LRSLibrary

Low-Rank and Sparse Tools for Background Modeling and Subtraction in Videos

https://github.com/andrewssobral/lrslibrary

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The LRSLibrary provides a collection of low-rank and sparse decomposition algorithms in MATLAB. The library was designed for background subtraction / motion segmentation in videos, but it can be also used or adapted for other computer vision problems. Currently the LRSLibrary contains a total of 103 matrix-based and tensor-based algorithms. The LRSLibrary was tested successfully in MATLAB R2013, R2014, R2015, and R2016 both x86 and x64 versions.
For more information, please see: https://github.com/andrewssobral/lrslibrary

Cita come

Andrews Cordolino Sobral (2026). LRSLibrary (https://github.com/andrewssobral/lrslibrary), 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
1.7.0.0

Version 1.0.7: Code refactoring: process_matrix(), process_tensor(), run_algorithm_###() were excluded. A standard interface called run_algorithm was created. For each algorithm, there is a run_alg.m script for execution. Added 10 new algorithms.

1.4.0.0

Added three new algorithms.

1.3.0.0

Version 1.0.5: Added three new method categories, and fifteen new algorithms.

1.2.0.0

fix

1.1.0.0

fix

1.0.0.0

Per visualizzare o segnalare problemi su questo componente aggiuntivo di GitHub, visita GitHub Repository.
Per visualizzare o segnalare problemi su questo componente aggiuntivo di GitHub, visita GitHub Repository.