Ruhr-Uni-Bochum

CNN Architecture Extraction on Edge GPU

2024

Konferenz / Medium

Autor*innen

Yuval Yarom Léo Weissbart Lejla Batina Łukasz Chmielewski Péter Horváth

Research Hub

Research Hub C: Sichere Systeme

Research Challenges

RC 7: Building Secure Systems

Abstract

Neural networks have become popular due to their versatility and state-of-the-art results in many applications, such as image classification, natural language processing, speech recognition, forecasting, etc. These applications are also used in resource-constrained environments such as embedded devices. In this work, the susceptibility of neural network implementations to reverse engineering is explored on the NVIDIA Jetson Nano microcomputer via side-channel analysis. To this end, an architecture extraction attack is presented. In the attack, 15 popular convolutional neural network architectures (EfficientNets, MobileNets, NasNet, etc.) are implemented on the GPU of Jetson Nano and the electromagnetic radiation of the GPU is analyzed during the inference operation of the neural networks. The results of the analysis show that neural network architectures are easily distinguishable using deep learning-based side-channel analysis.

Tags

Software Security
Machine Learning