Search results for "NEURAL NETWORK"

showing 10 items of 1385 documents

P2PRealm - Peer-to-Peer Network Simulator

2006

Peer-to-peer realm (P2PRealm) is an efficient peer-to-peer network simulator for studying algorithms based on neural networks. In contrast to many simulators, which emphasize on detailed network simulation, the speed of simulation in P2PRealm is essential, because neural networks require a time consuming training phase. Efficiency has been obtained by optimizing training loops inside the simulator, using Java native interface (JNI) as well as distributing the simulator to hundreds of workstations using the P2PDisCo platform. In this paper we describe the architecture of P2PRealm and its input/output interfaces. Also, we present the mechanisms used for internally optimizing the implementatio…

JavaComputer architecture simulatorWorkstationArtificial neural networkComputer scienceJava Native InterfaceDistributed computingPeer-to-peercomputer.software_genreNetwork simulationlaw.inventionvertaisverkkosimulaattorilawcomputerPower system simulator for engineeringcomputer.programming_language2006 11th Intenational Workshop on Computer-Aided Modeling, Analysis and Design of Communication Links and Networks
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Improving Karhunen-Loeve based transform coding by using square isometries

2002

We propose, for an image compression system based on the Karhunen-Loeve transform implemented by neural networks, to take into consideration the 8 square isometries of an image block. The proper isometry applied puts the 8*8 square image block in a standard position, before applying the image block as input to the neural network architecture. The standard position is defined based on the variance of its four 4*4 sub-blocks (quadro partitioned) and brings the sub-block having the greatest variance in a specific corner and in another specific adjoining corner the sub-block having the second variance (if this is not possible the third is considered). The use of this "preprocessing" phase was e…

Karhunen–Loève theoremTheoretical computer scienceArtificial neural networkCompression (functional analysis)ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISIONAlgorithmSquare (algebra)Transform codingData compressionMathematicsBlock (data storage)Image compression
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Lung CT Image Registration through Landmark-constrained Learning with Convolutional Neural Network

2020

Accurate registration of lung computed tomography (CT) image is a significant task in thorax image analysis. Recently deep learning-based medical image registration methods develop fast and achieve promising performance on accuracy and speed. However, most of them learned the deformation field through intensity similarity but ignored the importance of aligning anatomical landmarks (e.g., the branch points of airway and vessels). Accurate alignment of anatomical landmarks is essential for obtaining anatomically correct registration. In this work, we propose landmark constrained learning with a convolutional neural network (CNN) for lung CT registration. Experimental results of 40 lung 3D CT …

LandmarkSimilarity (geometry)medicine.diagnostic_testArtificial neural networkComputer sciencebusiness.industryDeep learningImage registrationComputed tomographyThoraxConvolutional neural network030218 nuclear medicine & medical imagingEuclidean distance03 medical and health sciences0302 clinical medicinemedicineComputer visionNeural Networks ComputerTomographyArtificial intelligenceTomography X-Ray ComputedbusinessLung030217 neurology & neurosurgery2020 42nd Annual International Conference of the IEEE Engineering in Medicine & Biology Society (EMBC)
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Multi-Path U-Net Architecture for Cell and Colony-Forming Unit Image Segmentation

2022

U-Net is the most cited and widely-used deep learning model for biomedical image segmentation. In this paper, we propose a new enhanced version of a ubiquitous U-Net architecture, which improves upon the original one in terms of generalization capabilities, while addressing several immanent shortcomings, such as constrained resolution and non-resilient receptive fields of the main pathway. Our novel multi-path architecture introduces a notion of an individual receptive field pathway, which is merged with other pathways at the bottom-most layer by concatenation and subsequent application of Layer Normalization and Spatial Dropout, which can improve generalization performance for small datase…

Layer Normalizationneural networkChemical technologyStem CellsTP1-1185U-NetBiochemistryencoder–decoderAtomic and Molecular Physics and OpticsAnalytical Chemistryskip-connectionsImage Processing Computer-AssistedNeural Networks ComputerU-Net; skip-connections; neural network; encoder–decoder; Layer NormalizationElectrical and Electronic EngineeringInstrumentationSensors; Volume 22; Issue 3; Pages: 990
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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 Benchmarking Platform for Atomic Learned Indexes

2022

This repository provides a benchmarking platform to evaluate how Feed Forward Neural Networks can be effectively used as index data structures.

