ainxt
banner

Passport OCR

Passport OCR (Optical Character Recognition) is a technology designed to extract text data from scanned or digital images of passports. This technology facilitates the automatic capture of crucial information such as the passport number, holder's name, date of birth, nationality, and passport expiry date from passport images.

Steps on How Passport OCR Works:

  • 1.
    Users upload scanned or digital images of passports to the Passport OCR system.
  • 2.
    Passport OCR analyzes the image and extracts text data using advanced OCR algorithms.
  • 3.
    Extracted text data undergoes verification to ensure accuracy and completeness.
  • 4.
    Verified data is then presented in a structured format for further processing or storage.
Explore API

Integrate Passport OCR

Sign up on our dashboard and test our API instantly for free

Streamline Workflows

Streamline Workflows

Eliminate manual reconciliation of data across multiple documents.

Prevent fraudsters.

Prevent fraudsters.

Secure your services by allowing only genuine customers access, thus safeguarding against fraudulent activities.

Trustworthy Verification

Trustworthy Verification

Verify all customer-provided information to onboard legitimate and accurate customers.

Instant Verification

Instant Verification

Optimize your time and effort by integrating the appropriate APIs. Data processing takes just a second, eliminating the need for manual review.

Use Cases Of Passport OCR

Border Control and Immigration

Identity Verification for Travel and Visa Applications

Security Checks at Airports and Ports

Passport Renewal and Issuance Processes

Hotel Check-in and Guest Registration

Frequently Asked Questions

Passport OCR (Optical Character Recognition) is a technology that automatically extracts text data from scanned or digital images of passports.

ready to take your business to new heights

See the Future of Innovation:

Request Your FREE DEMO Today! Experience our cutting-edge solutions firsthand and transform your business.