Search results for "Support Vector Machine"

showing 10 items of 306 documents

A Machine Learning Approach for Fall Detection Based on the Instantaneous Doppler Frequency

2019

Modern societies are facing an ageing problem that is accompanied by increasing healthcare costs. A major share of this ever-increasing cost is due to fall-related injuries, which urges the development of fall detection systems. In this context, this paper paves the way for the development of radio-frequency-based fall detection systems, which do not require the user to wear any device and can detect falls without compromising the user's privacy. For the design of such systems, we present an activity simulator that generates the complex path gain of indoor channels in the presence of one person performing three different activities: slow fall, fast fall, and walking. We have developed a mac…

General Computer ScienceComputer scienceFeature vectorFeature extractionDecision tree02 engineering and technologyMachine learningcomputer.software_genreActivity recognitioncomplex path gainFall detection0202 electrical engineering electronic engineering information engineeringGeneral Materials Scienceactivity recognitionVDP::Teknologi: 500::Informasjons- og kommunikasjonsteknologi: 550instantaneous Doppler frequencyArtificial neural networkbusiness.industryfeature extractionGeneral Engineering020206 networking & telecommunicationsSupport vector machineStatistical classificationmachine learning020201 artificial intelligence & image processinglcsh:Electrical engineering. Electronics. Nuclear engineeringArtificial intelligencebusinesslcsh:TK1-9971computerClassifier (UML)IEEE Access
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An efficient data model for energy prediction using wireless sensors

2019

International audience; Energy prediction is in high importance for smart homes and smart cities, since it helps reduce power consumption and provides better energy and cost savings. Many algorithms have been used for predicting energy consumption using data collected from Internet of Things (IoT) devices and wireless sensors. In this paper, we propose a system based on Multilayer Perceptron (MLP) to predict energy consumption of a building using collected information (e.g., light energy, day of the week, humidity, temperature, etc.) from a Wireless Sensor Network (WSN). We compare our system against four other classification algorithms, namely: Linear Regression (LR), Support Vector Machin…

General Computer ScienceMean squared errorComputer scienceReal-time computing02 engineering and technology[INFO.INFO-SE]Computer Science [cs]/Software Engineering [cs.SE]7. Clean energy[INFO.INFO-IU]Computer Science [cs]/Ubiquitous Computing[INFO.INFO-CR]Computer Science [cs]/Cryptography and Security [cs.CR]0202 electrical engineering electronic engineering information engineeringElectrical and Electronic Engineering020206 networking & telecommunicationsEnergy consumption[INFO.INFO-MO]Computer Science [cs]/Modeling and SimulationRandom forestSupport vector machineMean absolute percentage error13. Climate actionControl and Systems Engineering[INFO.INFO-MA]Computer Science [cs]/Multiagent Systems [cs.MA]Multilayer perceptron020201 artificial intelligence & image processing[INFO.INFO-ET]Computer Science [cs]/Emerging Technologies [cs.ET]Gradient boosting[INFO.INFO-DC]Computer Science [cs]/Distributed Parallel and Cluster Computing [cs.DC]Wireless sensor network
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2014

This paper investigates the proficiency of support vector machine (SVM) using datasets generated by Tennessee Eastman process simulation for fault detection. Due to its excellent performance in generalization, the classification performance of SVM is satisfactory. SVM algorithm combined with kernel function has the nonlinear attribute and can better handle the case where samples and attributes are massive. In addition, with forehand optimizing the parameters using the cross-validation technique, SVM can produce high accuracy in fault detection. Therefore, there is no need to deal with original data or refer to other algorithms, making the classification problem simple to handle. In order to…

GeneralizationApplied MathematicsProcess (computing)computer.software_genreFault detection and isolationSupport vector machineNonlinear systemComputingMethodologies_PATTERNRECOGNITIONRanking SVMBenchmark (computing)Data miningProcess simulationcomputerAnalysisMathematicsAbstract and Applied Analysis
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2020

Piping erosion is one form of water erosion that leads to significant changes in the landscape and environmental degradation. In the present study, we evaluated piping erosion modeling in the Zarandieh watershed of Markazi province in Iran based on random forest (RF), support vector machine (SVM), and Bayesian generalized linear models (Bayesian GLM) machine learning algorithms. For this goal, due to the importance of various geo-environmental and soil properties in the evolution and creation of piping erosion, 18 variables were considered for modeling the piping erosion susceptibility in the Zarandieh watershed. A total of 152 points of piping erosion were recognized in the study area that…

Generalized linear modelGlobal and Planetary ChangeWatershedPiping010504 meteorology & atmospheric sciencesEcologybusiness.industryBayesian probabilityDecision tree010501 environmental sciencesMachine learningcomputer.software_genre01 natural sciencesRandom forestSupport vector machineErosionEnvironmental scienceArtificial intelligencebusinessAlgorithmcomputer0105 earth and related environmental sciencesNature and Landscape ConservationLand
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Semisupervised nonlinear feature extraction for image classification

2012

Feature extraction is of paramount importance for an accurate classification of remote sensing images. Techniques based on data transformations are widely used in this context. However, linear feature extraction algorithms, such as the principal component analysis and partial least squares, can address this problem in a suboptimal way because the data relations are often nonlinear. Kernel methods may alleviate this problem only when the structure of the data manifold is properly captured. However, this is difficult to achieve when small-size training sets are available. In these cases, exploiting the information contained in unlabeled samples together with the available training data can si…

Graph kernelComputer scienceFeature extractioncomputer.software_genreKernel principal component analysisk-nearest neighbors algorithmKernel (linear algebra)Polynomial kernelPartial least squares regressionLeast squares support vector machineCluster analysisTraining setContextual image classificationbusiness.industryDimensionality reductionPattern recognitionManifoldKernel methodKernel embedding of distributionsKernel (statistics)Principal component analysisRadial basis function kernelPrincipal component regressionData miningArtificial intelligencebusinesscomputer2012 IEEE International Geoscience and Remote Sensing Symposium
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Domain separation for efficient adaptive active learning

