Title of article :
Detecting end-effectors on 2.5D data using geometric deformable models: Application to human pose estimation
Author/Authors :
Suau، نويسنده , , Xavier and Ruiz-Hidalgo، نويسنده , , Javier and Casas، نويسنده , , Josep R.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Abstract :
End-effectors are usually related to the location of limbs, and their reliable detection enables robust body tracking as well as accurate pose estimation. Recent innovation in depth cameras has re-stated the pose estimation problem. We focus on the information provided by these sensors, for which we borrow the name 2.5D data from the Graphics community. In this paper we propose a human pose estimation algorithm based on topological propagation. Geometric Deformable Models are used to carry out such propagation, implemented according to the Narrow Band Level Set approach. A variant of the latter method is proposed, including a density restriction which helps preserving the topological properties of the object under analysis. Principal end-effectors are extracted from a directed graph weighted with geodesic distances, also providing a skeletal-like structure describing human pose. An evaluation against reference methods is performed with promising results. The proposed solution allows a frame-wise end-effector detection, with no temporal tracking involved, which may be generalized to the tracking of other objects beyond human body.
Keywords :
Depth image , Extremities , end-effector , Human pose estimation , Range camera
Journal title :
Computer Vision and Image Understanding
Journal title :
Computer Vision and Image Understanding