SPARF: Large-Scale Learning of 3D Sparse Radiance Fields from Few Input Images
Abdullah Hamdi, Bernard Ghanem, Matthias Nie{\ss}ner

TL;DR
SPARF introduces a large synthetic dataset and a novel learning pipeline for generating high-quality 3D sparse radiance fields from few input images, enabling improved novel view synthesis.
Contribution
The paper presents SPARF, a large-scale synthetic dataset for 3D radiance fields, and SuRFNet, a new method for learning sparse voxel radiance fields from limited views.
Findings
Achieves state-of-the-art results in few-view novel view synthesis.
Provides a large, diverse dataset for training and benchmarking.
Demonstrates effective learning of 3D radiance fields from minimal input images.
Abstract
Recent advances in Neural Radiance Fields (NeRFs) treat the problem of novel view synthesis as Sparse Radiance Field (SRF) optimization using sparse voxels for efficient and fast rendering (plenoxels,InstantNGP). In order to leverage machine learning and adoption of SRFs as a 3D representation, we present SPARF, a large-scale ShapeNet-based synthetic dataset for novel view synthesis consisting of 17 million images rendered from nearly 40,000 shapes at high resolution (400 X 400 pixels). The dataset is orders of magnitude larger than existing synthetic datasets for novel view synthesis and includes more than one million 3D-optimized radiance fields with multiple voxel resolutions. Furthermore, we propose a novel pipeline (SuRFNet) that learns to generate sparse voxel radiance fields from only few views. This is done by using the densely collected SPARF dataset and 3D sparse…
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Taxonomy
TopicsAdvanced Vision and Imaging · 3D Shape Modeling and Analysis · Computer Graphics and Visualization Techniques
