Search results for "Time serie"

showing 10 items of 261 documents

Harmonic growth: a new approach to the measurement of countries development

2009

The paper defines harmonic growth as a situation of diffuse well-being associated to an increase of GDP, and proposes a measures of time series similarity between GDP and each one from a set of social and economic indicators of development. Such indexes are then synthesized in order to provide the global degree of harmony in growth inside a country. A first Harmonic Growth Index is based on comparisons between couples of polynomials fitting the series. The second version of the index is obtained from cubic B-splines estimates. With an accurate selection of social indicators, both indexes can also be used to rank countries according to their level of development, offering effective complemen…

growth time series pattern recognition indicator development
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WATCHING PEOPLE: ALGORITHMS TO STUDY HUMAN MOTION AND ACTIVITIES

2020

Nowadays human motion analysis is one of the most active research topics in Computer Vision and it is receiving an increasing attention from both the industrial and scientific communities. The growing interest in human motion analysis is motivated by the increasing number of promising applications, ranging from surveillance, human–computer interaction, virtual reality to healthcare, sports, computer games and video conferencing, just to name a few. The aim of this thesis is to give an overview of the various tasks involved in visual motion analysis of the human body and to present the issues and possible solutions related to it. In this thesis, visual motion analysis is categorized into thr…

human motionSettore ING-INF/05 - Sistemi Di Elaborazione Delle Informazionihuman actvity recognitionaction recognition360°360 cameradeep learningtracking 360°computer vision360° camerahuman behaviors segmentation360-degreepedestrian trackinghuman motion trackingtime serietime-serie
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Relation between training load and recovery-stress state in high-performance swimming

2018

\(\bf Background:\) The relation between training load, especially internal load, and the recovery-stress state is of central importance for avoiding negative adaptations in high-performance sports like swimming. The aim of this study was to analyze the individual time-delayed linear effect relationship between training load and recovery-stress state with single case time series methods and to monitor the acute recovery-stress state of high-performance swimmers in an economical and multidimensional manner over a macro cycle. The Acute Recovery and Stress Scale (ARSS) was used for daily monitoring of the recovery-stress state. The methods session-RPE (sRPE) and acute:chronic workload-ratio (…

individual casemonitoringtrainingsession RPE796 SportPhysiologyinternal loadtime series analysisACWRddc:796recovery-stress state796 Athletic and outdoor sports and gamesOriginal Research
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Measuring the Rate of Information Exchange in Point-Process Data With Application to Cardiovascular Variability

2022

The amount of information exchanged per unit of time between two dynamic processes is an important concept for the analysis of complex systems. Theoretical formulations and data-efficient estimators have been recently introduced for this quantity, known as the mutual information rate (MIR), allowing its continuous-time computation for event-based data sets measured as realizations of coupled point processes. This work presents the implementation of MIR for point process applications in Network Physiology and cardiovascular variability, which typically feature short and noisy experimental time series. We assess the bias of MIR estimated for uncoupled point processes in the frame of surrogate…

information dynamics point processes mutual information rate heart rate variability cardiovascular time seriesmutual information rateSettore ING-INF/06 - Bioingegneria Elettronica E Informaticaheart rate variabilityinformation dynamicscardiovascular time seriespoint processespoint processFrontiers in Network Physiology
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Assessing Complexity in Physiological Systems through Biomedical Signals Analysis

2020

The idea that most physiological systems are complex has become increasingly popular in recent decades [...]

information flowComputer sciencebrainMultivariate time series analysisGeneral Physics and Astronomylcsh:AstrophysicsData sciencelcsh:QC1-999Fetal heart rateFuzzy entropyEditorialmultifractalitymultiscaleSettore ING-INF/06 - Bioingegneria Elettronica E Informaticalcsh:QB460-466Autonomic nervous functionBrain; Cardiovascular system; Entropy; Information flow; Multifractality; Multiscalecardiovascular systemHypobaric hypoxialcsh:QInformation dynamicsentropylcsh:Sciencelcsh:PhysicsEntropy
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Long-term memories of developed and emerging markets: Using the scaling analysis to characterize their stage of development

2005

The scaling properties encompass in a simple analysis many of the volatility characteristics of financial markets. That is why we use them to probe the different degree of markets development. We empirically study the scaling properties of daily Foreign Exchange rates, Stock Market indices and fixed income instruments by using the generalized Hurst approach. We show that the scaling exponents are associated with characteristics of the specific markets and can be used to differentiate markets in their stage of development. The robustness of the results is tested by both Monte-Carlo studies and a computation of the scaling in the frequency-domain.

jel:G1jel:C1jel:C00jel:G00Scaling exponents; Time series analysis; Multi-fractals
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Advanced radar-interpretation of InSAR time series for mapping and characterization of geological processes

