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openpifpaf0.13.11

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PifPaf: Composite Fields for Human Pose Estimation

pip install openpifpaf

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Requires Python

>=3.7

Dependencies

    openpifpaf

    Continuously tested on Linux, MacOS and Windows: Tests deploy-guide Downloads
    New 2021 paper:

    OpenPifPaf: Composite Fields for Semantic Keypoint Detection and Spatio-Temporal Association
    Sven Kreiss, Lorenzo Bertoni, Alexandre Alahi, 2021.

    Many image-based perception tasks can be formulated as detecting, associating and tracking semantic keypoints, e.g., human body pose estimation and tracking. In this work, we present a general framework that jointly detects and forms spatio-temporal keypoint associations in a single stage, making this the first real-time pose detection and tracking algorithm. We present a generic neural network architecture that uses Composite Fields to detect and construct a spatio-temporal pose which is a single, connected graph whose nodes are the semantic keypoints (e.g., a person's body joints) in multiple frames. For the temporal associations, we introduce the Temporal Composite Association Field (TCAF) which requires an extended network architecture and training method beyond previous Composite Fields. Our experiments show competitive accuracy while being an order of magnitude faster on multiple publicly available datasets such as COCO, CrowdPose and the PoseTrack 2017 and 2018 datasets. We also show that our method generalizes to any class of semantic keypoints such as car and animal parts to provide a holistic perception framework that is well suited for urban mobility such as self-driving cars and delivery robots.

    Previous CVPR 2019 paper.

    Guide

    Detailed documentation is in our OpenPifPaf Guide. For developers, there is also the DEV Guide which is the same guide but based on the latest code in the main branch.

    Examples

    example image with overlaid pose predictions

    Image credit: "Learning to surf" by fotologic which is licensed under CC-BY-2.0.
    Created with:

    pip3 install matplotlib openpifpaf
    python3 -m openpifpaf.predict docs/coco/000000081988.jpg --image-output
    

    Here is the tutorial for body, foot, face and hand keypoints. Example: example image with overlaid wholebody pose predictions

    Image credit: Photo by Lokomotive74 which is licensed under CC-BY-4.0.
    Created with:

    python -m openpifpaf.predict guide/wholebody/soccer.jpeg \
      --checkpoint=shufflenetv2k30-wholebody --line-width=2 --image-output
    

    Here is the tutorial for car keypoints. Example: example image cars

    Image credit: Photo by Ninaras which is licensed under CC-BY-SA 4.0.

    Created with:

    python -m openpifpaf.predict guide/images/peterbourg.jpg \
      --checkpoint shufflenetv2k16-apollo-24 -o images \
      --instance-threshold 0.05 --seed-threshold 0.05 \
      --line-width 4 --font-size 0
    

    Here is the tutorial for animal keypoints (dogs, cats, sheep, horses and cows). Example: example image cars

    python -m openpifpaf.predict guide/images tappo_loomo.jpg \
      --checkpoint=shufflenetv2k30-animalpose \
      --line-width=6 --font-size=6 --white-overlay=0.3 \
      --long-edge=500
    

    Commercial License

    The open source license is in the LICENSE file. This software is also available for licensing via the EPFL Technology Transfer Office (https://tto.epfl.ch/, [email protected]).