Image compositions are helpful in the study of image structures and assist in discovering the semantics of the underlying scene portrayed across art forms and styles. With the digitization of artworks in recent years, thousands of images of a particular scene or narrative could potentially be linked together. However, manually linking this data with consistent objectiveness can be a highly challenging and time-consuming task. In this work, we present a novel approach called Image Composition Canvas (ICC++) to compare and retrieve images having similar compositional elements. ICC++ is an improvement over ICC specializing in generating low and high-level features (compositional elements) motivated by Max Imdahl's work. To this end, we present a rigorous quantitative and qualitative comparison of our approach with traditional and state-of-the-art (SOTA) methods showing that our proposed method outperforms all of them. In combination with deep features, our method outperforms the best deep learning-based method, opening the research direction for explainable machine learning for digital humanities. We will release the code and the data post-publication.
翻译:图像的构成有助于研究图像结构,有助于发现艺术形式和风格所描绘的基本场景的语义。 随着近年来艺术作品的数字化,数千张特定场景或叙事的图像有可能连接在一起。 但是,将这些数据与一贯客观性进行人工联系可能是一项非常困难和耗时的任务。 在这项工作中,我们提出了一个叫作图像构成Canvas(ICC+++)的新颖方法,以比较和检索具有类似构件元素的图像。 ICC++ 是相对于专门制作由Max Imdahl 作品驱动的低高层次特征(合成元素)的ICC的改进。 为此,我们将对我们的方法与传统和最新艺术(SOTA)方法进行严格的定量和定性比较,表明我们所提议的方法超越了所有方法。与深度特征相结合,我们的方法超越了以深层次学习为基础的最佳方法,打开了研究方向,用于数字人类学的机器学习。 我们将发布代码和数据后版。