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No-Reference Quality Assessment of Stereoscopic Images Based on Binocular Combination of Local Features Statistics

机译:基于双目局部特征统计的立体图像无参考质量评估

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No-reference (NR) stereoscopic 3D (S3D) image quality assessment (SIQA) is still challenging due to the poor understanding of how the human visual system (HVS) judges image quality based on binocular vision. In this paper, we propose an efficient opinion-aware NR Stereoscopic Quality predictor based on local contrast statistics combination (SQSC). Specifically, for left and right views, we first extract statistical features of the gradient magnitude (GM) and Laplacian of Gaussian (LoG) responses, describing the image local structures from different perspectives. The HVS is insensitive to low-order statistical redundancies that can be removed by LoG filtering. Hence, the monocular statistical features are then fused to derive the binocular features based on a linear combination model using LoG responses-based weightings. These weightings can efficiently simulate the binocular rivalry (BR) phenomenon. Finally, the binocular features and the subjective scores were jointly employed to construct a learned regression model obtained by the support vector regression (SVR) algorithm. Experimental results on three widely used 3D IQA databases demonstrate the high prediction performance of the proposed method when compared to recent well performing SIQA methods.
机译:由于对人类视觉系统(HVS)如何基于双目视觉判断图像质量的了解不多,无参考(NR)立体3D(S3D)图像质量评估(SIQA)仍然具有挑战性。在本文中,我们提出了一种基于局部对比统计组合(SQSC)的有效的,具有感知意识的NR立体视觉质量预测器。具体来说,对于左视图和右视图,我们首先提取梯度幅度(GM)和高斯拉普拉斯算子(LoG)响应的统计特征,从不同角度描述图像局部结构。 HVS对可以通过LoG过滤除去的低阶统计冗余不敏感。因此,然后使用基于LoG响应的加权,基于线性组合模型,融合单眼统计特征以得出双眼特征。这些权重可以有效地模拟双目竞争(BR)现象。最后,将双目特征和主观分数共同用于构建通过支持向量回归(SVR)算法获得的学习型回归模型。与最近表现良好的SIQA方法相比,在三个广泛使用的3D IQA数据库上的实验结果证明了该方法的高预测性能。

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