从标准动态范围视频生成高动态范围视频 / Generating HDR Video from SDR Video
1️⃣ 一句话总结
本文提出了一种利用大规模生成式视频模型,将普通标准动态范围(SDR)视频转换为高质量高动态范围(HDR)视频的新框架,通过多曝光预测和可学习的视频合并模型,有效保留了亮部和暗部细节,并在日常视频甚至经典电影上取得了鲁棒的转换效果。
The high dynamic range (HDR) video ecosystem is approaching maturity, but the problem of upconverting legacy standard dynamic range (SDR) videos persists without a convincing solution. We propose a framework for HDR video synthesis from casual SDR footage by leveraging large-scale generative video models. We introduce a Multi-Exposure Video Model (MEVM) that can predict exposure-bracketed linear SDR video sequences from a single nonlinear SDR video input. We further propose a learnable Video Merging Model (VMM) that merges the predicted exposure-bracketed video into a high-quality HDR sequence while preserving detail in both shadows and highlights. Extensive experiments, quantitative and qualitative evaluation, and a user study demonstrate that our approach enables robust HDR conversion for in-the-wild examples from casual consumer videos and even iconic films. Finally, our model can support HDR synthesis pipelines built upon existing SDR generative video models. Output HDR videos can be viewed on our supplementary webpage: this http URL
从标准动态范围视频生成高动态范围视频 / Generating HDR Video from SDR Video
本文提出了一种利用大规模生成式视频模型,将普通标准动态范围(SDR)视频转换为高质量高动态范围(HDR)视频的新框架,通过多曝光预测和可学习的视频合并模型,有效保留了亮部和暗部细节,并在日常视频甚至经典电影上取得了鲁棒的转换效果。
源自 arXiv: 2605.14703