[CVPR 2014] Multi-source Deep Learning for Human Pose Estimation
Visual appearance score, appearance mixture type and deformation are three important information sources for human pose estimation. This paper proposes to build a multi-source deep model in order to extract non-linear representation from these different aspects of information sources. With the deep model, the global, high-order human body articulation patterns in these information sources are extracted for pose estimation. The task for estimating body locations and the task for human detection are jointly
10 views
0
0
8 months ago 01:46:57 24
[Improved] А. A. Зализняк: О берестяных грамотах из раскопок сезона 2012 года. Лекция 2.
4 years ago 00:06:29 1
My understanding of the Manifold Hypothesis | Machine learning
5 years ago 01:12:41 25
Lecture 20 | Computer Vision
5 years ago 00:02:48 1
Timing-Based Local Descriptor for Dynamic Surfaces (CVPR 2014)
9 years ago 00:23:57 1
Dynamic Surface Modeling and Applications
9 years ago 00:00:33 3
(DetailedViews) MAP Visibility Estimation for Large-Scale Dynamic 3D Reconstruction - CVPR 2014
10 years ago 00:03:21 39
(FullVideo) MAP Visibility Estimation for Large-Scale Dynamic 3D Reconstruction - CVPR 2014
10 years ago 00:00:57 10
[CVPR 2014] Multi-source Deep Learning for Human Pose Estimation