000 036930000a22003250004500
003 EG-GICUC
005 20250223024943.0
008 061029s2006 ua a f m 000 0 eng d
040 _aEG-GICUC
_beng
_cEG-GICUC
041 0 _aEng
049 _aDeposite
097 _aM.Sc
099 _aCai01.20.01.M.Sc.2006.Ah.F.
100 0 _aAhmad Abd Alsamad Gaweesh
245 1 0 _aFuzzy Measures - Based Image Thresholding /
_cAhmad Abd Alsamad Gaweesh ; Supervised Hoda Mohammad Onsi
246 1 5 _aتقسيم الصورة باستخدام المعايير الفازية
260 _aCairo :
_bAhmad Abd Alsamad Gaweesh ,
_c2006
300 _a87P :
_bill ;
_c30cm
502 _aThesis (M.Sc.) - Cairo University - Faculty Of Computers and information - Department Of Information Technology
520 _aThe purpose of this thesis is to explore the effectiveness of introducing fuzzy logic to the process of image thresholdingCrisp thresholding techniques always fail to segment fuzzy images (where object and background share common gray values) One of the fuzzy logic theory contributions in the area of image segmentation was the measure of fuzzinessMeasures of fuzziness can be used in the representation of knowledge about uncertain variablesVarious measures of fuzziness have been reported for image thresholding such as local and conditional entropies , fuzzy correlation and divergenceAnother aspect we covered in this thesis was the effectiveness of considering other image attributes (egtexture , local average{u2026}etc) during the thresholding processOne of the main problems of thresholding techniques occurs when a pixel's gray level is randomly distributed across the image (ieobjects and background share common gray level values) In such fuzzy images , considering only the gray level attribute may give unsatisfying resultsHowever , considering other image attributes in connection with pixels' gray level may improve the segmentation resultsAdding such attributes to the image histogram yields a 2 - D (or higher) histogram with a dimension represents gray values and the other represents the added attributeUsing 2 - D histogram , pixels having same intensities but different spatial features can be differentiatedOne of our contributions in this study was the introduction of the concept of line thresholding to fuzzy segmentation processMost 2 - D histogram thresholding techniques segment the histogram using the intersection point (t1 , t2) yielded from the two thresholds on both dimensionsAny image pixel having features values greater than t1 on the first dimension and t2 on the second dimension is considered as belonging to object class , and any pixel having features values less than t1 and t2 is considered as belonging to background class (assuming light object on a dark background) Such classification may ignore pixels having feature values greater than the first threshold but less than the second threshold or vice versaThese unclassified pixels are considered as noise pixelsThresholding the 2 - D histogram using only the point (t1 , t2) is called point thresholding and has the serious problem of arbitrary classifying noise pixels where those pixels that do not satisfy object's or background's thresholding conditions are arbitrary assigned to one of the two classesUsing point thresholding for 2 - D histogram segmentation often yields objects
530 _aIssued also as CD
653 4 _afuzzy correlation
653 4 _afuzzy logic
653 4 _aFuzzy Measures
700 0 _aHoda Mohammad Onsi ,
_eSupervisor
856 _uhttp://172.23.153.220/th.pdf
905 _aAmira
_eCataloger
905 _aEsam
_eRevisor
942 _2ddc
_cTH
999 _c2526
_d2526