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Model base human pose tracking. Papers Real-Time Human Pose Tracking from Range Data Simultaneous Shape and Pose Adaption of Articulated Models using.

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Presentation on theme: "Model base human pose tracking. Papers Real-Time Human Pose Tracking from Range Data Simultaneous Shape and Pose Adaption of Articulated Models using."— Presentation transcript:

1 Model base human pose tracking

2 Papers Real-Time Human Pose Tracking from Range Data Simultaneous Shape and Pose Adaption of Articulated Models using Linear Optimization Both are model-based: use a given mesh to estimation pose that matches input frame.

3 Real-Time Human Pose Tracking from Range Data Key point: Extend ICP based framework to incorporate so called “free space” constraint

4 Model-based Simple Mesh Model: each part as a 3D capsules Dynamic Bayesian Network

5 Formulation

6 Pipeline Three steps: – Holding x constant, maximize the objective with respect to correspondences c – Nearest Point Search – Update Joint Locations: gradient ascent – Correct Joint Locations using Constraints

7 Constraints Bone Length – the two affected joint positions can be moved in 3D space along the capsule center line until the constraint is met

8 Constraints Free space – Constraining all points on the model surface to lie in the 3D region of space behind the measurements – Approximated by two separate constraints Silhouette – If a model point projects outside the silhouette, we project it to the closest point inside. Z-Surface – If a model point projects outside the silhouette, we project it to the closest point inside.

9 Results See paper

10 Paper 2 Key point – Proposed “differential bone coordinates” to bine the surface with bone for joint optimization

11 Basic Pipeline Iterate between – Find correspondence: covariance weighted nearest neighbor – Minimize

12 Covariance Weighted NN Each pair is weighted by the mean of covariance of the two vertices

13 Energy Minimization


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