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Datasets/PoPArt

PoPArt

Poses of People in Art: A Data Set for Human Pose Estimation in Digital Art History

ImagesCreative Commons Attribution 4.0 InternationalIntroduced 2022-07-06

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 representations of the body since the 19th century. A total of 10,749 human figures are precisely enclosed by rectangular bounding boxes, with a maximum of four per image labeled by up to 17 keypoints; among these are mainly joints such as elbows and knees. For machine learning purposes, the data set is divided into three subsets—training, validation, and testing—, that follow the established JSON-based Microsoft COCO format, respectively. Each image annotation, in addition to mandatory fields, provides metadata from the art-historical online encyclopedia WikiArt.

Benchmarks

1 Image, 2*2 Stitchi/mAP1 Image, 2*2 Stitchi/mAP@0.51 Image, 2*2 Stitchi/mAP@0.752D Human Pose Estimation/mAP2D Human Pose Estimation/mAP@0.52D Human Pose Estimation/mAP@0.753D/mAP3D/mAP@0.53D/mAP@0.75Multi-Person Pose Estimation/mAPMulti-Person Pose Estimation/mAP@0.5Multi-Person Pose Estimation/mAP@0.75Pose Estimation/mAPPose Estimation/mAP@0.5Pose Estimation/mAP@0.75

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3
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15

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1 Image, 2*2 Stitchi2D Human Pose Estimation2D Object Detection3DMulti-Person Pose EstimationObject DetectionPose EstimationSemi-Supervised Human Pose Estimation