Search results for "EURA"

showing 10 items of 3336 documents

Physical integration: A causal account for consciousness

2014

The issue of integration in neural networks is intimately connected with that of consciousness. In this paper, integration as an effective level of physical organization is contrasted with a methodological integrative approach. Understanding how consciousness arises out of neural processes requires a model of integration in just causal physical terms. Based on a set of feasible criteria (physical grounding, causal efficacy, no circularity and scaling), a causal account of physical integration for consciousness centered on joint causation is outlined.

Consciousnessmedia_common.quotation_subjectModels NeurologicalintegrationperceptionCognitionPerceptionHumansCausationSet (psychology)media_commonNeuronsSettore ING-INF/05 - Sistemi Di Elaborazione Delle InformazioniCognitive sciencewholephysicalismUnityArtificial neural networkGeneral NeuroscienceGeneral MedicinePhysicalismconsciousneCausal efficacyConsciousnessPsychologySocial psychologyJournal of Integrative Neuroscience
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Energy saving in WWTP: Daily benchmarking under uncertainty and data availability limitations

2016

Efficient management of Waste Water Treatment Plants (WWTPs) can produce significant environmental and economic benefits. Energy benchmarking can be used to compare WWTPs, identify targets and use these to improve their performance. Different authors have performed benchmark analysis on monthly or yearly basis but their approaches suffer from a time lag between an event, its detection, interpretation and potential actions. The availability of on-line measurement data on many WWTPs should theoretically enable the decrease of the management response time by daily benchmarking. Unfortunately this approach is often impossible because of limited data availability. This paper proposes a methodolo…

Conservation of Natural ResourcesOperations researchComputer science020209 energy02 engineering and technologyInterval (mathematics)010501 environmental sciencesWaste Disposal Fluid01 natural sciencesBiochemistryMachine LearningFuzzy Logic0202 electrical engineering electronic engineering information engineering0105 earth and related environmental sciencesGeneral Environmental ScienceBiological Oxygen Demand AnalysisEnergy recoveryTemperatureUncertaintyEnergy consumptionBenchmarkingReliability engineeringBenchmarkingBenchmark (computing)Regression AnalysisNeural Networks ComputerPerformance indicatorUnavailabilityAlgorithmsEnergy (signal processing)Environmental Research
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Domestic demand predictions considering influence of external environmental parameters

2015

A precise prediction of domestic demand is very important for establishing home energy management system and preventing the damage caused by overloading. In this work, active and reactive power consumption prediction model based on historical power usage data and external environment parameter data (temperature and solar radiation) is presented for a typical Southern Norwegian house. In the presented model, a neural network is adopted as a main prediction technique and historical domestic load data of around 2 years are utilized for training and testing purpose. Temperature and global irradiation (which illustrates the solar radiation level quantitatively) are employed as external parameter…

Consumption (economics)Energy management systemEngineeringWork (thermodynamics)Artificial neural networkbusiness.industryDistribution management systemAC powerbusinessSimulationReliability engineeringPower (physics)Data modeling2015 IEEE 13th International Conference on Industrial Informatics (INDIN)
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Deep CNN-ELM Hybrid Models for Fire Detection in Images

2018

In this paper, we propose a hybrid model consisting of a Deep Convolutional feature extractor followed by a fast and accurate classifier, the Extreme Learning Machine, for the purpose of fire detection in images. The reason behind using such a model is that Deep CNNs used for image classification take a very long time to train. Even with pre-trained models, the fully connected layers need to be trained with backpropagation, which can be very slow. In contrast, we propose to employ the Extreme Learning Machine (ELM) as the final classifier trained on pre-trained Deep CNN feature extractor. We apply this hybrid model on the problem of fire detection in images. We use state of the art Deep CNN…

Contextual image classificationArtificial neural networkComputer sciencebusiness.industryPattern recognition02 engineering and technologyConvolutional neural networkBackpropagationSupport vector machine03 medical and health sciences0302 clinical medicineSoftmax function0202 electrical engineering electronic engineering information engineering020201 artificial intelligence & image processingArtificial intelligencebusinessClassifier (UML)030217 neurology & neurosurgeryExtreme learning machine
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Support Vector Machines for Crop Classification Using Hyperspectral Data

2003

In this communication, we propose the use of Support Vector Machines (SVM) for crop classification using hyperspectral images. SVM are benchmarked to well–known neural networks such as multilayer perceptrons (MLP), Radial Basis Functions (RBF) and Co-Active Neural Fuzzy Inference Systems (CANFIS). Models are analyzed in terms of efficiency and robustness, which is tested according to their suitability to real–time working conditions whenever a preprocessing stage is not possible. This can be simulated by considering models with and without a preprocessing stage. Four scenarios (128, 6, 3 and 2 bands) are thus evaluated. Several conclusions are drawn: (1) SVM yield better outcomes than neura…

