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盲信号处理英文版

盲信号处理英文版

  • 出版社: 上海交通大学出版社
  • 作者: 史习智 著
  • 出版日期: 2010-09-03
  • 商品条码: 9787313058201
  • 版次: 1
  • 页数: 0
  • 出版年份: 2010
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《盲信号处理:理论与实践(英文)》是由上海交通大学出版社出版的。
内容简介
《盲信号处理:理论与实践(英文)》内容简介:BlindSignalProcessingTheoryandPracticenotonlyintroducesrelatedfundamentalmathematics,butalsoreflectsthenumerousadvancesinthefield,suchasprobabilitydensityestimation-basedprocessingalgorithms,underdeterminedmodels,complexvaluemethods,uncertaintyoforderintheseparationofconvolutivemixturesinfrequencydomains,andfeatureextractionusingIndependentComponentAnalysis(ICA).Attheendofthebook,resultsfromastudyconductedatShanghaiJiaoTongUniversityintheareasofspeechsignalprocessing,underwatersignals,imagefeatureextraction,datacompression,andthelikearediscussed.
Thisbookwillbeofparticularinteresttoadvancedundergraduatestudents,graduatestudents,universityinstructorsandresearchscientistsinrelateddisciplines.XizhiShiisaProfessoratShanghaiJiaoTongUniversity.
目录
Chapter1Introduction
1.1Introduction
1.2BlindSourceSeparation
1.3IndependentComponentAnalysis(ICA)
1.4TheHistoricalDevelopmentandResearchProspectofBlindSignalProcessing
References

Chapter2MathematicalDescriptionofBlindSignalProcessing
2.1RandomProcessandProbabilityDistribution
2.2EstimationTheory
2.3InformationTheory
2.4Higher-OrderStatistics
2.5PreprocessingofSignal
2.6ComplexNonlinearFunction
2.7EvaluationIndex
References

Chapter3IndependentComponentAnalysis
3.1ProblemStatementandAssumptions
3.2ContrastFunctions
3.3InformationMaximizationMethodofICA
3.4MaximumLikelihoodMethodandCommonLearningRule
3.5FastICAAlgorithm
3.6NaturalGradientMethod
3.7HiddenMarkovIndependentComponentAnalysis
References

Chapter4NonlinearPCA&FeatureExtraction
4.1PrincipalComponentAnalysis&InfinitesimalAnalysis
4.2NonlinearPCAandBlindSourceSeparation
4.3KernelPCA
4.4NeuralNetworksMethodofNonlinearPCAandNonlinearComplexPCA
References

Chapter5NonlinearICA
5.1NonlinearModelandSourceSeparation
5.2LearningAlgorithm
5.3ExtendedGaussianizationMethodofPostNonlinearBlindSeparation
5.4NeuralNetworkMethodforNonlinearICA
5.5GeneticAlgorithmofNonlinearICASolution
5.6ApplicationExamplesofNonlinearICA
References

Chapter6ConvolutiveMixturesandBlindDeconvolution
6.1DescriptionofIssues
6.2ConvolutiveMixturesinTime-Domain
6.3ConvolutiveMixturesAlgorithmsinFrequency-Domain
6.4Frequency-DomainBlindSeparationofSpeechConvolutiveMixtures
6.5BussgangMethod
6.6Multi-channelBlindDeconvolution
References

Chapter7BlindProcessingAlgorithmBasedonProbabilityDensityEstimation
7.1AdvancingtheProblem
7.2NonparametricEstimationofProbabilityDensityFunction
7.3EstimationofEvaluationFunction
7.4BlindSeparationAlgorithmBasedonProbabilityDensityEstimation
7.5ProbabilityDensityEstimationofGaussianMixturesModel
7.6BlindDeconvolutionAlgorithmBasedonProbabilityDensityFunctionEstimation
7.7On-lineAlgorithmofNonparametricDensityEstimation
References

Chapter8JointApproximateDiagonalizationMethod
8.1Introduction
8.2JADAlgorithmofFrequency-DomainFeature
8.3JADAlgorithmofTime-FrequencyFeature
8.4JointApproximateBlockDiagonalizationAlgorithmofConvolutiveMixtures
8.5JADMethodBasedonCayleyTransformation
8.6JointDiagonalizationandJointNon-DiagonalizationMethod
8.7NonparametricDensityEstimatingSeparatingMethodBasedonTime-FrequencyAnalysis
References

Chapter9ExtensionofBlindSignalProcessing
9.1BlindSignalExtraction
9.2FromProjectionPursuitTechnologytoNonparametricDensityEstimation-BasedICA
9.3Second-OrderStatisticsBasedConvolutiveMixturesSeparationAlgorithm
9.4BlindSeparationforFewerSensorsthanSources——UnderdeterminedModel
9.5FastlCASeparationAlgorithmofComplexNumbersinConvolutiveMixtures
9.6On-lineComplexICAAlgorithmBasedonUncorrelatedCharacteristicsofComplexVectors
9.7ICA-BasedWigner-VilleDistribution
9.8ICAFeatureExtraction
9.9ConstrainedICA
9.10ParticleFilteringBasedNonlinearandNoisyICA
References

Chapter10DataAnalysisandApplicationStudy
10.1TargetEnhancementinActiveSonarDetection
10.2ECGArtifactsRejectioninEEGwithICA
10.3ExperimentonUnderdeterminedBlindSeparationofASpeechSignal
10.4ICAinHumanFaceRecognition
10.5ICAinDataCompression
10.6IndependentComponentAnalysisforFunctionalMRIDataAnalysis
10.7SpeechSeparationforAutomaticSpeechRecognitionSystem
10.8IndependentComponentAnalysisofMicroarrayGeneExpressionDataintheStudyofAlzheimer'sDisease(AD)
References
Index

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