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Learning-Based Low-Complexity Reverse Tone Mapping With Linear Mapping

机译:基于学习的低复杂性反向色调映射,具有线性映射

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Although high dynamic range (HDR) display has become popular recently, the legacy content such as standard dynamic range (SDR) video is still in service and needs to be properly converted on HDR display devices. Therefore, it is desirable for HDR TV sets to have the capability of automatically converting input SDR video into HDR video, which is called reverse tone mapping (RTM). In this paper, we propose a novel learning-based low-complexity RTM scheme that not only expands the suppressed dynamic ranges (DR) of the SDR videos (or images), but also effectively restores lost detail in the SDR videos. Most existing conventional RTM schemes have focused on how to expand the DR of global contrast, resulting in limitations in recovering lost detail of SDR videos. On the other hand, the recent convolutional neural network-based approaches show promising results, but they are too complex to be applied on the users' devices in practice. In this paper, our learning-based RTM scheme is computationally simple but effective in recovering lost detail. To learn the SDR-to-HDR relation, training "SDR-HDR" images are first separated into their base layer components and detail layer components by applying a guided filter. The detail layer components of the "SDR-HDR" pairs are used to train the SDR-to-HDR mapping. The mapping matrices are computed based on kernel ridge regression. In the meantime, the global contrast of the base layers is expanded by a nonlinear function that suppresses darker regions and amplifies brighter regions to fit the full DR of a target HDR display. To verify the effectiveness of our learning-based RTM scheme, we performed subjective quality assessment for images and videos. The experimental results show that our RTMscheme outperforms the existing RTM scheme with the successful restoration of lost detail in SDR images.
机译:虽然最近高动态范围(HDR)显示器变得流行,但是标准动态范围(SDR)视频等遗留内容仍在使用中,并且需要在HDR显示设备上正确转换。因此,希望HDR TV集合能够将输入的SDR视频自动转换为HDR视频,这被称为反向色调映射(RTM)。在本文中,我们提出了一种基于新的学习的低复杂性RTM方案,不仅可以扩展SDR视频(或图像)的抑制动态范围(DR),而且还有效地恢复SDR视频中的丢失细节。大多数现有的传统RTM方案专注于如何扩展全局对比博士,从而恢复SDR视频丢失细节的限制。另一方面,最近的卷积神经网络的方法显示了有希望的结果,但它们太复杂,无法在实践中应用于用户的设备。在本文中,我们基于学习的RTM方案在计算上简单而有效地恢复丢失的细节。为了学习SDR-to-HDR关系,首先通过应用引导滤波器将训练“SDR-HDR”图像分离为其基础层组件和细节层组件。 “SDR-HDR”对的详细层组​​件用于培训SDR-to-HDR映射。基于内核RIDGE回归计算映射矩阵。同时,基层的全局对比度由非线性函数扩展,该非线性函数抑制较深区域并放大更亮的区域以适合目标HDR显示器的完整DR。为了验证基于学习的RTM计划的有效性,我们对图像和视频进行了主观质量评估。实验结果表明,我们的RTMSCheme在SDR图像中成功恢复了现有的RTM方案。

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