Explore projects
-
ROS2 Security / ROS2 TPM / sros2-tpm
Apache License 2.0Updated -
ROS2 Security / ROS2 TPM / rmw_fastrtps_tpm
Apache License 2.0Updated -
Updated
-
Federated learning (FL) enables multiple devices to collaboratively train a global model while maintaining data on local servers. Each device trains the model on its local server and shares only the model updates (i.e., gradient weights) during the aggregation step. A significant challenge in FL is managing the feature distribution of novel, unbalanced data across devices. In this paper, we propose an FL approach using few-shot learning and aggregation of the model weights on a global server. We introduce a dynamic early stopping method to balance out-of-distribution classes based on representation learning, specifically utilizing the maximum mean discrepancy of feature embeddings between local and global models. An exemplary application of FL is orchestrating machine learning models along highways for interference classification based on snapshots from global navigation satellite system (GNSS) receivers. Extensive experiments on four GNSS datasets from two real-world highways and controlled environments demonstrate that our FL method surpasses state-of-the-art techniques in adapting to both novel interference classes and multipath scenarios.
Updated -
Updated
-
Updated
-
Florian Schiffel / ICV_SIAtune_basecode
Apache License 2.0Updated -
UpdatedUpdated
-
IPA Quantum / QKMTuner
MIT LicenseUpdated -
UpdatedUpdated
-
Updated
-
Jamming devices present a significant threat by disrupting signals from the global navigation satellite system (GNSS), compromising the robustness of accurate positioning. The detection of anomalies within frequency snapshots is crucial to counteract these interferences effectively. A critical preliminary measure involves the reliable classification of interferences and characterization and localization of jamming devices. This paper introduces an extensive dataset compromising snapshots obtained from a low-frequency antenna, capturing diverse generated interferences within a large-scale environment including controlled multipath effects. Our objective is to assess the resilience of ML models against environmental changes, such as multipath effects, variations in interference attributes, such as the interference class, bandwidth, and signal-to-noise ratio, the accuracy jamming device localization, and the constraints imposed by snapshot input lengths. By analyzing the aleatoric and epistemic uncertainties, we demonstrate the adaptness of our model in generalizing across diverse facets, thus establishing its suitability for real-world applications.
Updated -
Updated
-
IIS-SCS-A Publications / PBN4SEQ
GNU General Public License v3.0 or laterUpdated -
Florian Schiffel / ICV-mmdeploy_basecode
Apache License 2.0Updated