Published April 2024 | Version v1
Dataset Open

APEIRON-IND3

Description

This is a single run of APEIRON: a Multimodal Drone Dataset Bridging Perception and Network Data in Outdoor Environments.

For more data and details visit: APEIRON (c3lab.github.io)

 

If you use this dataset in an academic context, please cite the following work:


@inproceedings{10.1145/3625468.3652186,
    author = {Barone, Nunzio and Brescia, Walter and Mascolo, Saverio and De Cicco, Luca},
    title = {APEIRON: a Multimodal Drone Dataset bridging Perception and Network Data},
    year = {2024},
    publisher = {Association for Computing Machinery},
    url = {https://doi.org/10.1145/3625468.3652186},
    doi = {10.1145/3625468.3652186},
    abstract = {Unmanned Aerial Vehicles (UAVs), commonly denoted as drones, are being increasingly adopted as platforms to enable applications such as surveillance, disaster response, environmental monitoring, live drone broadcasting, and Internet-of-Drones (IoD). In this context, drone systems are required to carry out tasks autonomously in potentially unknown and challenging environments. As such, deep learning algorithms are widely adopted to implement efficient perception from sensors, making the availability of comprehensive datasets capturing real-world environments important. In this work, we introduce APEIRON, a rich multimodal aerial dataset that simultaneously collects perception data from a stereocamera and an event based camera sensor, along with measurements of wireless network links obtained using an LTE module. The assembled dataset consists of both perception and network data, making it suitable for typical perception or communication applications, as well as cross-disciplinary applications that require both types of data. We believe that this dataset will help promoting multidisciplinary research at the intersection of multimedia systems, computer networks, and robotics fields. APEIRON is available at https://c3lab.github.io/Apeiron/},
    booktitle = {Proceedings of the 15th ACM Multimedia Systems Conference},
    keywords = {Open Dataset, UAV, Event camera, Network traces, Stereocamera},
    location = {Bari, Italy},
    series = {MMSys '24}
}

Files

IND-3_run-02_02_2024_15_07_19.zip

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