2011

Abstract. We present a new post-processing methodology for the analysis of InSAR (Synthetic Aperture Radar Interferometry) multi-temporal measures, based on the temporal under-sampling of displacement time series, the identification of potential changes occurring during the monitoring period and, eventually, the classification of different deformation behaviours. The potentials of this approach for the analysis of geological processes were tested on the case study of Naro (Italy), specifically selected due to its geological setting and related ground instability of unknown causes that occurred in February 2005. The time series analysis of past (ERS1/2 descending data; 1992–2000) and current…

lcsh:GE1-350Series (stratigraphy)lcsh:QE1-996.5lcsh:Geography. Anthropology. RecreationInstabilityField (geography)Displacement (vector)InSAR; ground movements; multi-temporal measureslcsh:TD1-1066law.inventionlcsh:GeologyTectonicslcsh:GlawInterferometric synthetic aperture radarGeneral Earth and Planetary SciencesRadarTime serieslcsh:Environmental technology. Sanitary engineeringGeologySeismologylcsh:Environmental sciencesNatural Hazards and Earth System Sciences
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Bayesian semiparametric long memory models for discretized event data

2020

We introduce a new class of semiparametric latent variable models for long memory discretized event data. The proposed methodology is motivated by a study of bird vocalizations in the Amazon rain forest; the timings of vocalizations exhibit self-similarity and long range dependence. This rules out Poisson process based models where the rate function itself is not long range dependent. The proposed class of FRActional Probit (FRAP) models is based on thresholding, a latent process. This latent process is modeled by a smooth Gaussian process and a fractional Brownian motion by assuming an additive structure. We develop a Bayesian approach to inference using Markov chain Monte Carlo and show g…

mallintaminenFOS: Computer and information sciencesStatistics and Probabilitylong range dependenceaikasarjatMarkovin ketjutfractional Brownian motionsademetsätekologinen mallinnusStatistics - ApplicationsArticleMethodology (stat.ME)fractalApplications (stat.AP)AmazonStatistics - Methodologylatent Gaussian process modelstodennäköisyyslaskentanonparametric Bayesbayesilainen menetelmägaussiset prosessitmatemaattinen tilastotiedeluonnonäänetlinnut -- äänetluonnon monimuotoisuusMonte Carlo -menetelmätComputer Science::SoundModeling and Simulationprobitfraktaalittime seriesStatistics Probability and UncertaintyThe Annals of Applied Statistics
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Motivic Pattern Extraction in Music, and Application to the Study of Tunisian Modal Music

2007

A new methodology for automated extraction of repeated patterns in time-series data is presented, aimed in particular at the analysis of musical sequences. The basic principles consists in a search for closed patterns in a multi-dimensional parametric space. It is shown that this basic mechanism needs to be articulated with a periodic pattern discovery system, implying therefore a strict chronological scanning of the time-series data. Thanks to this modelling global pattern filtering may be avoided and rich and highly pertinent results can be obtained. The modelling has been integrated in a collaborative pro ject between ethnomusicology, cognitive sciences and computer science, aimed at the…

mallintaminenpattern extractionEngineeringaikasarjatmusiikkiséquences temporelles[MATH] Mathematics [math]02 engineering and technology[INFO] Computer Science [cs]Space (commercial competition)computer.software_genre060404 musicanalyse musicalemusiikkianalyysi020204 information systemsmotifs périodiques0202 electrical engineering electronic engineering information engineering[INFO]Computer Science [cs]improvisointiTime series[MATH]Mathematics [math]modaalisuus (musiikki)Parametric statisticsmusic analysismotifs fermésbusiness.industrymusique modale tunisienneextraction de motifstunisian modal musicjaksolliset ilmiöt06 humanities and the artsGeneral MedicineClosed patterntime-series dataarabialainen musiikkiclosed patternMusic theoryEthnomusicologyArtificial intelligencebusinesscomputer0604 artsNatural language processingperiodic pattern
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Prediction and interpolation of time series by state space models

2015

Artikkeliväitöskirja. Sisältää yhteenveto-osan ja neljä artikkelia. Article dissertation. Contains an introduction part and four articles. A large amount of data collected today is in the form of a time series. In order to make realistic inferences based on time series forecasts, in addition to point predictions, prediction intervals or other measures of uncertainty should be presented. Multiple sources of uncertainty are often ignored due to the complexities involved in accounting them correctly. In this dissertation, some of these problems are reviewed and some new solutions are presented. A state space approach is also advocated for an e cient and exible framework for time series forecas…

mallintaminenstate space modelsPrediction theoryaikasarjattila-avaruusmallitforecastingennusteetpredictionepävarmuusInterpolationaikasarja-analyysiR-kieliTime-series analysistime seriesuncertainty
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