Predicting molecular interactions by graph convolutional neural networks with global features

Nov 1, 2023·
Kaito Fukui
,
Qingwen Chen
,
Hiroaki Santo
Fumio Okura
Fumio Okura
,
Takeshi Yamada
,
Yasuyuki Matsushita
,
Kazuhiko Nakatani
· 0 min read
Abstract
Multi-view photometric stereo (MVPS) recovers a high-fidelity 3D shape of a scene by benefiting from both multi-view stereo and photometric stereo. While photometric stereo boosts detailed shape reconstruction it necessitates recording images under various light conditions for each viewpoint. In particular calibrating the light directions for each view significantly increases the cost of acquiring images. To make MVPS more accessible we introduce a practical and easy-to-implement setup multi-view constrained photometric stereo (MVCPS) where the light directions are unknown but constrained to move together with the camera. Unlike conventional multi-view uncalibrated photometric stereo our constrained setting reduces the ambiguities of surface normal estimates from per-view linear ambiguities to a single and global linear one thereby simplifying the disambiguation process. The proposed method integrates the ambiguous surface normal into neural surface reconstruction (NeuS) to simultaneously resolve the global ambiguity and estimate the detailed 3D shape. Experiments demonstrate that our method estimates accurate shapes under sparse viewpoints using only a few multi-view constrained light sources.
Type
Publication
In International Symposium on Nucleic Acids Chemistry (ISNAC 2023)