Title
Deep view synthesis from sparse photometric images
Abstract
The goal of light transport acquisition is to take images from a sparse set of lighting and viewing directions, and combine them to enable arbitrary relighting with changing view. While relighting from sparse images has received significant attention, there has been relatively less progress on view synthesis from a sparse set of "photometric" images---images captured under controlled conditions, lit by a single directional source; we use a spherical gantry to position the camera on a sphere surrounding the object. In this paper, we synthesize novel viewpoints across a wide range of viewing directions (covering a 60° cone) from a sparse set of just six viewing directions. While our approach relates to previous view synthesis and image-based rendering techniques, those methods are usually restricted to much smaller baselines, and are captured under environment illumination. At our baselines, input images have few correspondences and large occlusions; however we benefit from structured photometric images. Our method is based on a deep convolutional network trained to directly synthesize new views from the six input views. This network combines 3D convolutions on a plane sweep volume with a novel per-view per-depth plane attention map prediction network to effectively aggregate multi-view appearance. We train our network with a large-scale synthetic dataset of 1000 scenes with complex geometry and material properties. In practice, it is able to synthesize novel viewpoints for captured real data and reproduces complex appearance effects like occlusions, view-dependent specularities and hard shadows. Moreover, the method can also be combined with previous relighting techniques to enable changing both lighting and view, and applied to computer vision problems like multiview stereo from sparse image sets.
Year
DOI
Venue
2019
10.1145/3306346.3323007
ACM Transactions on Graphics (TOG)
Keywords
Field
DocType
appearance acquisition, novel view synthesis
Computer vision,Viewpoints,Convolution,Photometry (optics),View synthesis,Complex geometry,Sparse image,Artificial intelligence,Rendering (computer graphics),Mathematics
Journal
Volume
Issue
ISSN
38
4
0730-0301
Citations 
PageRank 
References 
17
0.54
1
Authors
6
Name
Order
Citations
PageRank
Zexiang Xu110110.17
Sai Bi2635.28
Kalyan Sunkavalli350031.75
Sunil Hadap4170.54
Hao Su57343302.07
Ravi Ramamoorthi64481237.21