Search results for "Learning"

showing 10 items of 6669 documents

''Investigating reduction of dimensionality during single-joint elbow movements: a case study on muscle synergies''

2013

Chiovetto, Enrico | Berret, Bastien | Delis, Ioannis | Panzeri, Stefano | Pozzo, Thierry; International audience; ''A long standing hypothesis in the neuroscience community is that the central nervous system (CNS) generates the muscle activities to accomplish movements by combining a relatively small number of stereotyped patterns of muscle activations, often referred to as" muscle synergies." Different definitions of synergies have been given in the literature. The most well-known are those of synchronous, time-varying and temporal muscle synergies. Each one of them is based on a different mathematical model used to factor some EMG array recordings collected during the execution of variety…

Computer scienceNeuroscience (miscellaneous)triphasic patternADJUSTMENTS''Variation (game tree)ORGANIZATIONTemporal musclelcsh:RC321-571NATURAL MOTOR BEHAVIORSnon-negative matrix factorizationACTIVATION03 medical and health sciencesCellular and Molecular Neuroscience0302 clinical medicineEMGEncoding (memory)muscle synergiesMATRIX FACTORIZATIONFeature (machine learning)Original Research ArticleSet (psychology)lcsh:Neurosciences. Biological psychiatry. Neuropsychiatry030304 developmental biologydimensionality reductionARM MOVEMENTSELECTROMYOGRAPHIC PATTERNS0303 health sciencesbusiness.industryDimensionality reductionCOMBINATIONS[SCCO.NEUR]Cognitive science/Neuroscienceelbow rotationsNeurophysiologyADJUSTMENTSBODY POINTING MOVEMENTS[ SCCO.NEUR ] Cognitive science/Neuroscience''NATURAL MOTOR BEHAVIORSArtificial intelligencebusiness030217 neurology & neurosurgeryCognitive psychologyCurse of dimensionalityNeuroscienceTRIPHASIC EMG PATTERN
researchProduct

Deep Learning-Based Real-Time Object Detection in Inland Navigation

2019

International audience; Semi-autonomous and fully-autonomous systems must have knowledge about the objects in their environment to ensure a safe navigation. Modern approaches implement deep learning techniques to train a neural network for object detection. This project will study the effectiveness of using several promising algorithms such as Faster R-CNN, SSD, and different versions of YOLO, to detect, classify, and track objects in near real-time fluvial domain. Since no dataset is available for this purpose in literature, we first started by annotating a dataset of 2488 images with almost 35 400 annotations for training the convolutional neural network architectures. We made this data s…

Computer scienceObject detection02 engineering and technologyMachine learningcomputer.software_genreConvolutional neural networkDomain (software engineering)[SPI]Engineering Sciences [physics]0502 economics and businessMachine learning0202 electrical engineering electronic engineering information engineeringTrainingInland navigationAdaptation (computer science)050210 logistics & transportationArtificial neural networkbusiness.industryDeep learning05 social sciencesData modelsObject detectionNavigationRoadsData set020201 artificial intelligence & image processingArtificial intelligencebusinesscomputerNeural networks
researchProduct

Open Set Audio Classification Using Autoencoders Trained on Few Data.

2020

Open-set recognition (OSR) is a challenging machine learning problem that appears when classifiers are faced with test instances from classes not seen during training. It can be summarized as the problem of correctly identifying instances from a known class (seen during training) while rejecting any unknown or unwanted samples (those belonging to unseen classes). Another problem arising in practical scenarios is few-shot learning (FSL), which appears when there is no availability of a large number of positive samples for training a recognition system. Taking these two limitations into account, a new dataset for OSR and FSL for audio data was recently released to promote research on solution…

