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

Advancing Image Deblurring Performance with Combined Autoencoder and Customized Hidden Layers

View through CrossRef
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 details by capturing frequency information using the Fourier Transform. In addition, the article presents a method to enhance deblurring by identifying optimal directions using an autoencoder model, trained on a dataset of blurry and sharp images to learn latent features for removing blur and restoring clarity. The encoded representations are used by the decoder to reconstruct a sharper version of the input image. A combination of two autoencoder models is employed, with a Convolutional Neural Network (CNN) handling the initial deblurring process and a fully connected model optimizing the deblurring parameters. This integrated approach leverages the strengths of CNNs in feature extraction and the flexibility of fully connected networks to produce higher quality, clearer images.
Title: Advancing Image Deblurring Performance with Combined Autoencoder and Customized Hidden Layers
Description:
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 details by capturing frequency information using the Fourier Transform.
In addition, the article presents a method to enhance deblurring by identifying optimal directions using an autoencoder model, trained on a dataset of blurry and sharp images to learn latent features for removing blur and restoring clarity.
The encoded representations are used by the decoder to reconstruct a sharper version of the input image.
A combination of two autoencoder models is employed, with a Convolutional Neural Network (CNN) handling the initial deblurring process and a fully connected model optimizing the deblurring parameters.
This integrated approach leverages the strengths of CNNs in feature extraction and the flexibility of fully connected networks to produce higher quality, clearer images.

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 ...
THE LICENCE PLATE PROOF OF IDENTITY RECKLESS STIRRING VEHICLES
THE LICENCE PLATE PROOF OF IDENTITY RECKLESS STIRRING VEHICLES
This study introduces a novel approach aimed at improving Automatic License Plate Recognition (ALPR) systems, addressing the common issue of poor-quality license plate images. The ...
Motion Blur Image Restoration by Multi-Scale Residual Neural Network
Motion Blur Image Restoration by Multi-Scale Residual Neural Network
Abstract Blind deblurring is a basic subject of computer vision and image processing. Motion image deblurring is divided into non blind deblurring and blind deblu...
Blind Deblurring Based on Sigmoid Function
Blind Deblurring Based on Sigmoid Function
Blind image deblurring, also known as blind image deconvolution, is a long-standing challenge in the field of image processing and low-level vision. To restore a clear version of a...
An Efficient Image Deblurring Network with a Hybrid Architecture
An Efficient Image Deblurring Network with a Hybrid Architecture
Blurring is one of the main degradation factors in image degradation, so image deblurring is of great interest as a fundamental problem in low-level computer vision. Because of the...
Blind deblurring from single motion image based on adaptive weighted total variation algorithm
Blind deblurring from single motion image based on adaptive weighted total variation algorithm
Blind image deblurring is an important topic which is widely used in many research fields such as photography, optics, astronomy, medical images, monitoring, military and so on. Al...
Unsupervised Learning for Bearing Fault Identification with Vibration Data
Unsupervised Learning for Bearing Fault Identification with Vibration Data
Machine learning methods are increasingly used for rotating machinery monitoring. Usually at system set up, only data of the machinery in healthy conditions, the so-called nominal ...
Deblurring approach for motion camera combining FFT with α-confidence goal optimization
Deblurring approach for motion camera combining FFT with α-confidence goal optimization
Sharp images ensure success in the object detection and recognition from state-of-art deep learning methods. When there is a fast relative motion between the camera and the object ...

Back to Top