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Publicações

Publicações por Emanuel Peres Correia

2021

Preface

Autores
Cruz-Cunha M.M.; Martinho R.; Rijo R.; Domingos D.; Peres E.;

Publicação
Procedia Computer Science

Abstract

2022

Vineyard classification using OBIA on UAV-based RGB and multispectral data: A case study in different wine regions

Autores
Padua, L; Matese, A; Di Gennaro, SF; Morais, R; Peres, E; Sousa, JJ;

Publicação
COMPUTERS AND ELECTRONICS IN AGRICULTURE

Abstract
Vineyard classification is an important process within viticulture-related decision-support systems. Indeed, it improves grapevine vegetation detection, enabling both the assessment of vineyard vegetative properties and the optimization of in-field management tasks. Aerial data acquired by sensors coupled to unmanned aerial vehicles (UAVs) may be used to achieve it. Flight campaigns were conducted to acquire both RGB and multispectral data from three vineyards located in Portugal and in Italy. Red, green, blue and near infrared orthorectified mosaics resulted from the photogrammetric processing of the acquired data. They were then used to calculate RGB and multispectral vegetation indices, as well as a crop surface model (CSM). Three different supervised machine learning (ML) approaches-support vector machine (SVM), random forest (RF) and artificial neural network (ANN)-were trained to classify elements present within each vineyard into one of four classes: grapevine, shadow, soil and other vegetation. The trained models were then used to classify vineyards objects, generated from an object-based image analysis (OBIA) approach, into the four classes. Classification outcomes were compared with an automatic point-cloud classification approach and threshold-based approaches. Results shown that ANN provided a better overall classification performance, regardless of the type of features used. Features based on RGB data showed better performance than the ones based only on multispectral data. However, a higher performance was achieved when using features from both sensors. The methods presented in this study that resort to data acquired from different sensors are suitable to be used in the vineyard classification process. Furthermore, they also may be applied in other land use classification scenarios.

2018

CENTERIS 2018 - International Conference on ENTERprise Information Systems / ProjMAN 2018 - International Conference on Project MANagement / HCist 2018 - International Conference on Health and Social Care Information Systems and Technologies 2018, Lisbon, Portugal

Autores
Quintela Varajão, JE; Cruz Cunha, MM; Martinho, R; Rijo, R; Peres, E;

Publicação
CENTERIS/ProjMAN/HCist

Abstract

2019

CENTERIS 2019 - International Conference on ENTERprise Information Systems / ProjMAN 2019 - International Conference on Project MANagement / HCist 2019 - International Conference on Health and Social Care Information Systems and Technologies 2019, Sousse, Tunisia

Autores
Cruz Cunha, MM; Martinho, R; Rijo, R; Peres, E; Domingos, D;

Publicação
CENTERIS/ProjMAN/HCist

Abstract

2021

CENTERIS 2020 - International Conference on ENTERprise Information Systems / ProjMAN 2020 - International Conference on Project MANagement / HCist 2020 - International Conference on Health and Social Care Information Systems and Technologies 2020, Vilamoura, Portugal

Autores
Cruz Cunha, MM; Martinho, R; Rijo, R; Peres, E; Domingos, D; Coelho, NM;

Publicação
CENTERIS/ProjMAN/HCist

Abstract

2022

CENTERIS 2021 - International Conference on ENTERprise Information Systems / ProjMAN 2021 - International Conference on Project MANagement / HCist 2021 - International Conference on Health and Social Care Information Systems and Technologies 2021, Braga, Portugal

Autores
Cruz Cunha, MM; Martinho, R; Rijo, R; Domingos, D; Peres, E;

Publicação
CENTERIS/ProjMAN/HCist

Abstract

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