Recommendation systems have been widely used in various domains such as music, films, e-shopping etc. After mostly avoiding digitization, the art world has recently reached a technological turning point due to the pandemic, making online sales grow significantly as well as providing quantitative online data about artists and artworks. In this work, we present a content-based recommendation system on contemporary art relying on images of artworks and contextual metadata of artists. We gathered and annotated artworks with advanced and art-specific information to create a completely unique database that was used to train our models. With this information, we built a proximity graph between artworks. Similarly, we used NLP techniques to characterize the practices of the artists and we extracted information from exhibitions and other event history to create a proximity graph between artists. The power of graph analysis enables us to provide an artwork recommendation system based on a combination of visual and contextual information from artworks and artists. After an assessment by a team of art specialists, we get an average final rating of 75% of meaningful artworks when compared to their professional evaluations.
翻译:在音乐、电影、电子购物等各个领域,建议系统被广泛用于音乐、电影、电子购物等各个领域。在基本上避免数字化之后,艺术世界最近由于这一流行病而达到了技术转折点,使在线销售大幅增长,并提供了有关艺术家和艺术品的定量在线数据。在这项工作中,我们提出了一个基于内容的当代艺术推荐系统,依靠艺术作品的图像和艺术家的背景元数据。我们收集了先进和具体艺术信息的附加说明的艺术作品,以创建一个完全独特的数据库,用来培训我们的模型。有了这一信息,我们在艺术作品之间建立了一个近距离图。同样,我们利用NLP技术来描述艺术家的做法,并从展览和其他事件历史中提取信息,以创建艺术家之间的近距离图。图分析的力量使我们能够提供基于艺术作品和艺术家的视觉和背景信息的组合的艺术推荐系统。经过一个艺术专家团队的评估,我们得到与专业评估相比,75%的有意义的艺术作品的平均最后评级为75%。