Search results for "Scale-space segmentation"

showing 10 items of 46 documents

Image Segmentation by Deep Community Detection Approach

2017

International audience; To address the problem of segmenting an image into homogeneous communities this paper proposes an efficient algorithm to detect deep communities in the image by maximizing at each stage a new centrality measure, called the local Fiedler vector centrality (LFVC). This measure is associated with the sensitivity of algebraic connectivity to node removals. We show that a greedy node removal strategy, based on iterative maximization of LFVC, has bounded performance loss relative to the optimal, but intractable, combinatorial batch removal strategy. A remarkable feature of this method is the ability to segments the image automatically into homogeneous regions by maximizing…

Image segmentationAlgebraic connectivitybusiness.industrySegmentation-based object categorizationComputer scienceNode (networking)Complex networksScale-space segmentationLocal Fiedler vector centrality020206 networking & telecommunicationsPattern recognition02 engineering and technologyImage segmentation[INFO.INFO-NI]Computer Science [cs]/Networking and Internet Architecture [cs.NI]Removal strategyFeature (computer vision)0202 electrical engineering electronic engineering information engineeringDeep community detection020201 artificial intelligence & image processingSegmentationArtificial intelligencebusinessCentrality
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Gamma Knife treatment planning: MR brain tumor segmentation and volume measurement based on unsupervised Fuzzy C-Means clustering

2015

Nowadays, radiation treatment is beginning to intensively use MRI thanks to its greater ability to discriminate healthy and diseased soft-tissues. Leksell Gamma Knife® is a radio-surgical device, used to treat different brain lesions, which are often inaccessible for conventional surgery, such as benign or malignant tumors. Currently, the target to be treated with radiation therapy is contoured with slice-by-slice manual segmentation on MR datasets. This approach makes the segmentation procedure time consuming and operator-dependent. The repeatability of the tumor boundary delineation may be ensured only by using automatic or semiautomatic methods, supporting clinicians in the treatment pla…

Jaccard indexSimilarity (geometry)Computer scienceScale-space segmentationFuzzy logicunsupervised clusteringmagnetic resonance imagingSegmentationComputer visionmagnetic resonance imag- ingElectrical and Electronic EngineeringCluster analysisRadiation treatment planningSettore ING-INF/05 - Sistemi Di Elaborazione Delle InformazioniPixelbrain tumors; Gamma Knife treatment planning; magnetic resonance imaging; semi-automatic segmentation; unsupervised clusteringbusiness.industrybrain tumors Gamma Knife treatment planning magnetic resonance imaging semi-automatic segmentation unsupervised clusteringElectronic Optical and Magnetic Materialsbrain tumorsComputer Vision and Pattern RecognitionArtificial intelligencebusinesssemi-automatic segmentationSoftwarebrain tumorGamma Knife treatment planning
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A supervised learning framework of statistical shape and probability priors for automatic prostate segmentation in ultrasound images

2013

Prostate segmentation aids in prostate volume estimation, multi-modal image registration, and to create patient specific anatomical models for surgical planning and image guided biopsies. However, manual segmentation is time consuming and suffers from inter-and intra-observer variabilities. Low contrast images of trans rectal ultrasound and presence of imaging artifacts like speckle, micro-calcifications, and shadow regions hinder computer aided automatic or semi-automatic prostate segmentation. In this paper, we propose a prostate segmentation approach based on building multiple mean parametric models derived from principal component analysis of shape and posterior probabilities in a multi…

MaleComputer sciencePosterior probabilityScale-space segmentationImage registrationHealth InformaticsSensitivity and SpecificityPattern Recognition AutomatedArtificial IntelligenceImage Interpretation Computer-AssistedHumansRadiology Nuclear Medicine and imagingComputer visionSegmentationUltrasonographyRadiological and Ultrasound TechnologySegmentation-based object categorizationbusiness.industryProstateProstatic NeoplasmsReproducibility of ResultsPattern recognitionImage segmentationImage EnhancementComputer Graphics and Computer-Aided DesignSpectral clusteringActive appearance modelData Interpretation StatisticalComputer Vision and Pattern RecognitionArtificial intelligencebusinessAlgorithmsMedical Image Analysis
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Spectral clustering of shape and probability prior models for automatic prostate segmentation.

2013

Imaging artifacts in Transrectal Ultrasound (TRUS) images and inter-patient variations in prostate shape and size challenge computer-aided automatic or semi-automatic segmentation of the prostate. In this paper, we propose to use multiple mean parametric models derived from principal component analysis (PCA) of shape and posterior probability information to segment the prostate. In contrast to traditional statistical models of shape and intensity priors, we use posterior probability of the prostate region determined from random forest classification to build, initialize and propagate our model. Multiple mean models derived from spectral clustering of combined shape and appearance parameters…

