模块化神经图像信号处理 / Modular Neural Image Signal Processing
1️⃣ 一句话总结
这篇论文提出了一种模块化的神经图像信号处理框架,它不仅能高质量地将原始图像数据转换为最终显示图像,还因其模块化设计而具备出色的可控性、可扩展性和编辑灵活性,并以此为基础构建了一个支持多样编辑操作的用户交互工具。
This paper presents a modular neural image signal processing (ISP) framework that processes raw inputs and renders high-quality display-referred images. Unlike prior neural ISP designs, our method introduces a high degree of modularity, providing full control over multiple intermediate stages of the rendering process.~This modular design not only achieves high rendering accuracy but also improves scalability, debuggability, generalization to unseen cameras, and flexibility to match different user-preference styles. To demonstrate the advantages of this design, we built a user-interactive photo-editing tool that leverages our neural ISP to support diverse editing operations and picture styles. The tool is carefully engineered to take advantage of the high-quality rendering of our neural ISP and to enable unlimited post-editable re-rendering. Our method is a fully learning-based framework with variants of different capacities, all of moderate size (ranging from ~0.5 M to ~3.9 M parameters for the entire pipeline), and consistently delivers competitive qualitative and quantitative results across multiple test sets. Watch the supplemental video at: this https URL
模块化神经图像信号处理 / Modular Neural Image Signal Processing
这篇论文提出了一种模块化的神经图像信号处理框架,它不仅能高质量地将原始图像数据转换为最终显示图像,还因其模块化设计而具备出色的可控性、可扩展性和编辑灵活性,并以此为基础构建了一个支持多样编辑操作的用户交互工具。
源自 arXiv: 2512.08564