Image quality evaluation method based on local average characteristic values
A technology for image quality evaluation and local averaging, applied in the field of image processing
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[0020] The present invention first calculates its local mean eigenvalues (LMEs) from the image matrix after normalization, analyzes its correlation with image perception quality, and then calculates the magnitude, variance, entropy and contrast (NSS feature) of the image matrix , and then use LMEs and the calculated multiple features to perform simple dictionary learning, and calculate the predicted quality score, and then make a more comprehensive and accurate objective evaluation of the image. The implementation is as follows:
[0021] 1. The image quality evaluation method based on local mean characteristic value, comprises the following steps:
[0022] Step 1: Normalize the pixel values of the image to obtain the normalized image matrix A, and calculate its local mean eigenvalues (LMEs). The calculation process of LMEs is as follows: divide the image matrix into N small square matrices of S*S size, calculate S eigenvalues of each small square matrix, and then calc...
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