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OpenPose: Realtime Multi-Person 2D Pose Estimation using Part Affinity Fields

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TLDR
OpenPose is released, the first open-source realtime system for multi-person 2D pose detection, including body, foot, hand, and facial keypoints, and the first combined body and foot keypoint detector, based on an internal annotated foot dataset.
Abstract
Realtime multi-person 2D pose estimation is a key component in enabling machines to have an understanding of people in images and videos. In this work, we present a realtime approach to detect the 2D pose of multiple people in an image. The proposed method uses a nonparametric representation, which we refer to as Part Affinity Fields (PAFs), to learn to associate body parts with individuals in the image. This bottom-up system achieves high accuracy and realtime performance, regardless of the number of people in the image. In previous work, PAFs and body part location estimation were refined simultaneously across training stages. We demonstrate that a PAF-only refinement rather than both PAF and body part location refinement results in a substantial increase in both runtime performance and accuracy. We also present the first combined body and foot keypoint detector, based on an internal annotated foot dataset that we have publicly released. We show that the combined detector not only reduces the inference time compared to running them sequentially, but also maintains the accuracy of each component individually. This work has culminated in the release of OpenPose, the first open-source realtime system for multi-person 2D pose detection, including body, foot, hand, and facial keypoints.

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Learning to Predict Human Behavior from Video

Panna Felsen
TL;DR: This thesis presents a framework for learning a representation of human dynamics that can be used to estimate the 3d pose and shape of people moving in videos, and use to hallucinate the motion surrounding a single-frame snapshot.
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Proceedings ArticleDOI

Towards Digitally-Mediated Sign Language Communication

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Anonymous Person Tracking Across Multiple Camera Using Color Histogram and Body Pose Estimation

TL;DR: In this article, the authors proposed a method for tracking and re-identification of a person in multiple cameras using color-based features with posture estimation in real-time scenarios, where they used YOLOv3 for person tracking and OpenCV and OpenPose libraries for feature collection.
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What is part affinity field?

Part Affinity Fields (PAFs) are a nonparametric representation used in the proposed method to associate body parts with individuals in an image. They are used to learn the spatial relationships between body parts and enable the detection of multiple people's 2D pose in real-time.