Implementation of the SFTA algorithm for texture feature extraction.
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Extract texture features from an image using the SFTA (Segmentation-based Fractal Texture Analysis) algorithm. To extract features, use the sfta(I, nt) function, where I corresponds to the input grayscale image and nt is a parameter that defines the size of the feature vector.
The features are returned as a 1 by (6*nt -3) vector.
Example:
I = imread('coins.png');
D = sfta(I, 4)
Brief description of the SFTA algorithm:
The extraction algorithm consists in decomposing the input image into a set of binary images from which the fractal dimensions of the resulting regions are computed in order to describe segmented texture patterns.
Publication where the SFTA algorithm is described:
Costa, A. F., G. E. Humpire-Mamani, A. J. M. Traina. 2012. "An Efficient Algorithm for Fractal Analysis of Textures." In SIBGRAPI 2012 (XXV Conference on Graphics, Patterns and Images), 39-46, Ouro Preto, Brazil.
Here I show how SFTA can be used to classify textures:
Cita come
Alceu Costa (2026). alceufc/sfta (https://github.com/alceufc/sfta), GitHub. Recuperato .
Informazioni generali
Compatibilità della release di MATLAB
- Compatibile con qualsiasi release
Compatibilità della piattaforma
- Windows
- macOS
- Linux
Le versioni che utilizzano il ramo predefinito di GitHub non possono essere scaricate
| Versione | Pubblicato | Note della release | Action |
|---|---|---|---|
| 1.5.0.0 | Updated link to blog post.
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| 1.4.0.0 | Just added a screenshot to illustrate the submission. The code is the same. |
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| 1.2.0.0 | Updated file description to include a link showing how the feature extractor can be used in texture classification. |
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| 1.1.0.0 | Removed iptchecknargin calls. |
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| 1.0.0.0 |
