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Provide optimized and robust methods to detect and decode aztec codes by using opencv and zxing-cpp in combination and to transcode UIC918-3 and UIC918-9 information into json structure

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karlheinzkurt/ticket-decoder

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x86_64-ubuntu22-clang14 x86_64-ubuntu22-gcc11 x86_64-macos14-clang15

Overview

Provide optimized and robust methods to detect and decode aztec codes by using opencv and zxing-cpp in combination with signature validation and to transcode UIC918 information into json structure. (UIC918-3 and UIC918-9)

Looking for build instructions? Take a look at the end of this document!

ticket-decoder

Decoder can detect and decode uic918 content from aztec codes from given input images/pdfs, verifies content and prints json result on stdout or dumps it into file.

Check ticket-decoder --help for arguments.

ticket-decoder

ticket_decoder Python module

Provided python API is in an early state and supports 2 methods right now only.

  • decode_uic918('...') is considered for the use case you decode the raw data from aztec-code in advance via zxing or other aztec-code-decoder of your choice and you want to decode raw UIC918 data to json only. In this case, be careful with the output of the decoder to avoid string encodings like UTF8 or other multi-byte encodings. Ideally try to get access to the raw byte array and just encode those bytes to base64 before passing it to the method. If your aztec-code-decoder provides a string-type only and you are able to pass character-encoding, try using 'ISO 8859-1' and cast the result string to raw bytes.
  • decode_file('...') detects and decodes aztec-codes from a given pdf or image and decodes raw UIC918 data to json. This is using zxing-cpp internally. It returns a json array of size x, while x is the amount of aztec-codes found on input.

To build the module, some tools and dependencies are required. Beside python3 and essential build tools, it is required to have python3-dev installed. In Ubuntu, the following steps should be enough to get it built.

apt-get install --no-install-recommends -y build-essential cmake python3-pip python3-dev python-is-python3

pip3 install conan==1.64.0 numpy
conan profile new ticket-decoder --force --detect
conan profile update settings.compiler.libcxx=libstdc++11 ticket-decoder

. ./setup.Python.sh

Ensure PYTHONPATH is defined to enable Python to discover the ticket_decoder module. Try executing the test-cases.

export PYTHONPATH=`pwd`/build/Release/bin

python3 -m unittest discover -s source/test/python/

When the module has been build successfully, a Python script as shown below should work.

from ticket_decoder import decode_file

result = decode_file('path/2/your/ticket.pdf')
print(result[0] if len(result) > 0 else 'No barcode found or decoding or interpretation failed')

ticket-analyzer

Analyzer is able to scan for aztec codes in images grabbed from camera or from images/pdfs in a folder. It provides a simple interactive mode to visualize detection, image processing and decoding steps and to change some parameters to find optimal setup for detection. This application is considered to optimize default parameters and algorithms for the decoder.

Check ticket-analyzer --help for arguments.

ticket-analyzer

To get a minimal setup for experimentation, do the following:

  • Download UIC918-3 and UIC918-9 sample tickets from https://www.bahn.de/angebot/regio/barcode and extract zip files into folder ./images/
  • Download XML file containing public keys of issuers from https://railpublickey.uic.org/ into folder ./cert/ and name it UIC_PublicKeys.xml
  • Run ./build/Release/bin/ticket-analyzer from workspace folder or use arguments to specify different paths to input files and folders
  • Use following keys to tweak settings:
    • i: Visualize next image processing step
    • I: Visualize previous image processing step
    • c: Visualize next contour detection step
    • C: Visualize previous contour detection step
    • f: Next image input file from image-folder
    • F: Previous image input file from image-folder
    • : Toggle camera device (space)
    • r: Rotate image -1 degree
    • R: Rotate image +1 degree
    • 2: Split image into 2 parts and rotate over parts
    • 4: Split image into 4 parts and rotate over parts
    • s: Scale up image
    • S: Scale down image
    • 0: Reset: Rotation, Scale, Split
    • d: Rotate over available detector implementations
    • p: Assume pure barcode
    • b: Use local average binarizer
    • D: Dump current image into output-folder
    • o: Overlay detected barcode image
    • t: Overlay decoded content or text
  • Check output-folder (./out by default) for intermediate images, raw data files or decoded data in json files

Considerations about optical Resolution

  • Printed code size: 48mm (1.89inch)
  • With 200dpi: 1.89 inch/code * 200 dot/inch ~ 380 dot/code
  • With UIC-918-3: 380 dot / 87 blocks ~ 4.37 dot/block

Record Documentation

U_HEAD / U_TLAY / U_FLEX

Code generation for U_FLEX ASN.1 UPER

# Clones the repository and calls asn1c with matching parameters at the right places
#
./etc/setup.uic-asn1.sh

0080VU

0080BL

Signature Checking / Id-Mapping

Further Documentation and Ticket Samples

Build Instructions

Requirements

  • gcc >= 11, clang >= 14 (other compilers and versions may work but are not tested)

  • conan package manager < 2.0 (https://conan.io/)

  • cmake >= 3.19

  • python3 numpy (boost.python requires numpy for build and unfortunately, it is not possible to disable it via conan config)

Following libraries are used by the project. Usually you should not care about it since conan will do that for you.

