Search results for "RECOGNITION"

showing 10 items of 3607 documents

Detection of a reservoir water level using shape similarity metrics

2017

The matching between reservoirs’ water edge and digital elevation model’s (DEM) contour lines allowed determining the water level at the acquisition date of satellite images. A preliminary study was conducted on the Castello dam (Magazzolo Lake), between Alessandria della Rocca and Bivona (Agrigento, south-Italy). The accuracy assessment of the technique was than evaluated from the comparison between classified and reference objects using similarity metrics about the shape, theme, edge and position, through the plugin STEP of open source software GIS. Moreover, an independent GIS technique was implemented to evaluate the water level, based on a distances’ array between existing contour line…

Similarity (geometry)water surfaceMatching (graph theory)Computer science0211 other engineering and technologies0507 social and economic geography02 engineering and technologyPosition (vector)Digital elevation model021101 geological & geomatics engineeringbusiness.industry05 social sciencesSettore ICAR/02 - Costruzioni Idrauliche E Marittime E IdrologiaDEMPattern recognitionWater levelWater levelContour lineSatelliteEnhanced Data Rates for GSM EvolutionArtificial intelligencebusiness050703 geographyLandsatSettore ICAR/06 - Topografia E CartografiaSAR
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Superposing significant interaction rules (SSIR) method: a simple procedure for rapid ranking of congeneric compounds

2020

The Superposing Significant Interaction Rules (SSIR) method is revised and implemented. The method is a simple combinatorial procedure, which deals with in situ generated rules among a dichotomized congeneric molecular family, selecting the most probabilistically relevant ones. The mere counting of the number of relevant rules attached to new compounds generates a molecular ranking useful for database filtering, refinement and prediction. The algorithm only needs for a symbolic molecular representation and this allows for mining the database in a confidential manner. Third parties will not know the real compounds that are on the way to be worked out. The procedure is tested for a complete s…

Simple (abstract algebra)Computer sciencebusiness.industryQuímica combinatòriaPattern recognitionCombinatorial chemistrySSIR method; Congener series; Ranking; SAR; Balanced Leave-two-out cross validation (BL2O)General ChemistryArtificial intelligenceQuímicabusinessRanking (information retrieval)
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The Cryogenic AntiCoincidence detector for ATHENA: the progress towards the final pixel design

2014

“The Hot and Energetic Universe” is the scientific theme approved by the ESA SPC for a Large mission to be flown in the next ESA slot (2028th) timeframe. ATHENA is a space mission proposal tailored on this scientific theme. It will be the first X-ray mission able to perform the so-called “Integral field spectroscopy”, by coupling a high-resolution spectrometer, the X-ray Integral Field Unit (X-IFU), to a high performance optics so providing detailed images of its field of view (5’ in diameter) with an angular resolution of 5” and fine energy-spectra (2.5eV@E<7keV). The X-IFU is a kilo-pixel array based on TES (Transition Edge Sensor) microcalorimeters providing high resolution spectroscopy …

SimulationsSiliconWarm–hot intergalactic mediumField of viewOrbital mechanicsOpticsField spectroscopyGalactic astronomyX-raysElectronicAngular resolutionOptical and Magnetic MaterialsElectrical and Electronic EngineeringAnticoincidenceImage resolutionSpectroscopyPhysicsSpatial resolutionEquipment and servicesSpectrometerSpectrometersbusiness.industrySensorsApplied MathematicsDetectorComputer Science Applications1707 Computer Vision and Pattern RecognitionCondensed Matter PhysicsATHENAAnticoincidence; ATHENA; Cryogenic detectors; TES; Electronic Optical and Magnetic Materials; Condensed Matter Physics; Computer Science Applications1707 Computer Vision and Pattern Recognition; Applied Mathematics; Electrical and Electronic EngineeringCryogenic detectorsTransition edge sensorbusinessTES
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An efficient prototype merging strategy for the condensed 1-NN rule through class-conditional hierarchical clustering

