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Learning to Reverse DNNs from AI Programs Automatically

2022-05-20 04:17:19
Simin Chen, Hamed Khanpour, Cong Liu, Wei Yang

Abstract

With the privatization deployment of DNNs on edge devices, the security of on-device DNNs has raised significant concern. To quantify the model leakage risk of on-device DNNs automatically, we propose NNReverse, the first learning-based method which can reverse DNNs from AI programs without domain knowledge. NNReverse trains a representation model to represent the semantics of binary code for DNN layers. By searching the most similar function in our database, NNReverse infers the layer type of a given function's binary code. To represent assembly instructions semantics precisely, NNReverse proposes a more fine-grained embedding model to represent the textual and structural-semantic of assembly functions.

Abstract (translated)

URL

https://arxiv.org/abs/2205.10364

PDF

https://arxiv.org/pdf/2205.10364.pdf


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