Poses of People in Art: A Data Set for Human Pose Estimation in Digital Art History
Stefanie Schneider, Ricarda Vollmer

TL;DR
This paper introduces a publicly available dataset of 2,454 art images with human pose annotations, enabling computational analysis of human figures across diverse art styles for art-historical research.
Contribution
The creation of the first open dataset of human poses in art, including detailed annotations and metadata, to support pose estimation and art-historical analysis.
Findings
Dataset covers 22 art styles and 2,454 images.
Includes 10,749 human figures with 17 keypoints each.
Supports training and validation of pose estimation models.
Abstract
Throughout the history of art, the pose, as the holistic abstraction of the human body's expression, has proven to be a constant in numerous studies. However, due to the enormous amount of data that so far had to be processed by hand, its crucial role to the formulaic recapitulation of art-historical motifs since antiquity could only be highlighted selectively. This is true even for the now automated estimation of human poses, as domain-specific, sufficiently large data sets required for training computational models are either not publicly available or not indexed at a fine enough granularity. With the Poses of People in Art data set, we introduce the first openly licensed data set for estimating human poses in art and validating human pose estimators. It consists of 2,454 images from 22 art-historical depiction styles, including those that have increasingly turned away from lifelike…
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Taxonomy
TopicsAesthetic Perception and Analysis · 3D Shape Modeling and Analysis · Human Pose and Action Recognition
