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  • 5/5/2015 PatentWO2007047299A1ClassificationoffabricsbynearinfraredspectroscopyGooglePatents

    http://www.google.com/patents/WO2007047299A1?cl=en 1/6

    Patents

    Publicationnumber WO2007047299A1Publicationtype ApplicationApplicationnumber PCT/US2006/039702Publicationdate Apr26,2007Filingdate Oct11,2006Prioritydate Oct13,2005

    Alsopublishedas US8190551,US20100036795

    Inventors KennethWBusch,ChristopherBDavis,MariannaBusch

    Applicant UnivBaylor,KennethWBusch,ChristopherBDavis,MariannaBusch

    ExportCitation BiBTeX,EndNote,RefMan

    PatentCitations(3),NonPatentCitations(2),Referencedby(2),Classifications(6),LegalEvents(4)

    ExternalLinks:Patentscope,Espacenet

    CLAIMS(OCRtextmaycontainerrors)

    WHATISCLAIMEDIS:

    1.Amethodforclassifyingunknownfabricsamples,comprising:collectingspectraldataofanunknownfabricsampletogiveunknownspectraldataandusingaknownstandardrepresentingknownfabrictypesandsoftindependentmodelingofclassanalogy("SIMCA")toclassifytheunknownfabricsampleintoeitheroneormoreoftheknownfabrictypesoratypeofunknownorigin.

    2.Themethodofclaim1,whereintheknownstandardrepresentingknownfabrictypesisadatabaseofmodelprincipalcomponentanalysesforeachknownfabrictype.

    3.Themethodofclaim2,whereinthedatabaseofmodelprincipalcomponentanalysesforeachknownfabrictypeispreparedby:collectingspectraldataofapluralityoffabricsamples,whereinthefabricsamplesareofknownfabrictypesandperformingaprincipalcomponentanalysisandaregressionofthespectraldataforeachofthefabricsamplesofeachknownfabrictypetocreateadatabaseofmodelprincipalcomponentanalysesforeachknownfabrictype.

    4.Themethodofclaim1,whereinthespectraldataisdiffusenearinfraredreflectionspectraldata.

    5.Themethodofclaim1,whereintheknownfabrictypescompriseoneormoreofacetate,acrylic,blends,cotton,linen,mohair,nylon,olefin,polyester,PVC,rayon,silk,andwool.

    6.Amethodforclassifyingunknownfabricsamples,comprising:collectingspectraldataofapluralityoffabricsamples,whereinthefabricsamplesareofknownfabrictypesperformingaprincipalcomponentanalysisandaregressionofthespectraldataforeachofthefabricsamplesofeachknownfabrictypetocreateadatabaseofmodelprincipalcomponentanalysesforeachknownfabrictypecollectingspectraldataofanunknownfabricsampletogiveunknownspectraldataandusingthedatabaseofmodelprincipalcomponentanalysesandsoftindependentmodelingofclassanalogy("SIMCA")toclassifytheunknownfabricsampleintoeitheroneormoreoftheknownfabrictypesoratypeofunknownorigin.

    7.Themethodofclaim6,whereinthespectraldataisdiffusenearinfraredreflectionspectraldata.

    8.Themethodofclaim6,whereintheknownfabrictypescompriseoneormoreofacetate,acrylic,blends,cotton,linen,mohair,nylon,olefin,polyester,PVC,rayon,silk,andwool.

    ClassificationoffabricsbynearinfraredspectroscopyWO2007047299A1

    ABSTRACT

    Amethodforclassifyingtextilesamplesandunknownfabricsintoknowncategoriesusingspectroscopy,chemometricmodeling,andsoftindependentmodelingofclassanalogies('SIMCA').Themethodinvolvescollectingspectraldata,preferablydiffusenearinfraredreflectancedata,foralibraryofknownfabricsamples,creatingadatabaseofprincipalcomponentanalysesforeachtypeoffabric,andusingSIMCAtoclassifyanunknownfabricsampleaccordingtothedatabase.

