Autocorrelation-Driven Diffusion Filtering
The dataset consists of Matlab code and present a novel scheme for anisotropic diffusion driven by the image autocorrelation function. We show the equivalence of this scheme to a special case of iterated adaptive filtering. By determining the diffusion tensor field from an autocorrelation estimate, we obtain an evolution equation that is computed from a scalar product of diffusion tensor and the image Hessian. We propose further a set of filters to approximate the Hessian on a minimized spatial support. On standard benchmarks, the resulting method performs favorable in many cases, in particular at low noise levels. In a GPU implementation, video real-time performance is easily achieved. The dataset was originally published in DiVA and moved to SND in 2024.
Data files
Data files
Citation and access
Citation and access
Administrative information
Administrative information
Topic and keywords
Topic and keywords
Relations
Relations
Metadata
Metadata
