基于局部熵的立体图像质量度量与双目图像仅显着差异

Sid Ahmed Fezza, M. Larabi, K. Faraoun
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引用次数: 22

摘要

开发一种能够可靠地预测最终用户感知到的感知3D质量的度量是一个具有挑战性的问题,也是3D多媒体应用成功的必要工具。将左右图像的2D质量结合起来预测3D体验质量的各种尝试都显示出了它们的局限性,尤其是在不对称扭曲的情况下。本文提出了一种基于感知双目特征的立体图像全参考质量评价指标。该度量通过结合人类视觉系统(HVS)特征,有效地处理了立体图像的不对称畸变。我们的方法是基于这样一个事实,即在质量不对称的情况下,3D感知机制支持提供最重要和对比信息的视图。为了实现这一点,根据本地信息内容为每个视图的质量定义了权重因子。此外,考虑到HVS的灵敏度,每个区域的质量评分都是基于双目可注意差异(BJND)进行调制的。实验结果表明,所提出的度量比现有的度量更符合人类的感知。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stereoscopic image quality metric based on local entropy and binocular just noticeable difference
Developing a metric that can reliably predict the perceptual 3D quality as perceived by the end user, is a challenging issue and a necessary tool for the success of 3D multimedia applications. The various attempts at predicting 3D quality of experience as the combination of 2D quality of the left and right images have shown their limitations, and particularly for the case of asymmetric distortions. In this paper we propose a full reference quality assessment metric for stereoscopic images based on the perceptual binocular characteristics. The proposed metric handles effectively the asymmetric distortions of stereoscopic images, by incorporating human visual system (HVS) characteristics. Our approach was motivated by the fact that in case of asymmetric quality, 3D perception mechanisms supports the view providing the most important and contrasted information. To achieve that, weighting factors are defined for the quality of each view according to the local information content. Add to that, to take into account the sensitivity of the HVS, quality score of each region are modulated based on the Binocular Just Noticeable Difference (BJND). Experimental results show that the proposed metric correlates better with human perception than the state-of-the-art metrics.
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