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Full-Reference Quality Assessment of Stereoscopic Images by Learning Binocular Receptive Field Properties

机译:通过学习双目感受野特性全面评估立体图像的质量

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摘要

Quality assessment of 3D images encounters more challenges than its 2D counterparts. Directly applying 2D image quality metrics is not the solution. In this paper, we propose a new full-reference quality assessment for stereoscopic images by learning binocular receptive field properties to be more in line with human visual perception. To be more specific, in the training phase, we learn a multiscale dictionary from the training database, so that the latent structure of images can be represented as a set of basis vectors. In the quality estimation phase, we compute sparse feature similarity index based on the estimated sparse coefficient vectors by considering their phase difference and amplitude difference, and compute global luminance similarity index by considering luminance changes. The final quality score is obtained by incorporating binocular combination based on sparse energy and sparse complexity. Experimental results on five public 3D image quality assessment databases demonstrate that in comparison with the most related existing methods, the devised algorithm achieves high consistency with subjective assessment.
机译:3D图像的质量评估比2D图像面临更多的挑战。直接应用2D图像质量指标不是解决方案。在本文中,我们通过学习双目感受野属性以更符合人类的视觉感知,提出了一种针对立体图像的新的全参考质量评估。更具体地说,在训练阶段,我们从训练数据库中学习了一个多尺度字典,以便图像的潜在结构可以表示为一组基础向量。在质量估计阶段,我们基于估计的稀疏系数矢量,通过考虑它们的相位差和幅度差来计算稀疏特征相似性指数,并考虑亮度变化来计算全局亮度相似性指数。通过结合基于稀疏能量和稀疏复杂性的双目组合获得最终质量得分。在五个公共3D图像质量评估数据库上的实验结果表明,与最相关的现有方法相比,该算法与主观评估具有很高的一致性。

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