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Sobre

Sobre

Davide Carneiro é Professor Coordenador na Escola Superior de Tecnologia e Gestão do Instituto Politécnico do Porto. É também investigador integrado no INESC TEC. Tem o grau de Doutor com Menção Europeia atribuído conjuntamente pelas Universidades de Minho, Aveiro e Porto em 2013, através do Programa Doutoral MAP-i. Desenvolve investigação científica em áreas de aplicação da Inteligência Artificial e das Ciências dos Dados, incluindo na Resolução Alternativa de Conflitos, Interação Homem-Computador e Deteção de Fraude. Interessa-se ainda por problemas relacionados com meta-learning e explicabilidade, e como estes podem ser utilizados no contexto de problemas reais. Nos últimos anos participou em vários projetos de investigação financiados nas áreas de Inteligência Artificial, Inteligência Ambiente, Resolução Alternativa de Conflitos e Deteção de Fraude. Foi coordenador científico do projeto Neurat (NORTE-01-0247-FEDER-039900) e é coordenador institucional do projeto europeu EJUST ODR Scheme (JUST-2021-EJUSTICE, 101046468). A nível nacional é Investigador Principal dos projetos CEDEs - Continuously Evolving Distributed Ensembles (EXPL/CCI-COM/0706/2021) e xAIDMLS (CPCA-IAC/AV/475278/2022), financiados pela FCT. É ainda atualmente investigador nos projetos europeus FACILITATE-AI e PRIVATEER.

É autor de mais de 150 publicações científicas nas suas áreas de investigação, incluindo a autoria de um livro de cariz científico, três livros sob a forma editada, e mais de 140 capítulos de livro, publicações em revistas internacionais indexadas, e artigos em atas de conferências. Em paralelo, dedica-se ainda fortemente à orientação científica de Estudantes, envolvendo-os sempre que possível em tarefas práticas integradas nos projetos de investigação em que participa.

Davide é co-fundador e CRO da AnyBrain, uma startup portuguesa no campo da Interação Homem Computador. A empresa desenvolve software para a deteção de fadiga em ambientes de escritório, (https://performetric.net/), para a análise de performance em eSports (https://performetric.gg/), e para identificação de jogadores e deteção de fraude em eSports (https://anybrain.gg/).

Tópicos
de interesse
Detalhes

Detalhes

  • Nome

    Davide Rua Carneiro
  • Cargo

    Investigador Sénior
  • Desde

    01 agosto 2022
005
Publicações

2024

Supervised and unsupervised techniques in textile quality inspections

Autores
Ferreira, HM; Carneiro, DR; Guimaraes, MA; Oliveira, FV;

Publicação
5TH INTERNATIONAL CONFERENCE ON INDUSTRY 4.0 AND SMART MANUFACTURING, ISM 2023

Abstract
Quality inspection is a critical step in ensuring the quality and efficiency of textile production processes. With the increasing complexity and scale of modern textile manufacturing systems, the need for accurate and efficient quality inspection and defect detection techniques has become paramount. This paper compares supervised and unsupervised Machine Learning techniques for defect detection in the context of industrial textile production, in terms of their respective advantages and disadvantages, and their implementation and computational costs. We explore the use of an autoencoder for the detection of defects in textiles. The goal of this preliminary work is to find out if unsupervised methods can successfully train models with good performance without the need for defect labelled data. (c) 2023 The Authors. Published by Elsevier B.V.

2024

Application of Meta Learning in Quality Assessment of Wearable Electrocardiogram Recordings

Autores
Huerta, A; Martínez-Rodrigo, A; Guimarâes, M; Carneiro, D; Rieta, JJ; Alcaraz, R;

