Reconstructing 3D face shapes from single 2D images using an adaptive deformation model

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Abstract

The Representational Power (RP) of an example-based model is its capability to depict a new 3D face for a given 2D face image. In this contribution, a novel approach is proposed to increase the RP of the 3D reconstruction PCA-based model by deforming a set of examples in the training dataset. By adding these deformed samples together with the original training samples we gain more RP. A 3D PCA-based model is adapted for each new input face image by deforming 3D faces in the training data set. This adapted model is used to reconstruct the 3D face shape for the given input 2D near frontal face image. Our experimental results justify that the proposed adaptive model considerably improves the RP of the conventional PCA-based model. © 2013 Springer International Publishing.

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Maghari, A. Y. A., Venkat, I., Liao, I. Y., & Belaton, B. (2013). Reconstructing 3D face shapes from single 2D images using an adaptive deformation model. In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 8237 LNCS, pp. 300–310). https://doi.org/10.1007/978-3-319-02958-0_28

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