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A no-reference evaluation method for depth image quality based on natural scene statistics

A depth image and natural scene technology, applied in the field of no-reference evaluation of depth image quality based on natural scene statistics, can solve the problems of poor evaluation accuracy, depth image distortion design, and difficult implementation

Active Publication Date: 2022-04-29
CHINA UNIV OF MINING & TECH
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Problems solved by technology

[0005] Judging from the existing algorithms, the traditional image quality evaluation methods, whether full-parameter or non-parametric algorithms, have not been designed for the particularity of depth map distortion, resulting in poor evaluation accuracy
However, the current algorithms for evaluating the quality of depth maps need to use undistorted texture maps for evaluation, which is not easy to implement.

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  • A no-reference evaluation method for depth image quality based on natural scene statistics
  • A no-reference evaluation method for depth image quality based on natural scene statistics
  • A no-reference evaluation method for depth image quality based on natural scene statistics

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Embodiment Construction

[0060] The present invention will be further described below in conjunction with the accompanying drawings.

[0061] figure 1 It is a principle flow chart of the present invention, and the present invention is divided into four major modules: 1. Construction of scale space; 2. Edge distortion region detection 3. Edge distortion region feature extraction module 4. Quality evaluation model training module. The four modules are described in detail below:

[0062] Module 1. Construct scale space: collect a set of depth images, and divide the collected depth images into two parts, one part is the training image, and the other part is the test image; for each depth image in the training image and test image, respectively Construct its scale space: define the original depth image as scale image 0; perform n times of Gaussian low-pass filtering on the original depth image, and record the i-th filtering result as scale image i, i∈[1,2,…,n ]; scale images 0 to n form a scale space wit...

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Abstract

The present invention proposes a no-reference evaluation method for depth image quality based on natural scene statistics, including steps: (1) collecting a group of depth images, and dividing the collected depth images into two parts, one part is a training image, and the other part is Test image; (2) Extract feature parameters on different scales for each depth image. The extraction steps are: extract the edge area of ​​the scale image through edge detection, and find the scale image gradient magnitude and Gauss-Ra in the edge area. The distribution of the Placian operator, and respectively use Weber distribution and asymmetric Gaussian distribution to establish the distribution function models of the two, and use the parameters of the two models as the characteristic parameters of the depth image; (3) finally, use the characteristic parameters of the training image Perform random forest model training to generate an objective quality score evaluation model; input the characteristic parameters of the test image into the objective quality score evaluation model to obtain the objective quality score of the test image.

Description

technical field [0001] The invention relates to the field of image quality evaluation, in particular to a method for evaluating depth image quality without reference based on natural scene statistics. Background technique [0002] The existing quality evaluation methods are divided into subjective evaluation methods and objective evaluation methods. Although the subjective evaluation method is the most accurate evaluation result, it is time-consuming and laborious, and it is not feasible in actual operation. Therefore, it is of great significance to design an objective quality evaluation method. The quality evaluation methods that can be used to evaluate the depth image mainly include traditional image quality evaluation methods and early quality evaluation methods for depth images. These methods are introduced and analyzed one by one below. [0003] 1. Traditional image quality evaluation methods: There are many traditional algorithms. The full parameter algorithm evalu...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06T7/00G06T7/13
CPCG06T7/0002G06T7/13G06T2207/20081G06T2207/10028G06T2207/30168
Inventor 李雷达陈曦卢兆林周玉祝汉城胡波
Owner CHINA UNIV OF MINING & TECH
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