Neural Fields for Scalable Scene Reconstruction

From Design Computation
Revision as of 20:07, 5 November 2022 by Abel Maciel (talk | contribs) (Bibliography)

Jump to: navigation, search
DCIO2021-Logo.png
DC I/O 2021 Keynote by JAMES TOMPKIN. https://doi.org/10.47330/DCIO.2022.AXBL8798
DCIO2022 S1 1 J-Tompkin.png

Abstract

Neural fields are a new (and old!) approach to solving problems over spacetime via first-order optimization of a neural network. Over the past three years, combining neural fields with classic computer graphics approaches have allowed us to make significant advances in solving computer vision problems like scene reconstruction. I will present recent work that can reconstruct indoor scenes for photorealistic interactive exploration using new scalable hybrid neural field representations. This has applications where any real-world place needs to be digitized, especially for visualization purposes.

Presentation

Left Video Recording.

Conference Slides

Left Conference Slides.

Keywords

AI, Architect, Creativity, Displacement, Intelligence, Human, Machine, Software, Utilitarianism, Value

Reference

DOI: https://doi.org/10.47330/DCIO.2022.AXBL8798

Bibliography

  • Anderson, T.T., 2011. Complicating Heidegger and the Truth of Architecture. The Journal of Aesthetics and Art Criticism 69, 69–79.