  • opencv (image processing)
  • zxing-cpp (barcode/aztec-code decoding)
  • nlohmann_json (json support - output)
  • easyloggingpp (logging)
  • pugixml (xml support - public key file)
  • botan (signature verification)
  • tclap (cli argument processing)
  • gtest (unit testing)
  • poppler (pdf reading/rendering)
  • boost.python (python binding)

Ubuntu jammy

Inside docker build container

In general, when you want to avoid to install additional dependencies like non-default compilers and libraries on your system, consider using one of the build scripts using a docker container to create the build environment.
As long as the conanfile.py is unchanged, you can re-use the container with pre-built dependencies, source code changes are directly mirrored into build environment and artifacts are mirrored back into host system. In case dependencies change, the container gets re-build with updated dependencies.

-> this will install dependencies and run the build inside a ubuntu docker container

  • setup.ubuntu22.gcc11.sh
  • setup.ubuntu22.clang15.sh

When the preparation of the build environment has been successful, it should be possible to build the project by using ./build.sh -j inside the build container.

Take a look into ./build/ folder to discover artifacts. You should be able to execute the executables on host machine as well.

On host machine

When opencv has to be built from source because of missing pre-built package for your arch/os/compiler mix, it might be necessary to install some further xorg/system libraries to make highgui stuff building inside conan install process. To get this handled properly, use the following conan config flags:

  • conf.tools.system.package_manager:mode=install
  • conf.tools.system.package_manager:sudo_askpass=True

as shown below OR install ALL required xorg dependencies manually. For details about specific required packages please check the error message carefully or see the step "Install compiler and stdlib" in ".github/workflows/c-cpp.yml" for a list of dev-package names.

apt-get install --no-install-recommends -y build-essential make cmake git wget python-is-python3 python3-pip python3-dev libgtk2.0-dev

pip3 install conan==1.64.0 numpy
conan profile new --detect --force ticket-decoder
conan profile update settings.compiler.libcxx=libstdc++11 ticket-decoder
conan profile update conf.tools.system.package_manager:mode=install ticket-decoder
conan profile update conf.tools.system.package_manager:sudo_askpass=True ticket-decoder

git clone https://github.com/karlheinzkurt/ticket-decoder.git
cd ticket-decoder
./setup.Release.sh -- -j

etc/install-uic-keys.sh
build/Release/bin/ticket-decoder-test

etc/python-test.sh

MacOS with Apple clang15 (amd64 & arm64)

It might be required for dependencies to get built properly during conan install to have a python command (without 3) in path available. So when you face an error like python: command not found it might be required to create a link via sudo ln -s $(which python3) /usr/local/bin/python since there is no package python-is-python3 in homebrew available, as it is for ubuntu.

xcode-select --install

brew install cmake
pip3 install conan==1.64.0 numpy
conan profile new --detect --force ticket-decoder
conan profile update settings.compiler.version=15.0 ticket-decoder

git clone https://github.com/karlheinzkurt/ticket-decoder.git
cd ticket-decoder
./setup.Release.sh -- -j

etc/install-uic-keys.sh
build/Release/bin/ticket-decoder-test

etc/python-test.sh

Windows

For sure, it should be possible to get it built by using visual compiler and toolchain as well. But I never tried and you might need to modify some build parameters/arguments and you have know (or to find out) how to setup toolchain, conan and cmake in Windows environment. Furthermore, the compiler might complain about things gcc and clang are not complaining about. But when you are an experienced dev, you should be able to get it managed. (support of multiple u_flex versions via asn1c generated and unprefixed C source files in a shared lib makes this a bit harder, most probably, since export/import of shared libs has to be ported to visual compiler world to, but it's possible via crazy macro stuff, i know)

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Provide optimized and robust methods to detect and decode aztec codes by using opencv and zxing-cpp in combination and to transcode UIC918-3 and UIC918-9 information into json structure

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