This work tackles the problem of indirect immunofluorescence images classification. In particular, a dense local descriptor invariant both to scale changes and to rotations is proposed to classify six classes of staining patterns of the HEp-2 cells. In order to provide a compact and discriminative representation, the descriptor combines a log-polar sampling with spatially-varying gaussian smoothing applied on the gradients images in specific directions. Bag-of-Words is finally used to perform classification. Experimental results on the dataset provided in the recent contest hold in 2014 at ICPR show very good performance.
Cell image classification by a scale and rotation invariant dense local descriptor / Gragnaniello, Diego; Sansone, Carlo; Verdoliva, Luisa. - In: PATTERN RECOGNITION LETTERS. - ISSN 0167-8655. - (2016). [10.1016/j.patrec.2016.01.007]
Cell image classification by a scale and rotation invariant dense local descriptor
GRAGNANIELLO, DIEGO;SANSONE, CARLO;VERDOLIVA, LUISA
2016
Abstract
This work tackles the problem of indirect immunofluorescence images classification. In particular, a dense local descriptor invariant both to scale changes and to rotations is proposed to classify six classes of staining patterns of the HEp-2 cells. In order to provide a compact and discriminative representation, the descriptor combines a log-polar sampling with spatially-varying gaussian smoothing applied on the gradients images in specific directions. Bag-of-Words is finally used to perform classification. Experimental results on the dataset provided in the recent contest hold in 2014 at ICPR show very good performance.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.