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Papers/Single-Image HDR Reconstruction by Learning to Reverse the...

Single-Image HDR Reconstruction by Learning to Reverse the Camera Pipeline

Yu-Lun Liu, Wei-Sheng Lai, Yu-Sheng Chen, Yi-Lung Kao, Ming-Hsuan Yang, Yung-Yu Chuang, Jia-Bin Huang

2020-04-02CVPR 2020 6QuantizationSingle-Image-Based Hdr Reconstructioninverse tone mappingHDR ReconstructionInverse-Tone-Mapping
PaperPDFCode(official)

Abstract

Recovering a high dynamic range (HDR) image from a single low dynamic range (LDR) input image is challenging due to missing details in under-/over-exposed regions caused by quantization and saturation of camera sensors. In contrast to existing learning-based methods, our core idea is to incorporate the domain knowledge of the LDR image formation pipeline into our model. We model the HDRto-LDR image formation pipeline as the (1) dynamic range clipping, (2) non-linear mapping from a camera response function, and (3) quantization. We then propose to learn three specialized CNNs to reverse these steps. By decomposing the problem into specific sub-tasks, we impose effective physical constraints to facilitate the training of individual sub-networks. Finally, we jointly fine-tune the entire model end-to-end to reduce error accumulation. With extensive quantitative and qualitative experiments on diverse image datasets, we demonstrate that the proposed method performs favorably against state-of-the-art single-image HDR reconstruction algorithms.

Results

TaskDatasetMetricValueModel
inverse tone mappingVDS dataset: Multi exposure stack-based inverse tone mappingHDR-VDP-256.97Liu et al.
inverse tone mappingVDS dataset: Multi exposure stack-based inverse tone mappingHDR-VDP-38.24Liu et al.
inverse tone mappingVDS dataset: Multi exposure stack-based inverse tone mappingKim and Kautz TMO-PSNR28Liu et al.
inverse tone mappingVDS dataset: Multi exposure stack-based inverse tone mappingPU21-PSNR25.69Liu et al.
inverse tone mappingVDS dataset: Multi exposure stack-based inverse tone mappingPU21-SSIM0.8797Liu et al.
inverse tone mappingVDS dataset: Multi exposure stack-based inverse tone mappingReinhard'TMO-PSNR30.88Liu et al.
inverse tone mappingMSU HDR Video Reconstruction BenchmarkHDR-PSNR34.2872SingleHDR
inverse tone mappingMSU HDR Video Reconstruction BenchmarkHDR-SSIM0.9845SingleHDR
inverse tone mappingMSU HDR Video Reconstruction BenchmarkHDR-VQM0.263SingleHDR
Inverse-Tone-MappingMSU HDR Video Reconstruction BenchmarkHDR-PSNR34.2872SingleHDR
Inverse-Tone-MappingMSU HDR Video Reconstruction BenchmarkHDR-SSIM0.9845SingleHDR
Inverse-Tone-MappingMSU HDR Video Reconstruction BenchmarkHDR-VQM0.263SingleHDR
Inverse-Tone-MappingVDS dataset: Multi exposure stack-based inverse tone mappingHDR-VDP-256.97Liu et al.
Inverse-Tone-MappingVDS dataset: Multi exposure stack-based inverse tone mappingHDR-VDP-38.24Liu et al.
Inverse-Tone-MappingVDS dataset: Multi exposure stack-based inverse tone mappingKim and Kautz TMO-PSNR28Liu et al.
Inverse-Tone-MappingVDS dataset: Multi exposure stack-based inverse tone mappingPU21-PSNR25.69Liu et al.
Inverse-Tone-MappingVDS dataset: Multi exposure stack-based inverse tone mappingPU21-SSIM0.8797Liu et al.
Inverse-Tone-MappingVDS dataset: Multi exposure stack-based inverse tone mappingReinhard'TMO-PSNR30.88Liu et al.

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