Search results for " image processing."

showing 10 items of 2265 documents

Language Detection and Tracking in Multilingual Documents Using Weak Estimators

2010

Published version of an article from the book: Structural, Syntactic, and Statistical Pattern Recognition . The original publication is available at Spingerlink. http://dx.doi.org/DOI: 10.1007/978-3-642-14980-1_59 This paper deals with the extremely complicated problem of language detection and tracking in real-life electronic (for example, in Word-of-Mouth (WoM)) applications, where various segments of the text are written in different languages. The difficulties in solving the problem are many-fold. First of all, the analyst has no knowledge of when one language stops and when the next starts. Further, the features which one uses for any one language (for example, the n-grams) will not be…

Language identificationComputer sciencebusiness.industry05 social sciencesEstimator02 engineering and technologyVariety (linguistics)computer.software_genre0502 economics and business0202 electrical engineering electronic engineering information engineering020201 artificial intelligence & image processingArtificial intelligenceTracking (education)businessEstimation methodscomputer050203 business & managementNatural language processing
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An Interactive Demonstration of Collaborative VR for Laparoscopic Liver Surgery Training

2019

We introduce a collaborative virtual reality (VR) system for planning and simulation in laparoscopic liver surgery training. Patient image data is used for surgical model visualization and simulation. We developed two modes for training in laparoscopic procedures: exploration and surgery mode. Surgical joysticks are used in surgery mode to provide training for psychomotor skills and cooperation between a camera assistant and an experienced surgeon. Continuous feedback from our clinical partner comprised an important part of the development. Our evaluation showed that surgeons were positive about the usability and usefulness of the developed system. For further details, please refer to our f…

Laparoscopic surgeryLiver surgeryPsychomotor learning0209 industrial biotechnologymedicine.medical_specialtyComputer sciencebusiness.industrymedicine.medical_treatmentUsability02 engineering and technologyVisualization020901 industrial engineering & automation0202 electrical engineering electronic engineering information engineeringmedicine020201 artificial intelligence & image processingMedical physicsbusiness2019 IEEE International Conference on Artificial Intelligence and Virtual Reality (AIVR)
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Leader election and local identifiers for three‐dimensional programmable matter

2020

International audience; In this paper, we present two deterministic leader election algorithms for programmable matter on the face-centered cubic grid. The face-centered cubic grid is a 3-dimensional 12-regular infinite grid that represents an optimal way to pack spheres (i.e., spherical particles or modules in the context of the programmable matter) in the 3-dimensional space. While the first leader election algorithm requires a strong hypothesis about the initial configuration of the particles and no hypothesis on the system configurations that the particles are forming, the second one requires fewer hypothesis about the initial configuration of the particles but does not work for all pos…

Leader electionComputer Networks and CommunicationsComputer science[INFO.INFO-DS]Computer Science [cs]/Data Structures and Algorithms [cs.DS]0102 computer and information sciences02 engineering and technology[INFO.INFO-DM]Computer Science [cs]/Discrete Mathematics [cs.DM][INFO] Computer Science [cs]Computer securitycomputer.software_genre01 natural sciencesComputer Science ApplicationsTheoretical Computer ScienceIdentifierProgrammable matter[INFO.INFO-NI]Computer Science [cs]/Networking and Internet Architecture [cs.NI]Computational Theory and Mathematics010201 computation theory & mathematics0202 electrical engineering electronic engineering information engineering020201 artificial intelligence & image processingcomputerSoftware
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Vine leaf roughness estimation by image processing

2013

International audience; The application of plant protection product has an important role in agricultural production processes. With current pesticides management, a huge amount of them are applied to worldwide orchards. In precision spraying, spray application efficiency depends on the pesticide application method, the phytosanitary product as well as the leaf surface properties. For environmental and economic reasons, the global trend is to reduce the pesticide application rate of the few approved active substances. Under these constraints, one of the challenges is to improve the efficiency of pesticide application. Different parameters can influence pesticide application such as nozzle t…

Leaf surface roughness[ INFO.INFO-TS ] Computer Science [cs]/Signal and Image Processing[INFO.INFO-TS] Computer Science [cs]/Signal and Image Processing[SDE.IE]Environmental Sciences/Environmental EngineeringKernel Discriminant AnalysisNeural Network.Neural Network[ SPI.SIGNAL ] Engineering Sciences [physics]/Signal and Image processing[ SDE.IE ] Environmental Sciences/Environmental EngineeringGeneralized Fourier Descriptor[INFO.INFO-TS]Computer Science [cs]/Signal and Image Processing[SDE.IE] Environmental Sciences/Environmental EngineeringTexture[SPI.SIGNAL]Engineering Sciences [physics]/Signal and Image processing[SPI.SIGNAL] Engineering Sciences [physics]/Signal and Image processing
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A Scheme for Continuous Input to the Tsetlin Machine with Applications to Forecasting Disease Outbreaks

2019

In this paper, we apply a new promising tool for pattern classification, namely, the Tsetlin Machine (TM), to the field of disease forecasting. The TM is interpretable because it is based on manipulating expressions in propositional logic, leveraging a large team of Tsetlin Automata (TA). Apart from being interpretable, this approach is attractive due to its low computational cost and its capacity to handle noise. To attack the problem of forecasting, we introduce a preprocessing method that extends the TM so that it can handle continuous input. Briefly stated, we convert continuous input into a binary representation based on thresholding. The resulting extended TM is evaluated and analyzed…