    DESCRIPTION(OCRtextmaycontainerrors)

    CLASSIFICATIONOFFABRICSBYNEARINFRAREDSPECTROSCOPY

    BACKGROUND

    [0001]ThisapplicationclaimsprioritytoU.S.ProvisionalPatentApplication,SerialNumber60/726,452,entitled"CLASSIFICATIONOFFABRICSBYNEARINFRAREDSPECTROSCOPY"filedonOctober13,2005,havingK.Busch,C.Davis,andM.Busch,listedastheinventor(s).

    [0002]Thisinventionpertainstothedeterminationoftextilecompositionthroughtheuseofspectroscopyandchemometricmodeling.

    [0003]Theidentificationoftextilesisaconcernaroundtheworld.Textilemanufactures,retailmarketers,andcustomsofficialswouldallappreciateandutilizeanew,fast,nondestructivemethodoffabricidentification.Formanufacturesandmarketers,thismethodwouldassurethatthegarmentsthatarebeingmadeandsoldarenotmadeofsubstandardmaterialsorbeingsoldatoverinflatedprices.Traditionally,analyticalmethodsfordeterminingfibercontentincludesimplevisualinspectionwiththenakedeye,burntesting,microscopy,andsolubilitytesting.Thesemethods,thoughproventobeeffective,havesomedrawbacks.Visualinspection,forinstance,requirestheexaminertohaveaworkingknowledgeofthetextileshewillbeanalyzing.Also,thefeelandappearanceofsomefiberscanbeextremelysimilartoanother.Microscopysharesthesamedrawbackasvisualinspection.Certainmanufacturingprocessescanchangetheappearanceofafiber.Fibersviewedunderthemicroscope,especiallymanufacturedfibers,oftenhavesimilarcharacteristicsmakingapositiveidentificationimpossible.Burnandsolubilitytestingcanidentifytheclassoffibers,butthetechniqueisdestructiveandproduceswaste.(Kadolphetal.,2002).

    SUMMARY

    [0004]Inoneaspect,thecurrentmethodforclassifyingfabricsinvolvesassemblingalibraryoffabricsamples,creatingadatabaseofdiffusenearinfraredreflectionspectraofthosefabricsamples,andusingchemometrictechniquestoclassifythefabricsonthebasisoftheirspectra.

    [0005]AchemometrictechniqueknownasSoftIndependentModelingofClassAnalogy("SIMCA")classificationisusedinconjunctionwiththedatabaseofspectraldatafromthefabricsamplestosortunknownfabricsamplesintotheirappropriatefibertype.Nochemicalorotherpretreatmentisnecessary.Themethodworksregardlessofthefabriccolororpattern,orthepresenceorabsenceoffabricfinishes.Themethodhastheadvantageofbeingnondestructiveandtheoperatordoesnothavetohaveabackgroundintextilesinordertoidentifythepieceoffabric.Moreover,theinstrumentwillfitonatabletopanddoesnotrequirespecializedlaboratoryfacilitiestooperate.

    Findpriorart Discussthisapplication

    FrenchEnglish

    +Edwin

  • 5/5/2015 PatentWO2007047299A1ClassificationoffabricsbynearinfraredspectroscopyGooglePatents

    http://www.google.com/patents/WO2007047299A1?cl=en 2/6

    [0006]Multivariateregressioniswidelyknowninmanyareasofchemistryandcanserveasaparticularlypowerfulcomputationaltoolforcorrelatingspectraldatawithknowncompositionalchangesinatestsetofsamples.ThebasicobjectiveofthemethodistodevelopamathematicalmodelthatrelatestwosetsofvariablestoeachothersothattheindependentorXvariablescanbeusedtodeterminethedependentorYvariable.

