajectories. Additionally, MEVDT includes manually annotated ground truth labels — consisting of object classifications, pixel-precise bounding boxes, and unique object IDs — which are provided at a labeling frequency of 24 Hz. Designed to advance the research in the domain of event-based vision, MEVDT aims to address the critical need for high-quality, real-world annotated datasets that enable the development and evaluation of object detection and tracking algorithms in automotive environments.
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