Publicação
ADVANCES IN DIGITAL HEALTH AND MEDICAL BIOENGINEERING, VOL 2, EHB-2023

Abstract
The high rates of mortality provoked by cardiovascular disorders (CVDs) have been rated by the OMS in the top among non-communicable diseases, killing about 18 million people annually. It is crucial to detect arrhythmias or cardiovascular events in an early way. For that purpose, novel portable acquisition devices have allowed long-term electrocardiographic (ECG) recording, being the most common way to discover arrhythmias of a random nature such as atrial fibrillation (AF). Nonetheless, the acquisition environment can distort or even destroy the ECG recordings, hindering the proper diagnosis of CVDs. Thus, it is necessary to assess the ECG signal quality in an automatic way. The proposed approach exploits the feature and meta-feature extraction of 5-s ECG segments with the ability of machine learning classifiers to discern between high- and low-quality ECG segments. Three different approaches were tested, reaching values of accuracy close to 83% using the original feature set and improving up to 90% when all the available meta-features were utilized. Moreover, within the high-quality group, the segments belonging to the AF class outperformed around 7% until a rate over 85% when the meta-features set was used. The extraction of meta-features improves the accuracy even when a subset of meta-features is selected from the whole set.

2024

Fabric Defect Detection and Localization

Autores
Oliveira, F; Carneiro, D; Ferreira, H; Guimaraes, M;

Publicação
ADVANCES IN ARTIFICIAL INTELLIGENCE IN MANUFACTURING, ESAIM 2023

Abstract
Quality inspection is crucial in the textile industry as it ensures that the final products meet the required standards. It helps detect and address defects, such as fabric flaws and stitching irregularities, enhancing customer satisfaction, and optimizing production efficiency by identifying areas of improvement, reducing waste, and minimizing rework. In the competitive textile market, it is vital for maintaining customer loyalty, brand reputation, and sustained success. Nonetheless, and despite the importance of quality inspection, it is becoming increasingly harder to hire and train people for such tedious and repetitive tasks. In this context, there is an increased interest in automated quality control techniques that can be used in the industrial domain. In this paper we describe a computer vision model for localizing and classifying different types of defects in textiles. The model developed achieved an mAP@0.5 of 0.96 on the validation dataset. While this model was trained with a publicly available dataset, we will soon use the same architecture with images collected from Jacquard looms in the context of a funded research project. This paper thus represents an initial validation of the model for the purposes of fabric defect detection.

2023

Real-Time Algorithm Recommendation Using Meta-Learning

Autores
Palumbo, G; Guimaraes, M; Carneiro, D; Novais, P; Alves, V;

Publicação
AMBIENT INTELLIGENCE-SOFTWARE AND APPLICATIONS-13TH INTERNATIONAL SYMPOSIUM ON AMBIENT INTELLIGENCE

Abstract
As the field of Machine Learning evolves, the number of available learning algorithms and their parameters continues to grow. On the one hand, this is positive as it allows for the finding of potentially more accurate models. On the other hand, however, it also makes the process of finding the right model more complex, given the number of possible configurations. Traditionally, data scientists rely on trial-and-error or brute force procedures, which are costly, or on their own intuition or expertise, which is hard to acquire. In this paper we propose an approach for algorithm recommendation based on meta-learning. The approach can be used in real-time to predict the best n algorithms (based on a selected performance metric) and their configuration, for a given ML problem. We evaluate it through cross-validation, and by comparing it against an Auto ML approach, in terms of accuracy and time. Results show that the proposed approach recommends algorithms that are similar to those of traditional approaches, in terms of performance, in just a fraction of the time.

2023

Algorithm Recommendation and Performance Prediction Using Meta-Learning

Autores
Palumbo, G; Carneiro, D; Guimares, M; Alves, V; Novais, P;

Publicação
INTERNATIONAL JOURNAL OF NEURAL SYSTEMS

Abstract
In the last years, the number of machine learning algorithms and their parameters has increased significantly. On the one hand, this increases the chances of finding better models. On the other hand, it increases the complexity of the task of training a model, as the search space expands significantly. As the size of datasets also grows, traditional approaches based on extensive search start to become prohibitively expensive in terms of computational resources and time, especially in data streaming scenarios. This paper describes an approach based on meta-learning that tackles two main challenges. The first is to predict key performance indicators of machine learning models. The second is to recommend the best algorithm/configuration for training a model for a given machine learning problem. When compared to a state-of-the-art method (AutoML), the proposed approach is up to 130x faster and only 4% worse in terms of average model quality. Hence, it is especially suited for scenarios in which models need to be updated regularly, such as in streaming scenarios with big data, in which some accuracy can be traded for a much shorter model training time.