Search results for "learning."

showing 10 items of 6527 documents

The Use of Artificial Intelligence in Disaster Management - A Systematic Literature Review

2019

Whenever a disaster occurs, users in social media, sensors, cameras, satellites, and the like generate vast amounts of data. Emergency responders and victims use this data for situational awareness, decision-making, and safe evacuations. However, making sense of the generated information under time-bound situations is a challenging task as the amount of data can be significant, and there is a need for intelligent systems to analyze, process, and visualize it. With recent advancements in Artificial Intelligence (AI), numerous researchers have begun exploring AI, machine learning (ML), and deep learning (DL) techniques for big data analytics in managing disasters efficiently. This paper adopt…

Artificial neural networkbusiness.industryComputer scienceDeep learningBig dataIntelligent decision support system020206 networking & telecommunications02 engineering and technologyLatent Dirichlet allocationConvolutional neural networkSupport vector machinesymbols.namesakeNaive Bayes classifierComputingMethodologies_PATTERNRECOGNITION0202 electrical engineering electronic engineering information engineeringsymbols020201 artificial intelligence & image processingArtificial intelligencebusiness2019 International Conference on Information and Communication Technologies for Disaster Management (ICT-DM)
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Combining Auto-Encoder with LSTM for WiFi-Based Fingerprint Positioning

2021

Although indoor positioning has long been investigated by various means, its accuracy remains concern. Several recent studies have applied machine learning algorithms to explore wireless fidelity (WiFi)-based positioning. In this paper, we propose a novel deep learning model which concatenates an auto-encoder with a long short term memory (LSTM) network for the purpose of WiFi fingerprint positioning. We first employ an auto-encoder to extract representative latent codes of fingerprints. Such an extraction is proven to be more reliable than simply using a deep neural network to extract representative features since a latent code can be reverted back to its original input. Then, a sequence o…

Artificial neural networkbusiness.industryComputer scienceDeep learningFeature extractionFingerprint (computing)WirelessPattern recognitionArtificial intelligenceFingerprint recognitionbusinessAutoencoderData modeling2021 International Conference on Computer Communications and Networks (ICCCN)
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Semi-Supervised Support Vector Biophysical Parameter Estimation

2008

Two kernel-based methods for semi-supervised regression are presented. The methods rely on building a graph or hypergraph Laplacian with both the labeled and unlabeled data, which is further used to deform the training kernel matrix. The deformed kernel is then used for support vector regression (SVR). The semi-supervised SVR methods are sucessfully tested in LAI estimation and ocean chlorophyll concentration prediction from remotely sensed images.

Artificial neural networkbusiness.industryComputer scienceEstimation theoryPattern recognitionRegression analysisSupport vector machineStatistics::Machine LearningKernel (linear algebra)Kernel methodVariable kernel density estimationPolynomial kernelRadial basis function kernelArtificial intelligencebusinessLaplace operatorIGARSS 2008 - 2008 IEEE International Geoscience and Remote Sensing Symposium
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Connectionist models of face processing: A survey

1994

Abstract Connectionist models of face recognition, identification, and categorization have appeared recently in several disciplines, including psychology, computer science, and engineering. We present a review of these models with the goal of complementing a recent survey by Samal and Iyengar [Pattern Recognition25, 65–77 (1992)] of nonconnectionist approaches to the problem of the automatic face recognition. We concentrate on models that use linear autoassociative networks, nonlinear autoassociative (or compression) and/or heteroassociative backpropagation networks. One advantage of these models over some nonconnectionist approaches is that analyzable features emerge naturally from image-b…

Artificial neural networkbusiness.industryComputer scienceFeature selectionMachine learningcomputer.software_genreFacial recognition systemBackpropagationCategorizationConnectionismArtificial IntelligenceFace (geometry)Signal ProcessingPattern recognition (psychology)Computer Vision and Pattern RecognitionArtificial intelligencebusinesscomputerSoftwarePattern Recognition
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Prediction and qualitative analysis of sensory perceptions over temporal vectors using combination of artificial neural networks and fuzzy logic: Val…

2020

Artificial neural networkbusiness.industryComputer scienceGeneral Chemical Engineeringmedia_common.quotation_subjectSensory systemGeneral ChemistryMachine learningcomputer.software_genreFuzzy logicQualitative analysisPerceptionArtificial intelligencebusinesscomputerFood Sciencemedia_commonJournal of Food Processing and Preservation
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Automatic Identification of Watermarks and Watermarking Robustness Using Machine Learning Techniques

