Visible to the public Protecting the Intellectual Properties of Digital Watermark Using Deep Neural Network

TitleProtecting the Intellectual Properties of Digital Watermark Using Deep Neural Network
Publication TypeConference Paper
Year of Publication2019
AuthorsDeeba, Farah, Tefera, Getenet, Kun, She, Memon, Hira
Conference Name2019 4th International Conference on Information Systems Engineering (ICISE)
Date PublishedMay 2019
PublisherIEEE
ISBN Number978-1-7281-2558-9
Keywordsartificial intelligence, composability, counter-watermark attacks, deep learning models, Deep Neural Network, Digital Watermark, DNN algorithms, Embedded, embedding watermarks, image processing, industrial property, intellectual property, intellectual property security, ip protection, learning (artificial intelligence), machine learning, natural language processing, neural nets, ownership verification, policy-based governance, pubcrawl, resilience, Resiliency, security, Speech recognition, watermark, Watermarking
Abstract

Recently in the vast advancement of Artificial Intelligence, Machine learning and Deep Neural Network (DNN) driven us to the robust applications. Such as Image processing, speech recognition, and natural language processing, DNN Algorithms has succeeded in many drawbacks; especially the trained DNN models have made easy to the researchers to produces state-of-art results. However, sharing these trained models are always a challenging task, i.e. security, and protection. We performed extensive experiments to present some analysis of watermark in DNN. We proposed a DNN model for Digital watermarking which investigate the intellectual property of Deep Neural Network, Embedding watermarks, and owner verification. This model can generate the watermarks to deal with possible attacks (fine tuning and train to embed). This approach is tested on the standard dataset. Hence this model is robust to above counter-watermark attacks. Our model accurately and instantly verifies the ownership of all the remotely expanded deep learning models without affecting the model accuracy for standard information data.

URLhttps://ieeexplore.ieee.org/document/8954580
DOI10.1109/ICISE.2019.00025
Citation Keydeeba_protecting_2019