1. Introduction
Neural Radiance Fields (NeRF) have revolutionized the fields of novel view synthesis and 3D reconstruction by lever-aging an implicit function optimized from a collection of 2D images [2], [13], [24],[2]7. Despite their remarkable ren-dering capabilities, N eRFs are hampered by the substantial cost and time required to gather dense image sets for a given scene [6], [41], [47]. This challenge has spurred the development of Few-shot NeRF, an emerging domain focused on reconstructing 3D scenes with minimal image data [6], [8], [12],[18].
We present Re VoRF, a voxel-based framework designed to capitalize on the unreliability inherent in warped novel views. (b) demonstrates the warping outcomes, where black holes signify unmatched pixels from the original view. (c) illustrates the results of training when these holes are masked out, which unfortunately results in ambiguous geometric structures. In contrast, (d) showcases our approach's ability to maintain correct geometric consistency. Re VoRF achieves this by leveraging relational depth prior know ledge within these unreliable hole regions. Our approach demonstrates the best reconstruction quality while being one of the fastest few-shot approaches in (e).