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Stopping Criterion during Rendering of Computer-Generated Images Based on SVD-Entropy

机译:基于SVD熵的计算机生成的图像渲染过程中停止标准

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摘要

The estimation of image quality and noise perception still remains an important issue in various image processing applications. It has also become a hot topic in the field of photo-realistic computer graphics where noise is inherent in the calculation process. Unlike natural-scene images, however, a reference image is not available for computer-generated images. Thus, classic methods to assess noise quantity and stopping criterion during the rendering process are not usable. This is particularly important in the case of global illumination methods based on stochastic techniques: They provide photo-realistic images which are, however, corrupted by stochastic noise. This noise can be reduced by increasing the number of paths, as proved by Monte Carlo theory, but the problem of finding the right number of paths that are required in order to ensure that human observers cannot perceive any noise is still open. Until now, the features taking part in the human evaluation of image quality and the remaining perceived noise are not precisely known. Synthetic image generation tends to be very expensive and the produced datasets are high-dimensional datasets. In that case, finding a stopping criterion using a learning framework is a challenging task. In this paper, a new method for characterizing computational noise for computer generated images is presented. The noise is represented by the entropy of the singular value decomposition of each block composing an image. These Singular Value Decomposition (SVD)-entropy values are then used as input to a recurrent neural network architecture model in order to extract image noise and in predicting a visual convergence threshold of different parts of any image. Thus a new no-reference image quality assessment is proposed using the relation between SVD-Entropy and perceptual quality, based on a sequence of distorted images. Experiments show that the proposed method, compared with experimental psycho-visual scores, demonstrates a good consistency between these scores and stopping criterion measures that we obtain.
机译:图像质量和噪声感知的估计仍然是各种图像处理应用中的重要问题。它还成为了光处理计算机图形领域的热门话题,其中噪声是计算过程中固有的。然而,与自然场景图像不同,参考图像不适用于计算机生成的图像。因此,在渲染过程中评估噪声量和停止标准的经典方法不可用。这在基于随机技术的全局照明方法的情况下尤其重要:它们提供了由随机噪声损坏的照片 - 现实图像。通过增加蒙特卡罗理论,可以通过增加路径数量来减少这种噪音,但是找到所需的正确路径数量的问题,以确保人类观察者无法感知任何噪音仍然是开放的。到目前为止,在人为评估图像质量和剩余的感知噪声中的特征并不精确地知道。合成图像产生趋于非常昂贵,并且产生的数据集是高维数据集。在这种情况下,使用学习框架寻找停止标准是一个具有挑战性的任务。本文介绍了一种新方法,用于表征计算机生成的图像的计算噪声。噪声由构成图像的每个块的奇异值分解的熵表示。然后将这些奇异值分解(SVD) - 不分解值用作反复性神经网络架构模型的输入,以便提取图像噪声和预测任何图像的不同部分的可视收敛阈值。因此,基于一系列扭曲图像,使用SVD熵和感知质量之间的关系提出了一种新的无参考图像质量评估。实验表明,与实验性心理视觉评分相比,该方法展示了这些评分与我们获得的措施之间的良好一致性。

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