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No-reference light field image quality assessment based on depth, structural and angular information

机译:基于深度,结构和角度信息的无参考光场图像质量评估

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摘要

Light field imaging can capture more abundant scene information, including angular and spatial information, compared with traditional imaging technologies. However, light field image (LFI) processing will inevitably introduce distortion which is different from traditional imaging process. Therefore, LFI quality assessment has become one of important research issues on LFI processing. In this paper, we propose a depth, structural and angular information based no-reference LFI quality assessment method. Firstly, the horizontal and vertical mean difference images (MDIs) are defined to integrate the difference images of LFI's sub-aperture images (SAIs) and reflect the horizontal and vertical depth and structural information of LFI. Considering the multi-channel characteristics of human visual system, an effective feature extraction scheme with Curvelet decomposition is designed for MDIs and SAls of the distorted LFI. As one of the representations of LFI, epipolar plane images (EPIs) contain LFI's angular and depth information, which reflect the angular consistency of LFI more intuitively. Therefore, an algorithm, namely local maximum similarity index statistics, is designed to extract the directional features from horizontal and vertical EPIs. Finally, the quality of distorted LFI is predicted by pooling these extracted features. Experimental results on three LFI datasets show that the proposed method can achieve better performance, compared with the representative traditional image quality assessment methods as well as the state-of-the-art LFI quality assessment methods.
机译:与传统成像技术相比,光场成像可以捕获更多丰富的场景信息,包括角度和空间信息。然而,光场图像(LFI)处理将不可避免地引入与传统成像过程不同的失真。因此,LFI质量评估已成为LFI处理的重要研究问题之一。在本文中,我们提出了一种基于深度,结构和角度信息的无参考LFI质量评估方法。首先,定义水平和垂直平均差异图像(MDI)以集成LFI子孔径图像(SAI)的差异图像并反映LFI的水平和垂直深度和结构信息。考虑到人类视觉系统的多通道特性,设计了一种具有曲线分解的有效特征的提取方案,专为MDIS和扭曲的LFI的含硅而设计。作为LFI的表示之一,Enipolar平面图像(EPIS)包含LFI的角度和深度信息,这更直观地反映了LFI的角度一致性。因此,算法,即局部最大相似性索引统计信息,用于提取水平和垂直EPIS的方向特征。最后,通过汇集这些提取的特征来预测扭曲的LFI的质量。三个LFI数据集的实验结果表明,该方法可以实现更好的性能,与代表传统图像质量评估方法相比以及最先进的LFI质量评估方法。

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