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    • 摘要: 光场图像通过记录多个视点信息可为用户提供更加全面真实的视觉体验,但采集和可视化过程中引入的失真会严重影响其视觉质量。因此,如何有效地评价光场图像质量是一个巨大挑战。本文结合空间-角度特征和极平面信息提出了一种基于深度学习的无参考光场图像质量评价方法。首先,构建了空间-角度特征提取网络,通过多级连接以达到捕获多尺度语义信息的目的,并采用多尺度融合方式实现双重特征有效提取;其次,提出双向极平面图像特征学习网络,以有效评估光场图像角度一致性;最后,通过跨特征融合并线性回归输出图像质量分数。在三个通用数据集上的对比实验结果表明,所提出方法明显优于经典的2D图像和光场图像质量评价方法,其评价结果与主观评价结果的一致性更高。

       

      Abstract: Light field images provide users with a more comprehensive and realistic visual experience by recording information from multiple viewpoints. However, distortions introduced during the acquisition and visualization process can severely impact their visual quality. Therefore, effectively evaluating the quality of light field images is a significant challenge. This paper proposes a no-reference light field image quality assessment method based on deep learning, combining spatial-angular features and epipolar plane information. Firstly, a spatial-angular feature extraction network is constructed to capture multi-scale semantic information through multi-level connections, and a multi-scale fusion approach is employed to achieve effective dual-feature extraction. Secondly, a bidirectional epipolar plane image feature learning network is proposed to effectively assess the angular consistency of light field images. Finally, image quality scores are output through cross-feature fusion and linear regression. Comparative experimental results on three common datasets indicate that the proposed method significantly outperforms classical 2D image and light field image quality assessment methods, with a higher consistency with subjective evaluation results.