Journal Article10.1007/s00530-023-01127-5
Robust zero-watermarking algorithm for diffusion-weighted images based on multiscale feature fusion
Zhangyu Liu,Zhi Li,Youliang Tian +2 more
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TL;DR: The experimental results show that the proposed algorithm is robust against various intentional or unintentional attacks on medical image processing, such as noise, filtering, JPEG compression and geometric attacks, and it is more robust than traditional robust zero-watermarking methods.
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About: This article is published in Multimedia Systems. The article was published on 05 Jul 2023. The article focuses on the topics: Digital watermarking & Pattern recognition (psychology).
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Citations
Image Robust Watermarking Based on Improved Invariant Feature Matrix and Chaotic Map
Niansheng Liu,Rongting Xu +1 more
- 01 Dec 2023
TL;DR: A robust and secure watermarking approach using improved invariant feature matrix and chaotic map and the construct of logic table considers not only the robustness against geometric attacks, but also the micro-variable sensitivity and uniqueness of the watermarked cover image.
Zero watermarking algorithm for BIM data based on distance partitioning and local feature
Qianwen Zhou,Na Ren,Changqing Zhu,Qifei Zhou +3 more
TL;DR: Zero watermarking algorithm for BIM data based on distance partitioning and local feature is proposed to protect BIM data copyright. The algorithm constructs watermark information according to the characteristics of the original data without changing the data structure and data accuracy.
ATG-CHFMs: Accurate Ternary Generalized Chebyshev–Fourier Moments for Stereo Image Zero-Watermarking
Hongxin Wang,Panpan Niu,Maoying Deng,Hongxin Wang,Panpan Niu,Maoying Deng +5 more
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