Contextual image classificationArtificial neural networkbusiness.industryComputer scienceHyperspectral imagingFuzzy control systemPerceptronMachine learningcomputer.software_genreFuzzy logicSupport vector machineComputingMethodologies_PATTERNRECOGNITIONRobustness (computer science)Radial basis functionArtificial intelligencebusinesscomputer
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Real-time image segmentation for anomalies detection using SVM approximation

2003

In this paper, we propose a method of implementation improvement of the decision rule of the support vector machine, applied to real-time image segmentation. We present very high speed decisions (approximately 10 ns per pixel) which can be useful for detection of anomalies on manufactured parts. We propose an original combination of classifiers allowing fast and robust classification applied to image segmentation. The SVM is used during a first step, pre-processing the training set and thus rejecting any ambiguities. The hyperrectangles-based learning algorithm is applied using the SVM classified training set. We show that the hyperrectangle method imitates the SVM method in terms of perfor…

Contextual image classificationPixelArtificial neural networkImage qualitybusiness.industryComputer scienceComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISIONScale-space segmentationPattern recognitionImage segmentationSupport vector machineHyperrectangleComputer visionArtificial intelligencebusinessSPIE Proceedings
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2004

The current progress in sequencing projects calls for rapid, reliable and accurate function assignments of gene products. A variety of methods has been designed to annotate sequences on a large scale. However, these methods can either only be applied for specific subsets, or their results are not formalised, or they do not provide precise confidence estimates for their predictions. We have developed a large-scale annotation system that tackles all of these shortcomings. In our approach, annotation was provided through Gene Ontology terms by applying multiple Support Vector Machines (SVM) for the classification of correct and false predictions. The general performance of the system was bench…

ContigArtificial neural networkApplied MathematicsBiologycomputer.software_genreBiochemistryGenomeComputer Science ApplicationsTerm (time)Support vector machineAnnotationStructural BiologyControlled vocabularyData miningDNA microarrayMolecular BiologycomputerBMC Bioinformatics
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SSPMO: A Scatter Tabu Search Procedure for Non-Linear Multiobjective Optimization

2007

We describe the development and testing of a metaheuristic procedure, based on the scatter-search methodology, for the problem of approximating the efficient frontier of nonlinear multiobjective optimization problems with continuous variables. Recent applications of scatter search have shown its merit as a global optimization technique for single-objective problems. However, the application of scatter search to multiobjective optimization problems has not been fully explored in the literature. We test the proposed procedure on a suite of problems that have been used extensively in multiobjective optimization. Additional tests are performed on instances that are an extension of those consid…

Continuous optimizationNonlinear systemMultiobjective optimization problemMathematical optimizationComputer Science::Neural and Evolutionary ComputationMathematicsofComputing_NUMERICALANALYSISGeneral EngineeringEfficient frontierMulti-objective optimizationMetaheuristicGlobal optimizationTabu searchMathematicsINFORMS Journal on Computing
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A novel strategy for solving the stochastic point location problem using a hierarchical searching scheme

2014

Stochastic point location (SPL) deals with the problem of a learning mechanism (LM) determining the optimal point on the line when the only input it receives are stochastic signals about the direction in which it should move. One can differentiate the SPL from the traditional class of optimization problems by the fact that the former considers the case where the directional information, for example, as inferred from an Oracle (which possibly computes the derivatives), suffices to achieve the optimization-without actually explicitly computing any derivatives. The SPL can be described in terms of a LM (algorithm) attempting to locate a point on a line. The LM interacts with a random environme…

Continuous-time stochastic processMathematical optimizationOptimization problemControlled random walkTime reversibilityDiscretized learning02 engineering and technologyTime reversibilityLearning automataStochastic-point problem0202 electrical engineering electronic engineering information engineeringElectrical and Electronic EngineeringStochastic neural networkMathematicsBinary treeLearning automata020206 networking & telecommunicationsRandom walkComputer Science ApplicationsHuman-Computer InteractionControl and Systems Engineering020201 artificial intelligence & image processingStochastic optimizationSoftwareInformation Systems
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A non-supervised approach to locate and to measure the nuchal translucency by means of wavelet analysis and neural networks

2017

Ultrasound imaging is a well known noninvasive way to evaluate various diseases during the prenatal age. In particular, the thickness measure of the nuchal transucency is strictly correlated with pathologies like trisomy 13, 18 and 21. For a correct investigation, the methodology needs mid-sagittal sections and the proposed approach is based on wavelet analysis and neural network classifiers to locate components useful to identify mid-sagittal planes. To evaluate the performance and the robustness of the methodology, real clinical ultrasound images were considered, obtaining an average error of at most 0.3 millimeters in 97.4% of the cases.

Control and OptimizationArtificial neural networkSettore INF/01 - InformaticaComputer sciencebusiness.industrymid-sagittal sectionneural networksymmetry transformPattern recognitionMeasure (mathematics)Ultrasonic imagingClinical ultrasoundWaveletComputer Networks and CommunicationNuchal translucencyRobustness (computer science)Artificial IntelligenceUltrasound imagingArtificial intelligencewavelet analysibusinessnuchal translucencyInformation Systems
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