Bayesian denoising method based on wavelet low frequency

A low-frequency and low-frequency coefficient technology, which is applied in the filtering field of natural image processing technology, can solve the problems of not being able to maintain and restore natural image edges and texture details, not being able to guarantee the accuracy of feature vector functions, and low-noise image effects in general, etc., to achieve The effect of taking into account the image texture, strong adaptability, and improving accuracy

Inactive Publication Date: 2013-12-25
XIDIAN UNIV
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Problems solved by technology

The disadvantage of this method is that the processing process of this method is too complicated, and the accuracy of the feature vector function cannot be guaranteed, and it cannot maintain and restore the edge and texture details of the natural image while smoothing the noise better.
This method also only has an obvious denoising effect on high-noise images, and the effect on low-noise images is general.

Method used

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  • Bayesian denoising method based on wavelet low frequency
  • Bayesian denoising method based on wavelet low frequency
  • Bayesian denoising method based on wavelet low frequency

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Embodiment Construction

[0050] Attached below figure 1 The present invention is further described.

[0051] Step 1, input a natural image to be denoised, the size of the image is m×n.

[0052] Step 2, select the pixel block to be estimated.

[0053] The main purpose of selecting the pixel block to be estimated is to determine the neighborhood information of the pixel to be estimated.

[0054]In the natural image z to be denoised, a pixel point i is selected as a pixel point to be estimated by progressive scanning. In the natural image to be denoised, with the pixel point i to be estimated as the center and a fixed length of 2 to 5 pixels as the block radius, a square pixel block to be estimated with a size of N is selected. In the embodiment of the present invention, a pixel block z to be estimated with a size of 7×7 is selected with the pixel point i as the center i .

[0055] Step 3, select the central low-frequency coefficient block.

[0056] Perform k-level db1 wavelet decomposition on the ...

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Abstract

The invention discloses a Bayesian denoising method based on wavelet low frequency. The method comprises the following steps of: 1, inputting a natural image to be denoised; 2, selecting pixel blocks to be estimated; 3, selecting a central low-frequency-coefficient block; 4, determining a searching window; 5, selecting a low-frequency-coefficient block; 6, judging whether a constraint condition is satisfied; 7, computing a similarity weight value; 8, judging whether all points in the searching window are searched; 9, computing the recovery values of the pixel blocks to be estimated; 10, judging whether the natural image to be denoised is searched completely; and 11, integrating the recovery values. The similarity weight value is computed by using a wavelet low frequency coefficient. Compared with the conventional denoising method, the Bayesian denoising method has the advantages that: the edge and texture details of the natural image can be well kept and recovered while noise is well smoothened; and the Bayesian denoising method can be applied to denoising processing of the natural image.

Description

technical field [0001] The invention belongs to the technical field of image processing, and further relates to a filtering method of natural image processing technology, which uses wavelet low-frequency coefficients to describe the similarity weight in the Bayesian denoising model, and uses Bayesian non-local mean filtering It is a denoising model that can be used to denoise natural images. Background technique [0002] The main purpose of image denoising is to solve the problem of image quality degradation caused by noise interference in actual images. Image quality can be improved by denoising, the signal-to-noise ratio can be increased, and the information carried by the image can be better reflected. Therefore, image denoising technology occupies an important position in many fields. [0003] According to the characteristics of the image and the statistical characteristics of the noise, many image denoising methods have been proposed over the years. The existing filter...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06T5/00
Inventor 钟桦焦李成韩超张小华王爽王桂婷侯彪
Owner XIDIAN UNIV
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