用于拉斐尔绘画作品视觉分析和归属的深度迁移学习

IF 2.6 1区 艺术学 Q2 CHEMISTRY, ANALYTICAL
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引用次数: 0

摘要

摘要 对艺术品进行视觉分析和鉴定是艺术史和艺术评论中极具挑战性的核心任务。这项初步研究为学者们检查和鉴定有限类别的绘画作品提供了一种计算工具,重点关注拉斐尔-桑齐奥-达-乌尔比诺(Raffaello Sanzio da Urbino,更广为人知的名字是拉斐尔)的绘画作品。我们将迁移学习应用于 ResNet50 深度神经网络的特征提取,并使用支持向量机(SVM)二元分类器支持鉴定。边缘检测和分析算法被认为是捕捉拉斐尔艺术风格精髓(包括笔触特征)的关键,我们也将其整合在一起,并将其作为一种鉴定工具。我们开发的机器学习方法在基于图像的分类任务中的准确率高达 98%,验证时使用的测试集是拉斐尔的知名真迹。当然,完整的鉴定协议依赖于出处、历史、材料研究、图标学、作品状况研究等等。因此,我们的工作只是完整鉴定协议的一部分。我们的研究结果表明,机器学习方法如果能被了解上下文的专家恰当地运用,可以增强和扩展传统的视觉分析,从而解决艺术品鉴定中的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep transfer learning for visual analysis and attribution of paintings by Raphael

Abstract

Visual analysis and authentication of artworks are challenging tasks central to art history and criticism. This preliminary study presents a computational tool for scholars examining and authenticating a restricted class of paintings, with a specific focus on the paintings of Raffaello Sanzio da Urbino, more popularly known as Raphael. We applied transfer learning to the ResNet50 deep neural network for feature extraction and used a support vector machine (SVM) binary classifier in support of authentication. Edge detection and analysis algorithms, considered to be crucial for capturing the essence of Raphael’s artistic style, including the brushwork signatures, were also integrated and are used as an authentication tool. The machine learning approach we have developed demonstrates an accuracy of 98% in image-based classification tasks during validation using a test set of well known and authentic paintings by Raphael. Of course, a full authentication protocol relies on provenance, history, material studies, iconography, studies of a work’s condition, and more. Our work, then, contributes to just a portion of a full authentication protocol. Our findings suggest that machine learning methods, properly employed by experts aware of context, may enhance and expand traditional visual analysis for problems in art authentication.

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来源期刊
Heritage Science
Heritage Science Arts and Humanities-Conservation
CiteScore
4.00
自引率
20.00%
发文量
183
审稿时长
19 weeks
期刊介绍: Heritage Science is an open access journal publishing original peer-reviewed research covering: Understanding of the manufacturing processes, provenances, and environmental contexts of material types, objects, and buildings, of cultural significance including their historical significance. Understanding and prediction of physico-chemical and biological degradation processes of cultural artefacts, including climate change, and predictive heritage studies. Development and application of analytical and imaging methods or equipments for non-invasive, non-destructive or portable analysis of artwork and objects of cultural significance to identify component materials, degradation products and deterioration markers. Development and application of invasive and destructive methods for understanding the provenance of objects of cultural significance. Development and critical assessment of treatment materials and methods for artwork and objects of cultural significance. Development and application of statistical methods and algorithms for data analysis to further understanding of culturally significant objects. Publication of reference and corpus datasets as supplementary information to the statistical and analytical studies above. Description of novel technologies that can assist in the understanding of cultural heritage.
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