Litcius/Paper detail

X-Fields

Mojtaba Bemana, Karol Myszkowski, Hans‐Peter Seidel, Tobias Ritschel

2020ACM Transactions on Graphics99 citationsDOIOpen Access PDF

Abstract

We suggest to represent an X-Field ---a set of 2D images taken across different view, time or illumination conditions, i.e., video, lightfield, reflectance fields or combinations thereof---by learning a neural network (NN) to map their view, time or light coordinates to 2D images. Executing this NN at new coordinates results in joint view, time or light interpolation. The key idea to make this workable is a NN that already knows the "basic tricks" of graphics (lighting, 3D projection, occlusion) in a hard-coded and differentiable form. The NN represents the input to that rendering as an implicit map, that for any view, time, or light coordinate and for any pixel can quantify how it will move if view, time or light coordinates change (Jacobian of pixel position with respect to view, time, illumination, etc.). Our X-Field representation is trained for one scene within minutes, leading to a compact set of trainable parameters and hence real-time navigation in view, time and illumination.

Topics & Concepts

Computer visionArtificial intelligenceLight fieldComputer scienceRendering (computer graphics)View synthesisPixelComputer graphics (images)Differentiable functionJacobian matrix and determinantMathematicsMathematical analysisApplied mathematicsAdvanced Vision and ImagingComputer Graphics and Visualization TechniquesImage Enhancement Techniques
X-Fields | Litcius