DyNCA

DyNCA

Real-Time Dynamic Texture Synthesis Using Neural Cellular Automata

Current Dynamic Texture Synthesis (DyTS) models in the literature can synthesize realistic videos. However, these methods require a slow iterative optimization process to synthesize a single fixed-size short video, and they do not offer any post-training control over the synthesis process. We propose Dynamic Neural Cellular Automata (DyNCA), a framework for real-time and controllable dynamic texture synthesis.

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Image and Visual Representation Lab

Image and Visual Representation Lab
Sabine Süsstrunk

Prof. Sabine Süsstrunk

The Image and Visual Representation Lab (IVRL) performs research that is primarily focused on the capture, analysis, and reproduction of color images. Aiming to improve everyone’s photographic experience, we develop algorithms and systems that help us understand, process, and measure images.
Their research areas are computational photography, color image processing, computer vision, and image quality.

This page was last edited on 2024-04-14.