Shearlets are a relatively new and very effective multiresolution framework for signal analysis able to capture efficiently the anisotropic information in multivariate problem classes. For this reason, Shearlets appear to be a valid choice for multi-resolution image processing and feature detection. In this paper we provide a brief review of the theory, referring in particular to the problem of enhancing signal discontinuities. We then discuss the specific application to corner detection, and provide a novel algorithm based on the concept of a cornerness measure. The appropriateness of the algorithm in detecting good matchable corners is evaluated on benchmark data including different image transformations.
Enhancing signal discontinuities with shearlets: An application to corner detection
DUVAL POO, MIGUEL ALEJANDRO;ODONE, FRANCESCA;DE VITO, ERNESTO
2015-01-01
Abstract
Shearlets are a relatively new and very effective multiresolution framework for signal analysis able to capture efficiently the anisotropic information in multivariate problem classes. For this reason, Shearlets appear to be a valid choice for multi-resolution image processing and feature detection. In this paper we provide a brief review of the theory, referring in particular to the problem of enhancing signal discontinuities. We then discuss the specific application to corner detection, and provide a novel algorithm based on the concept of a cornerness measure. The appropriateness of the algorithm in detecting good matchable corners is evaluated on benchmark data including different image transformations.| File | Dimensione | Formato | |
|---|---|---|---|
| EnhancingSignalDiscontinuitiesShearletsApplicationCornerDetecti.pdf accesso chiuso 
											Tipologia:
											Documento in versione editoriale
										 
										Dimensione
										2.35 MB
									 
										Formato
										Adobe PDF
									 | 2.35 MB | Adobe PDF | Visualizza/Apri Richiedi una copia | 
I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.



