Image acquisition systems integrated with laboratory automation produce multi-dimensional datasets. An effective computational approach for automatic analysis of image datasets is given by pattern recognition methods; in some cases, it can be advantageous to accomplish pattern recognition with image super-resolution procedures. In this paper, we define a method derived from pattern recognition techniques for the recognition of artefacts and noise on set of images combined with super resolution algorithms. The advantage of our approach is automatic artefacts recognition, opening the possibility to build a general framework for artefact recognition independently by the specific application where it is used

In questo lavoro sono stati applicati alcuni metodi di pattern recognition combinati con metodi di super-risoluzione per identificare componenti di sistemi biologiici, in particolare cellule, le cui immagini sono state acquisite con microscopi a forza atomica.

A methodological approach for combining super-resolution and pattern-recognition to image identification

D'Acunto M;Pieri G;Righi M;Salvetti O
2014

Abstract

Image acquisition systems integrated with laboratory automation produce multi-dimensional datasets. An effective computational approach for automatic analysis of image datasets is given by pattern recognition methods; in some cases, it can be advantageous to accomplish pattern recognition with image super-resolution procedures. In this paper, we define a method derived from pattern recognition techniques for the recognition of artefacts and noise on set of images combined with super resolution algorithms. The advantage of our approach is automatic artefacts recognition, opening the possibility to build a general framework for artefact recognition independently by the specific application where it is used
2014
Istituto di Scienza e Tecnologie dell'Informazione "Alessandro Faedo" - ISTI
Istituto di Struttura della Materia - ISM - Sede Roma Tor Vergata
In questo lavoro sono stati applicati alcuni metodi di pattern recognition combinati con metodi di super-risoluzione per identificare componenti di sistemi biologiici, in particolare cellule, le cui immagini sono state acquisite con microscopi a forza atomica.
super-risolution and image analysis
pattern-recognition
AFM microscope
image analysis
I.4.5 Reconstruction
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/254572
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