Saved in:
Bibliographic Details
Main Authors: Wang, Shuxun, Lei, Yunfei, Zhang, Ziqi, Liu, Wei, Liu, Haowei, Yang, Li, Li, Wenjuan, Li, Bing, Hu, Weiming
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2402.16872
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866909352215969792
author Wang, Shuxun
Lei, Yunfei
Zhang, Ziqi
Liu, Wei
Liu, Haowei
Yang, Li
Li, Wenjuan
Li, Bing
Hu, Weiming
author_facet Wang, Shuxun
Lei, Yunfei
Zhang, Ziqi
Liu, Wei
Liu, Haowei
Yang, Li
Li, Wenjuan
Li, Bing
Hu, Weiming
contents With the rise of "Metaverse" and "Web 3.0", Non-Fungible Token (NFT) has emerged as a kind of pivotal digital asset, garnering significant attention. By the end of March 2024, more than 1.7 billion NFTs have been minted across various blockchain platforms. To effectively locate a desired NFT, conducting searches within a vast array of NFTs is essential. The challenge in NFT retrieval is heightened due to the high degree of similarity among different NFTs, regarding regional and semantic aspects. In this paper, we will introduce a benchmark dataset named "NFT Top1000 Visual-Text Dataset" (NFT1000), containing 7.56 million image-text pairs, and being collected from 1000 most famous PFP1 NFT collections2 by sales volume on the Ethereum blockchain. Based on this dataset and leveraging the CLIP series of pre-trained models as our foundation, we propose the dynamic masking fine-tuning scheme. This innovative approach results in a 7.4\% improvement in the top1 accuracy rate, while utilizing merely 13\% of the total training data (0.79 million vs. 6.1 million). We also propose a robust metric Comprehensive Variance Index (CVI) to assess the similarity and retrieval difficulty of visual-text pairs data. The dataset will be released as an open-source resource. For more details, please refer to: https://github.com/ShuxunoO/NFT-Net.git.
format Preprint
id arxiv_https___arxiv_org_abs_2402_16872
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle NFT1000: A Cross-Modal Dataset for Non-Fungible Token Retrieval
Wang, Shuxun
Lei, Yunfei
Zhang, Ziqi
Liu, Wei
Liu, Haowei
Yang, Li
Li, Wenjuan
Li, Bing
Hu, Weiming
Information Retrieval
Computing methodologies Image representations
E.2
With the rise of "Metaverse" and "Web 3.0", Non-Fungible Token (NFT) has emerged as a kind of pivotal digital asset, garnering significant attention. By the end of March 2024, more than 1.7 billion NFTs have been minted across various blockchain platforms. To effectively locate a desired NFT, conducting searches within a vast array of NFTs is essential. The challenge in NFT retrieval is heightened due to the high degree of similarity among different NFTs, regarding regional and semantic aspects. In this paper, we will introduce a benchmark dataset named "NFT Top1000 Visual-Text Dataset" (NFT1000), containing 7.56 million image-text pairs, and being collected from 1000 most famous PFP1 NFT collections2 by sales volume on the Ethereum blockchain. Based on this dataset and leveraging the CLIP series of pre-trained models as our foundation, we propose the dynamic masking fine-tuning scheme. This innovative approach results in a 7.4\% improvement in the top1 accuracy rate, while utilizing merely 13\% of the total training data (0.79 million vs. 6.1 million). We also propose a robust metric Comprehensive Variance Index (CVI) to assess the similarity and retrieval difficulty of visual-text pairs data. The dataset will be released as an open-source resource. For more details, please refer to: https://github.com/ShuxunoO/NFT-Net.git.
title NFT1000: A Cross-Modal Dataset for Non-Fungible Token Retrieval
topic Information Retrieval
Computing methodologies Image representations
E.2
url https://arxiv.org/abs/2402.16872