2025
Autores
Carvalho, M; Amorim, P; Pereira Rodrigues, P; Ferreira-Santos, D;
Publicação
Clinical and epidemiological respiratory sleep medicine
Abstract
2025
Autores
Almeida, F; Okon, E;
Publicação
African Journal of Economic and Management Studies
Abstract
2025
Autores
Carvalho, JPM; Mendes, JP; Coelho, LCC; de Almeida, JMMM;
Publicação
29TH INTERNATIONAL CONFERENCE ON OPTICAL FIBER SENSORS
Abstract
Optical fibers have been extensively applied in optical sensing platforms for their large bandwidth, stability, light weight and accessibility. This work presents a theoretical analysis of an optical fiber surface plasmon resonance system for refractometric sensing applications. The device consists of a multilayer hyperbolic metamaterial (HMM) composed of concentric Au/TiO2 alternate layers in optical fiber matrix. HMMs exhibit hyperbolic dispersion (HD) and the interaction of different plasmonic modes at each interface of the HMM is reported to enhance light-matter coupling, leading to an increased refractometric sensitivity. The HD and its effects on sensor performance are numerically investigated by effective medium theory (EMT) and backed by the exact transfer matrix method (TMM). The maximum sensor performance was attained for a configuration with 2 bilayers with 30 nm thickness for a metal fill fraction (rho) of 0.7, achieving a figure of merit (FOM) of 18.45. A direct comparison with a plasmonic Au optical fiber sensor returned an optimized FOM of 5.74, therefore achieving over a three-fold increase in sensor performance, assessing the potential of HMM as highly refractometric sensitive platforms.
2025
Autores
Gomez-Pilar, J; Martín-Montero, A; Vaquerizo-Villar, F; Domínguez-Guerrero, M; Ferreira-Santos, D; Pereira-Rodrigues, P; Gozal, D; Hornero, R; Gutiérrez-Tobal, G;
Publicação
2025 47th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC)
Abstract
2025
Autores
Nunes, JD; Montezuma, D; Oliveira, D; Pereira, T; Zlobec, I; Pinto, IM; Cardoso, JS;
Publicação
SENSORS
Abstract
Due to the high variability in Hematoxylin and Eosin (H&E)-stained Whole Slide Images (WSIs), hidden stratification, and batch effects, generalizing beyond the training distribution is one of the main challenges in Deep Learning (DL) for Computational Pathology (CPath). But although DL depends on large volumes of diverse and annotated data, it is common to have a significant number of annotated samples from one or multiple source distributions, and another partially annotated or unlabeled dataset representing a target distribution for which we want to generalize, the so-called Domain Adaptation (DA). In this work, we focus on the task of generalizing from a single source distribution to a target domain. As it is still not clear which domain adaptation strategy is best suited for CPath, we evaluate three different DA strategies, namely FixMatch, CycleGAN, and a self-supervised feature extractor, and show that DA is still a challenge in CPath.
2025
Autores
Huber, M; Neto, PC; Sequeira, AF; Damer, N;
Publicação
2025 IEEE/CVF WINTER CONFERENCE ON APPLICATIONS OF COMPUTER VISION WORKSHOPS, WACVW
Abstract
Face recognition (FR) systems are vulnerable to morphing attacks, which refer to face images created by morphing the facial features of two different identities into one face image to create an image that can match both identities, allowing serious security breaches. In this work, we apply a frequency-based explanation method from the area of explainable face recognition to shine a light on how FR models behave when processing a bona fide or attack pair from a frequency perspective. In extensive experiments, we used two different state-of-the-art FR models and six different morphing attacks to investigate possible differences in behavior. Our results show that FR models rely differently on different frequency bands when making decisions for bona fide pairs and morphing attacks. In the following step, we show that this behavioral difference can be used to detect morphing attacks in an unsupervised setup solely based on the observed frequency-importance differences in a generalizable manner.
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