NeuLF: Efficient Novel View Synthesis with Neural 4D Light Field
This addresses the problem of efficient and robust view synthesis for computer graphics and vision applications, offering an incremental improvement over previous light field methods.
The paper tackles novel view synthesis by representing scenes as a 4D light field and training a neural network to map rays to colors, enabling high-quality rendering with sparser training images and achieving results comparable to state-of-the-art methods while maintaining interactive frame rates and small memory footprints.
In this paper, we present an efficient and robust deep learning solution for novel view synthesis of complex scenes. In our approach, a 3D scene is represented as a light field, i.e., a set of rays, each of which has a corresponding color when reaching the image plane. For efficient novel view rendering, we adopt a two-plane parameterization of the light field, where each ray is characterized by a 4D parameter. We then formulate the light field as a 4D function that maps 4D coordinates to corresponding color values. We train a deep fully connected network to optimize this implicit function and memorize the 3D scene. Then, the scene-specific model is used to synthesize novel views. Different from previous light field approaches which require dense view sampling to reliably render novel views, our method can render novel views by sampling rays and querying the color for each ray from the network directly, thus enabling high-quality light field rendering with a sparser set of training images. Per-ray depth can be optionally predicted by the network, thus enabling applications such as auto refocus. Our novel view synthesis results are comparable to the state-of-the-arts, and even superior in some challenging scenes with refraction and reflection. We achieve this while maintaining an interactive frame rate and a small memory footprint.