D-ARTNET22 V1: a neural network framework against stolen digital artworks getting Non-Fungible Token (NFT) labels
Date
2022-05Publisher
Brac UniversityAuthor
Dipro, Farhan HasinSimran, Sheikh Saif
Akhter, Mansura
Momo, Ramisa Fariha
Musharrat, Ramisa
Metadata
Show full item recordAbstract
"Since NFT sites gained fame for selling digital arts, NFT crimes have taken a toll
on excessive amounts of digital content creators as stolen digital artworks get their
ownership changed permanently in the name of the thief, further getting sold on
humongous fortunes. Due to NFT sites not having any user or content verification
system before registration, thieves tend to take the chance of scamming even more
by adopting various forgery protocols. Artworks from social media or NFT sites are
stolen, forged, and then registered under different names. On the contrary, since
blockchains are immutable, the thief remains the owner of the stolen NFT forever
which implies that NFT sites fail to provide a secure space for hardworking digital
content creators. According to what has been researched, it is discovered that there
exists no such work relating to digital media. Despite connecting some certain dis-
joint fields, the results were not promising and thus they were not thought to be
implemented in real life. Besides, digital artwork datasets are not available online for
the purpose of this field to be served. A possible methodology can be doing exten-
sive image scraping on selective digital media platforms to extract digital artworks
that may then be modified to create a fabricated artwork dataset. This dataset can
subsequently be used to train deep learning or neural network models to distinguish
between actual and false entities. As no verification system for NFT sites has been
proposed before, it is crucial to develop a system to check the authentication of dig-
ital artworks and the user before the NFT transaction is passed into the blockchain.
Therefore, for the very first time, this paper will present a framework that will check
the originality of digital artworks before accepting them as an NFT permanently."