MaleModels StatisticalComputer scienceSegmentation-based object categorizationbusiness.industryPosterior probabilityProstateScale-space segmentationReproducibility of ResultsPattern recognitionImage segmentationModels BiologicalSensitivity and SpecificitySpectral clusteringPattern Recognition AutomatedPoint distribution modelSubtraction TechniqueImage Interpretation Computer-AssistedHumansComputer visionSegmentationComputer SimulationArtificial intelligencebusinessUltrasonographyAnnual International Conference of the IEEE Engineering in Medicine and Biology Society. IEEE Engineering in Medicine and Biology Society. Annual International Conference
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Fuzzy Distributed Genetic Approaches for Image Segmentation

2010

This paper presents a new image segmentation algorithm (called FDGA-Seg) based on a combination of fuzzy logic, multiagent systems and genetic algorithms. We propose to use a fuzzy representation of the image site labels by introducing some imprecision in the gray tones values. The distributivity of FDGA-Seg comes from the fact that it is designed around a MultiAgent System (MAS) working with two different architectures based on the master-slave and island models. A rich set of experimental segmentation results given by FDGA-Seg is discussed and compared to the ICM results in the last section.

Markov random fieldGeneral Computer ScienceComputer sciencebusiness.industrySegmentation-based object categorizationComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISIONScale-space segmentationMarkov processImage processingImage segmentationFuzzy logicsymbols.namesakeGenetic algorithmsymbolsSegmentationArtificial intelligencebusinessJournal of Computing and Information Technology
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An application of neural networks to natural scene segmentation

2006

This paper introduces a method for low level image segmentation. Pixels of the image are classified corresponding to their chromatic features.

Mathematics::CombinatoricsArtificial neural networkPixelSegmentation-based object categorizationbusiness.industryComputer scienceComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISIONScale-space segmentationImage segmentationImage (mathematics)Computer Science::Computer Vision and Pattern RecognitionNatural (music)Computer visionChromatic scaleArtificial intelligencebusiness
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Image Colorization Method Using Texture Descriptors and ISLIC Segmentation

2017

We present a new colorization method to assign color to a grayscale image based on a reference color image using texture descriptors and Improved Simple Linear Iterative Clustering (ISLIC). Firstly, the pixels of images are classified using Support Vector Machine (SVM) according to texture descriptors, mean luminance, entropy, homogeneity, correlation, and local binary pattern (LBP) features. Then, the grayscale image and the color image are segmented into superpixels, which are obtained by ISLIC to produce more uniform and regularly shaped superpixels than those obtained by SLIC, and the classified images are further post-processed combined with superpixles for removing erroneous classific…

Pixelbusiness.industryColor imageLocal binary patternsComputer scienceComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISIONScale-space segmentationPattern recognitionImage segmentationGrayscaleImage textureComputer Science::Computer Vision and Pattern RecognitionArtificial intelligencebusinessCluster analysisComputingMethodologies_COMPUTERGRAPHICS
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A Multiresolution Approach Based on MRF and Bak–Sneppen Models for Image Segmentation

2006

The two major Markov Random Fields (MRF) based algorithms for image segmentation are the Simulated Annealing (SA) and Iterated Conditional Modes (ICM). In practice, compared to the SA, the ICM provides reasonable segmentation and shows robust behavior in most of the cases. However, the ICM strongly depends on the initialization phase. In this paper, we combine Bak-Sneppen model and Markov Random Fields to define a new image segmentation approach. We introduce a multiresolution technique in order to speed up the segmentation process and to improve the restoration process. Image pixels are viewed as lattice species of Bak-Sneppen model. The a-posteriori probability corresponds to a local fitn…

Random fieldMarkov chainbusiness.industrySegmentation-based object categorizationApplied MathematicsVariable-order Markov modelScale-space segmentationImage segmentationComputer Science::Computer Vision and Pattern RecognitionSegmentationComputer visionIterated conditional modesArtificial intelligencebusinessAlgorithmInformation SystemsMathematicsInformatica
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A Two Stage Neural Architecture for Segmentation and Superquadrics Recovery from Range Data

2002

A novel, two stage, neural architecture for the segmentation of range data and their modeling with undeformed superquadrics is presented. The system is composed by two distinct neural networks: a SOM is used to perform data segmentation, and, for each segment, a multilayer feed-forward network performs model estimation.

Range (mathematics)Artificial neural networkComputer sciencebusiness.industrySuperquadricsComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISIONFeed forwardScale-space segmentationSegmentationComputer visionArtificial intelligencebusiness
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Ad-Hoc Segmentation Pipeline for Microarray Image Analysis

2006

Microarray is a new class of biotechnologies able to help biologist researches to extrapolate new knowledge from biological experiments. Image Analysis is devoted to extrapolate, process and visualize image information. For this reason it has found application also in Microarray, where it is a crucial step of this technology (e.g. segmentation). In this paper we describe MISP (Microarray Image Segmentation Pipeline), a new segmentation pipeline for Microarray Image Analysis. The pipeline uses a recent segmentation algorithm based on statistical analysis coupled with K-Means algorithm. The Spot masks produced by MISP are used to determinate spots information and quality measures. A software …

Segmentation-based object categorizationComputer scienceScale-space segmentationSegmentationImage processingImage segmentationData miningcomputer.software_genrePipeline (software)computerImage Analysis Microarray Image Segmentation BioinformaticsVisualization
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