Abstract—The analysis of 2D flow data is often guided by the search for characteristic structures with semantic meaning. One way to approach this question is to identify structures of interest by a human observer, with the goal of finding similar structures in the same or other datasets. The major challenges related to this task are to specify the notion of similarity and define respective pattern descriptors. While the descriptors should be invariant to certain transformations, such as rotation and scaling, they should provide a similarity measure with respect to other transformations, such as deformations. In this paper, we propose to use moment invariants as pattern descriptors for flow fields. Moment invariants are one of the most popul...
Vector field simplification aims to reduce the complexity of the flow by removing features in order ...
Moment invariants are properties of connected regions in binary images that are invariant to transla...
Moment invariants have been extensively studied and widely used in object recognition. The pioneerin...
he analysis of 2D flow data is often guided by the search for characteristic structures with semanti...
The analysis of 2D flow data is often guided by the search for char- acteristic structures with sema...
Figure 1: The similarity of the underlying field to the counter oriented double vortex is encoded in...
We present a novel approach for analyzing two-dimensional (2D) flow field data based on the idea of ...
We present a novel approach for analyzing two-dimensional (2D) flow field data based on the idea of ...
The analysis of time-dependent data is often guided by the question of how dominant structures de-ve...
Moment invariants are popular descriptors for real valued functions. Their independence from certain...
The goal of this thesis is the development of a fast and robust algorithm that is able to detect pat...
Moment invariants have been thoroughly studied and repeatedly proposed as one of the most powerful t...
The recognition of patterns and structures has gained importance for dealing with the growing amount...
Complex moments have been successfully applied to pattern detection tasks in two-dimensional real, c...
Moment invariants have been widely introduced in recognizing planar objects for a few decades. This ...
Vector field simplification aims to reduce the complexity of the flow by removing features in order ...
Moment invariants are properties of connected regions in binary images that are invariant to transla...
Moment invariants have been extensively studied and widely used in object recognition. The pioneerin...
he analysis of 2D flow data is often guided by the search for characteristic structures with semanti...
The analysis of 2D flow data is often guided by the search for char- acteristic structures with sema...
Figure 1: The similarity of the underlying field to the counter oriented double vortex is encoded in...
We present a novel approach for analyzing two-dimensional (2D) flow field data based on the idea of ...
We present a novel approach for analyzing two-dimensional (2D) flow field data based on the idea of ...
The analysis of time-dependent data is often guided by the question of how dominant structures de-ve...
Moment invariants are popular descriptors for real valued functions. Their independence from certain...
The goal of this thesis is the development of a fast and robust algorithm that is able to detect pat...
Moment invariants have been thoroughly studied and repeatedly proposed as one of the most powerful t...
The recognition of patterns and structures has gained importance for dealing with the growing amount...
Complex moments have been successfully applied to pattern detection tasks in two-dimensional real, c...
Moment invariants have been widely introduced in recognizing planar objects for a few decades. This ...
Vector field simplification aims to reduce the complexity of the flow by removing features in order ...
Moment invariants are properties of connected regions in binary images that are invariant to transla...
Moment invariants have been extensively studied and widely used in object recognition. The pioneerin...