Dip-NeRF: Depth-Based Anti-Aliased Neural Radiance Fields
Shihao Qin, Jiangjian Xiao, Jianfei Ge- Electrical and Electronic Engineering
- Computer Networks and Communications
- Hardware and Architecture
- Signal Processing
- Control and Systems Engineering
Neural radiation field (NeRF)-based novel view synthesis methods are gaining popularity for their ability to generate detailed and realistic images. However, most NeRF-based methods only use images to learn scene representations, ignoring the importance of depth information. The Zip-NeRF method has achieved impressive results in unbounded scenes by combining anti-aliasing techniques and mesh representations. However, the method requires a large number of input images and may perform poorly in complex scenes. Our method incorporates the advantages of Zip-NeRF and incorporates depth information to reduce the number of required images and solve the scale-free problem in borderless scenes. Experimental results show that our method effectively reduces the training time.And we can generate high-quality images and fine point cloud models using few images, even in complex scenes with numerous occlusions.