数字图像处理英文文献翻译参考.docx

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数字图像处理英文文献翻译参考.docx

数字图像处理英文文献翻译参考

HybridGeneticAlgorithmBasedImageEnhancement

Technology

MuDongzhouDepartmentoftheInformationEngineeringXuZhouCollegeofIndustrialTechnology

XuZhou,Chinamudzh@

XuChaoandGeHongmeiDepartmentoftheInformationEngineeringXuZhouCollegeofIndustrialTechnology

XuZhou,Chinaxuch@,gehm@

Abstract—inimageenhancement,TubbsproposedanormalizedincompleteBetafunctiontorepresentseveralkindsofcommonlyusednon-lineartransformfunctionstodotheresearchonimageenhancement.ButhowtodefinethecoefficientsoftheBetafunctionisstillaproblem.WeproposedaHybridGeneticAlgorithmwhichcombinestheDifferentialEvolutiontotheGeneticAlgorithmintheimageenhancementprocessandutilizethequicklysearchingabilityofthealgorithmtocarryouttheadaptivemutationandsearches.FinallyweusetheSimulationexperimenttoprovetheeffectivenessofthemethod.

Keywords-Imageenhancement;HybridGeneticAlgorithm;adaptiveenhancement

I.INTRODUCTION

Intheimageformation,transferorconversionprocess,duetootherobjectivefactorssuchassystemnoise,inadequateorexcessiveexposure,relativemotionandsotheimpactwillgettheimageoftenadifferencebetweentheoriginalimage(referredtoasdegradedordegraded)Degradedimageisusuallyblurredoraftertheextractionofinformationthroughthemachinetoreduceorevenwrong,itmusttakesomemeasuresforitsimprovement.

Imageenhancementtechnologyisproposedinthissense,andthepurposeistoimprovetheimagequality.FuzzyImageEnhancementsituationaccordingtotheimageusingavarietyofspecialtechnicalhighlightssomeoftheinformationintheimage,reduceoreliminatetheirrelevantinformation,toemphasizetheimageofthewholeorthepurposeoflocalfeatures.Imageenhancementmethodisstillnounifiedtheory,imageenhancementtechniquescanbedividedintothreecategories:

pointoperations,andspatialfrequencyenhancementmethodsEnhancementAct.Thispaperpresentsanautomaticadjustmentaccordingtotheimagecharacteristicsofadaptiveimageenhancementmethodthatcalledhybridgeneticalgorithm.Itcombinesthedifferentialevolutionalgorithmofadaptivesearchcapabilities,automaticallydeterminesthetransformationfunctionoftheparametervaluesinordertoachieveadaptiveimageenhancement.

II.IMAGEENHANCEMENTTECHNOLOGY

Imageenhancementreferstosomefeaturesoftheimage,suchascontour,contrast,emphasisorhighlightedges,etc.,inordertofacilitatedetectionorfurtheranalysisandprocessing.Enhancementswillnotincreasetheinformationintheimagedata,butwillchoosetheappropriatefeaturesoftheexpansionofdynamicrange,makingthesefeaturesmoreeasilydetectedoridentified,forthedetectionandtreatmentfollow-upanalysisandlayagoodfoundation.

Imageenhancementmethodconsistsofpointoperations,spatialfiltering,andfrequencydomainfilteringcategories.Pointoperations,includingcontraststretching,histogrammodeling,andlimitingnoiseandimagesubtractiontechniques.Spatialfilterincludinglow-passfiltering,medianfiltering,highpassfilter(imagesharpening).Frequencyfilterincludinghomomorphismfiltering,multi-scalemulti-resolutionimageenhancementapplied[1].

III.DIFFERENTIALEVOLUTIONALGORITHM

DifferentialEvolution(DE)wasfirstproposedbyPriceandStorn,andwithotherevolutionaryalgorithmsarecompared,DEalgorithmhasastrongspatialsearchcapability,andeasytoimplement,easytounderstand.DEalgorithmisanovelsearchalgorithm,itisfirstinthesearchspacerandomlygeneratestheinitialpopulationandthencalculatethedifferencebetweenanytwomembersofthevector,andthedifferenceisaddedtothethirdmemberofthevector,bywhichMethodtoformanewindividual.Ifyoufindthatthefitnessofnewindividualmembersbetterthantheoriginal,thenreplacetheoriginalwiththeformationofindividualself.

TheoperationofDEisthesameasgeneticalgorithm,anditconcludemutation,crossoverandselection,butthemethodsaredifferent.WesupposethatthegroupsizeisP,thevectordimensionisD,andwecanexpresstheobjectvectoras

(1):

xi=[xi1,xi2,…,xiD](i=1,…,P)

(1)

Andthemutationvectorcanbeexpressedas

(2):

i=1,...,P

(2)

arethreerandomlyselectedindividualsfromgroup,andr1

r2

r3

i.Fisarangeof[0,2]betweentheactualtypeconstantfactordifferencevectorisusedtocontroltheinfluence,commonlyreferredtoasscalingfactor.Clearlythedifferencebetweenthevectorandthesmallerthedisturbancealsosmaller,whichmeansthatifgroupsclosetotheoptimumvalue,thedisturbancewillbeautomaticallyreduced.

