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Reverse Tone Mapping of High Dynamic Range Video Using Gaussian Process Regression

机译:高斯过程回归高动态范围视频的反向色调映射

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There is a rapid increase in the amount of High Dynamic Range (HDR) display devices that are able to offer significantly better viewing experience with higher contrast and richer colors. However, there is a considerable shortage of content that is able to offer the much-sought-after HDR experience. One approach is to capture new content using specialized HDR-cameras, which are typically fewer and costlier than the conventional cameras. Another approach is to convert existing Standard Dynamic Range (SDR) content into HDR artificially, such that, it can reasonably mimic the viewing experience that a "true" HDR content would have offered. With the latter approach, we propose a Gaussian Process Regression (GPR) based machine learning method for estimating HDR content from their SDR counterparts. GPR is known as a powerful technique for estimating continuous real-valued functions. Given a set of training SDR-HDR image pairs, our proposed method is able to estimate the reverse tone mapping function that is used to convert SDR signal into its HDR equivalent. Preliminary experimental results indicate that our approach produces visually pleasing HDR images.
机译:高动态范围(HDR)显示设备的数量快速增加,能够提供更好的观察体验,具有更高的对比度和更丰富的颜色。但是,能够提供高度追捧的HDR体验的内容具有相当大的内容。一种方法是使用专用HDR-相机捕获新内容,这些内容通常比传统相机更少,昂贵。另一种方法是人为地将现有的标准动态范围(SDR)内容转换为HDR,使得可以合理地模仿观看体验,即“真实”的HDR内容提供。通过后一种方法,我们提出了一种基于高斯过程回归(GPR)的机器学习方法,用于从他们的SDR对应物中估算HDR内容。 GPR被称为用于估计连续实值函数的强大技术。鉴于一组培训SDR-HDR图像对,我们所提出的方法能够估计用于将SDR信号转换为其HDR等效的反向色调映射函数。初步实验结果表明,我们的方法在视觉上令人赏心悦目的HDR图像中产生。

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