Javascript must be enabled to continue!
Block-based compressed sensing of MR images using multi-rate deep learning approach
View through CrossRef
AbstractDeep learning (DL) models are highly research-oriented field in image compressive sensing in the recent studies. In compressive sensing theory, a signal is efficiently reconstructed from very small and limited number of measurements. Block-based compressive sensing is most promising and lenient compressive sensing (CS) approach mostly used to process large-sized videos and images: exploit low computational complexity and requires less memory. In block-based compressive sensing, a number of deep models are needed to train with each corresponding to different sampling rate. Compressive sensing performance is highly degraded through allocating low sampling rates to various blocks within same image or video frames. In this work, we proposed multi-rate method using deep neural networks for block-based compressive sensing of magnetic resonance images with performance that greatly outperforms existing state-of-the-art methods. The proposed approach is capable in smart allocation of exclusive sampling rate for each block within image, based on the image information and removing blocking artifacts in reconstructed MRI images. Each image block is separately sampled and reconstructed with different sampling rate and reassembled into a single image based on inter-correlation between blocks, to remove blocking artifacts. The proposed method surpasses the current state-of-the-arts in terms of reconstruction speed, reconstruction error, low computational complexity, and certain evaluation metrics such as peak signal-to-noise ratio (PSNR), structural similarity (SSIM), feature similarity (FSIM), and relative l2-norm error (RLNE).
Springer Science and Business Media LLC
Title: Block-based compressed sensing of MR images using multi-rate deep learning approach
Description:
AbstractDeep learning (DL) models are highly research-oriented field in image compressive sensing in the recent studies.
In compressive sensing theory, a signal is efficiently reconstructed from very small and limited number of measurements.
Block-based compressive sensing is most promising and lenient compressive sensing (CS) approach mostly used to process large-sized videos and images: exploit low computational complexity and requires less memory.
In block-based compressive sensing, a number of deep models are needed to train with each corresponding to different sampling rate.
Compressive sensing performance is highly degraded through allocating low sampling rates to various blocks within same image or video frames.
In this work, we proposed multi-rate method using deep neural networks for block-based compressive sensing of magnetic resonance images with performance that greatly outperforms existing state-of-the-art methods.
The proposed approach is capable in smart allocation of exclusive sampling rate for each block within image, based on the image information and removing blocking artifacts in reconstructed MRI images.
Each image block is separately sampled and reconstructed with different sampling rate and reassembled into a single image based on inter-correlation between blocks, to remove blocking artifacts.
The proposed method surpasses the current state-of-the-arts in terms of reconstruction speed, reconstruction error, low computational complexity, and certain evaluation metrics such as peak signal-to-noise ratio (PSNR), structural similarity (SSIM), feature similarity (FSIM), and relative l2-norm error (RLNE).
Related Results
Prospective, Randomized Comparison of Deep or Superficial Cervical Plexus Block for Carotid Endarterectomy Surgery
Prospective, Randomized Comparison of Deep or Superficial Cervical Plexus Block for Carotid Endarterectomy Surgery
Background
Carotid endarterectomy may be performed under cervical plexus block with local anesthetic supplementation by the surgeon as necessary during surgery. It is u...
Deep convolutional neural network and IoT technology for healthcare
Deep convolutional neural network and IoT technology for healthcare
Background Deep Learning is an AI technology that trains computers to analyze data in an approach similar to the human brain. Deep learning algorithms can find complex patterns in ...
Reversible Watermarking Authentication Algorithm For Color Images Based On Compressed Sensing
Reversible Watermarking Authentication Algorithm For Color Images Based On Compressed Sensing
Abstract
Aiming at the shortcomings of existing reversible watermarking for image authentication, such as poor ability of tamper detection and localization, and low ...
A Domain-Change Approach to the Semantic Labelling of Remote Sensing Images
A Domain-Change Approach to the Semantic Labelling of Remote Sensing Images
<p>For many years, image classification &#8211; mainly based on pixel brightness statistics &#8211; has been among the<br>most popular r...
The Multi-Temporal Database of Planetary Image Data (MUTED): A Web-Tool to Support Surface Change Analyses on Mars, Moon, and Mercury
The Multi-Temporal Database of Planetary Image Data (MUTED): A Web-Tool to Support Surface Change Analyses on Mars, Moon, and Mercury
<p><strong>Introduction:</strong></p>
<p>The Multi-Temporal Database of Planetary Image Data (MUTED) is a comp...
Deep Learning in Forest Tree Species Classification Using Sentinel-2 on Google Earth Engine: A Case Study of Qingyuan County
Deep Learning in Forest Tree Species Classification Using Sentinel-2 on Google Earth Engine: A Case Study of Qingyuan County
Forest tree species information plays an important role in ecology and forest management, and deep learning has been used widely for remote sensing image classification in recent y...
CT Metal Artifact Reduction based on Virtual Generated Artifacts Using Modified pix2pix
CT Metal Artifact Reduction based on Virtual Generated Artifacts Using Modified pix2pix
Abstract
Background: Metal artifacts introduce challenges in image-guided diagnosis or accurate dose calculations. This study aims to reduce metal artifacts from the spinal...
Initial Experience with Pediatrics Online Learning for Nonclinical Medical Students During the COVID-19 Pandemic
Initial Experience with Pediatrics Online Learning for Nonclinical Medical Students During the COVID-19 Pandemic
Abstract
Background: To minimize the risk of infection during the COVID-19 pandemic, the learning mode of universities in China has been adjusted, and the online learning o...