DEalgorithmselectionoperationisa"greedy"selectionmode,ifandonlyifthenewvectoruithefitnessoftheindividualthanthetargetvectorisbetterwhentheindividualxi,uiwillberetainedtothenextgroup.Otherwise,thetargetvectorxiindividualsremainintheoriginalgroup,onceagainasthenextgenerationoftheparentvector.

IV.HYBRIDGAFORIMAGEENHANCEMENTIMAGE

enhancementisthefoundationtogetthefastobjectdetection,soitisnecessarytofindreal-timeandgoodperformancealgorithm.Forthepracticalrequirementsofdifferentsystems,manyalgorithmsneedtodeterminetheparametersandartificialthresholds.Canuseanon-completeBetafunction,itcancompletelycoverthetypicalimageenhancementtransformtype,buttodeterminetheBetafunctionparametersarestillmanyproblemstobesolved.ThissectionpresentsaBetafunction,sinceaccordingtotheapplicablemethodforimageenhancement,adaptiveHybridgeneticalgorithmsearchcapabilities,automaticallydeterminesthetransformationfunctionoftheparametervaluesinordertoachieveadaptiveimageenhancement.

Thepurposeofimageenhancementistoimproveimagequality,whicharemoreprominentfeaturesofthespecifiedrestorethedegradedimagedetailsandsoon.Inthedegradedimageinacommonfeatureisthecontrastlowersideusuallypresentsbright,dimorgrayconcentrated.Low-contrastdegradedimagecanbestretchedtoachieveadynamichistogramenhancement,suchasgraylevelchange.WeuseIxytoillustratethegraylevelofpoint(x,y)whichcanbeexpressedby(3).

Ixy=f(x,y)(3)

where:

“f”isalinearornonlinearfunction.Ingeneral,grayimagehavefournonlineartranslations[6][7]thatcanbeshownasFigure1.WeuseanormalizedincompleteBetafunctiontoautomaticallyfitthe4categoriesofimageenhancementtransformationcurve.Itdefinesin(4):

(4)where:

(5)

Fordifferentvalueofαandβ,wecangetresponsecurvefrom(4)and(5).

ThehybridGAcanmakeuseoftheprevioussectionadaptivedifferentialevolutionalgorithmtosearchforthebestfunctiontodetermineavalueofBeta,andtheneachpixelgrayscalevaluesintotheBetafunction,thecorrespondingtransformationofFigure1,resultinginidealimageenhancement.Thedetaildescriptionisfollows:

Assumingtheoriginalimagepixel(x,y)ofthepixelgraylevelbytheformula(4),denotedby

hereΩistheimagedomain.EnhancedimageisdenotedbyIxy.Firstly,theimagegrayvaluenormalizedinto[0,1]by(6).

(6)

where:

and

expressthemaximumandminimumofimagegrayrelatively.

Definethenonlineartransformationfunctionf(u)(0≤u≤1)totransformsourceimagetoGxy=f(

),wherethe0≤Gxy≤1.

Finally,weusethehybridgeneticalgorithmtodeterminetheappropriateBetafunctionf(u)theoptimalparametersαandβ.WillenhancetheimageGxytransformedantinormalized.

V.EXPERIMENTANDANALYSIS

Inthesimulation,weusedtwodifferenttypesofgray-scaleimagesdegraded;theprogramperformed50times,populationsizesof30,evolved600times.Theresultsshowthattheproposedmethodcanveryeffectivelyenhancethedifferenttypesofdegradedimage.

Figure2,thesizeoftheoriginalimagea320×320,it'sthecontrasttolow,andsomedetailsofthemoreobscure,inparticular,scarvesandotherdetailsofthetextureisnotobvious,visualeffects,poor,usingthemethodproposedinthissection,toovercometheabovesomeoftheissuesandgetsatisfactoryimageresults,asshowninFigure5(b)shows,thevisualeffectshavebeenwellimproved.Fromthehistogramview,thescopeofthedistributionofimageintensityismoreuniform,andthedistributionoflightanddarkgrayareaismorereasonable.Hybridgeneticalgorithmtoautomaticallyidentifythenonlineartransformationofthefunctioncurve,andthevaluesobtainedbefore9.837,5.7912,fromthecurvecanbedrawn,itisconsistentwithFigure3,c-class,thatstretchacrossthemiddleregioncompressiontransformtheregion,whichwereconsistentwiththehistogram,theoveralloriginalimagelowcontrast,compressionatbothendsofthemiddleregionstretchingregionisconsistentwithhumanvisualsense,enhancedtheeffectofsignificantlyimproved.

Figure3,thesizeoftheoriginalimagea320×256,theoverallintensityislow,theuseofthemethodproposedinthissectionaretheimagesb,wecanseetheground,chairsandclothesandotherdetailsoftheresolutionandcontrastthantheoriginalimagehasImprovedsignificantly,theoriginalimagegraydistributionconcentratedinthelowerregion,andtheenhancedimageofthegrayuniform,graybeforeandaftertransformationandnonlineartransformationofbasicgraph3(a)thesameclass,namely,theimageDimregionstretching,andthevalueswere5.9409,9.5704,nonlineartransformationofimagesdegradedtypeinferenceiscorrect,theenhancedvisualeffectandgoodrobustnessenhancement.

Difficulttoassessthequalityofimageenhance

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