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Publicações

2023

Finally, let’s use all the modes - A stable DM fitting avoiding modal truncation

Autores
Obereder A.; Bertram T.; Correia C.; Feldt M.; Raffetseder S.; Shatokhina J.; Steuer H.;

Publicação
7th Adaptive Optics for Extremely Large Telescopes Conference, AO4ELT7 2023

Abstract
METIS SCAO uses a wavefront control concept that deploys a 2-stage spatial reconstruction where the wavefront is first reconstructed on an intermediate space we call the virtual DM, and then projected onto the actual control space. This document addresses the projection of the wavefront estimation on the virtual deformable mirror (VDM) onto the control modes developed for METIS (Mid-infrared ELT Imager and Spectrograph). We present a new approach to project onto the control modes using an intermediate regularized projection on the M4 mirror and then convert to modes. This method enables us to utilise all modes for the projection and control in a stable manner, achieving high Strehl ratios for a wide range of conditions without the need for complex parameter tuning.

2023

Towards Human-in-the-Loop Computational Rhythm Analysis in Challenging Musical Conditions

Autores
António Humberto e Sá Pinto;

Publicação

Abstract

2023

Automatic Contrast Generation from Contrastless Computed Tomography

Autores
Domingues, R; Nunes, F; Mancio, J; Fontes Carvalho, R; Coimbra, M; Pedrosa, J; Renna, F;

Publicação
2023 45TH ANNUAL INTERNATIONAL CONFERENCE OF THE IEEE ENGINEERING IN MEDICINE & BIOLOGY SOCIETY, EMBC

Abstract
The use of contrast-enhanced computed tomography (CTCA) for detection of coronary artery disease (CAD) exposes patients to the risks of iodine contrast-agents and excessive radiation, increases scanning time and healthcare costs. Deep learning generative models have the potential to artificially create a pseudo-enhanced image from non-contrast computed tomography (CT) scans. In this work, two specific models of generative adversarial networks (GANs) - the Pix2Pix-GAN and the Cycle-GAN - were tested with paired non-contrasted CT and CTCA scans from a private and public dataset. Furthermore, an exploratory analysis of the trade-off of using 2D and 3D inputs and architectures was performed. Using only the Structural Similarity Index Measure (SSIM) and the Peak Signal-to-Noise Ratio (PSNR), it could be concluded that the Pix2Pix-GAN using 2D data reached better results with 0.492 SSIM and 16.375 dB PSNR. However, visual analysis of the output shows significant blur in the generated images, which is not the case for the Cycle-GAN models. This behavior can be captured by the evaluation of the Fr ' echet Inception Distance (FID), that represents a fundamental performance metric that is usually not considered by related works in the literature.

2023

Unveiling Archive Users: Understanding Their Characteristics and Motivations

Autores
Ponte, L; Koch, I; Lopes, CT;

Publicação
LEVERAGING GENERATIVE INTELLIGENCE IN DIGITAL LIBRARIES: TOWARDS HUMAN-MACHINE COLLABORATION, ICADL 2023, PT II

Abstract
An institution must understand its users to provide quality services, and archives are no exception. Over the years, archives have adapted to the technological world, and their users have also changed. To understand archive users' characteristics and motivations, we conducted a study in the context of the Portuguese Archives. For this purpose, we analysed a survey and complemented this analysis with information gathered in interviews with archivists. Based on the most frequent reasons for visiting the archives, we defined six main archival profiles (genealogical research, historical research, legal purposes, academic work, institutional purposes and publication purposes), later characterised using the results of the previous analysis. For each profile, we created a persona for a more visual and realistic representation of users.

2023

Exploring the Determinants of Social Entrepreneurship Intention

Autores
Almeida, F; de Sousa Filho, JM;

Publicação
Springer Proceedings in Earth and Environmental Sciences

Abstract
Social entrepreneurship is currently a field of research that has attracted increasing attention from various sectors of society mainly due to the difficulty of the various governments to respond to social needs. Higher education cannot remain indifferent to this challenge and must provide training programs specifically aimed at social entrepreneurship. This study intends to find out the dimensions that characterize the process of teaching social entrepreneurship in higher education and analyze the relevance of these dimensions for increasing entrepreneurial intention. This study considers a sample of 177 students and adopts a quantitative methodology based on descriptive and correlational parametric and nonparametric statistical methods. The results indicate that individual and organizational factors appear to be more integrated in the social entrepreneurship process than contextual factors. However, the social component is the only factor that shows a moderate correlation with entrepreneurial intention. The other dimensions of the model in isolation have a low and not significant correlation. Nevertheless, the contextual construct is not favorable for the emergence of new social entrepreneurship projects. The results of this study are relevant for higher education institutions to design social entrepreneurship programs in which the social component is an integral part of these programs, through outreach programs with local communities that can help identify socially relevant causes. © The Author(s), under exclusive license to Springer Nature Switzerland AG 2023.

2023

Probabilistic Causal Contexts for Scalable CRDTs

Autores
Fernandes, PH; Baquero, C;

Publicação
PROCEEDINGS OF THE 10TH WORKSHOP ON PRINCIPLES AND PRACTICE OF CONSISTENCY FOR DISTRIBUTED DATA, PAPOC 2023

Abstract
Conflict-free Replicated Data Types (CRDTs) are useful to allow a distributed system to operate on data even when partitions occur, and thus preserve operational availability. Most CRDTs need to track whether data evolved concurrently at different nodes and needs to be reconciled; this requires storing causality metadata that is proportional to the number of nodes. In this paper, we try to overcome this limitation by introducing a stochastic mechanism that is no longer linear on the number of nodes, but whose accuracy is now tied to how much divergence occurs between synchronizations. This provides a new tool that can be useful in deployments with many anonymous nodes and frequent synchronizations. However, there is an underlying trade-off with classic deterministic solutions, since the approach is now probabilistic and the accuracy depends on the configurable metadata space size.

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