Javascript must be enabled to continue!
A NOVEL 3-LEVEL DWT AND CNN-BASED BLIND GRAYSCALE IMAGE WATERMARKING FOR COPYRIGHT PROTECTION AGAINST ADVERSARIAL ATTACKS
View through CrossRef
Copyright protection of digital images is an important commercial requirement to individual artists and large organisations alike. Wavelet-based image watermarking methods have been in practice due to their robustness against standard geometrical and image processing attacks. Convolutional Neural Networks (CNNs)-based watermarking methods are becoming popular as they provide a new dimension to the generation of a watermarked image, which is perceptually close to the original image when trained over a large class of images, thereby eliminating the need to train on each image that is to be watermarked. However, the watermark extraction performance of CNNs when used in standalone mode reduces in the presence of adversarial examples. In this study, we combine the robustness of a multi-level Discrete Wavelet Transform (DWT) and the power of CNNs and propose a robust blind grayscale image watermarking method. In the proposed method watermark is of the same size as the original image thereby demonstrating the robustness under increased payload as well. The quality of the extracted watermark is measured using Structural Similarity Index Measure (SSIM), Peak-Signal-to-Noise ratio (PSNR) and Normalized Cross Correlation (NCC). Our proposed method provides high quality watermark extraction under geometrical, image processing and adversarial attacks including second watermarking by an attacker.
Title: A NOVEL 3-LEVEL DWT AND CNN-BASED BLIND GRAYSCALE IMAGE WATERMARKING FOR COPYRIGHT PROTECTION AGAINST ADVERSARIAL ATTACKS
Description:
Copyright protection of digital images is an important commercial requirement to individual artists and large organisations alike.
Wavelet-based image watermarking methods have been in practice due to their robustness against standard geometrical and image processing attacks.
Convolutional Neural Networks (CNNs)-based watermarking methods are becoming popular as they provide a new dimension to the generation of a watermarked image, which is perceptually close to the original image when trained over a large class of images, thereby eliminating the need to train on each image that is to be watermarked.
However, the watermark extraction performance of CNNs when used in standalone mode reduces in the presence of adversarial examples.
In this study, we combine the robustness of a multi-level Discrete Wavelet Transform (DWT) and the power of CNNs and propose a robust blind grayscale image watermarking method.
In the proposed method watermark is of the same size as the original image thereby demonstrating the robustness under increased payload as well.
The quality of the extracted watermark is measured using Structural Similarity Index Measure (SSIM), Peak-Signal-to-Noise ratio (PSNR) and Normalized Cross Correlation (NCC).
Our proposed method provides high quality watermark extraction under geometrical, image processing and adversarial attacks including second watermarking by an attacker.
Related Results
The Effect of Diagnostic Wait Time on the Survival of Patients with Diffuse Large B-Cell Lymphoma Differs Depending on International Prognostic Index
The Effect of Diagnostic Wait Time on the Survival of Patients with Diffuse Large B-Cell Lymphoma Differs Depending on International Prognostic Index
Background
Diffuse large B-cell lymphoma (DLBCL) is the most common type of NHL featured by rapid progression. Given its rapid progression, prompt diagnosis and trea...
Mitigation of Geometrical Attack in Digital Image Watermarking using Different Transform Based Functions
Mitigation of Geometrical Attack in Digital Image Watermarking using Different Transform Based Functions
The illegal act of digital multimedia data loss the value of information and integrity. The loss of information and integrity born the process of piracy of digital data. The piracy...
Digital Image Watermarking Algorithms Based on Dual Transform Domain and Self-Recovery
Digital Image Watermarking Algorithms Based on Dual Transform Domain and Self-Recovery
Abstract
In view of dual watermarking algorithm for dual two value image watermarking, the watermark information there is a gray image watermarking in the express...
A Compressed Domain Robust Video Watermarking Resists Geometric Attack
A Compressed Domain Robust Video Watermarking Resists Geometric Attack
The widespread utilization of mobile devices and the proliferation of video content, facilitated by communication networks, has unfortunately led to issues such as data piracy, ill...
Logarithmic Discrete Wavelet Transform For High Quality Medical Image Compression
Logarithmic Discrete Wavelet Transform For High Quality Medical Image Compression
Ondelette discrète logarithmique transformée pour une compression d'image médicale de grande qualité
De nos jours, la compression de l'image médicale est un process...
ProDef-MDS: A Proactive Defense Mechanism Protecting Malware Detection Systems from Adversarial Attacks
ProDef-MDS: A Proactive Defense Mechanism Protecting Malware Detection Systems from Adversarial Attacks
Malware threatens cybersecurity by enabling data theft, unauthorized access, and extortion. Traditional malware detection systems (MDS) struggle with the increasing volume and comp...
High-capacity and Robust Image Watermarking Algorithm
High-capacity and Robust Image Watermarking Algorithm
Abstract
With the development of internet, digital media can be manipulated, reproduced, and distributed conveniently over networks. However, illegal copy, transmission and...
Analisis Watermarking Menggunakan Metode Discrete Cosine Transform (DCT) dan Discrete Fourier Transform (DFT)
Analisis Watermarking Menggunakan Metode Discrete Cosine Transform (DCT) dan Discrete Fourier Transform (DFT)
Digital image watermarking is the insertion of watermarks into digital image media. Several types of watermarking methods used are Discrete Cosine Transform (DCT) and Discrete Four...

