E-VLC: A Real-World Dataset for Event-based Visible Light Communication And Localization
Journal:
arXiv
Published Date:
Apr 25, 2025
Abstract
Optical communication using modulated LEDs (e.g., visible light
communication) is an emerging application for event cameras, thanks to their
high spatio-temporal resolutions. Event cameras can be used simply to decode
the LED signals and also to localize the camera relative to the LED marker
positions. However, there is no public dataset to benchmark the decoding and
localization in various real-world settings. We present, to the best of our
knowledge, the first public dataset that consists of an event camera, a frame
camera, and ground-truth poses that are precisely synchronized with hardware
triggers. It provides various camera motions with various sensitivities in
different scene brightness settings, both indoor and outdoor. Furthermore, we
propose a novel method of localization that leverages the Contrast Maximization
framework for motion estimation and compensation. The detailed analysis and
experimental results demonstrate the advantages of LED-based localization with
events over the conventional AR-marker--based one with frames, as well as the
efficacy of the proposed method in localization. We hope that the proposed
dataset serves as a future benchmark for both motion-related classical computer
vision tasks and LED marker decoding tasks simultaneously, paving the way to
broadening applications of event cameras on mobile devices.
https://woven-visionai.github.io/evlc-dataset