Explore projects
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Bash scripts to automatically establish a connection to Nokia and b<>com 5G networks
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ITWM FM LV Public / openIRM
MIT LicenseUpdated -
Industry 4.0 Legal Testbed / Smart Legal Contract Transport
Common Development and Distribution License 1.0Smart Legal Contract für den Transport Use Case im Industrie 4.0 Recht-Testbed, vgl. https://legaltestbed.org/use-cases/
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This project is to be help employees to establish a functional linux desktop environment, especially at Fraunhofer IIS/EAS infrastructure.
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Dependency management system, with support for ROS1, ROS2, JAX, and IPOPT
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Sebastian Becker / KupferDigital CKAN importer
Apache License 2.0Updated -
ezCar2X / ezCar2X
MIT LicenseRapid-prototyping framework for connected vehicle protocols and applications
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ITWM FM QC Public / cvqa
MIT LicenseUpdated -
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Florian Schiffel / ICV-mmdetection_baseCode
Apache License 2.0Updated -
Julia Hindel / InstanceLoc
Apache License 2.0[CVPR 2021] Instance Localization for Self-supervised Detection Pretraining
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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.
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