Design method of neural network for image definition discrimination

A technology of image clarity and neural network, applied in the field of image processing, can solve the problem of few complete networks and achieve good fusion effect

Inactive Publication Date: 2020-06-05
SOUTHEAST UNIV
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  • Abstract
  • Description
  • Claims
  • Application Information

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Problems solved by technology

[0004] At present, some scholars are also exploring new methods for image sharpness discrimination, but in the field of deep learning, there are relatively few complete networks for image sharpness discrimination that can achieve good results.

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  • Design method of neural network for image definition discrimination
  • Design method of neural network for image definition discrimination
  • Design method of neural network for image definition discrimination

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Embodiment Construction

[0021] Below in conjunction with the accompanying drawings and specific embodiments, the present invention will be further clarified. It should be understood that these embodiments are only used to illustrate the present invention and not to limit the scope of the present invention. Modifications of equivalent forms all fall within the scope defined by the appended claims of this application.

[0022] The present invention provides a method for designing a neural network for image sharpness discrimination, comprising the following steps:

[0023] Step 1: For the binary convolutional neural network designed for clear and blurred image sub-blocks, it is implemented by borrowing a simple structure similar to LeNet-5. Considering the relatively small size of the sub-blocks, we choose to discard the pooling layer and modify the output of the scoring layer to be a 2-class scoring value. The network structure includes: input layer, several consecutive convolutional layers (C1~m), sc...

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Abstract

The invention discloses a design method of a neural network for image definition discrimination, and the method comprises the steps: building a convolutional neural network which can discriminate thelocal definition of an image, enabling a to-be-detected image block to pass through a network with a specific structure, outputting an index of the definition degree of the to-be-detected image block,carrying out the classification, and forming a classified binary image. Because parameters of the convolutional neural network can be optimized based on a training sample and a training process, theproblems that feature indexes such as spatial frequency, SML, contrast and regional energy which are generally used for measuring the local definition of the image cannot well adapt to a complex imageenvironment, judgment errors are likely to happen in a gray level uniform region and the like are well solved, and therefore a better definition measurement mode can be obtained.

Description

technical field [0001] The invention belongs to the technical field of image processing, and in particular relates to a design method of a neural network for image sharpness discrimination. Background technique [0002] In the evaluation of image quality, the sharpness of the image is an important index to measure the quality of the image, and how to evaluate the sharpness of the image objectively and effectively is still a hot research topic. The existing indicators that can be used to measure the local sharpness of an image usually include spatial frequency, SML, contrast, and regional energy. However, these a priori metrics are not well adapted to complex image environments, and are prone to make errors in the uniform gray area. [0003] In recent years, with the rapid development of big data applications and GPU-accelerated computing, the research on convolutional neural networks has gradually become extensive and in-depth, and many excellent convolutional neural networ...

Claims

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Application Information

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IPC IPC(8): G06T7/00
CPCG06T7/0002G06T2207/20081G06T2207/20084G06T2207/20221G06T2207/30168
Inventor 董志芳姜奕颖李子恒
Owner SOUTHEAST UNIV
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