Due to the amount of flow simulation and measurement data, automatic detection, classification and visualization of features is necessary for an inspection. Therefore, many automated feature detection methods have been developed in recent years. However, only one feature class is visualized afterwards in most cases, and many algorithms have problems in the presence of noise or superposition effects. In contrast, image processing and computer vision have robust methods for feature extraction and computation of derivatives of scalar fields. Furthermore, interpolation and other filter can be analyzed in detail. An application of these methods to vector fields would provide a solid theoretical basis for feature extraction. The authors suggest C...
20 pagesThe formal language of Clifford's algebras is attracting an increasingly large community of ...
Template matching by means of cross-correlation is common practice in pattern recognition. However, ...
In recent years, simulations have steadily replaced real world experiments in science and industry. ...
Due to the amount of flow simulation and measurement data, automatic detection, classification and v...
Due to the amount of flow simulation and measurement data, automatic detection, classification and v...
Vector fields from flow visualization often containmillions of data values. It is obvious that a dir...
processing and computer vision have a lot of useful tools for the analysis of scalar fields. There a...
The goal of this thesis is the development of a fast and robust algorithm that is able to detect pat...
The recognition of patterns and structures has gained importance for dealing with the growing amount...
Abstract One way to visualize vector fields was based on their qualitative structure by showing the ...
Complex moments have been successfully applied to pattern detection tasks in two-dimensional real, c...
Template matching by means of cross-correlation is common practice in pattern recognition. However, ...
Vector fields occur in many application domains in science and engineering. In combustion processes,...
Feature tracking algorithms for instationary vector fields are usually based on a correspondence ana...
20 pagesThe formal language of Clifford's algebras is attracting an increasingly large community of ...
Template matching by means of cross-correlation is common practice in pattern recognition. However, ...
In recent years, simulations have steadily replaced real world experiments in science and industry. ...
Due to the amount of flow simulation and measurement data, automatic detection, classification and v...
Due to the amount of flow simulation and measurement data, automatic detection, classification and v...
Vector fields from flow visualization often containmillions of data values. It is obvious that a dir...
processing and computer vision have a lot of useful tools for the analysis of scalar fields. There a...
The goal of this thesis is the development of a fast and robust algorithm that is able to detect pat...
The recognition of patterns and structures has gained importance for dealing with the growing amount...
Abstract One way to visualize vector fields was based on their qualitative structure by showing the ...
Complex moments have been successfully applied to pattern detection tasks in two-dimensional real, c...
Template matching by means of cross-correlation is common practice in pattern recognition. However, ...
Vector fields occur in many application domains in science and engineering. In combustion processes,...
Feature tracking algorithms for instationary vector fields are usually based on a correspondence ana...
20 pagesThe formal language of Clifford's algebras is attracting an increasingly large community of ...
Template matching by means of cross-correlation is common practice in pattern recognition. However, ...
In recent years, simulations have steadily replaced real world experiments in science and industry. ...