CVIVJan 19, 2018

Deep Chain HDRI: Reconstructing a High Dynamic Range Image from a Single Low Dynamic Range Image

arXiv:1801.06277v1115 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of generating HDR images from limited LDR inputs for applications in photography and imaging, representing an incremental advance with specific performance gains.

The paper tackles the problem of reconstructing a high dynamic range (HDR) image from a single low dynamic range (LDR) image using a novel deep neural network model, achieving a 6-point improvement in HDR-VDP2 Q score and a 10 dB higher average peak signal-to-noise ratio compared to conventional algorithms.

In this paper, we propose a novel deep neural network model that reconstructs a high dynamic range (HDR) image from a single low dynamic range (LDR) image. The proposed model is based on a convolutional neural network composed of dilated convolutional layers, and infers LDR images with various exposures and illumination from a single LDR image of the same scene. Then, the final HDR image can be formed by merging these inference results. It is relatively easy for the proposed method to find the mapping between the LDR and an HDR with a different bit depth because of the chaining structure inferring the relationship between the LDR images with brighter (or darker) exposures from a given LDR image. The method not only extends the range, but also has the advantage of restoring the light information of the actual physical world. For the HDR images obtained by the proposed method, the HDR-VDP2 Q score, which is the most popular evaluation metric for HDR images, was 56.36 for a display with a 1920$\times$1200 resolution, which is an improvement of 6 compared with the scores of conventional algorithms. In addition, when comparing the peak signal-to-noise ratio values for tone mapped HDR images generated by the proposed and conventional algorithms, the average value obtained by the proposed algorithm is 30.86 dB, which is 10 dB higher than those obtained by the conventional algorithms.

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