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Fast Online Upper Body Pose Estimation from Video
Author(s) -
Ming-Ching Chang,
Honggang Qi,
Xin Wang,
Hong Cheng,
Siwei Lyu
Publication year - 2015
Language(s) - English
Resource type - Conference proceedings
DOI - 10.5244/c.29.104
Subject(s) - pose , computer science , artificial intelligence , benchmark (surveying) , computer vision , frame (networking) , 3d pose estimation , estimation , frame rate , telecommunications , management , geodesy , economics , geography
Estimation of human body poses from video is an important problem in computer vision with many applications. Most existing methods for video pose estimation are offline in nature, where all frames in the video are used in the process to estimate the body pose in each frame. In this work, we describe a fast online video upper body pose estimation method (CDBN-MODEC) that is based on a conditional dynamic Bayesian network model, which predicts upper body pose in a frame without using information from future frames. Our method combines fast single image based pose estimation methods with the temporal correlation of poses between frames. We collect a new high frame rate upper body pose dataset that better reflects practical scenarios calling for fast online video pose estimation. When evaluated on this dataset and the VideoPose2 benchmark dataset, CDBN-MODEC achieves improvements in both performance and running efficiency over several state-of-art online video pose estimation methods.

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