    [0007]Toavoidproblemswithcolinearityinthedata,allmultivariateregressiontechniquesrequireanorthogonalbasissetorcoordinatesystemonwhichtorepresentthedata.Toachievethiscondition,modernregressiontechniquesemployprojectionmethodstoobtainaseriesofvariancescaledeigenvectorsthatcanserveasanewcoordinatesystemforthedata.Thisformofdatadecompositionassuresanorthogonalcoordinatesystemforthedata.Atthesametime,itprovidesawaytoreducethedimensionalityofthedatabecauseonlythemajoreigenvectorsareneededtorepresentthedata.Finally,whenthedataarerepresentedonthenewcoordinatesystem,newinsightisoftengainedasnewrelationshipsthatwereformerlyobscuredintheoldcoordinatesystemarerevealed.

    [0008]Broadly,oneaspectofthepresentinventioninvolvesamethodforclassifyingfabrics,comprisingthestepsof:[0009](1)Collectingspectraldataofapluralityoffabricsamples,whereinthefabricsamplesareofdifferentknownfabrictypes

    [0010](2)Performingaprincipalcomponentanalysisandregressionofthespectraldataforeachofthefabricsamplesofeachknownfabrictypetocreateadatabaseofmodelprincipalcomponentanalysesforeachknownfabrictype

    [0011](3)Collectingspectraldataofanunknownfabricsampletogiveunknownspectraldataand

    [0012](4)Usingthedatabaseofmodelprincipalcomponentanalysesandsoftindependentmodelingofclassanalogy("SIMCA")toclassifytheunknownfabricsampleintoeitheroneormoreofthedifferentknownfabrictypesoratypeofunknownorigin.

    [0013]Inthecurrentinvention,thepreferredspectraldataisdiffusenearinfraredreflection("NIR")spectraldata.Themethodisquitegeneralandcanapplytoadiversityoffabrictypes,includingacetate,acrylic,blends,cotton,linen,mohair,nylon,olefin,polyester,PVC,rayon,silk,andwool.

    [0014]Thismethodisusefulfortherapididentificationofunknownfabricsamples.Itisnondestructiveanddoesnotrequirehazardouschemicalsandsolvents.Anyentitiesinneedofthistechnology,suchascustomsofficials,couldpurchaseastandardizednearinfraredspectrometer,thespectraldatabase,andthesoftwareforperformingtheclassification.Becausespectraldatabasesareinstrumentspecific,theycannotbetransferredtootherinstruments.Subscriberscouldreceiveperiodicdatabaseupdatesasmoresamplesareaddedtothelibrary.Althoughthereisnominimumormaximumnumberofsamplestobeincludedinthelibrary,itshouldbeofsufficientlyhighanumberofsamplestocreateaccuratemodelsforprediction.

    BRIEFDESCRIPTIONOFFIGURES

    [0015]Figure1showstheNIRspectra,(log1/R)versuswavelength,ofacetatesamples

    [0016]Figure2showstheNIRspectra,(log1/R)versuswavelength,ofcottonsamples

    [0017]Figure3showstheNIRspectra,(log1/R)versuswavelength,ofpolyestersamples

    [0018]Figure4showstheNIRspectra,(log1/R)versuswavelength,ofwoolsamples

    [0019]Figure5showstheNIRspectra,(log1/R)versuswavelength,ofallsamplesinthefabricdatabase

    [0020]Figure6showstheprincipalcomponentanalysisforthecottonsamples:(A)Scoresplot(B)Regressioncoefficientsplot(C)Residualsplotand(D)Residualvarianceplotand

    [0021]Figure7showsthespectraofrepresentativepolyesterandsilksamples,aswellasasamplefalselyidentifiedasbeingsilk.

    DETAILEDDESCRIPTIONOFPREFERREDEMBODIMENTS

    [0022]Thepresentinventionrelatestotheclassificationoftextilesusingspectroscopyandchemometricmodeling.Inparticular,thepresentinventioninvolvesthedevelopmentofaspectraldatabaseoffabricsamplesandtheuseofsupervisedsoftindependentmodelingofclassanalogies("SIMCA")toclassifyunknownfabricsamples.

