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Census Data Capture Challenge Intelligent Document Capture Solution

UNSD Workshop - Minsk Dec 2008. Census Data Capture Challenge Intelligent Document Capture Solution. Amir Angel Director of Government Projects. The evolution of data capture in census projects. Five steps:. From OCR into IDR Solution. eFLOW.

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Census Data Capture Challenge Intelligent Document Capture Solution

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  1. UNSD Workshop - Minsk Dec 2008 Census Data Capture Challenge Intelligent Document Capture Solution Amir Angel Director of Government Projects

  2. The evolution of data capture in census projects Five steps: From OCR into IDR Solution eFLOW

  3. The evolution of data capture in census projects Key From Paper Key From Image • Manual data entry (Key from paper) • Slow process • High error rate in the data entry process • Recruitment, training and management of personnel • Key from Image: • Archive • Approx 20% faster than key from paper

  4. The evolution of data capture in census projects OMR OMR (Hardware readers for checkbox) • Requires special scanners and specially printed forms • Cannot handle handwritten/printed data • Forms are not user-friendly • OMR requires more answers => more space => increased paper expenditures => more handling and printing costs • Not flexible, difficult to adjust to other applications once census is over • No possibility to add business rules: imputation, validations, coding

  5. The evolution of data capture in census projects Automated Data Capture Requires less human intervention, enables to complete the census data capture much faster (less space, less salaries, less hardware) Full flexibility in the type of data gathered (checkbox, OMR, handwritten, alpha and numeric, barcode…) Ensures data integrity – enables the use of automatic AND manual: online validations, exception handling, coding The most advanced and proven technology for Censuses, recommended by the UN and used by all modern countries for census projects Creates a correlation between the image and the actual form Remote capabilities enable all forms to be scanned locally and then sent to a central site for processing Automated Data Capture eFLOW 5

  6. Intelligent Data Capture The evolution of data capture in census projects Intelligent data capture platform (IDR) by using OCR/ICR/OMR/PDA/Web/email: • Automated data capture + • Automatic classification for documents • understands and differentiates between various types of documents and languages and Based on state-of-the-art Machine Learning algorithms • Artificial intelligence algorithms which provides enough information for the system to find the location of the fields on its own eFLOW

  7. Traditional Data Capture Back-Office Mail Room Scanning Data Entry End Users Document prep Sorting Manual Key from image

  8. Intelligent Document Capture Back-Office Mail Room Scanning Data Entry End Users Document prep No sorting Reduce manual data entry by 40-70% Increase accuracy and consistency

  9. India 2001 Turkey 1997 Brazil 2000 South Africa 2001 Ireland 2002 Italy 2002 Cyprus 2002 Turkey 2000 Kenya 2000 Slovak Republic 2001 Hong Kong 2001 Thailand 2008(Community) Slovenia 2006 Hong Kong 2006 South Africa Survey 2007 Ireland 2006 9

  10. Automated Data Capture = time saving Manual Saving of 25% Saving of 50% (Source: CSO – Central Statistic Office Ireland)

  11. The technology is there • No need to invent the wheel • Reducing risks by using an ‘Off the shelf’ technologies.

  12. Data Types OCR ICR OMR

  13. *=Unrecognized Character ICR A * C * E F 1 2 3 4 5 * 7 Automatic Recognition

  14. Improve Recognition – Voting mechanism

  15. Voting Single Engine vs. Virtual Engines

  16. Figure Of Merit Example A system recognizes 90% of the characters contained in a batch, but misclassifies 4% 90 - (10*4) = 50 The Figure Of Merit in this example is 50 A system recognizes 80% of the characters contained in a batch, but misclassifies 1% 80- (10*1) = 70 The Figure Of Merit in this example is 50 The second system is more efficient

  17. Benefits of Multiple ICRs 2 8 9 5 6 3 7 4 3 1 6 7 8 5

  18. Unique Tiling station – Checking for false positives • Identify false positives • Alpha & Numeric fields • Highlight for verifications • Quality control for ICR

  19. Engine Result 1 25***8 2 2*5378 3 253478 4 2*34*8 Voting Methods Example • Assume we have a V. engine that includes 4 engines • We want to identify the following number: 253478 • The results of each engine are displayed on the right • The final results of the V. engines will be: • Safe: 2****8 • Normal: 25**78 • Majority:253478 • Order: 255378 • Equalizer: ??????

  20. ICR 1 ICR 2 ICR 3 ICR 4 Majority = 3 Safe = * Processing Example 3 3 8 3

  21. Automatic Recognition Time+ Completion Time+Correction Time =THROUGHPUT

  22. Fuzzy/Approximate Search Recognition Image Completion

  23. Image Recognition Completion

  24. Other Approaches • Auto Coding • Coding tasks and data validations performed on the data capture platform: a ‘cost-effective’ solution • Use artificial intelligent & statistic software's for “understand” sentences • Q: “What do you do for living?” • A: “I am guiding children” “Teacher” 2030 • Use Approximate Search tools for improving results via DB (Exorbyte)

  25. Process integrality, Questioner integrity - a work flow according to the client needs MFlexibilityctivator Export Scanning OCR Validation 25

  26. Flexibility

  27. Flexibility

  28. Census Data Capture Platform Thank You

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