the 43rd international conference and exhibition on
24-28 July
Anaheim, California
This paper presents an unsupervised method for analyzing texture contents at multiple scales to support texture synthesis. It treats large inputs, and it can handle natural images containing different textured regions. The method is applied to non-stationary synthesis, content selection, and texture painting.
Yitzchak Lockerman
Yale University
Basile Sauvage
Université De Strasbourg
Remi Allegre
Université De Strasbourg
Jean-Michel Dischler
Université De Strasbourg
Julie Dorsey
Yale University
Holly Rushmeier
Yale University
Given a single texture image, weathering degrees at different regions of the input texture are estimated by prevalence analysis of texture patches. This information then allows graceful increase or decrease of the popularity of weathered patches, simulating the evolution of texture appearance both backward and forward in time.
Rachele Bellini
Tel Aviv University
Yanir Kleiman
Tel Aviv University
Daniel Cohen-Or
Tel Aviv University
This paper proposes a representation (vector-regression functions) that uses neural networks to compactly approximate any point-sampled image and support GPU texture mapping, including random access and filtering operations.
Jiaping Wang
Aiur
Ying Song
Zhejiang Sci-Tech University
Liyi Wei
Dragoniac
Wencheng Wang
State Key Laboratory of Computer Science
This paper proposes a novel sparse multilinear model (MK-CTA) for rendering photorealistic images from large-scale multidimensional datasets. It can accurately and compactly represent complex datasets, while easily achieving high rendering rates.
Yu-Ting Tsai
Yuan Ze University