Neural Radiance Fields (NeRFs) are a powerful representation for modeling a 3D scene as a continuous function. Though NeRF is able to render complex 3D scenes with view-dependent effects, few efforts have been devoted to exploring its limits in a high-resolution setting. Specifically, existing NeRF-based methods face several limitations when reconstructing high-resolution real scenes, including a very large number of parameters, misaligned input data, and overly smooth details. In this work, we conduct the first pilot study on training NeRF with high-resolution data and propose the corresponding solutions: 1) marrying the multilayer perceptron (MLP) with convolutional layers which can encode more neighborhood information while reducing the total number of parameters; 2) a novel training strategy to address misalignment caused by moving objects or small camera calibration errors; and 3) a high-frequency aware loss. Our approach is nearly free without introducing obvious training/testing costs, while experiments on different datasets demonstrate that it can recover more high-frequency details compared with the current state-of-the-art NeRF models. Project page: \url{https://yifanjiang.net/alignerf.}
翻译:以 NeRF 为基础的现有方法在重建高分辨率真实场景时面临若干限制, 包括很多参数、 输入数据不匹配和过于光滑的细节。 在这项工作中, 我们进行了关于用高分辨率数据对 NeRF 进行培训的第一次试点研究, 并提出相应的解决方案:(1) 将多层过敏(MLP) 与能够编码更多邻里信息并减少参数总量的进化层相结合的进化层连接起来;(2) 为解决移动物体或小型相机校准错误造成的不匹配问题制定新的培训战略;(3) 高频损失。 我们的方法几乎是免费的,没有引入明显的培训/测试成本,而在不同数据集上进行的实验表明,与当前的NERF模型相比,它可以恢复更多的高频细节。 项目页面:\url/https://yiferang_net.