Artist, year and style classification of fine-art paintings are generally achieved using standard image classification methods, image segmentation, or more recently, convolutional neural networks (CNNs). This works aims to use newly developed face recognition methods such as FaceNet that use CNNs to cluster fine-art paintings using the extracted faces in the paintings, which are found abundantly. A dataset consisting of over 80,000 paintings from over 1000 artists is chosen, and three separate face recognition and clustering tasks are performed. The produced clusters are analyzed by the file names of the paintings and the clusters are named by their majority artist, year range, and style. The clusters are further analyzed and their performance metrics are calculated. The study shows promising results as the artist, year, and styles are clustered with an accuracy of 58.8, 63.7, and 81.3 percent, while the clusters have an average purity of 63.1, 72.4, and 85.9 percent.
翻译:艺术家、美术作品的年和风格分类一般采用标准图像分类方法、图像分割,或最近采用进化神经网络(CNNs)实现。这项工作的目的是使用新开发的面部识别方法,如FaceNet,使用CNNs使用绘画中提取的面孔对美术绘画进行分组,这些图画被发现很多。数据集由1 000多名艺术家的80,000多幅绘画组成,并进行了三个不同的面部识别和组合任务。所制作的群集由绘画的档案名称进行分析,群集由他们的主要艺术家、年份范围和风格命名。对群集进行了进一步分析,并计算了它们的性能指标。研究显示,艺术家、年份和风格组合有希望的结果,精确度为58.83.7%、63.7%和81.3 %,而群集平均纯度为63.1、72.4和85.9 %。