首页 /研究 /AMP2026: A Multi-Platform Marine Robotics Dataset for Tracking and Mapping
SWARM

AMP2026: A Multi-Platform Marine Robotics Dataset for Tracking and Mapping

Edwin Meriaux, Shuo Wen, David Widhalm, Zhizun Wang, Junming Shi, Mariana Sosa Guzmán, Kalvik Jakkala, Bennett Carley, Elias Sokolova, Yogesh Girdhar, Monika Roznere, Jason O'Kane, Junaed Sattar, Gregory Dudek

发表年份
2026
访问权限
开放获取

摘要

Marine environments present significant challenges for perception and autonomy due to dynamic surfaces, limited visibility, and complex interactions between aerial, surface, and submerged sensing modalities. This paper introduces the Aerial Marine Perception Dataset (AMP2026), a multi-platform marine robotics dataset collected across multiple field deployments designed to support research in two primary areas: multi-view tracking and marine environment mapping. The dataset includes synchronized data from aerial drones, boat-mounted cameras, and submerged robotic platforms, along with associated localization and telemetry information. The goal of this work is to provide a publicly available dataset enabling research in marine perception and multi-robot observation scenarios. This paper describes the data collection methodology, sensor configurations, dataset organization, and intended research tasks supported by the dataset.

关键词

cs.RO

相关论文

查看 SWARM 分类全部论文