Search results for "Initialization"

showing 5 items of 55 documents

Cognitive intelligent sensory system for vision-based quality control

2003

This paper presents an original approach for a vision-based quality control system, built around a cognitive intelligent sensory system. The principle of the approach relies on two steps. First, a so-called initialization phase leads to structural knowledge on image acquisition conditions, type of illumination sources, etc. Second, the image is iteratively evaluated using this knowledge and complementary information (e.g., CAD models, and tolerance information). Finally, the information describing the quality of the piece under evaluation is extracted. A further aim of the approach is to enable building strategies that determine for instance the “next best view” required for completing the …

business.industryComputer scienceInitializationCADSolid modeling3D modelingcomputer.software_genreSoftwareKnowledge baseControl systemComputer Aided DesignComputer visionArtificial intelligenceData miningbusinesscomputerSPIE Proceedings
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On sampling error in evolutionary algorithms

2021

The initial population in evolutionary algorithms (EAs) should form a representative sample of all possible solutions (the search space). While large populations accurately approximate the distribution of possible solutions, small populations tend to incorporate a sampling error. A low sampling error at initialization is necessary (but not sufficient) for a reliable search since a low sampling error reduces the overall random variations in a random sample. For this reason, we have recently presented a model to determine a minimum initial population size so that the sampling error is lower than a threshold, given a confidence level. Our model allows practitioners of, for example, genetic pro…

education.field_of_studyDistribution (mathematics)Population sizePopulationStatisticsEvolutionary algorithmInitializationSmall population sizeGenetic programmingeducationConfidence intervalMathematicsProceedings of the Genetic and Evolutionary Computation Conference Companion
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Initialization of the JYFLTRAP system

2013

The IGISOL facility has been moved into a new location at the acceleration laboratory of the University of Jyväskylä. The superconducting magnet that is part of the JYFLTRAP system has been re-energized. In this thesis a commissioning of the Penning trap apparatus JYFLTRAP is described. This involves a precise alignment of the structure of the trap along field lines of strong solenoid field. The alignment was completed successfully with a special alignment device. In addition, some improvements were done for the Penning traps and transfer line from RFQ cooler, and a buncher to the injection of Penning traps was built during this project. Jyväskylän yliopiston IGISOL-ryhmän laboratorio on mu…

initializationJYFLTRAPalignmentlaboratoriotkäyttöönotto
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Improving Scalable K-Means++

2021

Two new initialization methods for K-means clustering are proposed. Both proposals are based on applying a divide-and-conquer approach for the K-means‖ type of an initialization strategy. The second proposal also uses multiple lower-dimensional subspaces produced by the random projection method for the initialization. The proposed methods are scalable and can be run in parallel, which make them suitable for initializing large-scale problems. In the experiments, comparison of the proposed methods to the K-means++ and K-means‖ methods is conducted using an extensive set of reference and synthetic large-scale datasets. Concerning the latter, a novel high-dimensional clustering data generation …

random projectionlcsh:T55.4-60.8K-means++algoritmitclustering initializationalgoritmiikkalcsh:Industrial engineering. Management engineeringklusterianalyysilcsh:Electronic computers. Computer sciencetiedonlouhintaK-means‖lcsh:QA75.5-76.95
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Improvements and applications of the elements of prototype-based clustering

2018

Clustering or cluster analysis is an essential part of data mining, machine learning, and pattern recognition. The most popularly applied clustering methods are partitioning-based or prototype-based methods. Prototype-based clustering methods usually have easy implementability and good scalability. These methods, such as K-means clustering, have been used for different applications in various fields. On the other hand, prototype-based clustering methods are typically sensitive to initialization, and the selection of the number of clusters for knowledge discovery purposes is not straightforward. In the era of big data, in high-velocity, ever-growing datasets, which can also be erroneous, outl…

random projectionparallel computingknowledge discoveryclustering initializationminimal learning machinedata miningprototype-based clusteringmachine learningkoneoppiminenbig datarinnakkaiskäsittelyklusterianalyysitiedonlouhintarobust clusteringK-means
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