Learned IndicesNeural NetworksSettore INF/01 - Informatica
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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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Identification of the most informative wavelengths for non-invasive melanoma diagnostics in spectral region from 450 to 950 nm

2020

In this study 300 skin lesion (including 32 skin melanomas) multispectral data cubes were analyzed. The multi-step and single step machine learning approaches were analyzed to find the wavebands that provide the most information that helps discriminate skin melanoma from other benign pigmented lesions. The multi-step machine learning approach assumed training several models but proved itself to be ineffective. The reason for that is a necessity to train a segmentation model on a very small dataset and utilization of standard machine learning classifier which have shown poor classification performance. The single-step approach is based on a deep learning neural network. We have conducted 260…

Learning classifier systemArtificial neural networkComputer sciencebusiness.industryDeep learningNon invasiveMultispectral imageSegmentationPattern recognitionArtificial intelligencebusinessConvolutional neural networkClassifier (UML)Saratov Fall Meeting 2019: Computations and Data Analysis: from Nanoscale Tools to Brain Functions
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Semi-Supervised Classification Method for Hyperspectral Remote Sensing Images

2004

A new approach to the classification of hyperspectral images is proposed. The main problem with supervised methods is that the learning process heavily depends on the quality of the training data set. In remote sensing, the training set is useful only for simultaneous images or for images with the same classes taken under the same conditions; and, even worse, the training set is frequently not available. On the other hand, unsupervised methods are not sensitive to the number of labelled samples since they work on the whole image. Nevertheless, relationship between clusters and classes is not ensured. In this context, we propose a combined strategy of supervised and unsupervised learning met…

Learning vector quantizationTraining setArtificial neural networkComputer sciencebusiness.industryHyperspectral imagingPattern recognitionMultispectral pattern recognitionRobustness (computer science)Unsupervised learningArtificial intelligencebusinessHyMapRemote sensing
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The Ultimate Fate of Supercooled Liquids

2010

In recent years it has become widely accepted that a dynamical length scale {\xi}_{\alpha} plays an important role in supercooled liquids near the glass transition. We examine the implications of the interplay between the growing {\xi}_{\alpha} and the size of the crystal nucleus, {\xi}_M, which shrinks on cooling. We argue that at low temperatures where {\xi}_{\alpha} > {\xi}_M a new crystallization mechanism emerges enabling rapid development of a large scale web of sparsely connected crystallinity. Though we predict this web percolates the system at too low a temperature to be easily seen in the laboratory, there are noticeable residual effects near the glass transition that can account …

Length scaleFOS: Physical sciencesCrystal growth02 engineering and technologyCondensed Matter - Soft Condensed Matter010402 general chemistry01 natural sciencesCondensed Matter::Disordered Systems and Neural NetworksArticlelaw.inventionCrystalCrystallinitylawPhysical and Theoretical ChemistryCrystallizationSupercoolingCondensed Matter - Statistical MechanicsPhysicsCondensed matter physicsStatistical Mechanics (cond-mat.stat-mech)Disordered Systems and Neural Networks (cond-mat.dis-nn)Condensed Matter - Disordered Systems and Neural Networks021001 nanoscience & nanotechnology0104 chemical sciencesCondensed Matter::Soft Condensed MatterQuantum TheoryThermodynamicsSoft Condensed Matter (cond-mat.soft)0210 nano-technologyGlass transitionCrystallization
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