Learning the Synthesizability of Dynamic Texture Samples
Feng Yang, Gui-Song Xia, Dengxin Dai, Liangpei Zhang

TL;DR
This paper introduces a method to predict the synthesizability of dynamic textures using learned regression models based on spatiotemporal features, aiding in selecting suitable synthesis methods and identifying synthesizable regions.
Contribution
It proposes a novel approach to assess and predict the synthesizability of dynamic textures, integrating feature-based regression models and hierarchical classification.
Findings
Effective prediction of synthesizability scores
Improved selection of EDTS methods for different textures
Successful detection of synthesizable regions in videos
Abstract
A dynamic texture (DT) refers to a sequence of images that exhibit temporal regularities and has many applications in computer vision and graphics. Given an exemplar of dynamic texture, it is a dynamic but challenging task to generate new samples with high quality that are perceptually similar to the input exemplar, which is known to be {\em example-based dynamic texture synthesis (EDTS)}. Numerous approaches have been devoted to this problem, in the past decades, but none them are able to tackle all kinds of dynamic textures equally well. In this paper, we investigate the synthesizability of dynamic texture samples: {\em given a dynamic texture sample, how synthesizable it is by using EDTS, and which EDTS method is the most suitable to synthesize it?} To this end, we propose to learn regression models to connect dynamic texture samples with synthesizability scores, with the help of a…
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