    [0023]Broadly,thefirststepinthecurrentmethodpertainstothedevelopmentofadatabaseofspectraldataofknownfabricsamples.Preferably,thespectraldatacollectedisdiffusenearinfraredreflection("NIR")spectra.AnysuitablespectrometercapableofcollectingdiffuseNIRspectracanbeused.Preferably,theNIRspectrometerincludesaquartzhalogensource,monochromator,leadsulfidedetectors,andanintegratingsphere,coatedwithbariumsulphate(Soyemietal,2001).Examplesofthefabriccategoriestobesampledforinclusioninthedatabaseincludeacetate,acrylic,blends,cotton,linen,mohair,nylon,olefin,polyester,PVD,rayon,silk,andwool.

    [0024]ThefabricsamplesshouldbescannedbytheNIRspectrometerinasinglelayerandshouldnotbefoldedorcrumpledinthesampleholder.Nosamplepretreatmentisrequired.Theapertureoftheintegratingsphereshouldbefullycoveredbythefabricsample.Aftercollectionofthespectraldataforeachfabrictype,thedataisenteredintoasuitablechemometricanalysisprogram(Unscrambler9.1,Camo,Inc.,Corvallis,OR).Althoughnosamplepretreatmentisrequired,aSavitzkyGolaysmoothingroutineispreferablyusedasadatapretreatment.

  • 5/5/2015 PatentWO2007047299A1ClassificationoffabricsbynearinfraredspectroscopyGooglePatents

    http://www.google.com/patents/WO2007047299A1?cl=en 3/6

    [0025]Thechemometrictechniquecalledsoftindependentmodelingofclassanalogy("SIMCA")isusedinconjunctionwiththespectraldatabasetosortunknownfabricsamplesintotheirappropriatefibertype.SIMCAisaclassificationmethodbasedondisjointPCA(principalcomponentanalysis)modeling.Aprincipalcomponentanalysisisdoneforagivengroupofsampleswithinafabriccategory.Thisstepcalibratesthemultivariateprogramsoitcandiscernwhatsamplebelongstowhichcategory.IntheSIMCAapproach,classificationinPLSisperformedinordertoidentifylocalmodelsforpossiblegroupsandtopredictaprobableclassmembershipfornewobservations.Atfirst,thisapproachrunsaglobalPCAorPLSregression(accordingtotheavailabledatastructure)onthewholedatasetinordertoidentifygroupsofobservations.Localmodelsarethenestimatedforeachclass.Finally,newobservationsareclassifiedtooneoftheestablishedclassmodelsonthebasisoftheirbestfittotherespectivemodel.

    [0026]Thisapproach,enforcesthecompositionoftheclassestobethesameastheoneinitiallychosenonthebasisoftheglobalmodel,computesthedistanceofeachobservationfromthemodelwithrespecttotheexplanatoryvariable,andinordertocomputetheclassmembershipprobabilities,referstoadistributionofthisdistancewhoseshapeanddegreesoffreedom,arenotyetcompletelyclearanddemonstrated.

    [0027]InSIMCA,aPCAisperformedoneachclassinthedataset,andasufficientnumberofprincipalcomponentsareretainedtoaccountformostofthevariationwithineachclass.Hence,aprincipalcomponentmodelisusedtorepresenteachclassinthedataset.Thenumberofprincipalcomponentsretainedforeachclassisusuallydifferent.Decidingonthenumberofprincipalcomponentsthatshouldberetainedforeachclassisimportant,asretentionoftoofewcomponentscandistortthesignalorinformationcontentcontainedinthemodelabouttheclass,whereasretentionoftoomanyprincipalcomponentsdiminishesthesignaltonoise.Aprocedurecalledcrossvalidationensuresthatthemodelsizecanbedetermineddirectlyfromthedata.Toperformcrossvalidation,segmentsofthedataareomittedduringthePCA.Usingone,two,three,etc.,principalcomponents,omitteddataarepredictedandcomparedtotheactualvalues.Thisprocedureisrepeateduntileverydataelementhasbeenkeptoutonce.Theprincipalcomponentmodelthatyieldstheminimumpredictionerrorfortheomitteddataisretained.Hence,crossvalidationcanbeusedtofindthenumberofprincipalcomponentsnecessarytodescribethesignalinthedatawhileensuringhighsignaltonoisebynotincludingthesocalledsecondaryornoiseladenprincipalcomponentsintheclassmodel.Thevariancethatisexplainedbytheclassmodeliscalledthemodeledvariance,whichdescribesthesignal,whereasthenoiseinthedataisdescribedbytheresidualvarianceorthevariancenotaccountedforbythemodel.

