View synthesis methods using implicit continuous shape representations learned from a set of images, such as the Neural Radiance Field (NeRF) method, have gained increasing attention due to their high quality imagery and scalability to high resolution. However, the heavy computation required by its volumetric approach prevents NeRF from being useful in practice; minutes are taken to render a single image of a few megapixels. Now, an image of a scene can be rendered in a level-of-detail manner, so we posit that a complicated region of the scene should be represented by a large neural network while a small neural network is capable of encoding a simple region, enabling a balance between efficiency and quality. Recursive-NeRF is our embodiment of this idea, providing an efficient and adaptive rendering and training approach for NeRF. The core of Recursive-NeRF learns uncertainties for query coordinates, representing the quality of the predicted color and volumetric intensity at each level. Only query coordinates with high uncertainties are forwarded to the next level to a bigger neural network with a more powerful representational capability. The final rendered image is a composition of results from neural networks of all levels. Our evaluation on three public datasets shows that Recursive-NeRF is more efficient than NeRF while providing state-of-the-art quality. The code will be available at https://github.com/Gword/Recursive-NeRF.
翻译:使用从一组图像(如神经辐射场(NeRF)方法)中学习的隐含连续形状表达法的合成方法进行隐含连续的合成方法,由于图像质量高,可伸缩到高分辨率,因此日益受到关注。然而,由于体积方法要求大量计算,NeRF在实践中无法发挥作用;为制作几兆像素的单一图像花费了几分钟时间。现在,一个场景的图像可以以不精确的方式绘制,因此,我们认为,一个复杂的场景区域应当由一个大型神经网络代表,而一个小型神经网络能够对一个简单区域进行编码,从而在效率和质量之间实现平衡。 Restive- NeRF是我们这一理念的体现,为NeRF提供了高效和适应的显示和培训方法。Recurs-NERF的核心了解查询坐标的不确定性,代表每个级别预测的颜色和体积强度的质量。只有具有高度不确定性的查询坐标才能传送到一个更大的神经网络,具有更强大的代表能力。最后制作图像的是一个来自神经-RF系统质量网络的结果,同时提供所有层次的RRRRRRRA。我们的评估将显示。