Abstract

We propose an image quality assessment metric based on quaternion singular value decomposition that represents a color image as a quaternion matrix, separates image noise information using singular value decomposition and extracts features from both the whole image and its noise information. In the proposed method, the color image and its local variance are represented by using quaternion and then performing singular value decomposition. Later, 75% of singular values are taken as image noise information. We extract a luminance comparison, contrast comparison, structure comparison, phase congruency and gradient magnitude from whole color images and extract the peak signal-to-noise ratio from image noise information as features. Finally, these features are used as the input to a kernel extreme learning machine to predict the quality of the tested images. Extensive experiments performed on four benchmark image quality assessment databases demonstrate that the proposed metric achieves high consistency with the subjective evaluations and outperforms state-of-the-art image quality assessment metrics.

Highlights

  • In this time of rapid information development, the visual quality of images is becoming increasingly important

  • According to the availability of original reference images, objective Image quality assessment (IQA) metrics can be classified into full reference (FR), no-reference (NR) and reduced-reference (RR) metrics [4]

  • IMAGE DATABASES Four publicly available image databases are used to test the performance of the proposed method, including CSIQ [33], LIVE [34], TID2008 [35], and TID2013 [36]

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Summary

Introduction

In this time of rapid information development, the visual quality of images is becoming increasingly important. Images may be distorted during acquisition, transmission, compression, restoration, and processing [1], [2]. Image quality assessment (IQA) [3] can usually be divided into subjective image quality assessment and objective image quality assessment. Subjective IQA metrics are expensive and time consuming. Objective IQA metrics research aims to design computational models that can automatically predict image quality. Research on objective IQA metrics is significant. According to the availability of original reference images, objective IQA metrics can be classified into full reference (FR), no-reference (NR) and reduced-reference (RR) metrics [4]

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