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An Image Quality Evaluation Method Based on Unsupervised Learning

An image quality evaluation and unsupervised learning technology, applied in the field of image quality evaluation based on unsupervised learning, can solve the problems of unsuitable application occasions and high computational complexity

Active Publication Date: 2018-11-09
湖州优研知识产权服务有限公司
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AI Technical Summary

Problems solved by technology

At present, the existing method is to predict the evaluation model through machine learning, but its computational complexity is high, and the training model needs to predict the subjective evaluation value of each evaluation image, which is not suitable for practical applications and has certain limitations.

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  • An Image Quality Evaluation Method Based on Unsupervised Learning
  • An Image Quality Evaluation Method Based on Unsupervised Learning
  • An Image Quality Evaluation Method Based on Unsupervised Learning

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Embodiment Construction

[0027] The present invention will be further described in detail below in conjunction with the accompanying drawings and embodiments.

[0028] An image quality evaluation method based on unsupervised learning proposed by the present invention, its overall realization block diagram is as follows figure 1 As shown, it includes two processes of the training phase and the testing phase, and the specific steps of the training phase process are as follows:

[0029] ①-1. Select N original undistorted images; then select N original undistorted images and distorted images of L distortion intensity corresponding to each original undistorted image to form a training image set, denoted as Among them, N>1, such as taking N=100, L>1, such as taking L=5, express The u-th original undistorted image in , express The u-th original undistorted image in corresponds to the v-th distorted image with distortion intensity, and the symbol "{}" is a set symbol.

[0030] During specific implem...

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Abstract

The invention discloses an image quality evaluation method based on unsupervised learning. In the training stage, according to the HOG feature statistical histogram of each sub-block and the mean value of the amplitude of all pixel points under different center frequencies and different direction factors, the obtained Image feature vector, and obtain the image quality vector according to the objective evaluation prediction value of each sub-block; then according to the image feature vector and image quality vector of each sub-block, construct image feature dictionary table and image quality dictionary table respectively through unsupervised learning method; In the test phase, the sparse coefficient matrix of each sub-block in the test image is obtained through optimization according to the image feature dictionary table, and the objective evaluation value of the image quality is obtained through the sparse coefficient matrix and the image quality dictionary table, which is relatively consistent with the subjective evaluation value. Good consistency, and no need to calculate the image feature dictionary table and the image quality dictionary table, which reduces the computational complexity, and at the same time does not need to predict the subjective evaluation value of each evaluation image.

Description

technical field [0001] The invention relates to an image quality evaluation method, in particular to an image quality evaluation method based on non-supervised learning. Background technique [0002] With the rapid development of image coding and display technologies, the research on image quality evaluation has become a very important link. The goal of the research on the objective evaluation method of image quality is to keep consistent with the subjective evaluation results as much as possible, so as to get rid of the time-consuming and boring subjective evaluation method of image quality, which can automatically evaluate the image quality by computer. According to the reference and dependence on the original image, the objective image quality evaluation methods can be divided into three categories: full reference (Full Reference, FR) image quality evaluation method, partial reference (Reduced Reference, RR) image quality evaluation method and no reference ( No Reference...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06K9/46G06K9/62
CPCG06V10/50G06F18/217
Inventor 邵枫姜求平李福翠
Owner 湖州优研知识产权服务有限公司
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