2021

The goal of this article is to propose a framework for automatic identification of watermarks from modified host images. The framework can be used with any watermark embedding/extraction system and is based on models built using machine learning (ML) techniques. Any supervised ML approach can be theoretically chosen. An important part of our framework consists in building a stand-alone module, independent of the watermarking system, for generating two types of watermarks datasets. The first type of datasets, that we will name artificially datasets, is generated from the original images by adding noise with an imposed maximum level of noise. The second type contains altered watermarked image…

Artificial neural networkbusiness.industryComputer scienceMachine learningcomputer.software_genreEnsemble learningSupport vector machineIdentification (information)Robustness (computer science)Computer Science::MultimediaNoise (video)Artificial intelligencebusinessHost (network)computerDigital watermarking
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Improving the Competency of Classifiers through Data Generation

2001

This paper describes a hybrid approach in which sub-symbolic neural networks and symbolic machine learning algorithms are grouped into an ensemble of classifiers. Initially each classifier determines which portion of the data it is most competent in. The competency information is used to generated new data that are used for further training and prediction. The application of this approach in a difficult to learn domain shows an increase in the predictive power, in terms of the accuracy and level of competency of both the ensemble and the component classifiers.

Artificial neural networkbusiness.industryComputer scienceTest data generationDecision tree learningDisjunctive normal formcomputer.software_genreMachine learningDomain (software engineering)ComputingMethodologies_PATTERNRECOGNITIONProblem domainComponent (UML)Classifier (linguistics)Data miningArtificial intelligencebusinesscomputer
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Neural network prediction in a system for optimizing simulations

2002

Neural networks have been widely used for both prediction and classification. Back-propagation is commonly used for training neural networks, although the limitations associated with this technique are well documented. Global search techniques such as simulated annealing, genetic algorithms and tabu search have also been used for this purpose. The developers of these training methods, however, have focused on accuracy rather than training speed in order to assess the merit of new proposals. While speed is not important in settings where training can be done off-line, the situation changes when the neural network must be trained and used on-line. This is the situation when a neural network i…

Artificial neural networkbusiness.industryComputer scienceTraining timeTraining (meteorology)Context (language use)Machine learningcomputer.software_genreTraining methodsIndustrial and Manufacturing EngineeringTabu searchSimulated annealingArtificial intelligencebusinesscomputer
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ConvLSTM Neural Networks for seismic event prediction in Chile

2021

Predicting seismic risk is a challenging task in order to avoid catastrophic effects. In this work, two models based on Convolutional Network (CNN) and Long Short Term Memory (LSTM) networks are proposed to predict the seismic risk in Chile. In particular, a ConvLSTM and a Multi-column ConvLSTM network are used for the prediction of the average number of seismic events greater than 2,8 magnitude on the Richter scale, in the Chilean regions of Coquimbo and Araucania between the years 2010 and 2017. For this model, the values of the intensity function estimated through an ETAS model and the accumulated displacement prior to a the seismic events are used as inputs. In particular, given the spa…

Artificial neural networkbusiness.industryDeep learningMagnitude (mathematics)Convolutional neural networkDisplacement (vector)law.inventionRichter magnitude scalelawArtificial intelligenceSeismic riskbusinessSeismologyGeologyEvent (probability theory)2021 IEEE XXVIII International Conference on Electronics, Electrical Engineering and Computing (INTERCON)
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An Encrypted Traffic Classification Framework Based on Convolutional Neural Networks and Stacked Autoencoders

2020

In recent years, deep learning-based encrypted traffic classification has proven to be effective; especially, using neural networks to extract features from raw traffic to classify encrypted traffic. However, most of the neural networks need a fixed-sized input, so that the raw traffic need to be trimmed. This will cause the loss of some information; for example, we do not know the number of packets in a session. To solve these problems, a framework, which implements both a convolutional neural network (CNN) and a stacked autoencoder (SAE), is proposed in this paper. This framework uses a CNN to extract high-level features from raw network traffic and uses an SAE to encode the 26 statistica…

Artificial neural networkbusiness.industryNetwork packetComputer scienceDeep learningFeature extraction020206 networking & telecommunicationsPattern recognition02 engineering and technologyEncryptionAutoencoderConvolutional neural networkTraffic classification0202 electrical engineering electronic engineering information engineering020201 artificial intelligence & image processingArtificial intelligencebusiness2020 IEEE 6th International Conference on Computer and Communications (ICCC)
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