Gaussian scale space is a well-known linear multi-scale representation for continuous signals. The exploration of its so-called deep structure by tracing critical points over scale has various theoretical applications and allows for the construction of a scale space hierarchy tree. However, implementation issues arise, caused by discretization and quantization errors. In order to develop more robust scale space based algorithms, the discrete nature of computer processed signals has to be taken into account. We propose suitable neighborhoods, boundary conditions, and sampling methods. In analogy to prevalent approaches and inspired by Lindeberg's scale space primal sketch, a discretized diffusion equation is derived, including requirements i...
An inherent property of objects in the world is that they only exist as meaningful entities over cer...
We compare the topology and deep structure of alternative scale space representations, so called α-s...
filtering of information over triangulated surfaces has proved very useful in computer graph-ics app...
Linear or gaussian scale space is a well known multi-scale representation for continuous signals. Th...
Linear or gaussian scale space is a well known multi-scale representation for continuous signals. Th...
Linear or Gaussian scale space is a well known multi-scale representation for continuous signals. Th...
Linear or Gaussian scale space is a well known multi-scale representation for continuous signals. Th...
Linear or Gaussian scale space is a well known multi-scale representation for continuous signals. Ho...
Linear or Gaussian scale space is a well known multi-scale representation for continuous signals. Ho...
The discrete scale space representation L of f is continuous in scale t. A computational investigati...
The discrete scale space representation L of f is continuous in scale t. A computational investigati...
This thesis, within the subfield of computer science known as computer vision, deals with the use of...
In order to be able to deal with the discrete nature of images in a continuous way, one can use resu...
This article shows how discrete derivative approximations can be defined so thatscale-space properti...
This paper presents a theory for discretizing the affine Gaussian scale-space concept so that scale-...
An inherent property of objects in the world is that they only exist as meaningful entities over cer...
We compare the topology and deep structure of alternative scale space representations, so called α-s...
filtering of information over triangulated surfaces has proved very useful in computer graph-ics app...
Linear or gaussian scale space is a well known multi-scale representation for continuous signals. Th...
Linear or gaussian scale space is a well known multi-scale representation for continuous signals. Th...
Linear or Gaussian scale space is a well known multi-scale representation for continuous signals. Th...
Linear or Gaussian scale space is a well known multi-scale representation for continuous signals. Th...
Linear or Gaussian scale space is a well known multi-scale representation for continuous signals. Ho...
Linear or Gaussian scale space is a well known multi-scale representation for continuous signals. Ho...
The discrete scale space representation L of f is continuous in scale t. A computational investigati...
The discrete scale space representation L of f is continuous in scale t. A computational investigati...
This thesis, within the subfield of computer science known as computer vision, deals with the use of...
In order to be able to deal with the discrete nature of images in a continuous way, one can use resu...
This article shows how discrete derivative approximations can be defined so thatscale-space properti...
This paper presents a theory for discretizing the affine Gaussian scale-space concept so that scale-...
An inherent property of objects in the world is that they only exist as meaningful entities over cer...
We compare the topology and deep structure of alternative scale space representations, so called α-s...
filtering of information over triangulated surfaces has proved very useful in computer graph-ics app...