    [0028]Bycomparingtheresidualvarianceofanunknowntotheaverageresidualvarianceofthosesamplesthatmakeuptheclass,itispossibletoobtainadirectmeasureofthesimilarityoftheunknowntotheclass.Thiscomparison,isalsoameasureofthegoodnessoffitofthesample,toaparticularprincipalcomponentmodel.

    [0029]Whenanewunknownsampleisintroduced,SIMCAwillcomparethespectralfeaturesofthenewsamplewiththoseprincipalcomponentanalysestheoperatorwishestoinvestigate.Iftheprogramdeterminesthesampleissimilarenoughtooneormorecategories,itwillclassifythesampleassuch.However,ifthesampleisconsiderednottofallintoanyofthecategoriesdefinedbythegivenprincipalcomponentanalysesitwillberejectedandnotclassified.TheSIMCAapproachtoclassificationdiffersfromthatofpartialleastsquares(PLS)discriminantanalysis.Adiscriminantanalysismakestheassumptionthatanewunknownisamemberofoneoftheclassesincludedintheanalysis.SIMCAcanclassifyasampleasbeinginssinglegroup,multiplegroups,ornotinanyofthegroupspresented.Thismethodologyisadvantageousinasituationwherethesampleinquestionisofunknownorigin,andthereisabsolutelynoinformationaboutitavailable.APLSdiscriminantanalysiscouldclassifythesampleasamemberofaclassevenifitwasn'tduetotheassumptionthatthesamplemustfallintooneoftheprearrangedcategories.

    [0030]Thespectraldataarepreferablygovernedbylog1/R.ThedatacanbetransformedtotheKubelkaMunk("KM")functionusingthecomputermodelingprogram.Thenewsetofspectracanthenbeenteredintotheprincipalcomponentanalysesforthefabriccategories.Eithertypeofanalysescanbeused,althoughlog1/Rismoreaccurateforpredictingunknownfabricclassifications.

    [0031]Inparticular,themethodforclassifyingfabricsbynearinfraredspectroscopyinvolvesthefollowingsteps.First,adatabaseofspectraldatafromanumberoffabricsamplesofvariousknownfabrictypesisprepared.Topreparethedatabase,spectraldatafromapluralityoffabricsamplesofdifferentknownfabrictypesiscollected.Thenaprincipalcomponentanalysisandpartialleastsquaresregressionisperformedusingthespectraldatacollectedforeachofthedifferentknownfabrictypes.Thedatabasethencontainsmodelprincipalcomponentanalysesforeachoftheknownfabrictypesandcanbeusedtoclassifyanunknownfabricsample.Thespectraldataoftheunknownfabricsampleisthencollected.Finally,thedatabaseofmodelprincipalcomponentanalysesisusedinassociationwithSIMCAtoclassifytheunknownfabricsampleintoeitheroneormoreofthedifferentknownfabrictypesoratypeofunknownorigin.TheSIMCAclassificationmethodmayclassifytheunknownsampleintomorethanonefabrictype.IftheSIMCAclassificationmethoddoesnotidentifyasuitablefabrictypeintowhichtheunknownfabricsamplecanbeclassified,itwillnotplacethesampleintoanyoftheknowncategories.[0032]Thisstrategyisusefulfordeterminingthefibercontentandtextilecompositionofvariousunknownfabrics,includingacetate,acrylic,blends,cotton,linen,mohair,nylon,olefin,polyester,PVC,rayon,silk,andwool.Preferably,thespectraldatacollectedisdiffusenearinfraredreflectionspectraldata.

