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RELIC-GNN: Efficient State Registers Identification with Graph Neural Network for Reverse Engineering

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Reverse engineering of gate-level netlist is critical for Hardware Trojans detection and Design Piracy counteracting. The primary task of gate-level reverse engineering is to separate the control and data signals from the netlist, which is mainly realized by identifying state registers with topological comparison.However, these methods become inefficient for large scale netlist. In this work, we propose RELIC-GNN, a graph neural network based state registers identification method, to address these issues. RELIC-GNN models the path structure of register as a graph and generates corresponding representation by considering node attributes and graph structure during training. The trained GNN model could be adopted to find the registers type very efficiently. Experimental results show that RELIC-GNN could achieve 100% in recall, 30.49% in precision and 88.37% in accuracy on average across different designs, which obtains significant improvements than previous approaches.

Weitao Pan, Meng Dong, Zhiliang Qiu, Jianlei Yang, Zhixiong Di, Yiming Gao• 2025

Related benchmarks

TaskDatasetResultRank
State register identificationMEM
Recall100
6
State register identificationgcm aes
Recall1
6
State register identificationb10
Recall1
3
State register identificationgpio
Recall1
3
State register identificationalto 32
Recall100
3
State register identificationlightweight 8051
Recall100
3
State register identificationFSM
Recall1
3
State register identificationb08
Recall100
3
State register identificationb09
Recall100
3
State register identificationb04
Recall100
3
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