Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Survey of Procedural Methods for Two-Dimensional Texture Generation

View through CrossRef
Textures are the most important element for simulating real-world scenes and providing realistic and immersive sensations in many applications. Procedural textures can simulate a broad variety of surface textures, which is helpful for the design and development of new sensors. Procedural texture generation is the process of creating textures using mathematical models. The input to these models can be a set of parameters, random values generated by noise functions, or existing texture images, which may be further processed or combined to generate new textures. Many methods for procedural texture generation have been proposed, but there has been no comprehensive survey or comparison of them yet. In this paper, we present a review of different procedural texture generation methods, according to the characteristics of the generated textures. We divide the different generation methods into two categories: structured texture and unstructured texture generation methods. Example textures are generated using these methods with varying parameter values. Furthermore, we survey post-processing methods based on the filtering and combination of different generation models. We also present a taxonomy of different models, according to the mathematical functions and texture samples they can produce. Finally, a psychophysical experiment is designed to identify the perceptual features of the example textures. Finally, an analysis of the results illustrates the strengths and weaknesses of these methods.
Title: Survey of Procedural Methods for Two-Dimensional Texture Generation
Description:
Textures are the most important element for simulating real-world scenes and providing realistic and immersive sensations in many applications.
Procedural textures can simulate a broad variety of surface textures, which is helpful for the design and development of new sensors.
Procedural texture generation is the process of creating textures using mathematical models.
The input to these models can be a set of parameters, random values generated by noise functions, or existing texture images, which may be further processed or combined to generate new textures.
Many methods for procedural texture generation have been proposed, but there has been no comprehensive survey or comparison of them yet.
In this paper, we present a review of different procedural texture generation methods, according to the characteristics of the generated textures.
We divide the different generation methods into two categories: structured texture and unstructured texture generation methods.
Example textures are generated using these methods with varying parameter values.
Furthermore, we survey post-processing methods based on the filtering and combination of different generation models.
We also present a taxonomy of different models, according to the mathematical functions and texture samples they can produce.
Finally, a psychophysical experiment is designed to identify the perceptual features of the example textures.
Finally, an analysis of the results illustrates the strengths and weaknesses of these methods.

Related Results

ABUSE OF CIVIL PROCEDURAL RIGHTS
ABUSE OF CIVIL PROCEDURAL RIGHTS
In the article, the authors reveal a topical issue in the field of civil procedural law, which concerns the abuse of civil procedural rights. Abuse of procedural rights is a signif...
Legitimacy in Policing: A Systematic Review
Legitimacy in Policing: A Systematic Review
This Campbell systematic review assesses the direct and indirect benefits of public police interventions that use procedurally just dialogue. The review summarises findings from 30...
Influences of Global and Local Features on Eye-Movement Patterns in Visual-Similarity Perception of Synthesized Texture Images
Influences of Global and Local Features on Eye-Movement Patterns in Visual-Similarity Perception of Synthesized Texture Images
Global and local features are essential for visual-similarity texture perception. Therefore, understanding how people allocate their visual attention when viewing textures with glo...
Forming quality and wettability of surface texture on CuSn10 fabricated by laser powder bed fusion
Forming quality and wettability of surface texture on CuSn10 fabricated by laser powder bed fusion
Surface texture has aroused widespread interest due to its role in controlling friction, reducing wear, and improving lubrication performance. As one of the most promising green pr...
DEVELOPMENT OF A MECHANICAL TEXTURE TEST TO EVALUATE THE RIPENING PROCESS OF CABERNET FRANC GRAPES
DEVELOPMENT OF A MECHANICAL TEXTURE TEST TO EVALUATE THE RIPENING PROCESS OF CABERNET FRANC GRAPES
ABSTRACT There is scant literature on the assessment and validation of methods for monitoring grape texture during ripening. There is a distinct lack of information from published ...
Systematization of Civil Procedural Law
Systematization of Civil Procedural Law
This article analyzes existing approaches in legal doctrine to understanding the systematization of civil procedural law. The main properties of the system of this branch of law ar...
A ROBUST-TEXTURE CONVOLUTIONAL NEURAL NETWORK
A ROBUST-TEXTURE CONVOLUTIONAL NEURAL NETWORK
AlexNet was a breakthrough for the convolutional neural network (CNN) and showed the greatest successful mod- ified CNN that works well with large-scale images. However, it was uns...

Back to Top