Evaluation Pipeline for systematically searching for Anomaly Detection Systems
Florian Rokohl, Alexander Lehnert, Marc Reichenbach
2025-06-18Anomaly Detection
Abstract
Digitalization in the medical world provides major benefits while making it a target for attackers and thus hard to secure. To deal with network intruders we propose an anomaly detection system on hardware to detect malicious clients in real-time. We meet real-time and power restrictions using FPGAs. Overall system performance is achieved via the presented holistic system evaluation.
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