Contemporary Art Authentication with Large-Scale Classification

IF 3.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Todd Dobbs, Abdullah-Al-Raihan Nayeem, Isaac Cho, Zbigniew Ras
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引用次数: 0

Abstract

Art authentication is the process of identifying the artist who created a piece of artwork and is manifested through events of provenance, such as art gallery exhibitions and financial transactions. Art authentication has visual influence via the uniqueness of the artist’s style in contrast to the style of another artist. The significance of this contrast is proportional to the number of artists involved and the degree of uniqueness of an artist’s collection. This visual uniqueness of style can be captured in a mathematical model produced by a machine learning (ML) algorithm on painting images. Art authentication is not always possible as provenance can be obscured or lost through anonymity, forgery, gifting, or theft of artwork. This paper presents an image-only art authentication attribute marker of contemporary art paintings for a very large number of artists. The experiments in this paper demonstrate that it is possible to use ML-generated models to authenticate contemporary art from 2368 to 100 artists with an accuracy of 48.97% to 91.23%, respectively. This is the largest effort for image-only art authentication to date, with respect to the number of artists involved and the accuracy of authentication.
大规模分类的当代艺术鉴定
艺术鉴定是鉴定创作一件艺术品的艺术家的过程,通过美术馆展览和金融交易等事件的来源来体现。艺术鉴定通过艺术家风格的独特性与其他艺术家风格的对比而产生视觉影响。这种对比的重要性与参与的艺术家数量和艺术家收藏的独特性程度成正比。这种风格的视觉独特性可以通过机器学习(ML)算法对绘画图像产生的数学模型来捕捉。艺术认证并不总是可能的,因为出处可能会因匿名、伪造、赠送或盗窃而模糊或丢失。本文为非常多的艺术家提供了一种当代艺术绘画的纯图像艺术认证属性标记。本文的实验表明,使用ml生成的模型对2368 ~ 100位艺术家的当代艺术作品进行认证是可能的,准确率分别为48.97% ~ 91.23%。就涉及的艺术家数量和认证的准确性而言,这是迄今为止在纯图像艺术认证方面所做的最大努力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Big Data and Cognitive Computing
Big Data and Cognitive Computing Business, Management and Accounting-Management Information Systems
CiteScore
7.10
自引率
8.10%
发文量
128
审稿时长
11 weeks
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