2011

This paper proposes a procedure aimed at efficiently adapting a classifier trained on a source image to a similar target image. The adaptation is carried out through active queries in the target domain following a strategy particularly designed for the case where class distributions have shifted between the two images. We first suggest a pre-selection of candidate pixels issued from the target image by keeping only those samples appearing to be lying in a region of the input space not yet covered by the existing ground truth (source domain pixels). Then, exploiting a classifier integrating instance weights, active queries are performed on the target image. As the inclusion to the training s…

Ground truthTraining setdomain separationPixelContextual image classificationComputer sciencebusiness.industrydomain adaptationComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISIONPattern recognitionTrAdaBoostSupport vector machineactive learningComputer visionArtificial intelligencebusinessClassifier (UML)image classification
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Texture analysis for infarcted myocardium detection on delayed enhancement MRI

2017

Detection of infarcted myocardium in the left ventricle is achieved with delayed enhancement magnetic resonance imaging (DE-MRI). However, manual segmentation is tedious and prone to variability. We studied three texture analysis methods (run-length matrix, co-occurrence matrix, and autoregressive model) in combination with histogram features to characterize the infarcted myocardium. We evaluated 10 patients with chronic infarction to select the most discriminative features and to train a support vector machine (SVM) classifier. The classifier model was then used to segment five human hearts from the STACOM DE-MRI challenge at MICCAI 2012. The Dice coefficient was used to compare the segmen…

Ground truthmedicine.diagnostic_testComputer sciencebusiness.industryFeature extractionPattern recognitionMagnetic resonance imagingImage segmentation030218 nuclear medicine & medical imagingSupport vector machine03 medical and health sciences0302 clinical medicineDiscriminative modelHistogrammedicineSegmentationArtificial intelligencebusiness030217 neurology & neurosurgery2017 IEEE 14th International Symposium on Biomedical Imaging (ISBI 2017)
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Assessment of the interpretability of data mining for the spatial modelling of water erosion using game theory

2021

Abstract This study undertook a comprehensive application of 15 data mining (DM) models, most of which have, thus far, not been commonly used in environmental sciences, to predict land susceptibility to water erosion hazard in the Kahorestan catchment, southern Iran. The DM models were BGLM, BGAM, Cforest, CITree, GAMS, LRSS, NCPQR, PLS, PLSGLM, QR, RLM, SGB, SVM, BCART and BTR. We identified 18 factors usually considered as key controls for water erosion, comprising 10 factors extracted from a digital elevation model (DEM), three indices extracted from Landsat 8 images, a sediment connectivity index (SCI) and three other intrinsic factors. Three indicators consisting of MAE, MBE, RMSE, and…

Hazard (logic)Hazard map010504 meteorology & atmospheric sciencesMean squared error04 agricultural and veterinary sciencesCatchment managementcomputer.software_genre01 natural sciencesShapley additive explanationsSupport vector machineErosionTopological index040103 agronomy & agricultureFeature (machine learning)Permutation feature importance measure0401 agriculture forestry and fisheriesSpatial mappingData miningDigital elevation modelGame theorycomputer0105 earth and related environmental sciencesEarth-Surface ProcessesMathematicsInterpretability
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Comparative Study of Several Machine Learning Algorithms for Classification of Unifloral Honeys

2021

Unifloral honeys are highly demanded by honey consumers, especially in Europe. To ensure that a honey belongs to a very appreciated botanical class, the classical methodology is palynological analysis to identify and count pollen grains. Highly trained personnel are needed to perform this task, which complicates the characterization of honey botanical origins. Organoleptic assessment of honey by expert personnel helps to confirm such classification. In this study, the ability of different machine learning (ML) algorithms to correctly classify seven types of Spanish honeys of single botanical origins (rosemary, citrus, lavender, sunflower, eucalyptus, heather and forest honeydew) was investi…

Health (social science)OrganolepticPlant ScienceTP1-1185Machine learningcomputer.software_genre01 natural sciencesHealth Professions (miscellaneous)MicrobiologyArticle0404 agricultural biotechnologyPartial least squares regressionMathematicsAliments Consumbotanical originArtificial neural networkbusiness.industryIntel·ligència artificialChemical technology010401 analytical chemistryphysicochemical parameters04 agricultural and veterinary sciencesLinear discriminant analysis040401 food science0104 chemical sciencesRandom forestSupport vector machineTree (data structure)machine learningclassificationTest setArtificial intelligencebusinessApiculturaAlgorithmcomputerunifloral honeysFood ScienceFoods
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Nonlinear Dynamics Techniques for the Detection of the Brain Areas Using MER Signals

2008

A methodology for identifying brain areas from the brain MER signals (microelectrode recordings) is presented, which is based on a nonlinear feature set. We propose nonlinear dynamics measures such as correlation dimension, Hurst exponent and the largest Lyapunov exponent to characterize the dynamic structure. The MER records belong to the Polytechnical University of Valencia, 24 records for each zone (black substance, thalamus, subthalamus nucleus and uncertain area). The detection of each area using characteristics derived from complexity analysis was obtained through a classifier (support vector machine). The joint information between areas is remarkable and the best accuracy result was …

Hurst exponentCorrelation dimensionbusiness.industryPattern recognitionLyapunov exponentMachine learningcomputer.software_genreSupport vector machineNonlinear systemsymbols.namesakeBlack substancesymbolsData pre-processingArtificial intelligencebusinesscomputerClassifier (UML)Mathematics2008 International Conference on BioMedical Engineering and Informatics
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