Learning automataArtificial neural networkComputer scienceDecision tree02 engineering and technologycomputer.software_genreThresholdingField (computer science)020202 computer hardware & architectureAutomatonSupport vector machine0202 electrical engineering electronic engineering information engineeringPreprocessor020201 artificial intelligence & image processingData miningcomputer
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A formal proof of the e-optimality of discretized pursuit algorithms

2015

Learning Automata (LA) can be reckoned to be the founding algorithms on which the field of Reinforcement Learning has been built. Among the families of LA, Estimator Algorithms (EAs) are certainly the fastest, and of these, the family of discretized algorithms are proven to converge even faster than their continuous counterparts. However, it has recently been reported that the previous proofs for ??-optimality for all the reported algorithms for the past three decades have been flawed. We applaud the researchers who discovered this flaw, and who further proceeded to rectify the proof for the Continuous Pursuit Algorithm (CPA). The latter proof examines the monotonicity property of the proba…

Learning automataDiscretizationInequalityBasis (linear algebra)Computer sciencemedia_common.quotation_subjectField (mathematics)Monotonic function02 engineering and technologyMathematical proofFormal proof020202 computer hardware & architectureAlgebraArtificial Intelligence0202 electrical engineering electronic engineering information engineeringReinforcement learning020201 artificial intelligence & image processingAlgorithmmedia_common
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Stochastic discretized learning-based weak estimation: a novel estimation method for non-stationary environments

2016

The task of designing estimators that are able to track time-varying distributions has found promising applications in many real-life problems.Existing approaches resort to sliding windows that track changes by discarding old observations. In this paper, we report a novel estimator referred to as the Stochastic Discretized Weak Estimator (SDWE), that is based on the principles of discretized Learning Automata (LA). In brief, the estimator is able to estimate the parameters of a time varying binomial distribution using finite memory. The estimator tracks changes in the distribution by operating a controlled random walk in a discretized probability space. The steps of the estimator are discre…

Learning automataEstimator020206 networking & telecommunications02 engineering and technologyBinomial distributionUnivariate distributionEfficient estimatorArtificial IntelligenceSignal Processing0202 electrical engineering electronic engineering information engineering020201 artificial intelligence & image processingMultinomial distributionComputer Vision and Pattern RecognitionMinimax estimatorAlgorithmSoftwareInvariant estimatorMathematicsPattern Recognition
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Distributed learning automata for solving a classification task

2016

In this paper, we propose a novel classifier in two-dimensional feature spaces based on the theory of Learning Automata (LA). The essence of our scheme is to search for a separator in the feature space by imposing a LA based random walk in a grid system. To each node in the gird we attach an LA, whose actions are the choice of the edges forming the separator. The walk is self-enclosing, i.e, a new random walk is started whenever the walker returns to starting node forming a closed classification path yielding a many edged polygon. In our approach, the different LA attached at the different nodes search for a polygon that best encircles and separates each class. Based on the obtained polygon…

Learning automataFeature vector020206 networking & telecommunications02 engineering and technologySupport vector machinesymbols.namesakeKernel methodKernel (statistics)PolygonRadial basis function kernel0202 electrical engineering electronic engineering information engineeringGaussian functionsymbols020201 artificial intelligence & image processingAlgorithmMathematics2016 IEEE Congress on Evolutionary Computation (CEC)
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Scheduling Domestic Shiftable Loads in Smart Grids: A Learning Automata-Based Scheme

2017

In this paper, we consider the problem of scheduling shiftable loads, over multiple users, in smart grids. We approach the problem, which is becoming increasingly pertinent in our present energy-thirsty society, using a novel distributed game-theoretic framework. From a modeling perspective, the distributed scheduling problem is formulated as a game, and in particular, a so-called “Potential” game. This game has at least one pure strategy Nash Equilibrium (NE), and we demonstrate that the NE point is a global optimal point. The solution that we propose, which is the pioneering solution that incorporates the theory of Learning Automata (LA), permits the total supplied loads to approach the p…

Learning automataJob shop schedulingComputer scienceDistributed computing02 engineering and technology010501 environmental sciences01 natural sciencesSubnetScheduling (computing)symbols.namesakeSmart gridStrategyNash equilibrium0202 electrical engineering electronic engineering information engineeringsymbols020201 artificial intelligence & image processingPotential game0105 earth and related environmental sciences
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Enabling XCSF to cope with dynamic environments via an adaptive error threshold

2020

The learning classifier system XCSF is a variant of XCS employed for function approximation. Although XCSF is a promising candidate for deployment in autonomous systems, its parameter dependability imposes a significant hurdle, as a-priori parameter optimization is not feasible for complex and changing environmental conditions. One of the most important parameters is the error threshold, which can be interpreted as a target bound on the approximation error and has to be set according to the approximated function. To enable XCSF to reliably approximate functions that change during runtime, we propose the use of an error threshold, which is adapted at run-time based on the currently achieved …

Learning classifier systemComputer scienceError thresholdComputer Science::Neural and Evolutionary Computation0102 computer and information sciences02 engineering and technologyFunction (mathematics)01 natural sciencesSet (abstract data type)Function approximation010201 computation theory & mathematicsApproximation error0202 electrical engineering electronic engineering information engineering020201 artificial intelligence & image processingAlgorithmProceedings of the 2020 Genetic and Evolutionary Computation Conference Companion
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