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Dokumenttyp:
Konferenzbeitrag
Autor(en):
Tan, D. J.; Navab, N.; Tombari, F.
Titel:
Adaptive Learning-based Temporal Tracker for 3D Head Shape Models
Abstract:
We propose a learning-based 3D temporal tracker that estimates the orientation and location of the head in the 3D scene. The algorithm is based on random forest that learns the 6D pose from a class of head models. A unique attribute of our approach is the capacity to adapt the learned tracker for a specific user, i.e., after learning, the tracker can deform the shape of the learned model to a specific instance of the class in order to match the user’s head shape. To find the user’s head shape mo...     »
Stichworte:
CAMP,CAMPComputerVision,ComputerVision,bmvc
Jahr:
2017
 BibTeX