Search results for "Mach"

showing 10 items of 3360 documents

Noise assisted image processing by ensembles of R-SETs

2017

AbstractWe study how noise can assist the processing of an image in a resistance-single electron transistor (R-SET) model. The image is an 8-bit black and white picture. Every grey level is codified linearly into a sub-threshold input potential applied for a prescribed time window to an ensemble of R-SETs that transforms it into a spiking frequency. The addition of a background white noise potential of high amplitude permits the ensemble to process the image by means of the stochastic resonance phenomenon. Aside from the positive aspects, we analyse the negative impact of using noise and how we can minimize it using redundancy and a longer measuring time. The results are compared with the c…

Computer Networks and CommunicationsComputer scienceStochastic resonancebusiness.industryImage processing02 engineering and technologyWhite noise021001 nanoscience & nanotechnologyMachine learningcomputer.software_genre03 medical and health sciencesNoise0302 clinical medicineRedundancy (information theory)Dark-frame subtractionImage noiseMedian filterArtificial intelligence0210 nano-technologybusinesscomputerAlgorithm030217 neurology & neurosurgerySoftwareInternational Journal of Parallel, Emergent and Distributed Systems
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Perceptual adaptive insensitivity for support vector machine image coding.

2005

Support vector machine (SVM) learning has been recently proposed for image compression in the frequency domain using a constant epsilon-insensitivity zone by Robinson and Kecman. However, according to the statistical properties of natural images and the properties of human perception, a constant insensitivity makes sense in the spatial domain but it is certainly not a good option in a frequency domain. In fact, in their approach, they made a fixed low-pass assumption as the number of discrete cosine transform (DCT) coefficients to be used in the training was limited. This paper extends the work of Robinson and Kecman by proposing the use of adaptive insensitivity SVMs [2] for image coding u…

Computer Networks and CommunicationsImage processingPattern Recognition AutomatedArtificial IntelligenceDistortionImage Interpretation Computer-AssistedDiscrete cosine transformComputer SimulationMathematicsModels StatisticalArtificial neural networkbusiness.industryPattern recognitionSignal Processing Computer-AssistedGeneral MedicineData CompressionComputer Science ApplicationsSupport vector machineFrequency domainVisual PerceptionA priori and a posterioriArtificial intelligencebusinessSoftwareAlgorithmsImage compressionIEEE transactions on neural networks
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Dual-model approach for safety-critical embedded systems

2020

Abstract The paper presents the design of digital controllers based on two models: the Petri net model, and the UML state machine. These two approaches differ in many aspects of design flow, such as conceptual modelling, and analysis and synthesis. Each of these approaches can be used individually to design an efficient logic controller, and such solutions are well-known, but their interoperability can contribute to a much better understanding of logic controller design and validation. This is especially important in the case of safety- or life-critical embedded systems, and apart from this, a dual-model controller design can make up redundant system increasing its reliability.

Computer Networks and Communicationsbusiness.industryDual modelComputer scienceReliability (computer networking)020208 electrical & electronic engineeringInteroperabilityDesign flow02 engineering and technologyPetri net020202 computer hardware & architectureUML state machineArtificial IntelligenceHardware and ArchitectureControl theoryEmbedded system0202 electrical engineering electronic engineering information engineeringbusinessSoftwareMicroprocessors and Microsystems
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Pain fingerprinting using multimodal sensing: pilot study

2021

Abstract Pain is a complex phenomenon, the experience of which varies widely across individuals. At worst, chronic pain can lead to anxiety and depression. Cost-effective strategies are urgently needed to improve the treatment of pain, and thus we propose a novel home-based pain measurement system for the longitudinal monitoring of pain experience and variation in different patients with chronic low back pain. The autonomous nervous system and audio-visual features are analyzed from heart rate signals, voice characteristics and facial expressions using a unique measurement protocol. Self-reporting is utilized for the follow-up of changes in pain intensity, induced by well-designed physical …

Computer Networks and Communicationskipusignaalianalyysimonitorointiaudio analysiskivunhoitomachine learningkoneoppiminenHardware and Architectureheart rateMedia Technologyselkäkrooninen kipuilmeetEEGsykemittaritlow back painfacial expressionelectroencephalographySoftwareMultimedia Tools and Applications
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Predicting overweight and obesity in later life from childhood data: A review of predictive modeling approaches

