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ITM-CNN: Learning the Inverse Tone Mapping from Low Dynamic Range Video to High Dynamic Range Displays Using Convolutional Neural Networks

机译:ITM-CNN:使用卷积神经网络学习从低动态范围视频到高动态范围显示的逆色调映射

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While inverse tone mapping (ITM) was frequently used for graphics rendering in the high dynamic range (HDR) space, the advent of HDR TVs and the consequent need for HDR multimedia contents open up new horizons for the consumption of ultra-high quality video contents. Unfortunately, previous methods are not appropriate for HDR TVs, and their inverse-tone-mapped results are not visually pleasing with noise amplification or lack of details. In this paper, we first present the ITM problem for HDR TVs and propose a CNN-based architecture, called ITM-CNN, which restores lost details and local contrast with its training strategy for enhancing the performance based on image decomposition using the guided filter. We demonstrate the benefits of decomposing the image by experimenting with various architectures and also compare the performance for different training strategies. Our ITM-CNN is a powerful means to solve the lack of HDR video contents with legacy LDR videos.
机译:虽然逆听映射(ITM)经常用于高动态范围(HDR)空间中的图形渲染,但HDR电视的出现以及随后对HDR多媒体内容的需求开辟了新的超高质量视频内容的消耗。遗憾的是,以前的方法不适合HDR TVS,它们的逆音调结果在视觉上令人欣赏噪音放大或缺乏细节。在本文中,我们首先向HDR电视提出ITM问题,并提出了一种名为ITM-CNN的CNN的架构,其恢复了丢失的细节和本地对比,与其使用引导滤波器基于图像分解来提高性能的培训策略。我们展示通过尝试各种架构来分解图像的好处,并比较不同培训策略的性能。我们的ITM-CNN是一种用遗留LDR视频解决缺乏HDR视频内容的强大方法。

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