18–20 Dec 2023
CINECA
Europe/Rome timezone

Detecting vineyard diseases using high-resolution images acquired by airborne platforms

Not scheduled
20m
CINECA

CINECA

Via Magnanelli, 6/3, 40033 Casalecchio di Reno BO
WP6

Speaker

Virginia Strati (Istituto Nazionale di Fisica Nucleare)

Description

Images acquired from aircrafts also integrate with satellite-based remote sensing allows for high-resolution data collection essential for ecosystems monitoring and risk management. This approach, combined with Artificial Intelligence (AI) algorithms serves as a reliable tool for the calibration and validation of satellite-derived data and ensures ground-truthing capabilities for more accurate data interpretation. In this talk, we present machine learning algorithms used to automatically analyze centimetric resolution images acquired by airborne experimental platforms for detecting vineyards diseases. The potential of the combined use of multispectral satellite imagery for symptom detection will also be discussed. In this framework, the use of high-performance computing resources is pivotal, accelerating image analysis for early symptoms detection and enabling early warning systems.

Giorno preferito 19 Dicembre Pomeriggio

Primary authors

Virginia Strati (Istituto Nazionale di Fisica Nucleare) Matteo Albéri (University of Ferrara & INFN Ferrara) Enrico Chiarelli (University of Ferrara & INFN Ferrara) Michele Franceschi (University of Ferrara & INFN Ferrara) Andrea Maino (University of Ferrara & INFN Ferrara) Fabio Mantovani (University of Ferrara & INFN Ferrara) Kassandra Giulia Cristina Raptis (University of Ferrara & INFN Ferrara) Giuseppe Piparo (University of Catania & INFN Catania) Alessia Tricomi (University of Catania, INFN Catania and Centro Siciliano di Fisica Nucleare e Struttura della Materia CSFNSM, Catania) Gioacchino Alex Anastasi (University of Catania & INFN Catania)

Presentation materials

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