Published October 2023
| Published
Conference Paper
Online Self-Supervised Thermal Water Segmentation for Aerial Vehicles
Abstract
We present a new method to adapt an RGB-trained water segmentation network to target-domain aerial thermal imagery using online self-supervision by leveraging texture and motion cues as supervisory signals. This new thermal capability enables current autonomous aerial robots operating in near-shore environments to perform tasks such as visual navigation, bathymetry, and flow tracking at night. Our method overcomes the problem of scarce and difficult-to-obtain near-shore thermal data that prevents the application of conventional supervised and unsupervised methods. In this work, we curate the first aerial thermal near-shore dataset, show that our approach outperforms fully-supervised segmentation models trained on limited target-domain thermal data, and demonstrate real-time capabilities onboard an Nvidia Jetson embedded computing platform. Code and datasets used in this work will be available at: https://github.com/connorlee77/uav-thermal-water-segmentation.
Funding
This work was supported by the Office of Naval Research.
Acknowledgement
We thank K. Koetje, K. Brodie, T. Hesser, T. Almeida, T. Cook, and R. Beach for their helpful discussions and thank N. Spore with the U.S. Army ERDC-CHL Field Research Facility for collecting the data sequences at Duck, NC.
Additional details
- Office of Naval Research