Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Perceptual Hashing of Deep Convolutional Neural Networks for Model Copy Detection

View through CrossRef
<p>This paper has been accepted by ACM TOMM. https://dl.acm.org/doi/pdf/10.1145/3572777</p> <p><br></p> <p>In recent years, many model intellectual property (IP) proof methods for IP protection have been proposed, such as model watermarking and model fingerprinting. However, as an important part of the model IP protection system, the model copy detection task has not received enough attention. With the increasing number of neural network models transmitted and deployed on the Internet, the search for similar models is in great demand, which concurrently triggers the security problem of copy detection of models for IP protection. Due to the high computational complexity, both model watermarking and model fingerprinting lack the capability to efficiently find suspected infringing models among tens of millions of models. In this paper, inspired by the hash-based image retrieval methods, we propose a perceptual hashing algorithm for convolutional neural networks (CNNs). The proposed perceptual hashing algorithm can convert the weights of CNNs to fixed-length binary hash codes so that the lightly modified version has the similar hash code as the original model. By comparing the similarity of a pair of hash codes between a query model and a test model in the model library, the similar versions of a query model can be retrieved efficiently. To the best of our knowledge, this is the first perceptual hashing algorithm for CNNs. The experiment performed on a model library containing 3,565 models indicates that our proposed perceptual hashing scheme has a superior copy detection performance.</p> <p><br></p> <p><br></p>
Title: Perceptual Hashing of Deep Convolutional Neural Networks for Model Copy Detection
Description:
<p>This paper has been accepted by ACM TOMM.
https://dl.
acm.
org/doi/pdf/10.
1145/3572777</p> <p><br></p> <p>In recent years, many model intellectual property (IP) proof methods for IP protection have been proposed, such as model watermarking and model fingerprinting.
However, as an important part of the model IP protection system, the model copy detection task has not received enough attention.
With the increasing number of neural network models transmitted and deployed on the Internet, the search for similar models is in great demand, which concurrently triggers the security problem of copy detection of models for IP protection.
Due to the high computational complexity, both model watermarking and model fingerprinting lack the capability to efficiently find suspected infringing models among tens of millions of models.
In this paper, inspired by the hash-based image retrieval methods, we propose a perceptual hashing algorithm for convolutional neural networks (CNNs).
The proposed perceptual hashing algorithm can convert the weights of CNNs to fixed-length binary hash codes so that the lightly modified version has the similar hash code as the original model.
By comparing the similarity of a pair of hash codes between a query model and a test model in the model library, the similar versions of a query model can be retrieved efficiently.
To the best of our knowledge, this is the first perceptual hashing algorithm for CNNs.
The experiment performed on a model library containing 3,565 models indicates that our proposed perceptual hashing scheme has a superior copy detection performance.
</p> <p><br></p> <p><br></p>.

Related Results

Perceptual Hashing of Deep Convolutional Neural Networks for Model Copy Detection
Perceptual Hashing of Deep Convolutional Neural Networks for Model Copy Detection
This paper has been accepted by ACM TOMM. https://dl.acm.org/doi/pdf/10.1145/3572777 In recent years, many model intellectual property (IP) proof methods for IP pro...
Convolutional Neural Network Copy Detection with Neural Network Perceptual Hashing
Convolutional Neural Network Copy Detection with Neural Network Perceptual Hashing
In recent years, many model intellectual property (IP) proof methods for IP protection have been proposed, such as model watermarking and model fingerprinting. However, as an impor...
Graph convolutional neural networks for 3D data analysis
Graph convolutional neural networks for 3D data analysis
(English) Deep Learning allows the extraction of complex features directly from raw input data, eliminating the need for hand-crafted features from the classical Machine Learning p...
On the role of network dynamics for information processing in artificial and biological neural networks
On the role of network dynamics for information processing in artificial and biological neural networks
Understanding how interactions in complex systems give rise to various collective behaviours has been of interest for researchers across a wide range of fields. However, despite ma...
Fuzzy Chaotic Neural Networks
Fuzzy Chaotic Neural Networks
An understanding of the human brain’s local function has improved in recent years. But the cognition of human brain’s working process as a whole is still obscure. Both fuzzy logic ...
Bilinguals’ speech perception in noise: Perceptual and neural associations
Bilinguals’ speech perception in noise: Perceptual and neural associations
The current study characterized subcortical speech sound processing among monolinguals and bilinguals in quiet and challenging listening conditions and examined the relation betwee...
Using local convolutional neural networks for genomic prediction
Using local convolutional neural networks for genomic prediction
ABSTRACT The prediction of breeding values and phenotypes is of central importance for both livestock and crop breeding. With increasing computational power and mor...
Memorization capacity and robustness of neural networks
Memorization capacity and robustness of neural networks
Machine learning, and deep learning in particular, has recently undergone rapid advancements. To contribute to a rigorous understanding of deep learning, this thesis explores two d...

Back to Top