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Toward an unsupervised blind stereoscopic 3D image quality assessment using joint spatial and frequency representations

机译:朝着使用联合空间和频率表示的无监督立体三维图像质量评估

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摘要

Existing blind stereoscopic 3D (S3D) image quality assessment (IQA) metrics usually require supervised learning methods to predict S3D image quality, which limits their applicability in practice. In this paper, we propose an unsupervised blind S3D IQA metric that utilizes the joint spatial and frequency representations of visual perception. The metric proposed in this work was inspired by the binocular visual mechanism; furthermore, it is unsupervised and does not require subject-rated samples for training. To be more specific, first, the various binocular quality-aware features in spatial and frequency domains are extracted from the monocular and cyclopean views of natural S3D image patches. Subsequently, these features are utilized to establish a pristine multivariate Gaussian (MVG) model to characterize natural S3D image regularities. Finally, with the learned MVG model, the final quality score for a distorted S3D image can be yielded using a Bhattacharyya-like distance. Our experimental results illustrate that, compared to related existing metrics, the devised metric achieves competitive prediction performance.
机译:现有的盲立体3D(S3D)图像质量评估(IQA)度量通常需要监督学习方法来预测S3D图像质量,这限制了它们在实践中的适用性。在本文中,我们提出了一种无监督的盲的S3D IQA指标,其利用视觉感知的联合空间和频率表示。在这项工作中提出的指标受双目视觉机制的启发;此外,它是无人监督的,不需要进行主题额定样品进行培训。更具体地,首先,空间和频域中的各种双目质量感知特征是从自然S3D图像斑块的单眼和环节视图中提取的。随后,利用这些特征来建立原始多变量高斯(MVG)模型以表征自然S3D图像规律。最后,利用学习的MVG模型,可以使用类似Bhattacharyya的距离来产生变形的S3D图像的最终质量分数。我们的实验结果表明,与相关现有度量相比,设计的度量达到了竞争预测性能。

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