FHDR: HDR Image Reconstruction from a Single LDR Image using Feedback Network

Zeeshan Khan, Mukul Khanna, S. Raman
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引用次数: 27

Abstract

High dynamic range (HDR) image generation from a single exposure low dynamic range (LDR) image has been made possible due to the recent advances in Deep Learning. Various feed-forward Convolutional Neural Networks (CNNs) have been proposed for learning LDR to HDR representations. To better utilize the power of CNNs, we exploit the idea of feedback, where the initial low level features are guided by the high level features using a hidden state of a Recurrent Neural Network. Unlike a single forward pass in a conventional feed-forward network, the reconstruction from LDR to HDR in a feedback network is learned over multiple iterations. This enables us to create a coarse-to-fine representation, leading to an improved reconstruction at every iteration. Various advantages over standard feed-forward networks include early reconstruction ability and better reconstruction quality with fewer network parameters. We design a dense feedback block and propose an end-to-end feedback network-FHDR for HDR image generation from a single exposure LDR image. Qualitative and quantitative evaluations show the superiority of our approach over the state-of-the-art methods.
FHDR:使用反馈网络从单个LDR图像重建HDR图像
由于深度学习的最新进展,从单次曝光低动态范围(LDR)图像生成高动态范围(HDR)图像已经成为可能。各种前馈卷积神经网络(cnn)已经被提出用于学习LDR到HDR表示。为了更好地利用cnn的力量,我们利用反馈的思想,其中初始的低级特征由使用递归神经网络的隐藏状态的高级特征引导。与传统前馈网络中的单次前向传递不同,反馈网络中从LDR到HDR的重建是通过多次迭代学习的。这使我们能够创建一个从粗到精的表示,从而在每次迭代中得到改进的重建。与标准前馈网络相比,前馈网络具有重构能力早、重构质量好、网络参数少等优点。我们设计了一个密集反馈块,并提出了一个端到端的反馈网络- fhdr,用于从单曝光LDR图像生成HDR图像。定性和定量评估表明,我们的方法优于最先进的方法。
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