2002

Abstract A generalized prototype-based classification scheme founded on hierarchical clustering is proposed. The basic idea is to obtain a condensed 1-NN classification rule by merging the two same-class nearest clusters, provided that the set of cluster representatives correctly classifies all the original points. Apart from the quality of the obtained sets and its flexibility which comes from the fact that different intercluster measures and criteria can be used, the proposed scheme includes a very efficient four-stage procedure which conveniently exploits geometric cluster properties to decide about each possible merge. Empirical results demonstrate the merits of the proposed algorithm t…

Single-linkage clusteringcomputer.software_genreComplete-linkage clusteringHierarchical clusteringk-nearest neighbors algorithmArtificial IntelligenceNearest-neighbor chain algorithmClassification ruleSignal ProcessingCluster (physics)Computer Vision and Pattern RecognitionData miningMerge (version control)computerSoftwareMathematicsPattern Recognition
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3D objects descriptors methods: Overview and trends

2017

International audience; Object recognition or object's category recognition under varying conditions is one of the most astonishing capabilities of human visual system. The scientists in computer vision have been trying for decades to reproduce this ability by implementing algorithms and providing computers with appropriate tools. Hence, several intelligent systems have been proposed. To act in this field, numerous approaches have been proposed. In this paper we present an overview of the current trend in 3D objects recognition and describe some representative state of the art methods, highlighting their limits and complexity.

Sketch recognitionComputer science3D single-object recognition[INFO.INFO-GR] Computer Science [cs]/Graphics [cs.GR]02 engineering and technology[INFO.INFO-CG]Computer Science [cs]/Computational Geometry [cs.CG]Field (computer science)object recognitionhuman visual systemcomputer vision[INFO.INFO-CV] Computer Science [cs]/Computer Vision and Pattern Recognition [cs.CV][INFO.INFO-TS]Computer Science [cs]/Signal and Image ProcessingHuman–computer interactionobject category recognition0202 electrical engineering electronic engineering information engineeringskeletonComputer vision3D objects descriptors methodsVisualization3D objects recognitionintelligent systemsNon-Controlled Indexingbusiness.industryCognitive neuroscience of visual object recognitionIntelligent decision support system[INFO.INFO-CV]Computer Science [cs]/Computer Vision and Pattern Recognition [cs.CV]Shape020207 software engineeringComputational modelingObject (computer science)Keypoints3D objects[INFO.INFO-GR]Computer Science [cs]/Graphics [cs.GR]VisualizationRecognition[INFO.INFO-CG] Computer Science [cs]/Computational Geometry [cs.CG]Human visual system modelSolid modelingThree-dimensional displays020201 artificial intelligence & image processingArtificial intelligencebusiness
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An attention-based weakly supervised framework for spitzoid melanocytic lesion diagnosis in whole slide images

2021

[EN] Melanoma is an aggressive neoplasm responsible for the majority of deaths from skin cancer. Specifically, spitzoid melanocytic tumors are one of the most challenging melanocytic lesions due to their ambiguous morphological features. The gold standard for its diagnosis and prognosis is the analysis of skin biopsies. In this process, dermatopathologists visualize skin histology slides under a microscope, in a highly time-consuming and subjective task. In the last years, computer-aided diagnosis (CAD) systems have emerged as a promising tool that could support pathologists in daily clinical practice. Nevertheless, no automatic CAD systems have yet been proposed for the analysis of spitzoi…

Skin NeoplasmsComputer scienceBiopsyMedicine (miscellaneous)CADInductive transfer learningConvolutional neural networkInductive transferArtificial IntelligenceTEORIA DE LA SEÑAL Y COMUNICACIONESBiopsyAttention convolutional neural networkmedicineHumansDiagnosis Computer-AssistedMelanomaMicroscopymedicine.diagnostic_testbusiness.industryMultiple instance learningMelanomaDeep learningHistopathological whole-slide imagesPattern recognitionGold standard (test)medicine.diseaseSpitzoid lesionsArtificial intelligenceSkin cancerbusinessArtificial Intelligence in Medicine
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Automatic recognition of rapid eye movement (REM) sleep by artificial neural networks.

