Computed Tomography (CT) is commonly used for cancer screening as it utilizes low radiation for the scan. One problem with low-dose scans is the noise artifacts associated with low photon count that can lead to a reduced success rate of cancer detection during radiologist assessment. The noise had to be removed to restore detail clarity. We propose a noise removal method using a new model Convolutional Neural Network (CNN). Even though the network training time is long, the result is better than other CNN models in quality score and visual observation. The proposed CNN model uses a stacked modified U-Net with a specific number of feature maps per layer to improve the image quality, observable on an average PSNR quality score improvement out...
In this study, an in-house residual encoder-decoder convolutional neural network (RED-CNN)-based alg...
Image noise degrades the performance of various imaging applications including medical imaging, astr...
Background and purpose. This study evaluated a modified specialized convolutional neural network (CN...
Medical imaging is a complex process that capitulates images created by X-rays, ultrasound imaging, ...
Low-dose CT has received increasing attention in the recent years and is considered a promising meth...
Abstract Goal PET is a relatively noisy process compa...
International audienceLow-dose CT is an effective solution to alleviate radiation risk to patients, ...
Deep Learning is a subfield of machine learning concerned with algorithms that learn hierarchical da...
Scintillation camera images contain a large amount of Poisson noise. We have investigated whether no...
Scintillation camera images contain a large amount of Poisson noise. We have investigated whether no...
Radiation exposure in CT imaging leads to increased patient risk. This motivates the pursuit of redu...
Purpose: We investigate, by an extensive quality evaluation approach, performances and potential sid...
Computed tomography (CT) is used in medical applications to produce digital medical imaging of the h...
As MR Rician noise and CT low-dose perfusion noise have a complicated distribution, it is still a ch...
Since absorption of X-ray radiation has the possibility of inducing cancerous, genetic and other dis...
In this study, an in-house residual encoder-decoder convolutional neural network (RED-CNN)-based alg...
Image noise degrades the performance of various imaging applications including medical imaging, astr...
Background and purpose. This study evaluated a modified specialized convolutional neural network (CN...
Medical imaging is a complex process that capitulates images created by X-rays, ultrasound imaging, ...
Low-dose CT has received increasing attention in the recent years and is considered a promising meth...
Abstract Goal PET is a relatively noisy process compa...
International audienceLow-dose CT is an effective solution to alleviate radiation risk to patients, ...
Deep Learning is a subfield of machine learning concerned with algorithms that learn hierarchical da...
Scintillation camera images contain a large amount of Poisson noise. We have investigated whether no...
Scintillation camera images contain a large amount of Poisson noise. We have investigated whether no...
Radiation exposure in CT imaging leads to increased patient risk. This motivates the pursuit of redu...
Purpose: We investigate, by an extensive quality evaluation approach, performances and potential sid...
Computed tomography (CT) is used in medical applications to produce digital medical imaging of the h...
As MR Rician noise and CT low-dose perfusion noise have a complicated distribution, it is still a ch...
Since absorption of X-ray radiation has the possibility of inducing cancerous, genetic and other dis...
In this study, an in-house residual encoder-decoder convolutional neural network (RED-CNN)-based alg...
Image noise degrades the performance of various imaging applications including medical imaging, astr...
Background and purpose. This study evaluated a modified specialized convolutional neural network (CN...