Multi-level Chaotic Maps for 3D Textured Model Encryption
September 25, 2017 Β· Declared Dead Β· π Science China Information Sciences
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Authors
Xin Jin, Shuyun Zhu, Le Wu, Geng Zhao, Xiaodong Li, Quan Zhou, Huimin Lu
arXiv ID
1709.08364
Category
cs.CV: Computer Vision
Cross-listed
cs.CR
Citations
33
Venue
Science China Information Sciences
Last Checked
4 months ago
Abstract
With rapid progress of Virtual Reality and Augmented Reality technologies, 3D contents are the next widespread media in many applications. Thus, the protection of 3D models is primarily important. Encryption of 3D models is essential to maintain confidentiality. Previous work on encryption of 3D surface model often consider the point clouds, the meshes and the textures individually. In this work, a multi-level chaotic maps models for 3D textured encryption was presented by observing the different contributions for recognizing cipher 3D models between vertices (point cloud), polygons and textures. For vertices which make main contribution for recognizing, we use high level 3D Lu chaotic map to encrypt them. For polygons and textures which make relatively smaller contributions for recognizing, we use 2D Arnold's cat map and 1D Logistic map to encrypt them, respectively. The experimental results show that our method can get similar performance with the other method use the same high level chaotic map for point cloud, polygons and textures, while we use less time. Besides, our method can resist more method of attacks such as statistic attack, brute-force attack, correlation attack.
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