alceufc/sfta

バージョン 1.5.0.0 (4.76 KB) 作成者: Alceu Costa
Implementation of the SFTA algorithm for texture feature extraction.
ダウンロード: 7.9K
更新 2016/11/2

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:

http://www.alceufc.com/classification,/computer/vision,/descriptor,/feature/extraction,/image/processing,/matlab,/texture/descriptor/2013/09/02/texture-classification.html

引用

Alceu Costa (2024). alceufc/sfta (https://github.com/alceufc/sfta), GitHub. 取得済み .

MATLAB リリースの互換性
作成: R2013a
すべてのリリースと互換性あり
プラットフォームの互換性
Windows macOS Linux

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

GitHub の既定のブランチを使用するバージョンはダウンロードできません

バージョン 公開済み リリース ノート
1.5.0.0

Updated link to blog post.
Fixed a bug where part of the feature vector was redundant.

1.4.0.0

Just added a screenshot to illustrate the submission. The code is the same.

1.2.0.0

Updated file description to include a link showing how the feature extractor can be used in texture classification.

1.1.0.0

Removed iptchecknargin calls.

1.0.0.0

この GitHub アドオンでの問題を表示または報告するには、GitHub リポジトリにアクセスしてください。
この GitHub アドオンでの問題を表示または報告するには、GitHub リポジトリにアクセスしてください。