Sample Selection with SOMP for Robust Basis Recovery In Sparse Coding Dictionary Learning
Ahora está siguiendo esta publicación
- Verá actualizaciones en las notificaciones de contenido en seguimiento.
- Podrá recibir correos electrónicos, en función de las preferencias de comunicación que haya establecido.
Abstract of the paper:
Sparse Coding Dictionary (SCD) learning is to decompose a given hyperspectral image into a linear combination of a few bases. In a natural scene, because there is an imbalance in the abundance of materials, the problem of learning a given material well is directly proportional to its abundance in the training scene. By a random selection of pixels to train a given dictionary, the probability of bases learning a given material is proportional to its distribution in the scene. We propose to use SOMP residue for sample selection with each iteration for a more robust or 'more complete' learning. Experiments show that the proposed method learns from both background and trace materials accurately with over 0.95 in Pearson correlation coefficient. Furthermore, the proposed implementation has resulted in considerable improvements in Target Detection with Adaptive Cosine Estimator (ACE).
Citar como
Chatterjee, Ayan, and Peter W. T. Yuen. “Sample Selection with SOMP for Robust Basis Recovery in Sparse Coding Dictionary Learning.” IEEE Letters of the Computer Society, vol. 2, no. 3, Institute of Electrical and Electronics Engineers (IEEE), Sept. 2019, pp. 28–31, doi:10.1109/locs.2019.2938446.
Chatterjee, Ayan. Sample Selection with SOMP for Robust Basis Recovery In Sparse Coding Dictionary Learning. Code Ocean, 2019, doi:10.24433/CO.5073641.V2.
Categorías
Más información sobre Recognition, Object Detection, and Semantic Segmentation en Help Center y MATLAB Answers.
Compatibilidad con la versión de MATLAB
- Compatible con cualquier versión
Compatibilidad con las plataformas
- Windows
- macOS
- Linux
