![Figure 1 for Neural radiance fields-based holography [Invited]](/_next/image?url=https%3A%2F%2Ffigures.semanticscholar.org%2F52e54793884240e12519f7239ad5282b05f074bd%2F2-Figure1-1.png&w=640&q=75)
![Figure 2 for Neural radiance fields-based holography [Invited]](/_next/image?url=https%3A%2F%2Ffigures.semanticscholar.org%2F52e54793884240e12519f7239ad5282b05f074bd%2F2-Figure2-1.png&w=640&q=75)
![Figure 3 for Neural radiance fields-based holography [Invited]](/_next/image?url=https%3A%2F%2Ffigures.semanticscholar.org%2F52e54793884240e12519f7239ad5282b05f074bd%2F3-Figure3-1.png&w=640&q=75)
![Figure 4 for Neural radiance fields-based holography [Invited]](/_next/image?url=https%3A%2F%2Ffigures.semanticscholar.org%2F52e54793884240e12519f7239ad5282b05f074bd%2F3-Figure4-1.png&w=640&q=75)
Abstract:This study presents a novel approach for generating holograms based on the neural radiance fields (NeRF) technique. Generating three-dimensional (3D) data is difficult in hologram computation. NeRF is a state-of-the-art technique for 3D light-field reconstruction from 2D images based on volume rendering. The NeRF can rapidly predict new-view images that do not include a training dataset. In this study, we constructed a rendering pipeline directly from a 3D light field generated from 2D images by NeRF for hologram generation using deep neural networks within a reasonable time. The pipeline comprises three main components: the NeRF, a depth predictor, and a hologram generator, all constructed using deep neural networks. The pipeline does not include any physical calculations. The predicted holograms of a 3D scene viewed from any direction were computed using the proposed pipeline. The simulation and experimental results are presented.