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RESTITUTION AUTOMATION FOR CLOSE-RANGE APPLICATIONS,[object Object],Artemis Valanis, Andreas Georgopoulos,[object Object],School of Rural and Surveying Engineering,[object Object],Laboratory of Photogrammetry,[object Object],National Technical University of Athens,[object Object]
Development of a semi- or fully- automated method for the restitution process of image products in the case of close-range applications ,[object Object],Applicability of the method for the case of Byzantine monuments,[object Object],Trial applications on other kinds of monuments,[object Object],OBJECTIVES,[object Object]
Construction complexity,[object Object],Presence of decorative elements,[object Object],Tuffstone is the basic construction material,[object Object],OBJECT DESCRIPTION,[object Object]
Extensive research of the properties of the object of interest and trial application of several image processing techniques,[object Object],Development of a method for the detection of the objects of interest,[object Object],Program and interface development,[object Object],Application of the proposed method for Byzantine and other kinds of monuments,[object Object],Evaluation of the results,[object Object],COURSE OF STUDY,[object Object]
Noise reduction methods(mean-, order statistics and adaptive filters),[object Object],Image enhancement in the frequency domain (FFT, Ideal filters, Butterworth filters),[object Object],Edge detection algorithms (Sobel, Prewitt, Canny, LoG, color edge detection),[object Object],Morphological processing (erosion, dilation, morphological gradient),[object Object],Segmentation and thresholding techniques ,[object Object],TRIAL APPLICATIONS OF VARIOUS IMAGE PROCESSING TECHNIQUES,[object Object]
PROBLEMS ENCOUNTERED IN THE DETECTION OF THE OBJECTS,[object Object],	Object complexity,[object Object],	Strong resemblance in the appearance of the stones and joints,[object Object],	Existence of inclinated planes and shadowed areas,[object Object],	Erosion of the construction material ,[object Object],	Presence of moisture,[object Object]
PROPOSED APPROACH,[object Object],Sample selection,[object Object],Calculation of the mean value and standard deviation of the gray values of the pixels of the sample ,[object Object],Region Growing,[object Object]
ROUTE FOLLOWED BY THE ALGORITHM,[object Object]
REGIONS EXAMINED BY THE ALGORITHM ACCORDING TO THE POSITION OF THE CANDIDATE PIXEL,[object Object]
Connectivity criterion: At least two pixels of the examined region must belong to the object,[object Object],Homogeneity criterion: The arithmetic (mr) mean of the gray values of the candidate and the identified as object pixels of the currently examined regionmust belong in the confidence interval given by Equation [1],[object Object],ms - z ssmr ms + z ss			[1],[object Object],CRITERIA EVALUATED BY THE ALGORITHM,[object Object]
DETECTION RESULTS FOR A SINGLE OBJECT,[object Object]
Definition of the area to be processed,[object Object],Sample selection for the objects that must be detected,[object Object],Application of an adaptive thresholding technique,[object Object],Improvement of the binary image which is yielded by the thresholding process,[object Object],Exploitation of the improved binary image for the automated sample selection,[object Object],Application of the algorithm for each one of the objects detected,[object Object],AUTOMATION OF THE PROCESS,[object Object]
EXAMPLE,[object Object]
INTERFACE OF THE PROGRAM,[object Object]
APPLICATIONS – BYZANTINE MONUMENTS,[object Object]
EXPERIMENTS FOR THE CASE OF THE DOME,[object Object]
EXPERIMENTS FOR THE DECORATIVE ELEMENTS,[object Object]
FINAL RESULTS AND COMPARISON,[object Object]
Tolerance: σ,[object Object],Tolerance: 2σ,[object Object],Tolerance: 3σ,[object Object],EVALUATION,[object Object]
EVALUATION,[object Object]
The proposed method is very flexible and fast,[object Object],The program used for the application of the developed methods offers a wide range of possibilities and is user friendly,[object Object],The accuracy of the restitution is objectively characterized as satisfactory for the case of Byzantine monuments,[object Object],The restitution process is accelerated by a factor of at least 1.7,[object Object],CONCLUSIONS,[object Object]
Examination of more complex properties such as texture,[object Object],Thorough review and further development of the fully automated method,[object Object],Detailed research of the properties of other kinds of monuments,[object Object],SUGGESTIONS ,[object Object]
Thank you for your attention!,[object Object]
VECTORIZATION,[object Object]
ARCH OF ADRIANOS,[object Object]
NATIONAL THEATRE,[object Object]
BYZANTINE WALL(DAPHNI MONASTERY),[object Object]

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  • 25.
  • 26.
  • 27.