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FORTH-ModelBasedTracker/MocapNET

We present MocapNET, a real-time method that estimates the 3D human pose directly in the popular Bio Vision Hierarchy (BVH) format, given estimations of the 2D body joints originating from monocular color images. Our contributions include: (a) A novel and compact 2D pose NSRM representation. (b) A human body orientation classifier and an ensemble of orientation-tuned neural networks that regress the 3D human pose by also allowing for the decomposition of the body to an upper and lower kinematic hierarchy. This permits the recovery of the human pose even in the case of significant occlusions. (c) An efficient Inverse Kinematics solver that refines the neural-network-based solution providing 3D human pose estimations that are consistent with the limb sizes of a target person (if known). All the above yield a 33% accuracy improvement on the Human 3.6 Million (H3.6M) dataset compared to the baseline method (MocapNET) while maintaining real-time performance

927 143 +0/wk
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2d-to-3d 3d-animation 3d-pose-estimation bvh bvh-format computer-vision demo ensemble gesture-recognition mocap neural-network pose-estimation
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FORTH-ModelBasedTracker/MocapNET has +0 stars this period . 7-day velocity: 0.1%.

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Metric MocapNET StarryDivineSky Coursera NISQA
Stars 927 927927927
Forks 143 143661150
Weekly Growth +0 +0+0+0
Language C++ N/AJupyter NotebookPython
Sources 1 111
License NOASSERTION NOASSERTIONN/AMIT

Capability Radar vs StarryDivineSky

MocapNET
StarryDivineSky
Maintenance Activity 92

Last code push 21 days ago.

Community Engagement 77

Fork-to-star ratio: 15.4%. Active community forking and contributing.

Issue Burden 70

Issue data not yet available.

Growth Momentum 30

No measurable growth in the current period (first-day cold start expected).

License Clarity 30

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