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PCQM: A Full-Reference Quality Metric for Colored 3D Point Clouds

机译:PCQM:彩色3D点云的完整参考质量指标

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摘要

3D point clouds constitute an emerging multimedia content, now used in a wide range of applications. The main drawback of this representation is the size of the data since typical point clouds may contain millions of points, usually associated with both geometry and color information. Consequently, a significant amount of work has been devoted to the efficient compression of this representation. Lossy compression leads to a degradation of the data and thus impacts the visual quality of the displayed content. In that context, predicting perceived visual quality computationally is essential for the optimization and evaluation of compression algorithms. In this paper, we introduce PCQM, a full-reference objective metric for visual quality assessment of 3D point clouds. The metric is an optimally-weighted linear combination of geometry-based and color-based features. We evaluate its performance on an open subjective dataset of colored point clouds compressed by several algorithms; the proposed quality assessment approach outperforms all previous metrics in terms of correlation with mean opinion scores.
机译:3D点云构成了一种新兴的多媒体内容,目前已被广泛应用。这种表示的主要缺点是数据的大小,因为典型的点云可能包含数百万个点,通常与几何和颜色信息都相关联。因此,大量工作已致力于有效压缩该表示。有损压缩会导致数据质量下降,从而影响所显示内容的视觉质量。在这种情况下,以计算方式预测感知的视觉质量对于压缩算法的优化和评估至关重要。在本文中,我们介绍PCQM,这是用于3D点云的视觉质量评估的全参考客观指标。度量是基于几何和基于颜色的特征的最佳加权线性组合。我们在由几种算法压缩的彩色点云的开放主观数据集上评估其性能;与平均意见得分的相关性方面,建议的质量评估方法优于所有以前的指标。

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