雨果巴拉:行业北极星Vision Pro过度设计不适合市场

TöRF: Time-of-Flight Radiance Fields for Dynamic Scene View Synthesis

Note: We don't have the ability to review paper

PubDate: Dec 2021

Teams: Carnegie Mellon University;Brown University;Cornell University;Meta

Writers: Benjamin Attal, Eliot Laidlaw, Aaron Gokaslan, Changil Kim, Christian Richardt, James Tompkin, Matthew O’Toole

PDF: TöRF: Time-of-Flight Radiance Fields for Dynamic Scene View Synthesis

Abstract

Neural networks can represent and accurately reconstruct radiance fields for static 3D scenes (e.g., NeRF). Several works extend these to dynamic scenes captured with monocular video, with promising performance. However, the monocular setting is known to be an under-constrained problem, and so methods rely on data-driven priors for reconstructing dynamic content. We replace these priors with measurements from a time-of-flight (ToF) camera, and introduce a neural representation based on an image formation model for continuous-wave ToF cameras. Instead of working with processed depth maps, we model the raw ToF sensor measurements to improve reconstruction quality and avoid issues with low reflectance regions, multi-path interference, and a sensor’s limited unambiguous depth range. We show that this approach improves robustness of dynamic scene reconstruction to erroneous calibration and large motions, and discuss the benefits and limitations of integrating RGB+ToF sensors that are now available on modern smartphones.

您可能还喜欢...

Paper