Search results for "NEURAL NETWORK"

showing 10 items of 1385 documents

Leveraging Uncertainty Estimates to Improve Segmentation Performance in Cardiac MR

2021

In medical image segmentation, several studies have used Bayesian neural networks to segment and quantify the uncertainty of the images. These studies show that there might be an increased epistemic uncertainty in areas where there are semantically and visually challenging pixels. The uncertain areas of the image can be of a great interest as they can possibly indicate the regions of incorrect segmentation. To leverage the uncertainty information, we propose a segmentation model that incorporates the uncertainty into its learning process. Firstly, we generate the uncertainty estimate (sample variance) using Monte-Carlo dropout during training. Then we incorporate it into the loss function t…

PixelCalibration (statistics)business.industryComputer scienceComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISIONPattern recognitionImage segmentationLeverage (statistics)SegmentationSample varianceArtificial intelligenceUncertainty quantificationbusinessDropout (neural networks)
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Applying Artificial Intelligence Methods to Detect and Classify Fish Calls from the Northern Gulf of Mexico

2021

Passive acoustic monitoring is a method that is commonly used to collect long-term data on soniferous animal presence and abundance. However, these large datasets require substantial effort for manual analysis

Point of interestComputer scienceneural networkNaval architecture. Shipbuilding. Marine engineeringVM1-989Ocean EngineeringGC1-1581OceanographyClassifier (linguistics)VDP::Matematikk og Naturvitenskap: 400::Basale biofag: 470VDP::Landbruks- og Fiskerifag: 900::Fiskerifag: 920Water Science and TechnologyCivil and Structural EngineeringGulf of MexicoRecallArtificial neural networkbusiness.industryDetectorfish call detectionfish soundsPattern recognitionenergy detectorartificial intelligenceVariable (computer science)classificationNoise (video)Artificial intelligencebusinessEnergy (signal processing)Journal of Marine Science and Engineering
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The Effect of Cycle Time and Offset on Roadside Pollutant Concentrations

2009

Pollutant concentrationNeural Networks
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Hourly Forecasting of SO2 Pollutant Concentration Using an Elman Neural Network

2006

In this paper the first results produced by an Elman neural network for hourly SO2 ground concentration forecasting are presented. Time series has been recorded between 1998 and 2001 and are referred to a monitoring station of SO2 in the industrial site of Priolo, Syracuse, Italy. Data has been kindly provided by CIPA (Consorzio Industriale per la Protezione dell'Ambiente, Siracusa, Italia). Time series parameters are the horizontal and vertical wind velocity, the wind direction, the stability classes of Thomas, the base level of the layer of the atmospheric stability, the gradient of the potential temperature and the difference of the potential temperature of reference.

PollutantMeteorologyArtificial neural networkRecurrent neural networksModelsIndustrial siteAtmospheric instabilityPotential temperatureEnvironmental scienceWind directionStability (probability)Wind speedNeural networks
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Influence of coordinated traffic lights parameters on roadside pollutant concentrations

2009

Abstract The paper examines the effects of coordinated traffic lights on CO and C 6 H 6 roadside concentrations in an urban area of Palermo in Southern Italy. Traffic loop detectors and one pollution-monitoring are used to collect data for use in DRACULA traffic microsimulator software. CO and C 6 H 6 roadside concentrations associated with varying cycle and offset times of the coordinated traffic lights are estimated using a neural network. Two functions were set up describing the relations of pollutant concentrations in term of cycle and offset time.

PollutantgeographyOffset (computer science)geography.geographical_feature_categoryMeteorologyNeural NetworksEnvironmental engineeringMicrosimulationAir pollutionAir pollutionTransportationUrban areamedicine.disease_causeTraffic LightmedicineEnvironmental scienceGeneral Environmental ScienceCivil and Structural Engineering
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Traffic Parameters Estimation to Predict Road Side Pollutant Concentrations using Neural Networks

2007

The analysis aims to evaluate which is the most important among traffic parameters (flows, queues length, occupancy degree, and travel time) to forecast CO and C6H6 concentrations. The study area was identified by Notarbartolo Road and bounded by Liberta Street and Sciuti Street in the urban area of Palermo in Southern Italy. In this area, various loop detectors and one pollution-monitoring site were located. Traffic data related to the pollution-monitoring site immediately near the road link were estimated by Simulation of Urban MObility (SUMO) traffic microsimulator software using as input the flows measured by loop detectors on other links of road network. Traffic and weather data were u…

