X-ray perspective image denoising method and computer readable storage medium

An image and noise reduction technology, applied in the field of X-ray fluoroscopic image noise reduction and computer-readable storage media, can solve the problems of poor noise reduction, blurred images, loss of image details, etc., and achieves preservation of image details and images. Texture information, image brightness equalization, guaranteed noise reduction effect

Active Publication Date: 2020-01-31
SHENZHEN ANGELL TECH
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  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

Its fluoroscopy function is of great value in clinical auxiliary diagnosis, but due to various reasons of imaging systems such as hardware and software, the Poisson distribution noise of X-ray fluoroscopy images is very obvious, which affects clinical auxiliary diagnosis
However, the classic noise reduction algorithm based on Gaussian additive noise failed to achieve good results in clinical applications, such as Gaussian filtering method, bilateral filtering method, NLM (Non-Local Means, non-local mean) filtering method, etc.
[0003] Although these methods can reduce noise well and have fast processing speed, they will have different degrees of defects.
The Gaussian filtering method can better reduce noise, but it will make the image blurred and lose image details; the bilateral filtering method will make the image blurred; NLM filtering can better retain image details, but the noise reduction effect is not good.
Therefore, the X-ray fluoroscopy images processed by these methods cannot meet the requirements of clinical auxiliary diagnosis.

Method used

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  • X-ray perspective image denoising method and computer readable storage medium
  • X-ray perspective image denoising method and computer readable storage medium
  • X-ray perspective image denoising method and computer readable storage medium

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Experimental program
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Embodiment 1

[0051] Please refer to Figure 2-4 , Embodiment 1 of the present invention is: a noise reduction method for X-ray fluoroscopy images, which can be applied to DR systems to reduce noise on X-ray fluoroscopy images, and can also be applied to noise reduction of other images, such as figure 2 shown, including the following steps:

[0052] S1: Acquire the X-ray fluoroscopic image to be denoised; the grayscale range of the X-ray fluoroscopic image is 0-65535, and the storage bit depth is 16.

[0053] S2: Perform Anscombe transformation on the X-ray fluoroscopic image to obtain a first image; that is, transform the noise in the image from a Poisson distribution to a Gaussian distribution.

[0054] Specifically, according to the first formula Perform Anscombe transformation on the X-ray fluoroscopic image to be denoised to obtain the first image, where v 0 (x) is the image data of X-ray perspective image, v 1 (x) is the image data of the first image. That is, the gray value of...

Embodiment 2

[0077] This embodiment is a computer-readable storage medium corresponding to the above-mentioned embodiments, on which a computer program is stored, and when the program is executed by a processor, the following steps are implemented:

[0078] Carry out Anscombe transformation to the X-ray perspective image to be denoised to obtain the first image;

[0079] filtering the first image according to a three-dimensional block matching algorithm to obtain a second image;

[0080] performing non-local mean filtering on the second image to obtain a third image;

[0081] performing linear weighting on the X-ray fluoroscopic image and the third image to obtain a fourth image;

[0082] Anscombe inverse transformation is performed on the fourth image to obtain a noise-reduced X-ray fluoroscopic image.

[0083] Further, the Anscombe transform is performed on the X-ray fluoroscopic image to be denoised, and the first image obtained is specifically:

[0084] According to the first formul...

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Abstract

The invention discloses an X-ray perspective image denoising method and a computer readable storage medium, and the method comprises the steps: carrying out the Anscombe transformation of an X-ray perspective image to be denoised, and obtaining a first image; filtering the first image according to a three-dimensional block matching algorithm to obtain a second image; carrying out non-local mean filtering on the second image to obtain a third image; performing linear weighting on the X-ray perspective image and the third image to obtain a fourth image; and performing Anscombe inverse transformation on the fourth image to obtain a denoised X-ray perspective image. The method is good in noise reduction effect, and image details can be reserved.

Description

technical field [0001] The invention relates to the technical field of image processing, in particular to a noise reduction method for X-ray fluoroscopic images and a computer-readable storage medium. Background technique [0002] DR (Digital Radiography), direct digital X-ray photography system, as the development trend of the current mainstream X-ray filming, has become an essential equipment in the radiology department of the hospital. Its fluoroscopy function is of great value in clinical auxiliary diagnosis, but due to various reasons of imaging systems such as hardware and software, the Poisson distribution noise of X-ray fluoroscopy images is very obvious, which affects clinical auxiliary diagnosis. However, the classic noise reduction algorithms based on Gaussian additive noise failed to achieve good results in clinical applications, such as Gaussian filtering method, bilateral filtering method, NLM (Non-Local Means, non-local mean) filtering method and so on. [00...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06T5/00
CPCG06T5/002G06T2207/10116
Inventor 易浩平叶超荣繁壮
Owner SHENZHEN ANGELL TECH
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