Keypoint Recognition for 3D Head Model Using Geometry Image

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Abstract:

This paper presents a novel and efficient 3D head model keypoint recognition framework based on the geometry image. Based on conformal mapping and diffusion scale space, our method can utilize the SIFT method to extract and describe the keypoint of 3D head model. We use this framework to identify the keypoint of the human head. The experiments shows the robust and efficiency of our method.

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287-290

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October 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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