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BlazePose: On-device Real-time Body Pose tracking

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 Added by Valentin Bazarevsky
 Publication date 2020
and research's language is English




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We present BlazePose, a lightweight convolutional neural network architecture for human pose estimation that is tailored for real-time inference on mobile devices. During inference, the network produces 33 body keypoints for a single person and runs at over 30 frames per second on a Pixel 2 phone. This makes it particularly suited to real-time use cases like fitness tracking and sign language recognition. Our main contributions include a novel body pose tracking solution and a lightweight body pose estimation neural network that uses both heatmaps and regression to keypoint coordinates.



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156 - Pu Zhao , Wei Niu , Geng Yuan 2020
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