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Blind Quality Assessment of 3-D Synthesized Views Based on Hybrid Feature Classes

机译:基于混合特征类的3D综合视图盲质量评估

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摘要

In this paper, a novel quality metric to evaluate depth-based synthesized views is proposed. This metric relies on a hybrid approach that uses features extracted in different phases of the image synthesis procedure, namely from the bitstream, from intermediate data produced during the synthesis process, and from the final synthesized view; these features are then combined using support vector regression. A new data set of synthesized images, with compression and rendering artifacts, was built and used to develop and assess the proposed metric. The metric performance is compared with conventional full-reference two-dimensional image quality assessment metrics and with quality assessment metrics developed specifically for synthesized images. The experimental results showed that the proposed solution outperforms the considered benchmark metrics, being able to predict the subjective quality scores of the synthesized images with a Pearson correlation coefficient close to 0.9.
机译:在本文中,提出了一种新颖的评估基于深度的综合视图的质量度量。该度量标准依赖于一种混合方法,该方法使用在图像合成过程的不同阶段提取的特征,即从位流,合成过程中产生的中间数据以及最终合成视图中提取的特征;然后使用支持向量回归对这些特征进行组合。建立了具有压缩和渲染伪像的合成图像新数据集,并将其用于开发和评估建议的度量。将度量性能与常规的全参考二维图像质量评估度量以及专门为合成图像开发的质量评估度量进行比较。实验结果表明,所提出的解决方案优于考虑的基准指标,能够预测皮尔逊相关系数接近0.9的合成图像的主观质量得分。

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