Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Multi-scale Generative Adversarial Deblurring Network with Gradient Guidance

View through CrossRef
<>With regards to the lack of crisp edges and a poor recovery of high frequency information such as details in deblurred motion pictures, this research proposes a multi-scale adversarial deblurring network with gradient guidance (MADN). The algorithm uses the classical generative adversarial network (GAN) framework, consisting of a generator and a discriminator. The generator includes a multi-scale convolutional network and a gradient feature extraction network. The multi-scale convolutional network extracts image features at different scales with a nested connection residual codec structure to improve the image edge structure recovery and to increase the perceptual field. This gradient network incorporates with intermediate scale features to extract the gradient features of blurred images to obtain their high frequency information. The generator combines the gradient and multiscale features to recover the remaining high-frequency information in a deblurred image. The loss function of MADN is formed in this research combining adversarial loss, pixel L2-norm loss and mean absolute error. Compared to those experimental results obtained from current deblurring algorithms, our experimental results indicate visually clearer images retaining more information such as edges and details. This MADN algorithm enhances the peak signal-to-noise ratio by an average of 3.32dB and the structural similarity by an average of 0.053.<>
Title: Multi-scale Generative Adversarial Deblurring Network with Gradient Guidance
Description:
<>With regards to the lack of crisp edges and a poor recovery of high frequency information such as details in deblurred motion pictures, this research proposes a multi-scale adversarial deblurring network with gradient guidance (MADN).
The algorithm uses the classical generative adversarial network (GAN) framework, consisting of a generator and a discriminator.
The generator includes a multi-scale convolutional network and a gradient feature extraction network.
The multi-scale convolutional network extracts image features at different scales with a nested connection residual codec structure to improve the image edge structure recovery and to increase the perceptual field.
This gradient network incorporates with intermediate scale features to extract the gradient features of blurred images to obtain their high frequency information.
The generator combines the gradient and multiscale features to recover the remaining high-frequency information in a deblurred image.
The loss function of MADN is formed in this research combining adversarial loss, pixel L2-norm loss and mean absolute error.
Compared to those experimental results obtained from current deblurring algorithms, our experimental results indicate visually clearer images retaining more information such as edges and details.
This MADN algorithm enhances the peak signal-to-noise ratio by an average of 3.
32dB and the structural similarity by an average of 0.
053.
<>.

Related Results

Generative Adversarial Network Based on Multi-feature Fusion Strategy for Motion Image Deblurring
Generative Adversarial Network Based on Multi-feature Fusion Strategy for Motion Image Deblurring
<p>Deblurring of motion images is a part of the field of image restoration. The deblurring of motion images is not only difficult to estimate the motion parameters, but also ...
Research on Style Migration Techniques Based on Generative Adversarial Networks in Chinese Painting Creation
Research on Style Migration Techniques Based on Generative Adversarial Networks in Chinese Painting Creation
Abstract The continuous progress and development of science and technology have brought rich and diverse artistic experiences to the current society. The image style...
Improving Diversity and Quality of Adversarial Examples in Adversarial Transformation Network
Improving Diversity and Quality of Adversarial Examples in Adversarial Transformation Network
Abstract This paper proposes a method to mitigate two major issues of Adversarial Transformation Networks (ATN) including the low diversity and the low quality of adversari...
Enhancing Adversarial Robustness through Stable Adversarial Training
Enhancing Adversarial Robustness through Stable Adversarial Training
Deep neural network models are vulnerable to attacks from adversarial methods, such as gradient attacks. Evening small perturbations can cause significant differences in their pred...
Image blind deblurring network with back projection feature fusion
Image blind deblurring network with back projection feature fusion
Abstract Aiming at the problem of image motion blur caused by hand-held camera jitter and object motion in the process of collecting photos, a generative adversarial networ...
A Wasserstein gradient-penalty generative adversarial network with deep auto-encoder for bearing intelligent fault diagnosis
A Wasserstein gradient-penalty generative adversarial network with deep auto-encoder for bearing intelligent fault diagnosis
Abstract It is a great challenge to manipulate unbalanced fault data in the field of rolling bearings intelligent fault diagnosis. In this paper, a novel intellig...
Advancing Image Deblurring Performance with Combined Autoencoder and Customized Hidden Layers
Advancing Image Deblurring Performance with Combined Autoencoder and Customized Hidden Layers
This article introduces a novel approach to image deblurring by combining a Fourier autoencoder model. The proposed model effectively removes blur artifacts and restores image deta...
Adversarial Training and Robustness in Machine Learning Frameworks
Adversarial Training and Robustness in Machine Learning Frameworks
In the realm of machine learning, ensuring robustness against adversarial attacks is increasingly crucial. Adversarial training has emerged as a prominent strategy to fortify model...

Back to Top