Litcius/Paper detail

NeuralPassthrough: Learned Real-Time View Synthesis for VR

Lei Xiao, Salah Nouri, Joel Hegland, Alberto García-García, Douglas Lanman

202227 citationsDOIOpen Access PDF

Abstract

Virtual reality (VR) headsets provide an immersive, stereoscopic visual experience, but at the cost of blocking users from directly observing their physical environment. Passthrough techniques are intended to address this limitation by leveraging outward-facing cameras to reconstruct the images that would otherwise be seen by the user without the headset. This is inherently a real-time view synthesis challenge, since passthrough cameras cannot be physically co-located with the user’s eyes. Existing passthrough techniques suffer from distracting reconstruction artifacts, largely due to the lack of accurate depth information (especially for near-field and disoccluded objects), and also exhibit limited image quality (e.g., being low resolution and monochromatic). In this paper, we propose the first learned passthrough method and assess its performance using a custom VR headset that contains a stereo pair of RGB cameras. Through both simulations and experiments, we demonstrate that our learned passthrough method delivers superior image quality compared to state-of-the-art methods, while meeting strict VR requirements for real-time, perspective-correct stereoscopic view synthesis over a wide field of view for desktop-connected headsets.

Topics & Concepts

HeadsetComputer scienceStereoscopyVirtual realityPerspective (graphical)Field (mathematics)Computer graphics (images)Quality (philosophy)Image qualityAugmented realityComputer visionArtificial intelligenceHuman–computer interactionImage (mathematics)MathematicsTelecommunicationsPhilosophyPure mathematicsEpistemologyAdvanced Vision and ImagingComputer Graphics and Visualization TechniquesHuman Pose and Action Recognition