Computer scienceOpen set02 engineering and technologylcsh:Chemical technologyMachine learningcomputer.software_genreBiochemistryArticleAnalytical ChemistrySet (abstract data type)open set recognition020204 information systemsaudio classificationautoencoders0202 electrical engineering electronic engineering information engineeringFeature (machine learning)lcsh:TP1-1185few-shot learningElectrical and Electronic EngineeringRepresentation (mathematics)Instrumentationbusiness.industryopen set classificationPerceptronClass (biology)AutoencoderAtomic and Molecular Physics and OpticsEmbedding020201 artificial intelligence & image processingArtificial intelligenceTransfer of learningbusinesscomputerSensors (Basel, Switzerland)
researchProduct

Forms of productive complexity as criteria for educational reconstruction: the design of a teaching proposal on thermodynamics

2014

Abstract The paper discusses teaching materials on thermodynamics, designed and implemented in 5 classes of scientifically-oriented secondary schools in Italy (grade 12). The materials are designed to: i) foster conceptual understanding; ii) create a learning environment rich enough to enable each student to find a personal way for appropriating content knowledge. In order to achieve the first aim, the design takes into account the main results of literature about student's difficulties in thermodynamics. In order to achieve the second aim, forms of “productive complexities” are implemented. The paper presents the design criteria and shows why they have the potential to create an inclusive …

Computer scienceOrder (business)Learning environmentTHERMODYNAMICSMathematics educationcomplex learning environmentThermodynamicsGeneral Materials ScienceThermodynamics secondary school teaching educational reconstruction complex learning environmenteducational reconstructionEducational reconstructionsecondary school teaching
researchProduct

Prediction of Hidden Oscillations Existence in Nonlinear Dynamical Systems: Analytics and Simulation

2013

From a computational point of view, in nonlinear dynamical systems, attractors can be regarded as self-excited and hidden attractors. Self-excited attractors can be localized numerically by a standard computational procedure, in which after a transient process a trajectory, starting from a point of unstable manifold in a neighborhood of equilibrium, reaches a state of oscillation, therefore one can easily identify it. In contrast, for a hidden attractor, a basin of attraction does not intersect neighborhoods of equilibria. While classical attractors are self-excited, attractors can therefore be obtained numerically by the standard computational procedure, for localization of hidden attracto…

Computer scienceOscillationbusiness.industryProcess (computing)State (functional analysis)Machine learningcomputer.software_genreManifoldNonlinear Sciences::Chaotic DynamicsAttractorTrajectoryPoint (geometry)Transient (oscillation)Artificial intelligenceStatistical physicsbusinesscomputer
researchProduct

Design of composite measure schemes for comparative severity assessment in animal-based neuroscience research: A case study focussed on rat epilepsy …

2020

PLOS ONE 15(5), e0230141 (2020). doi:10.1371/journal.pone.0230141

Computer sciencePhysiologyPsychological interventionSocial Sciencescomputer.software_genreOpen fieldField (computer science)Rats Sprague-Dawley0302 clinical medicineMathematical and Statistical TechniquesMedicine and Health SciencesPsychologyCluster Analysis0303 health sciencesPrincipal Component AnalysisMultidisciplinaryAnimal Welfare (journal)Animal BehaviorQStatisticsRAnimal ModelsResearch AssessmentNeurologyExperimental Organism SystemsAnimal SocialityPhysical SciencesMedicineDisease Models Animals epilepsy animal behaviorFemaleLocomotionResearch ArticleScienceSpatial BehaviorContext (language use)Machine learningResearch and Analysis Methods03 medical and health sciencesRobustness (computer science)Animal welfareKindling NeurologicAnimalsRelevance (information retrieval)BurrowingStatistical MethodsSocial BehaviorSelection (genetic algorithm)030304 developmental biologyBehaviorEpilepsybusiness.industryBiological LocomotionBiology and Life SciencesRatsDisease Models AnimalBiological Variation PopulationMultivariate AnalysisAnimal StudiesArtificial intelligenceK Means ClusteringbusinesscomputerZoology030217 neurology & neurosurgeryMathematicsSoftware
researchProduct

