核心概念
HourglassNeRF proposes a novel hourglass casting strategy for few-shot neural rendering, achieving superior results with adaptive high-frequency regularization and luminance consistency.
統計
Addressing this, we propose HourglassNeRF, an effective regularization-based approach with a novel hour-glass casting strategy.
Our proposed hourglass is conceptualized as a bundle of additional rays within the area between the original input ray and its corresponding reflection ray, by featurizing the conical frustum via Integrated Positional Encoding (IPE).
Our HourglassNeRF outperforms its baseline and achieves competitive results on multiple benchmarks with sharply rendered fine details.
The code will be available.