Hung Jin Lin
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Papers from this author
Explorable Tone Mapping Operators
Su Chien-Chuan, Yu-Lun Liu, Hung Jin Lin, Ren Wang, Chia-Ping Chen, Yu-Lin Chang, Soo-Chang Pei
Auto-TLDR; Learning-based multimodal tone-mapping from HDR images
Abstract Slides Poster Similar
Tone-mapping plays an essential role in high dynamic range (HDR) imaging. It aims to preserve visual information of HDR images in a medium with a limited dynamic range. Although many works have been proposed to provide tone-mapped results from HDR images, most of them can only perform tone-mapping in a single pre-designed way. However,the subjectivity of tone-mapping quality varies from person to person, and the preference of tone-mapping style also differs from application to application. In this paper, a learning-based multimodal tone-mapping method is proposed, which not only achieves excellent visual quality but also explores the style diversity. Based on the framework of BicycleGAN [1], the proposed method can provide a variety of expert-level tone-mapped results by manipulating different latent codes. Finally, we show that the proposed method performs favorably against state-of-the-art tone-mapping algorithms both quantitatively and qualitatively.