4.5 Article Proceedings Paper

Advances in Neural Rendering

期刊

COMPUTER GRAPHICS FORUM
卷 41, 期 2, 页码 703-735

出版社

WILEY
DOI: 10.1111/cgf.14507

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资金

  1. ERC Consolidator Grant 4DReply [770784]
  2. Reality Labs Research grant
  3. ERC [804724]

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Synthesizing photo-realistic images and videos is a key focus in computer graphics research. Neural rendering combines classical computer graphics techniques with machine learning to create algorithms for synthesizing images from real-world observations. This field has seen significant progress in recent years, with methods that can handle static scenes as well as non-rigidly deforming objects, scene editing, and composition. These methods have the advantage of being 3D-consistent and can be used for generative tasks. This report provides a comprehensive overview of state-of-the-art neural rendering methods, fundamental concepts, and open challenges.
Synthesizing photo-realistic images and videos is at the heart of computer graphics and has been the focus of decades of research. Traditionally, synthetic images of a scene are generated using rendering algorithms such as rasterization or ray tracing, which take specifically defined representations of geometry and material properties as input. Collectively, these inputs define the actual scene and what is rendered, and are referred to as the scene representation (where a scene consists of one or more objects). Example scene representations are triangle meshes with accompanied textures (e.g., created by an artist), point clouds (e.g., from a depth sensor), volumetric grids (e.g., from a CT scan), or implicit surface functions (e.g., truncated signed distance fields). The reconstruction of such a scene representation from observations using differentiable rendering losses is known as inverse graphics or inverse rendering. Neural rendering is closely related, and combines ideas from classical computer graphics and machine learning to create algorithms for synthesizing images from real-world observations. Neural rendering is a leap forward towards the goal of synthesizing photo-realistic image and video content. In recent years, we have seen immense progress in this field through hundreds of publications that show different ways to inject learnable components into the rendering pipeline. This state-of-the-art report on advances in neural rendering focuses on methods that combine classical rendering principles with learned 3D scene representations, often now referred to as neural scene representations. A key advantage of these methods is that they are 3D-consistent by design, enabling applications such as novel viewpoint synthesis of a captured scene. In addition to methods that handle static scenes, we cover neural scene representations for modeling non-rigidly deforming objects and scene editing and composition. While most of these approaches are scene-specific, we also discuss techniques that generalize across object classes and can be used for generative tasks. In addition to reviewing these state-of-the-art methods, we provide an overview of fundamental concepts and definitions used in the current literature. We conclude with a discussion on open challenges and social implications.

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