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A New Benchmark Database and Objective Metric for Light Field Image Quality Evaluation

IEEE Transactions on Circuits and Systems for Video Technology(2025)CCF BSCI 1区SCI 2区

School of Electronics and Communication Engineering

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Abstract
Light Field Image (LFI) records both angular and spatial information and provides immersive experiences for observers by rendering a scene from multiple perspectives. To cope with the resolution limitations of capture hardware, LFI angular reconstruction and spatial super-resolution are two widely-used methods, but they can also induce some special types of distortions, especially when two methods are adopted in combination. To this end, new challenges have been brought in assessing the quality of these distorted LFIs. In this paper, firstly, we conduct subjective experiments to evaluate the distorted LFI quality and present a novel perceptual quality assessment database with the associated subjective quality scores. Specifically, the proposed database focuses on the distortions introduced by deep learning-based LFI angular reconstruction and spatial super-resolution methods, individually and multiplely. Besides, in the case of multiple distortions, the adoption order of two distortions is taken into consideration. Further, our database presents three types of LFIs that suffer from distortions: real-world, dense synthesis, and sparse synthesis. As a result, the quality of distorted LFIs was subjectively assessed by 32 valid observers using the Pairwise Comparison (PC) protocol. Secondly, we develop a novel objective No-Reference (NR) metric for LFI quality evaluation, based on the features extracted from spatial gradients, angular-spatial statistics, and binocular disparity. Finally, a benchmark of the proposed metric and numerous state-of-the-art quality assessment metrics on the proposed database is presented. Experimental results demonstrate the superiority of the proposed metric over most existing metrics in various aspects. The proposed database and metric will be publicly available at https://github.com/ZhengyuZhang96/IETR-LFI.
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Key words
Light field image,quality assessment database,multiple distortions,pairwise comparison,no-reference metric
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要点】:本文提出了一种新的光场图像质量评价基准数据库及客观评价指标,旨在评估由深度学习方法引起的图像质量变化。

方法】:通过主观实验评估了受深度学习影响的图像质量,并构建了一个包含主观评分的感知质量评估数据库,同时提出了基于空间梯度、角空间统计和双眼视差特征的无参考质量评价指标。

实验】:使用Pairwise Comparison(PC)协议,32名有效观察者对受不同类型和顺序的深度学习方法影响的实世界、密集合成和稀疏合成的三种光场图像进行了主观质量评估,所提出评价指标在所构建的数据库上与多种现有评价指标进行了比较,结果证明了其优越性。数据集名称为IETR-LFI,可通过https://github.com/ZhengyuZhang96/IETR-LFI公开访问。