69 research outputs found
Inspeção Automática de Defeitos em Madeiras de Pinus usando Visão Computacional
This paper addresses the issue of detecting defects in Pine wood using features extracted from grayscale images. The feature set proposed here is based on the concept of texture and it is computed from the co-occurrence matrices. The features provide measures of properties such as smoothness, coarseness, and regularity. Comparative experiments using a color image based feature set extracted from percentile histograms are carried to demonstrate the efficiency of the proposed feature set. Two different learning paradigms, neural networks and support vector machines, and a feature selection algorithm based on multi-objective genetic algorithms were considered in our experiments. The experimental results show that after feature selection, the grayscale image based feature set achieves very competitive performance for the problem of wood defect detection relative to the color image based features.Este artigo apresenta um método completo para a detecção de defeitos em tábuas de madeira de Pinus através de técnicas de Visão Computacional. As imagens dos lados da tábua de madeira são adquiridas com câmeras tipo line scan e processadas para extração de características baseadas na informação cor e em propriedades de textura: suavidade, aspereza e regularidade. Um subconjunto destas características, extraído a partir de imagens em níveis de cinza e selecionado com base em algoritmos genéticos multi-objetivos é proposto como alternativa para redução de custos no processo de aquisição de imagens. Dois paradigmas de aprendizagem de máquina diferentes foram utilizados: redes neurais e máquinas de vetor de suporte. Resultados experimentais demonstram que o conjunto de características selecionado a partir de imagens em níveis de cinza atingiu desempenho competitivo para o problema de detecção de defeitos em madeira, quando comparado com conjunto de características que depende de sensor de aquisição de maior custo (line scan colorida) para extração de características baseadas na informação cor
Chlorophyll fluorescence varies more across seasons than leaf water potential in drought-prone plants
Neurological manifestations of COVID-19 in adults and children
Different neurological manifestations of coronavirus disease 2019 (COVID-19) in adults and children and their impact have not been well characterized. We aimed to determine the prevalence of neurological manifestations and in-hospital complications among hospitalized COVID-19 patients and ascertain differences between adults and children. We conducted a prospective multicentre observational study using the International Severe Acute Respiratory and emerging Infection Consortium (ISARIC) cohort across 1507 sites worldwide from 30 January 2020 to 25 May 2021. Analyses of neurological manifestations and neurological complications considered unadjusted prevalence estimates for predefined patient subgroups, and adjusted estimates as a function of patient age and time of hospitalization using generalized linear models.
Overall, 161 239 patients (158 267 adults; 2972 children) hospitalized with COVID-19 and assessed for neurological manifestations and complications were included. In adults and children, the most frequent neurological manifestations at admission were fatigue (adults: 37.4%; children: 20.4%), altered consciousness (20.9%; 6.8%), myalgia (16.9%; 7.6%), dysgeusia (7.4%; 1.9%), anosmia (6.0%; 2.2%) and seizure (1.1%; 5.2%). In adults, the most frequent in-hospital neurological complications were stroke (1.5%), seizure (1%) and CNS infection (0.2%). Each occurred more frequently in intensive care unit (ICU) than in non-ICU patients. In children, seizure was the only neurological complication to occur more frequently in ICU versus non-ICU (7.1% versus 2.3%, P < 0.001).
Stroke prevalence increased with increasing age, while CNS infection and seizure steadily decreased with age. There was a dramatic decrease in stroke over time during the pandemic. Hypertension, chronic neurological disease and the use of extracorporeal membrane oxygenation were associated with increased risk of stroke. Altered consciousness was associated with CNS infection, seizure and stroke. All in-hospital neurological complications were associated with increased odds of death. The likelihood of death rose with increasing age, especially after 25 years of age.
In conclusion, adults and children have different neurological manifestations and in-hospital complications associated with COVID-19. Stroke risk increased with increasing age, while CNS infection and seizure risk decreased with age
LoGID: An adaptive framework combining local and global incremental learning for dynamic selection of ensembles of HMMs
Multi-scale texture recognition systems with reduced cost: A case study on forest species
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