Face Mesh V2 landmark model (ONNX)
Google MediaPipe's Face Landmarks Detector (Face Mesh V2), converted to ONNX.
- Input
[N,256,256,3]RGB in[0,1]โ the rotated, cropped face ROI. - Outputs
[N,1,1,1434]= 478 landmarks ร (x,y,z) in 256-crop pixels, plus a face-presence logit. Landmarks project back through the inverse ROI transform; a 146-landmark subset feeds the blendshape model.
License
Apache-2.0 โ this graph is a direct ONNX conversion of a Google
MediaPipe model (Apache-2.0 code
AND weights). Conversion + numerical-parity proof (vs the Python mediapipe
reference): scripts/export-facecap-onnx.py,
contract in docs/MOCAP_SPIKE.md.
How it is used
Mirror of one graph from fernandotonon/QtMeshEditor-models
(mocap/โฆ), which QtMeshEditor
downloads on first use for its Performance Capture feature (video/webcam โ
facial morph + head + full-body skeletal animation, epic #869). This standalone
repo is for discoverability; the app fetches from the aggregate repo.
Inference Providers NEW
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