Study of Class-Incremental Radio Frequency Fingerprint Recognition Without Storing Exemplars
Rundong Jiang, Jun Hu, Yunqi Song, Zhiyuan Xie, Shiyou Xu

TL;DR
This paper introduces an exemplar-free, class-incremental learning framework for radio frequency fingerprint recognition that maintains high accuracy and low forgetting without storing raw data, suitable for resource-constrained environments.
Contribution
It proposes a novel incremental learning method using a frozen backbone, lightweight adapters, and pseudo-feature rehearsal, avoiding raw data storage and reducing resource requirements.
Findings
Outperforms baseline methods in accuracy and forgetting metrics.
Requires significantly less storage and no raw data retention.
Effective in few-shot and large-scale RFF recognition scenarios.
Abstract
The rapid proliferation of wireless devices makes robust identity authentication essential. Radio Frequency Fingerprinting (RFF) exploits device-specific, hard-to-forge physical-layer impairments for identification, and is promising for IoT and unmanned systems. In practice, however, new devices continuously join deployed systems while per-class training data are limited. Conventional static training and naive replay of stored exemplars are impractical due to growing class cardinality, storage cost, and privacy concerns. We propose an exemplar-free class-incremental learning framework tailored to RFF recognition. Starting from a pretrained feature extractor, we freeze the backbone during incremental stages and train only a classifier together with lightweight Adapter modules that perform small task-specific feature adjustments. For each class we fit a diagonal Gaussian Mixture Model…
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Taxonomy
TopicsWireless Signal Modulation Classification · Biometric Identification and Security · RFID technology advancements
