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

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Restitution Automation

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