Clinically-Driven Virtual Patient Cohorts Generation: An Application to Aorta

2021

The combination of machine learning methods together with computational modeling and simulation of the cardiovascular system brings the possibility of obtaining very valuable information about new therapies or clinical devices through in-silico experiments. However, the application of machine learning methods demands access to large cohorts of patients. As an alternative to medical data acquisition and processing, which often requires some degree of manual intervention, the generation of virtual cohorts made of synthetic patients can be automated. However, the generation of a synthetic sample can still be computationally demanding to guarantee that it is clinically meaningful and that it re…

Computer sciencePhysiologySample (statistics)Target populationMachine learningcomputer.software_genreData acquisitionVirtual patientPhysiology (medical)digital twinQP1-981support vector machineOriginal Researchbusiness.industrygenerative adversarial networkSampling (statistics)synthetic populationthoracic-aortaSupport vector machineReference samplein-silico trialsCohortArtificial intelligencevirtual cohortbusinesscomputerclinically-driven samplingFrontiers in Physiology
researchProduct

Integrating Environmental Temperature Conditions into the SIR Model for Vector-Borne Diseases

2020

International audience; Nowadays, Complex networks are used to model and analyze various problems of real-life e.g. information diffusion in social networks, epidemic spreading in human population etc. Various epidemic spreading models are proposed for analyzing and understanding the spreading of infectious diseases in human contact networks. In classical epidemiological models, a susceptible person becomes infected after getting in contact with an infected person among the human population only. However, in vector-borne diseases, a human can be infected also by a living organism called a vector. The vector population that also help in spreading diseases is very sensitive to environmental f…

Computer sciencePopulationEpidemic dynamicsEpidemic SpreadingComplex NetworkContact networkMachine learningcomputer.software_genre01 natural sciences010305 fluids & plasmasEnvironmental temperature0103 physical sciences[INFO]Computer Science [cs]010306 general physicseducationeducation.field_of_studybusiness.industryTemperatureComplex network3. Good healthHomogeneousDy- namics on NetworkVector (epidemiology)Artificial intelligenceSIR modelEpidemic modelbusinesscomputer
researchProduct

CovSel

2018

Ensemble methods combine the predictions of a set of models to reach a better prediction quality compared to a single model's prediction. The ensemble process consists of three steps: 1) the generation phase where the models are created, 2) the selection phase where a set of possible ensembles is composed and one is selected by a selection method, 3) the fusion phase where the individual models' predictions of the selected ensemble are combined to an ensemble's estimate. This paper proposes CovSel, a selection approach for regression problems that ranks ensembles based on the coverage of adequately estimated training points and selects the ensemble with the highest coverage to be used in th…

Computer scienceProcess (computing)Phase (waves)Genetic programming02 engineering and technology01 natural sciencesEnsemble learningSet (abstract data type)010104 statistics & probability0202 electrical engineering electronic engineering information engineering020201 artificial intelligence & image processingPoint (geometry)0101 mathematicsSymbolic regressionAlgorithmSelection (genetic algorithm)Proceedings of the Genetic and Evolutionary Computation Conference
researchProduct

Emulation of 2D Hydrodynamic Flood Simulations at Catchment Scale Using ANN and SVR

2021

Two-dimensional (2D) hydrodynamic models are one of the most widely used tools for flood modeling practices and risk estimation. The 2D models provide accurate results

Computer scienceProcess (engineering)Geography Planning and DevelopmentAquatic ScienceMachine learningcomputer.software_genreBiochemistrysupport vector regressionTD201-500Uncertainty analysisWater Science and TechnologyEmulationArtificial neural networkFlood mythWater supply for domestic and industrial purposesbusiness.industryDimensionality reductionHydraulic engineeringSupport vector machineemulatorsVDP::Teknologi: 500Sample size determinationerror structureArtificial intelligencetraining set sizebusinessTC1-978computerartificial neural networkWater
researchProduct