Pollutantgeographygeography.geographical_feature_categoryOccupancyArtificial neural networkMeteorologyPOLLUTANT CONCENTRATIONS NEURAL NETWORKSUrban areaTravel timeTransport engineeringWeather dataEnvironmental scienceSensitivity (control systems)QueueGeneral Environmental ScienceEnvironmental Modeling & Assessment
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Improving the prediction of air pollution peak episodes generated by urban transport networks

2016

Abstract This paper illustrates the early results of ongoing research developing novel methods to analyse and simulate the relationship between trasport-related air pollutant concentrations and easily accessible explanatory variables. The final scope is to integrate the new models in traditional traffic management support systems for a sustainable mobility of road vehicles in urban areas. This first stage concerns the relationship between the hourly mean concentration of nitrogen dioxide (NO2) and explanatory factors reflecting the NO2 mean level one hour back, along with traffic and weather conditions. Particular attention is given to the prediction of pollution peaks, defined as exceedanc…

PollutionArtificial neural networkDependency (UML)010504 meteorology & atmospheric sciencesmedia_common.quotation_subjectGeography Planning and DevelopmentAir pollutionF800010501 environmental sciencesManagement Monitoring Policy and LawARIMAX modelmedicine.disease_cause01 natural sciencesF900EconometricsmedicineOperations managementRepresentation (mathematics)Air quality index0105 earth and related environmental sciencesmedia_commonNitrogen dioxideAir pollutant concentrationsArtificial neural networkEnsemble techniquesSpecificationExceedances of pollutant concentration limitsEnvironmental scienceAir quality forecastingEnvironmental Science & Policy
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Three Hours Ahead Prevision of SO2 Pollutant Concentration Using an Elman Neural based Forecaster

2008

Abstract Indoor air quality near the industrial site is tightly joined to pollutant concentration level, since outdoor pollution heavily influences air quality and, consequently, inhabitants health. A pollution management system is essential for health protection. Automatic air quality management systems have became an important research issue with strong implications for inhabitants’ health. In this paper an automatic forecaster based on neural networks for SO 2 concentration prevision is proposed. The analyzed area covers different small towns near the industrial site of Priolo, in the south of the world. Among these towns, Melilli was the first town in Italy that was evacuated for high l…

PollutionPollutantEnvironmental EngineeringMeteorologyArtificial neural networkOperations researchWarning systemStochastic modellingmedia_common.quotation_subjectGeography Planning and DevelopmentRecurrent neural networkBuilding and ConstructionModeling and measurementRecurrent neural networkIndoor air qualityAir qualityEnvironmental scienceAir quality indexCivil and Structural Engineeringmedia_commonForecasting
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Synapses between NG2 glia and neurons

2011

NG2-expressing glia are precursors to oligodendrocytes and subpopulations of astrocytes. They are unique among glial cells in that they enter into synaptic specialisations with neurons throughout all areas of grey and white matter and at all ages. To date, the NG2 cells appear to represent a postsynaptic compartment, and synapses are formed with axons. With differentiation to oligodendrocytes, NG2 is downregulated and myelin antigens upregulated: this coincides with a loss of the synaptic contacts between neurons and NG2 glial cells. The functional roles of this glial–neuron synapse in regulation of differentiation into myelinating oligodendrocytes or additionally responding to and modulati…

PolydendrocytesHistologyCell BiologyBiologyWhite matterSynapseMyelinmedicine.anatomical_structurenervous systemPostsynaptic potentialImmunologymedicineBiological neural networkCompartment (development)NeuronAnatomyMolecular BiologyNeuroscienceEcology Evolution Behavior and SystematicsDevelopmental BiologyJournal of Anatomy
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Spatial heterogeneity in glassy polystyrene detected by deuteron NMR relaxation

1999

Using deuteron NMR, the dynamics of supercooled polystyrene-d 3 was investigated near the calorimetric glass transition. At these temperatures non-exponential spin lattice relaxation is found, indicating the presence of spatial heterogeneity. With increasing temperature, structural relaxation becomes fast enough to average efficiently over different spatial environments, leading to exponential magnetization decays. A qualitative comparison with toluene as a representative of a low molecular weight glass former is carried out. Indications are found that in polystyrene the observed averaging process is more effective at T g than it is in toluene.

Polymers and PlasticsGeneral Chemical EngineeringRelaxation (NMR)Spin–lattice relaxationAnalytical chemistryNuclear magnetic resonance spectroscopy530Condensed Matter::Disordered Systems and Neural NetworksCondensed Matter::Soft Condensed MatterMagnetizationchemistry.chemical_compoundDeuteriumchemistryChemical physicsPolystyrenePhysics::Chemical PhysicsSupercoolingGlass transitionActa Polymerica
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