Semi-supervised Human Pose Estimation in Art-historical Images

6 Jul 2022  ยท  Matthias Springstein, Stefanie Schneider, Christian Althaus, Ralph Ewerth ยท

Gesture as language of non-verbal communication has been theoretically established since the 17th century. However, its relevance for the visual arts has been expressed only sporadically. This may be primarily due to the sheer overwhelming amount of data that traditionally had to be processed by hand. With the steady progress of digitization, though, a growing number of historical artifacts have been indexed and made available to the public, creating a need for automatic retrieval of art-historical motifs with similar body constellations or poses. Since the domain of art differs significantly from existing real-world data sets for human pose estimation due to its style variance, this presents new challenges. In this paper, we propose a novel approach to estimate human poses in art-historical images. In contrast to previous work that attempts to bridge the domain gap with pre-trained models or through style transfer, we suggest semi-supervised learning for both object and keypoint detection. Furthermore, we introduce a novel domain-specific art data set that includes both bounding box and keypoint annotations of human figures. Our approach achieves significantly better results than methods that use pre-trained models or style transfer.

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Datasets


Introduced in the Paper:

PoPArt

Used in the Paper:

PeopleArt
Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Semi-Supervised Human Pose Estimation PoPArt HRNet-W32 mAP 52.58 # 1
mAP@0.5 63.92 # 1
mAP@0.75 57.35 # 1
Semi-Supervised Human Pose Estimation PoPArt HRNet-W32 (trained on COCO 2017 with 100 % style-transferred Material) mAP 25.18 # 4
mAP@0.5 31.67 # 4
mAP@0.75 28.13 # 3
Semi-Supervised Human Pose Estimation PoPArt HRNet-W32 (trained on COCO 2017 with 50 % style-transferred Material) mAP 24.13 # 5
mAP@0.5 30.52 # 5
mAP@0.75 26.65 # 5
Semi-Supervised Human Pose Estimation PoPArt HRNet-W32 (trained on COCO 2017 with 0 % style-transferred Material) mAP 25.25 # 3
mAP@0.5 31.73 # 3
mAP@0.75 28.10 # 4
Semi-Supervised Human Pose Estimation PoPArt HRNet-W32 (trained on PeopleArt) mAP 29.71 # 2
mAP@0.5 36.37 # 2
mAP@0.75 32.72 # 2

Methods


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