    EXAMPLE1.DEVELOPMENTOFSPECTRALDATABASEOFFABRIC

    SAMPLES

    [0033]Fabricsamplesweregatheredfromsamplecards,swatchcatalogs,andclippingsfromactualgarmentsandfabricbolts.Inall,atotalof826sampleswerecollectedandplacedintothefabricNIRdatabase.Abreakdownoftheindividualfabriccategories,andthenumberoffabricsamplesinthosecategoriescanbeseeninTable1below.

  • 5/5/2015 PatentWO2007047299A1ClassificationoffabricsbynearinfraredspectroscopyGooglePatents

    http://www.google.com/patents/WO2007047299A1?cl=en 4/6

    FabricSamples11,TotSamples',PCASamples0,p^

    Acetate615110

    Acrylic4

    Blends50

    Cotton27426311

    Linen5

    Mohair2

    Nylon4

    Olefin1

    Polyester1099910

    PVC1

    Rayon776710

    Silk463610

    Wool19218210

    Table1.Fabricdatabasesummary(a,totalsamplesindatabaseb,samplesincludedin

    PCAc,samplespredicted)

    [0034]TheNIRspectrometerusedhadaquartzhalogensource,monochromator,leadsulfidedetectors,andanintegratingsphere,coatedwithbariumsulphate,whichalloweddiffusereflectancemeasurementstobecollected(Soyemietal.,2001).TheNIRspectrometerwasattachedtoandcontrolledbyapersonalcomputerrunningLabviewsoftware.Nosamplepretreatmentwaspreformed.Thefabricswerescannedasasinglelayerandnotfoldedorcrumpledinthesampleholder.Theapertureoftheintegratingspherewasfullycoveredbythefabricsample.Eachsamplewasscannedfrom1100to2200rrmatevery2nm.

    [0035]ThespectraldataforeachfabricgroupwerecombinedintoonelargespectraldatafileintheUnscrambler9.1(Camo,Inc.,Corvallis,OR)chemometricanalysisprogram.Althoughtherewasnosamplepretreatment,aSavitzkyGolaysmoothingroutinewasusedasadatapretreatment.Thewavelengthregionsmoothedwasfrom13241916nmwithfiveaveragingsidepointsoneitherendofthedata.

    [0036]Thewavelengthregionusedintheprincipalcomponentanalyseswasfrom13341906nm,andeachPCAwaspreformedusingfullcrossvalidation.ForeachPCA,sixprincipalcomponentswereusedinthecalculation.Someofthefabricgroupssuchascottonandpolyestercouldmanagewithfour.However,acetateandwooldidnothaveasmuchspectralvarianceexplainedintheirfirstfourPC's.

    [0037]Examplesofgroupspectraforacetate,cotton,polyester,andwoolcanbeseeninFigures1through4.Figure5showsthespectraofall826samplesinthetextiledatabase.Anexampleprincipalcomponentanalysis("PCA")forthecottonfabricsamplesisshowninFigure6.

    EXAMPLE2.CLASSIFICATIONOFUNKNOWNFABRICSAMPLES

    [0038]ThemodelPCA'sforacetate,cotton,andwoolwereusedtoclassifyasetofunknowns.Theunknownsconsistedof10acetate,polyester,andwool,aswellas11cottonsamples.TheresultofthisanalysiscanbeseeninTable2below.Allofthesampleswereclassifiedintheappropriatecategorywithnoadditionalmisclassifications.

    Table2

  • 5/5/2015 PatentWO2007047299A1ClassificationoffabricsbynearinfraredspectroscopyGooglePatents

    http://www.google.com/patents/WO2007047299A1?cl=en 5/6

    [0039]Thespectrainthisstudyweregeneratedbylog1/R.ThereflectancedatacouldbeconvertedtotheKubelkaMunk(KM)functionhowever,theconversionshowednoimprovementintheclassificationanalysis.EXAMPLE3.CLASSIFICATIONOFMISLABELEDSAMPLE

    [0040]Bycoincidence,itwasfoundthatoneofthefabricsamplesinthedatabasecreatedinExample1wasapparentlymislabeled.AspecificsilksamplewasrepeatedlynotclassifiedasasilkwhencomparedtothesilkPCA.Undertheassumptionthatthesilksamplemaynotbeasilk,itwasscreenedagainstallthemodelsthathadbeenproducedforthisstudy.ThesampledidnotgetapositiveclassificationuntilitwascomparedtothepolyesterPCA,asshowninTable4below.

