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📄 Abstract
Abstract: The protection of intellectual property has become critical due to the rapid
growth of three-dimensional content in digital media. Unlike traditional images
or videos, 3D point clouds present unique challenges for copyright enforcement,
as they are especially vulnerable to a range of geometric and non-geometric
attacks that can easily degrade or remove conventional watermark signals. In
this paper, we address these challenges by proposing a robust deep neural
watermarking framework for 3D point cloud copyright protection and ownership
verification. Our approach embeds binary watermarks into the singular values of
3D point cloud blocks using spectral decomposition, i.e. Singular Value
Decomposition (SVD), and leverages the extraction capabilities of Deep Learning
using PointNet++ neural network architecture. The network is trained to
reliably extract watermarks even after the data undergoes various attacks such
as rotation, scaling, noise, cropping and signal distortions. We validated our
method using the publicly available ModelNet40 dataset, demonstrating that deep
learning-based extraction significantly outperforms traditional SVD-based
techniques under challenging conditions. Our experimental evaluation
demonstrates that the deep learning-based extraction approach significantly
outperforms existing SVD-based methods with deep learning achieving bitwise
accuracy up to 0.83 and Intersection over Union (IoU) of 0.80, compared to SVD
achieving a bitwise accuracy of 0.58 and IoU of 0.26 for the Crop (70%) attack,
which is the most severe geometric distortion in our experiment. This
demonstrates our method's ability to achieve superior watermark recovery and
maintain high fidelity even under severe distortions.
Authors (4)
Khandoker Ashik Uz Zaman
Mohammad Zahangir Alam
Mohammed N. M. Ali
Mahdi H. Miraz
Submitted
October 31, 2025
Print ISSN: 2516-0281, Online ISSN: 2516-029X, pp. 17-30, Vol. 9,
No. 4, 1 October 2025
Key Contributions
This paper proposes a robust deep neural watermarking framework for 3D point clouds to protect intellectual property. It embeds binary watermarks into singular values using SVD and leverages PointNet++ for reliable extraction, demonstrating robustness against various attacks like rotation, scaling, and noise.
Business Value
Provides a technical solution for protecting valuable 3D assets in digital media, crucial for industries relying on 3D modeling, gaming, and virtual/augmented reality.