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Professur Digital- und Schaltungstechnik
PoseFES

PoseFES


News

  • 2020-04-27 - PoseFES Datensatz mit Bildern, Begrenzungsrahmen und Körperkeypoints veröffentlicht.
  • 2023-04-05 - Paper von CVPR OmniCV 2023 workshop akzeptiert.

Abstract

Bei Interesse bitte senden Sie die unterschriene Veröffentlichungsvereinbahrung per E-Mail an Jingrui Yu. Der Datensatz is nur für nicht-kommerzielle Nutzung zugängig.

We created the real-world dataset PoseFES for evaluation purposes by extending the FES Dataset with one scenario and pose annotations. It consists of two sequences, which have been recorded in a laboratory apartment with an omnidirectional fisheye camera. The image resolution is 1680 × 1680 pixels. The first sequence, Scenario 1 (Sc1), contains 400 frames (Record 00000.png – Record 00399.png), in which three persons walk through the apartment performing daily activities. Overlapping of persons is kept very seldom for this sequence. Scenario 2 (Sc2) contains 301 frames (Record 00600.png – Record 00900.png), in which a maximum of eight persons appear at the same time. Heavy overlapping is present in most frames of this sequence. There are 735 and 2161 instances in Sc1 and Sc2, respectively.

Axis-aligned bounding boxes and keypoints are annotated for the dataset. The bounding boxes are generated using OmniPD and then adjusted manually. 17 keypoints are annotated for all persons, which conform to the keypoints provided by COCO. Two extra keypoints, shoulder center and hip center are extrapolated by averaging shoulder and hip keypoints, respectively. Annotations are available in CVAT and COCO format.

Paper

BibTeX

Wenn Sie den Datensatz in Ihrer Arbeit verwenden, bitte folgende Referenz nicht vergessen:

@InProceedings{Yu_2023_CVPR,
    author    = {Yu, Jingrui and Scheck, Tobias and Seidel, Roman and Adya, Yukti and Nandi, Dipankar and Hirtz, Gangolf},
    title     = {Human Pose Estimation in Monocular Omnidirectional Top-View Images},
    booktitle = {Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR) Workshops},
    month     = {June},
    year      = {2023},
    pages     = {6410-6419}
}