基于支持向量机的全局照明算法无参考质量评估

J. Constantin, S. Haddad, I. Constantin, A. Bigand, D. Hamad
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引用次数: 1

摘要

基于随机技术的全局照明算法提供了逼真的图像。然而,它们容易受到噪声的影响,可以通过增加路径的数量来减少噪声,正如蒙特卡罗理论所证明的那样。为了确保人类观察者无法感知任何随机噪声,找到所需路径的数量的问题仍然是开放的。本文提出了一种基于噪声质量指标和支持向量机(SVM)的无参考质量评价模型,以预测哪些图像突出了感知噪声。该模型可用于随机全局照明算法,以找到任意图像不同部分的视觉收敛阈值。该模型与人类心理视觉分数的比较研究表明,这些分数与学习模型质量度量之间具有良好的一致性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
No-reference quality assessment in global illumination algorithms based on SVM
Global illumination algorithms based on stochastically techniques provide photo-realistic images. However, they are prone to noise that can be reduced by increasing the number of paths as proved by Monte Carlo theory. The problem of finding the number of paths that are required in order to ensure that human observers cannot perceive any stochastic noise is still open. This paper proposes a no-reference quality assessment model based on noise quality indexes and support vector machine (SVM) in order to predict which image highlights perceptual noise. This model can then be used in stochastic global illumination algorithms in order to find the visual convergence threshold of different parts of any image. A comparative study of this model with human psycho-visual scores demonstrates the good consistency between these scores and the learning model quality measures.
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