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[CS.AI] CRODA-ST: Breakthrough Framework for Single-Target Cross-Receiver Open-Set RFFI

Published at: 2026-07-08 22:00 Last updated: 2026-07-09 03:23
#algorithm #AI #Open Source

Abstract

Radio frequency fingerprint identification (RFFI) provides a physical-layer credential for Internet of Things devices, but open-set decisions become fragile when a threshold calibrated on a source receiver is transferred to a target receiver. Receiver shift can lower the confidence of known transmitters and cause false rejection, while closed-set alignment can have the opposite effect by pulling unseen target transmitters into known regions, increasing false acceptance.

This letter presents CRODA-ST, a structure-first adaptation framework for single-source single-target cross-receiver open-set RFFI. Its two components target the bottlenecks behind unreliable source-calibrated rejection:

  1. Discriminative Structure Anchoring (DSA): Restores target-receiver known-class references from limited labeled target enrollment samples.
  2. Rejection-Oriented Alignment (ROA): Reduces receiver-sensitive confidence fluctuations around the anchored structure.

On the WiSig ManyTx dataset, CRODA-ST achieves 0.9092 known-class accuracy, 0.9692 AUROC, and 0.9580 OSCR. Score-sweep analysis further reduces FPR90 to 0.0469.

Blogger's Review: The CRODA-ST framework effectively addresses the challenges posed by receiver variability in open-set RFFI through its innovative structure-first strategy, showcasing significant results in enhancing identification accuracy and reducing false positives, highlighting its potential applications in IoT security.

Original Source: https://arxiv.org/abs/2607.02567

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