White Paper

Intelligent Noise Reduction: Seeing Through The Noise With Deep Learning Image Processing

Source: Canon Medical Components

By Josh Johnson, Canon Medical Components

Canon Medical Components - INR

In general radiographic images, noise is typically proportional to the square root of the signal. Conventional noise reduction has been done using rule-based processing to manually separate the signal and the noise in the images based on the image characteristics of CXDI detectors, leading to improvements in image noise and contrast-to-noise ratio. However, limits have been reached on the amount of noise that can be reduced using these methods, making further improvements difficult for low-dose areas of images.

Machine learning techniques are being utilized to overcome these challenges. This paper delves into the development, application, and performance of Canon's Intelligent Noise Reduction, a Convolutional Neural Network (CNN)-based image processing procedure designed to produce high-quality images with a reduced patient radiation dose. Through data and visual examples, explore the transformative impact of Intelligent Noise Reduction in overcoming the limitations of conventional approaches.

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