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Publicações

2024

Comparative Study Between Object Detection Models, for Olive Fruit Fly Identification

Autores
Victoriano, M; Oliveira, L; Oliveira, HP;

Publicação
Proceedings of the 19th International Joint Conference on Computer Vision, Imaging and Computer Graphics Theory and Applications, VISIGRAPP 2024, Volume 2: VISAPP, Rome, Italy, February 27-29, 2024.

Abstract
Climate change is causing the emergence of new pest species and diseases, threatening economies, public health, and food security. In Europe, olive groves are crucial for producing olive oil and table olives; however, the presence of the olive fruit fly (Bactrocera Oleae) poses a significant threat, causing crop losses and financial hardship. Early disease and pest detection methods are crucial for addressing this issue. This work presents a pioneering comparative performance study between two state-of-the-art object detection models, YOLOv5 and YOLOv8, for the detection of the olive fruit fly from trap images, marking the first-ever application of these models in this context. The dataset was obtained by merging two existing datasets: the DIRT dataset, collected in Greece, and the CIMO-IPB dataset, collected in Portugal. To increase its diversity and size, the dataset was augmented, and then both models were fine-tuned. A set of metrics were calculated, to assess both models performance. Early detection techniques like these can be incorporated in electronic traps, to effectively safeguard crops from the adverse impacts caused by climate change, ultimately ensuring food security and sustainable agriculture. © 2024 by SCITEPRESS – Science and Technology Publications, Lda.

2024

Federated Learning in Medical Image Analysis: A Systematic Survey

Autores
da Silva, FR; Camacho, R; Tavares, JMRS;

Publicação
ELECTRONICS

Abstract
Medical image analysis is crucial for the efficient diagnosis of many diseases. Typically, hospitals maintain vast repositories of images, which can be leveraged for various purposes, including research. However, access to such image collections is largely restricted to safeguard the privacy of the individuals whose images are being stored, as data protection concerns come into play. Recently, the development of solutions for Automated Medical Image Analysis has gained significant attention, with Deep Learning being one solution that has achieved remarkable results in this area. One promising approach for medical image analysis is Federated Learning (FL), which enables the use of a set of physically distributed data repositories, usually known as nodes, satisfying the restriction that the data do not leave the repository. Under these conditions, FL can build high-quality, accurate deep-learning models using a lot of available data wherever it is. Therefore, FL can help researchers and clinicians diagnose diseases and support medical decisions more efficiently and robustly. This article provides a systematic survey of FL in medical image analysis, specifically based on Magnetic Resonance Imaging, Computed Tomography, X-radiography, and histology images. Hence, it discusses applications, contributions, limitations, and challenges and is, therefore, suitable for those who want to understand how FL can contribute to the medical imaging domain.

2024

FORMAÇÃO DOCENTE NO ENSINO SUPERIOR E NA PÓS-GRADUAÇÃO: DOS AVA/AVGS AO HIBRIDISMO

Autores
Schlemmer, E;

Publicação
A UNIVERSIDADE NO PARADIGMA DA EDUCAÇÃO OnLIFE

Abstract

2024

Classification of Keratitis from Eye Corneal Photographs using Deep Learning

Autores
Beirão, MM; Matos, J; Gonçalves, T; Kase, C; Nakayama, LF; Freitas, Dd; Cardoso, JS;

Publicação
CoRR

Abstract

2024

A new automated method to define clinically relevant pediatric sleep apnea phenotype

Autores
Camacho, KMC; Gomez-Pilar, J; Pereira-Rodrigues, P; Ferreira-Santos, D; Durante, CB; Albi, TR; Alvarez, DG; Gozal, D; Gutiérrez-Tobal, GC; Hornero, R; Del Campo, F;

Publicação
EUROPEAN RESPIRATORY JOURNAL

Abstract

2024

Green Ports - Shore Power Supply State of the Art

Autores
Costa, P; Agreira, CIF; Pestana, R; Cao, Y;

Publicação
2024 IEEE 22ND MEDITERRANEAN ELECTROTECHNICAL CONFERENCE, MELECON 2024

Abstract
In a world that is in constant changing and where carbon neutrality becomes a common objective, it is necessary to implement European policies and targets to reduce greenhouse gas emissions. The maritime sector is one of the most polluting in the world, becoming mandatory to implement technologies in port area to reduce their footprint. Most of the good's transportation are made by sea, the maritime industry is growing, and the biggest chair of greenhouse gas emission comes from shipping. The seaport has the role to implement solutions to reduce the emissions in port area, allowing the ships to shutdown their engines while they are moored in port. Renewable energy production alongside with shore power supply systems are becoming a common solution in ports as some of the technologies that allows to reduce ships emissions in port area. This paper presents the state of the art of onshore power supply in ports and standards related to shore power supply and data requirements for load model built and emissions calculations.

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