Image noise estimation method based on human eye visual features and partitioning analysis method

An image noise and human vision technology, applied in the field of image processing, can solve the problems of difficult image processing, limited application, and no consideration of the visual psychological factors of the image observer.

Active Publication Date: 2014-07-30
ZHEJIANG MOORGEN INTELLIGENT TECH CO LTD
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Problems solved by technology

However, these algorithms are difficult to deal with certain blurred or image content-sensitive images, resulting in limited application
[0005] In addition, most noise evaluation methods are accurate and strict in definition, simple and easy to implement, and can better determine the noise level difference between images, but generally do not consider the visual psychological factors of image observers, and the subject of image evaluation— —People often play a very important role in image evaluation, so the evaluation results of objective evaluation methods often cannot match the results of subjective evaluation by human eyes

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  • Image noise estimation method based on human eye visual features and partitioning analysis method
  • Image noise estimation method based on human eye visual features and partitioning analysis method
  • Image noise estimation method based on human eye visual features and partitioning analysis method

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[0020] The technical solutions of the present invention will be clearly and completely described below through specific embodiments in conjunction with the accompanying drawings.

[0021] Please refer to figure 1 , which is an image noise estimation method (Noise Estimation Metric based on Human Visual characteristic, HVSNEM) based on human visual features and block analysis method according to an embodiment of the present invention, including:

[0022] Step S101, using the human eye contrast sensitivity function to process the original noisy image to obtain a preliminary processing image;

[0023] Step S102, using a watershed segmentation algorithm to perform approximate region segmentation on the preliminary processing map, obtain several segmented image region blocks, and obtain a region segmentation map;

[0024] Step S103, performing approximate reconstruction of the noise-free image on each segmented region in the region segmentation map to obtain a reconstructed estima...

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Abstract

An image noise estimation method based on human eye visual features and a partitioning analysis method comprises the steps of utilizing a human eye contrast sensitivity function for processing an original image with noise to obtain an initially-processed image; utilizing a watershed partitioning algorithm for conducting approximation region partitioning on the initially-processed image to obtain a plurality of partitioned image region blocks, and obtaining a region partitioned image; conducting noise-free image approximation rebuilding on partitioned regions of the region portioned image to obtain a rebuilt estimated noise-free image of the whole image; according to the original image with the noise and the rebuilt estimated noise-free image, obtaining a distribution diagram of intensity-noise pairs, and utilizing the distribution diagram of the intensity-noise pairs for obtaining a noise label of the original image with the noise. According to the image noise estimation method, due to the combination of the human eye visual features, partitioning analysis and noise estimation are carried out on the original observation image, a single comprehensive estimated label value is obtained finally, and the result is quite approximate to a human eye visual system.

Description

technical field [0001] The invention relates to image processing technology, in particular to an image noise estimation method based on human visual features and block analysis method. Background technique [0002] With the development of human society towards a high degree of digitization, the rapid development and popularization of digital images, digital video and digital television will also become inevitable. In the various technologies of digital image processing, digital images may be subject to various degradation distortions in the process of acquisition, compression, storage, transmission and reconstruction, especially noise, which will inevitably lead to the problem of image degradation. The problem of how to evaluate image noise more effectively has also emerged and has become a research hotspot in image processing. [0003] Because the image is ultimately viewed by a human, the best way to evaluate noise is the subjective evaluation of the human eye. However, ...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06T7/00G06T5/00
Inventor 赵巨峰逯鑫淼辛青高秀敏
Owner ZHEJIANG MOORGEN INTELLIGENT TECH CO LTD
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