4.7 Article

A Light Field Image Quality Assessment Model Based on Symmetry and Depth Features

Journal

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCSVT.2020.2971256

Keywords

Feature extraction; Geometry; Image color analysis; Manganese; Image quality; Distortion measurement; Distortion; Light field image; image quality assessment; symmetry feature; depth feature

Funding

  1. National Natural Science Foundation of China [61871434, 61802136, 61871342]
  2. Natural Science Foundation for Outstanding Young Scholars of Fujian Province [2019J06017]
  3. Hong Kong RGC Early Career Scheme [9048123 (CityU 21211518)]
  4. Key Science and Technology Project of Xiamen City [3502ZCQ20191005]
  5. High-level Talent Innovation Program of Quanzhou City [2017G027]

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This paper introduces a new full-reference image quality assessment method SDFM for LF images, which includes the extraction of symmetry and depth features to better evaluate the quality of LF images.
This paper presents a new full-reference image quality assessment (IQA) method for conducting the perceptual quality evaluation of the light field (LF) images, called the symmetry and depth feature-based model (SDFM). Specifically, the radial symmetry transform is first employed on the luminance components of the reference and distorted LF images to extract their symmetry features for capturing the spatial quality of each view of an LF image. Second, the depth feature extraction scheme is designed to explore the geometry information inherited in an LF image for modeling its LF structural consistency across views. The similarity measurements are subsequently conducted on the comparison of their symmetry and depth features separately, which are further combined to achieve the quality score for the distorted LF image. Note that the proposed SDFM that explores the symmetry and depth features is conformable to the human vision system, which identifies the objects by sensing their structures and geometries. Extensive simulation results on the dense light fields dataset have clearly shown that the proposed SDFM outperforms multiple classical and recently developed IQA algorithms on quality evaluation of the LF images.

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