Human Pose Tracking from Monocular Image Sequences
Access Status
Open access
Authors
Tian, Jinglan
Date
2016Supervisor
Assoc. Prof. Ling Li
Assoc. Prof. Wan-Quan Liu
Type
Thesis
Award
PhD
Metadata
Show full item recordFaculty
Science and Engineering
School
Computing
Collection
Abstract
This thesis proposes various novel approaches for improving the performance of automatic 2D human pose tracking system including multi-scale strategy, mid-level spatial dependencies to constrain more relations of multiple body parts, additional constraints between symmetric body parts and the left/right confusion correction by a head orientation estimator. These proposed approaches are employed to develop a complete human pose tracking system. The experimental results demonstrate significant improvements of all the proposed approaches towards accuracy and efficiency.