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Journal ArticleDOI

A Secret 3D Model Sharing Scheme with Reversible Data Hiding Based on Space Subdivision

Yuan-Yu Tsai
- 01 Mar 2016 - 
- Vol. 7, Iss: 1, pp 1-14
TLDR
This technique is simple and has proven to be a feasible secret 3D model sharing scheme for point geometries based on space subdivision that supports reversible data hiding and the share values have higher levels of privacy and improved robustness.
Abstract
Secret sharing is a highly relevant research field, and its application to 2D images has been thoroughly studied. However, secret sharing schemes have not kept pace with the advances of 3D models. With the rapid development of 3D multimedia techniques, extending the application of secret sharing schemes to 3D models has become necessary. In this study, an innovative secret 3D model sharing scheme for point geometries based on space subdivision is proposed. Each point in the secret point geometry is first encoded into a series of integer values that fall within [0, p ? 1], where p is a predefined prime number. The share values are derived by substituting the specified integer values for all coefficients of the sharing polynomial. The surface reconstruction and the sampling concepts are then integrated to derive a cover model with sufficient model complexity for each participant. Finally, each participant has a separate 3D stego model with embedded share values. Experimental results show that the proposed technique supports reversible data hiding and the share values have higher levels of privacy and improved robustness. This technique is simple and has proven to be a feasible secret 3D model sharing scheme.

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