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Automated Coin Grader. Ping Gallivan Xiang Gao Eric Heinen Akarsh Sakalaspur. Overview. Introduction Technical report - histograms -edge Detection -web Interface Conclusion Demo. Long Term Goal of Project.
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Automated Coin Grader Ping Gallivan Xiang Gao Eric Heinen Akarsh Sakalaspur
Overview • Introduction • Technical report -histograms -edge Detection -web Interface • Conclusion • Demo
Long Term Goal of Project • Develop a system that will be used to grade, appraise and authenticate valuable collectibles items such as rare coins providing consistent and repeatable results.
The Need for anAutomated Coin Grader • Unreliable results from manual grading • Value of the coins • Grading judgment changes from person to person • Fakes are plentiful • Many different denominations of coins • The rare coin market is dynamic and with significant changes occurring every week or so
Goals for our project • Develop an Automated Coin Grading System • Web based Coin Grading Quiz
Tools Used • Java • Java Script • HTML • C++ • Imaging Processing Packages
Architectural Designof System Overview Scanner Image Processor DB Extracts features Scans Output System Display Grades
Creating Database • Obtain a Coin Image (.gif) • 36 Coins Histograms • 36 Coin Edge Detection Images • Distance Measurements
Image Processing • Hue: the color reflected from or transmitted through an object. • Saturation: Saturation- the strength or purity of a color • Brightness: Brightness- the relative lightness or darkness of a color
Image Processing Measure HistogramObtain statistical data on the scanned pixels in the image in terms of the Hue, Saturation & Brightness vectors
Distance MatrixThe statistical data collected in step 2 allows us to determine which coins are similar to others in our database in terms of known grade.
Benefits of the Quiz Site • Educate and attract new collectors with a fun and interactive web interface • Acclimate the public and the coin grading industry to the idea of electronic grading
Image Processing Edge Detection Edge Detection allows us to look at a coin in a 3D view and pickup additional features.
Analysis • “..nothing can compare to examining a coin in person. “ • Four distinct factors • Surface Preservation • Strike • Lustre • Eye-Appeal
Surface Preservation - This includes the presence of bagmarks, hairlines from cleaning or mishandling, and other imperfections, whether mint caused or man made. • Strike - Refers to the sharpness and completeness of detail, with the normal characteristics of that particular type, date and mint mark taken into account. • Lustre - This encompasses the brilliance, sheen and contrast of the coin, again taking the normal characteristics of the particular issue into account • Eye-Appeal - That certain aesthetic appeal that results from the combination of all of the coin's qualities.
Process • Single image of the coin under defined lighting conditions should be captured in digital form using a high resolution camera. • Various portions of the captured images are to be computer enhanced to bring out important features of the coin. • The key regions of the coin need to be examined in great detail to identify, classify, measure, and score all flaws. • A light flow and reflectance analysis should be used to precisely measure the mirror as well as the inherent lustre of the coin.
Future Work • Expand image processing to include advanced feature recognition beyond HSB and Edge Detection. • Increase the database to include a larger sample set and other denominations. • Design an intuitive user interface for scanning and grading. • Move closer towards automated grading • Secure funding to cover the costs of equipment & software required
Future Work • Key components of the coin including obverse and reverse marks, strike, lustre, eye appeal, mirror, toning, and exceptional conditions need to be considered to arrive at a set of ”expert rules”. • Expert Rules – Final Grade
Conclusion • what does the future have in store for the grading of coins? • Aid the human graders in making a final determination of the grade of the coin • Computer grading systems can be highly consistent, accuracy of about 90% • Image archiving will store one or more images of the coin for future reference • Reduces turn around time and cost