    Table4

    [0041]Thispromptedacloserexaminationofthespectrumofthe"fake"silkandthespectraofseveralsilkandpolyestersamples.TheprincipalNIRbandat1672nmpresentinthetwoacceptedpolyestersamplescanclearlybeseeninthequestionablesilksample,asshowninFigure8.Thisindicatesthatthesampleisinfactapolyesterandnotasilk.Thosewishingtofakeasilkgarmenttypicallyusepolyesterduetothefinishesthatareusedonthefibers.

    REFERENCESCITED

    Theentirecontentofeachofthefollowingdocumentsisherebyincorporatedbyreference.

    OTHERPUBLICATIONS

    Kadolph,etal.,TextileFibersandTJieirProperties,vol.9,pp.1731,2002

  • 5/5/2015 PatentWO2007047299A1ClassificationoffabricsbynearinfraredspectroscopyGooglePatents

    http://www.google.com/patents/WO2007047299A1?cl=en 6/6

    Soyemi,etal.,Spectroscopy,vol.16,pp.2433,2001

    PATENTCITATIONS

    CitedPatent Filingdate Publicationdate Applicant TitleWO2004053220A1* Nov21,2003 Jun24,2004 UnileverNv Methodandapparatusfortheidentificationofatextileparameter

    DE19920592A1* May4,1999 Nov9,2000CetexChemnitzerTextilmaschin

    Methodtoautomaticallyrecognisefibrousmaterialormixturesinvolvesusingnearinfraredspectroscopytostudyunmodifiedmaterialsample,andusingneuralnetworktoevaluateresults

    EP0807809A2* May7,1997 Nov19,1997PerstorpAnalytical,Inc.

    SystemforindentifyingmaterialsbyNIRspectrometry

    *Citedbyexaminer

    NONPATENTCITATIONS

    Reference

    1 *FRANKIEETAL:"CLASSIFICATIONMODELS:DISCRIMINANTANALYSIS,SIMCA,CART"CHEMOMETRICSANDINTELLIGEMTLABORATORYSYSTEMS,ELSEVIERSCIENCEPUBLISHERS,AMSTERDAM,NL,vol.5,1989,pages247256,XP000974765ISSN:01697439

    2 * YAHINETAL:"STRUCTURALVARIABILITYOFENVANDGAGGENEPRODUCTSFROMAHIGHLYCYTOPATHICSTRAINOFHIV1"ARCHIVESOFVIROLOGY,NEWYORK,NY,US,vol.125,no.14,1992,pages287298,XP000907410ISSN:03048608*Citedbyexaminer

    REFERENCEDBY

    CitingPatent Filingdate Publicationdate Applicant Title

    WO2008151779A2* Jun10,2008 Dec18,2008 BionoricaAg Methodforqualitativelyclassifyingcompositionscontainingsurfactants

    CN102564966A* Feb3,2012 Jul11,2012 Nearinfraredrapidnondestructivedetectionmethodfortextilecomponents

    *Citedbyexaminer

    CLASSIFICATIONS

    InternationalClassification G01N21/35,D06F39/00

    CooperativeClassification G01N21/3563,G01N2201/129,G01N21/359

    EuropeanClassification G01N21/35G

    LEGALEVENTS

    Date Code Event Description

    Apr16,2009 WWERefdocumentnumber:12083282Countryofrefdocument:US

    Nov12,2008 122

    Refdocumentnumber:06825755Countryofrefdocument:EPKindcodeofrefdocument:A1

    Apr15,2008 NENP Refcountrycode:DE

    Jul25,2007 121

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