2019

Background: Overweight and obesity are an increasing phenomenon worldwide. Predicting future overweight or obesity early in the childhood reliably could enable a successful intervention by experts. While a lot of research has been done using explanatory modeling methods, capability of machine learning, and predictive modeling, in particular, remain mainly unexplored. In predictive modeling models are validated with previously unseen examples, giving a more accurate estimate of their performance and generalization ability in real-life scenarios. Objective: To find and review existing overweight or obesity research from the perspective of employing childhood data and predictive modeling metho…

Computer Science - Machine LearningStatistics - Machine LearningStatistics - Applications
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Computational Complexity and Communication: Coordination in Two-Player Games

2002

The main contribution of this paper is the development and application of cryptographic techniques to the design of strategic communication mechanisms. One of the main assumptions in cryptography is the limitation of the computational power available to agents. We introduce the concept of limited computational complexity, and by borrowing results from cryptography, we construct a communication protocol to establish that every correlated equilibrium of a two-person game with rational payoffs can be achieved by means of computationally restricted unmediated communication. This result provides an example in game theory where limitations of computational abilities of players are helpful in solv…

Computer Science::Computer Science and Game TheoryEconomics and EconometricsCorrelated equilibriumTheoretical computer scienceComputational complexity theorybusiness.industryCryptographyComputational resourceTuring machinesymbols.namesakeNash equilibriumsymbolsbusinessCommunications protocolGame theoryAlgorithmMathematicsEconometrica
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Solving dynamic bandit problems and decentralized games using the kalman bayesian learning automaton

2010

Masteroppgave i informasjons- og kommunikasjonsteknologi 2010 – Universitetet i Agder, Grimstad Multi-armed bandit problems have been subject to a lot of research in computer science because it captures the fundamental dilemma of exploration versus exploitation in reinforcement learning. The goal of a bandit problem is to determine the optimal balance between the gain of new information (exploration) and immediate reward maximization (exploitation). Dynamic bandit problems are especially challenging because they involve changing environments. Combined with game theory, where one analyze the behavior of agents in multi-agent settings, bandit problems serves as a framework for benchmarking th…

Computer Science::Machine Learning
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Support vector machines in engineering: an overview

2014

This paper provides an overview of the support vector machine SVM methodology and its applicability to real-world engineering problems. Specifically, the aim of this study is to review the current state of the SVM technique, and to show some of its latest successful results in real-world problems present in different engineering fields. The paper starts by reviewing the main basic concepts of SVMs and kernel methods. Kernel theory, SVMs, support vector regression SVR, and SVM in signal processing and hybridization of SVMs with meta-heuristics are fully described in the first part of this paper. The adoption of SVMs in engineering is nowadays a fact. As we illustrate in this paper, SVMs can …

Computer Science::Machine LearningBeamformingData processingSignal processingGeneral Computer ScienceContextual image classificationComputer sciencebusiness.industryMachine learningcomputer.software_genreSupport vector machineComputingMethodologies_PATTERNRECOGNITIONKernel methodState (computer science)Artificial intelligenceData miningbusinesscomputerDecoding methodsWiley Interdisciplinary Reviews: Data Mining and Knowledge Discovery
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Memory limited inductive inference machines

1992

The traditional model of learning in the limit is restricted so as to allow the learning machines only a fixed, finite amount of memory to store input and other data. A class of recursive functions is presented that cannot be learned deterministically by any such machine, but can be learned by a memory limited probabilistic leaning machine with probability 1.

Computer Science::Machine LearningClass (set theory)Computer scienceInductive biasProbabilistic logicRecursive functionsLimit (mathematics)Inductive reasoningAlgorithm
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Organized Learning Models (Pursuer Control Optimisation)

1982

Abstract The concept of Organized Learning is defined, and some random models are presented. For Not Transferable Learning, it is necessary to start from an instantaneous learning; by a discrete way, we must form a stochastic model considering the probability of each path; with a continue aproximation, we can study the evolution of the internal state through to consider the relative and absolute probabilities, by means of differential equations systems. For Transferable Learning, the instantaneous learning give us directly the System evolution. So, the Algoritmes for the different models are compared.

Computer Science::Machine LearningComputational learning theoryWake-sleep algorithmActive learning (machine learning)business.industryComputer scienceCompetitive learningAlgorithmic learning theoryStability (learning theory)Online machine learningPursuerArtificial intelligencebusinessIFAC Proceedings Volumes
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