1995

Artificial neural networks are well known for their good performance in pattern recognition. Their suitability for detecting REM sleep periods on the basis of preprocessed EEG data in humans under clinical conditions was tested and their performance compared with the manual evaluation. A single channel of the EEG signal was analysed in time periods of 20 s and preprocessed into a vector of six real numbers, which served as input to the network. EOG and EMG information was ignored. Backpropagation was used as a learning rule for the network, which consisted of 12 neurons and 39 synapses. Training datasets were put together from the input vectors and the corresponding sleep stages were scored…

Sleep StagesCommunicationArtificial neural networkmedicine.diagnostic_testbusiness.industryCognitive NeuroscienceEye movementPattern recognitionGeneral MedicineElectroencephalographyBackpropagationBehavioral NeuroscienceLearning rulePattern recognition (psychology)medicineSleep (system call)Artificial intelligencePsychologybusinessJournal of sleep research
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Automatic Sleep Stage Identification with Time Distributed Convolutional Neural Network

2021

Polysomnography (PSG), the gold standard for sleep stage classification, requires a sleep expert for scoring and is both resource-intensive and expensive. Many researchers currently focus on the real-time classification of the sleep stages based on biomedical signals, such as Electroencephalograph (EEG) and electrooculography (EOG). However, most of the research work is based on machine learning models with multiple signal inputs or hand-engineered features requiring prior knowledge of the sleep domain. We propose a novel encoded Time-Distributed Convolutional Neural Network (TDConvNet) to automatically classify sleep stages based on a single raw PSG signal. The TDConvNet can infer sleep st…

Sleep StagesSource codeArtificial neural networkmedicine.diagnostic_testbusiness.industryComputer sciencemedia_common.quotation_subjectPattern recognitionElectrooculographyPolysomnographyElectroencephalographyConvolutional neural networkmedicineArtificial intelligenceSleep (system call)businessmedia_common2021 International Joint Conference on Neural Networks (IJCNN)
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A methodology for fire data analysis based on pattern recognition towards the disaster management

2015

The aim of this paper is to investigate a proposed strategy for fire disaster analysis that is implemented based on pattern recognition technique in order to achieve a methodology for disaster management. Since the fire hazard has severe effects onto human and properties, it is essential to predict and possibly prevent it. Almost every fire produces some issues, such as heat, smoke, gas, and flame, which are sensible and measurable via devices or detection systems. The fire behavior is relevant to these issues. In this research, temperature, heat radiation, and visibility (smoke) data of fire that have been obtained from Fire Dynamics Simulator (FDS) are used for analysis. The location of t…

SmokeEmergency managementbusiness.industryComputer scienceDecision tree learningDecision treePattern recognitionFire Dynamics SimulatorPattern recognition (psychology)Artificial intelligenceVisibilityMATLABbusinesscomputercomputer.programming_language2015 2nd International Conference on Information and Communication Technologies for Disaster Management (ICT-DM)
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I-states-as-objects-analysis (ISOA): Extensions of an approach to studying short-term developmental processes by analyzing typical patterns

2012

I-states-as-objects-analysis (ISOA) is a person-oriented methodology for studying short-term developmental stability and change in patterns of variable values. ISOA is based on longitudinal data with the same set of variables measured at all measurement occasions. A key concept is the i-state, defined as a person’s pattern of variable values at a specific time point. All i-states are first subjected to a classification analysis that results in a time-invariant classification characterized by a number of typical i-states. Each person is then characterized at each time point by the typical i-state he/she belongs to. Then the person’s sequences of typical i-states are analyzed with regard to …

Social Psychologybusiness.industryStability (learning theory)Pattern recognitionDegree (music)Structural equation modelingEducationTerm (time)Developmental NeuroscienceSample size determinationStatisticsDevelopmental and Educational PsychologyArtificial intelligenceTime pointLife-span and Life-course StudiesbusinessSet (psychology)Social Sciences (miscellaneous)ta515Variable (mathematics)MathematicsInternational Journal of Behavioral Development
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