Levenberg–Marquardt deep neural watermarking for 3D mesh using nearest centroid salient point learning
Modigari Narendra,
M. L. Valarmathi,
L. Jani Anbarasi
et al.
Abstract:Watermarking is one of the crucial techniques in the domain of information security, preventing the exploitation of 3D Mesh models in the era of Internet. In 3D Mesh watermark embedding, moderately perturbing the vertices is commonly required to retain them in certain pre-arranged relationship with their neighboring vertices. This paper proposes a novel watermarking authentication method, called Nearest Centroid Discrete Gaussian and Levenberg–Marquardt (NCDG–LV), for distortion detection and recovery using sa… Show more
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