It is very challenging to reconstruct a high dynamic range (HDR) from a low dynamic range (LDR) image as an ill-posed problem. This paper proposes a luminance attentive network named LANet for HDR reconstruction from a single LDR image. Our method is based on two fundamental observations: (1) HDR images stored in relative luminance are scale-invariant, which means the HDR images will hold the same information when multiplied by any positive real number. Based on this observation, we propose a novel normalization method called " HDR calibration " for HDR images stored in relative luminance, calibrating HDR images into a similar luminance scale according to the LDR images. (2) The main difference between HDR images and LDR images is in under-/over-exposed areas, especially those highlighted. Following this observation, we propose a luminance attention module with a two-stream structure for LANet to pay more attention to the under-/over-exposed areas. In addition, we propose an extended network called panoLANet for HDR panorama reconstruction from an LDR panorama and build a dualnet structure for panoLANet to solve the distortion problem caused by the equirectangular panorama. Extensive experiments show that our proposed approach LANet can reconstruct visually convincing HDR images and demonstrate its superiority over state-of-the-art approaches in terms of all metrics in inverse tone mapping. The image-based lighting application with our proposed panoLANet also demonstrates that our method can simulate natural scene lighting using only LDR panorama. Our source code is available at https://github.com/LWT3437/LANet.
翻译:从低动态范围(LDR)图像中重建高动态范围(HDR)非常具有挑战性,因为这是一个不恰当的问题。本文建议建立一个光亮的热心网络,名为LANet,用于从一个LDR图像中重建HRDR。我们的方法基于两个基本观察:(1) 以相对光度存储的HDR图像是规模化的,这意味着HDR图像在以任何正实际数字乘以任何正实际数字时将持有相同的信息。基于这一观察,我们提议了一种新型的正常化方法,称为 " HRDR校准 ",用于储存在相对亮度中的HRDR34图像,根据LDR的图像将HDS图像校准成相似的直线度。(2) HRDR图像与LDR图像的主要区别在于超过/超高的图像区域。我们提议的一个光度关注模块,用两个流体结构来更多地关注下/超频层区域。此外,我们提议一个扩大的网络,从一个LDRPARPARA/RANA 图像库中,用一个双向的双向网络结构图像结构结构结构结构结构,展示我们的SDRDRDRVDRSDRal-ral-slationrolationrolationrolal 。我们的所有方法,通过一个Slationalma-s