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Project's goal

The goal of this project is to provide an easy-to-install set of python bindings around C++ implementations of image processing and computer vision algorithms from Image Processing On Line IPOL.

IPOL is a great source of state-of-art algorithms in the domain of image processing and computer vision. For each accepted paper a demo is made available online which is very valuable as people can quickly test the algorithms without the need to install them on their own machines. However if one wants to reuse some of these algorithms as part of a larger project written in Python, there is still a non negligible cost associated with the process of downloading and compiling each individual code we want to test as well as writing the scripts that generate temporary input files, call the executable with the right arguments and load the results from the generated files. We aim at reducing that cost by proving a pythonic interface to IPOL algorithms through one-line installer.

The goal of the project is not to re-implement algorithm from IPOL in Python or Cython, but only to create interfaces with minimal modification of the original C++ code. The C++ code is not stored in this repository but downloaded during the installation and potential modifications on the C++ code are saved as patches.

Build and test status

Linux , mac Osx (on Travis):

Build Status

Windows (on Appveyor):

Build status

Installation

Linux

using pip

sudo pip install git+git://github.com/martinResearch/PyIPOL.git

local installation

wget https://github.com/martinResearch/PyIPOL/archive/master.zip --no-check-certificate
unzip master.zip 
cd PyIPOL-master
python setup.py build_ext --inplace

Installing only a subset of the papers:

  • download the zip file

      wget https://github.com/martinResearch/PyIPOL/archive/master.zip --no-check-certificate
      unzip master.zip 
      cd PyIPOL-master
    
  • remove from the subfolder ipol/wrappers all the papers you do not want to keep

  • install using

      sudo python setup.py install
    

Windows

the installation functions need to be modified to work on windows

The first steps could be:

  • install Git from here

  • install MinGW + MSYS from here(mingw32-base,mingw32-gcc-g++)

  • install Microsoft Visual Studio Express here

  • try nmake in command line ?

  • try make in command in MSYS terminal ?

    pip install git+git://github.com/martinResearch/PyIPOL.git

Using only cython bindingsmay help to avoid the need to install visual studio express or MinGW ?

Mac OS

not tested yet

Available bindings

we are using the same categorization as IPOL

  • Blur

    • Total Variation Deconvolution using Split Bregman on IPOL
  • Color and Contrast

    • Automatic Color Enhancement (ACE) and its Fast Implementation on IPOL
  • Denoising

    • Implementation of the "Non-Local Bayes" (NL-Bayes) Image Denoising Algorithm on IPOL
    • Rudin-Osher-Fatemi Total Variation Denoising using Split Bregman on IPOL
    • DCT Image Denoising: a Simple and Effective Image Denoising Algorithm on IPOL
    • Non-Local Means Denoising on IPOL
  • Inpainting

    • Variational Framework for Non-Local Inpainting on IPOL
  • Image comparison

    • An Analysis of the SURF Method on IPOL
    • ASIFT: An Algorithm for Fully Affine Invariant Comparison on IPOL
  • Optical Flow

    • TV-L1 Optical Flow Estimation on IPOL
    • Robust Optical Flow Estimation on IPOL
  • Segmentation and Edges

    • A Review of Classic Edge Detectors on IPOL
    • Chan-Vese Segmentation on IPOL
    • LSD: a Line Segment Detector on IPOL
  • Stereovision

    • Stereo Disparity through Cost Aggregation with Guided Filter on IPOL

Examples

you can run an example directly from python

import ipol.wrappers.Automatic_Color_Enhancement_and_its_Fast_Implementation.examples as ex
ex.example()

you can find the example file and display the source of the example using

import ipol.wrappers.Automatic_Color_Enhancement_and_its_Fast_Implementation.examples as ex
import inspect
print inspect.getsourcefile(ex)
print '------------------------------------'
print inspect.getsource(ex)

you can run all the examples using

import ipol.wrappers
ipol.wrappers.run_all_examples()

Related projects

  • the IPOL in-browser demos can be downloaded an run locally using a local cherrypy based server and the code [here](https://githua matlb.com/carlodef/ipol_demo). Maybe that code could be used to help to write the python interfaces.
  • Some Matlab interfaces to IPOL algorithms written by Paul-Darius Sarmadi during a summer internship in 2014 are available here. This project contains a report with guidelines to make IPOL code that can easily be interfaced with MATLAB.

Limitations and possible improvements

  • IPOL now accepts Matlab code. We will have to call an octave interpreter from python.

  • When the code has been written with files as input/outputs it might be difficult to create an nice python interface without modifying the code. Maybe using memory-mapped files could be a solution to avoid writing files to disk. However a direct interface without memory copies should be preferred when possible. (NOTE: the visible python interface must be independent of the underlying technique for the binding. Thus, even if the algorithms are called internally by direct c/python bindings or using temporary files, the interface is exactly the same. Designing this interface is an entirely independent task than implementeing it. The interface is more important than the implementation, thus we may start by the simplest possible implementation).

  • As we do not store the C++ code in the repository, modifications in the compressed files on IPOL may break the bindings. We may need to store the IPOL codes in an other Git repository (or another branch?) to make things more robust. (NOTE: this cannot happen, because the compressed files in ipol are frozen and will never change).

  • We could provide some PyQt widgets and some python tools provide a user experience that is closer to the online interactive demos, with buttons and sliders to set up the parameters. (NOTE: ok, but this should be a separate project. The python binding should be useful in a headless server without Qt libraries).

  • we can add an options to use a folder mounted in the RAM in order for the executables to read an write in RAM, for example using this or this on linux. But it might be difficult to make this system cross platform. On windows, one option could be to use ImDisk

troubleshooting

  • if you get an error like ImportError: /usr/lib/python2.7/dist-packages/cv2.so: undefined symbol: _ZN2cv23adaptiveBilateralFilterERKNS_11_InputArrayERKNS_12_OutputArrayENS_5Size_IiEEddNS_6Point_IiEEi you can start python as a super user.

  • if you get errors with Permission denied when running examples you may need to run python in super user mode. I am not sure how to change the permission of the files during the installation in order to avoid that

Contributing

It might be a good idea to start with the most cited IPOL articles see here

Wrapping an executable

The easiest way to create interface to some IPOL code is to call an executable with temporary files.

  • fork the project on github

  • get a local copy of the repository

      git clone https://github.com/yourUserName/PyIPOL.git
    
  • make a copy of the folder PyIPOL/new_wrappers/new_paper_example in PyIPOL/new_wrappers and rename it with the name of the paper you are adding, replacing spaces by underscore and removing special characters

      cd PyIPOL/new_wrapper
      cp new_wrapper_example name_of_you_paper_with_underscores
    
  • with the new folder, modify the content of the file install.py

    • change the url of the zip file containing the c++ code for that paper
    • look at the name of the folder within the zip file and modify the end of the line that set up the variable zip_subfolder in order to point to that folder after decompression of the zip file
    • change the compilation line if needed (often make -f makefile.gcc, look at the readme in the source zip file for that paper)
  • test the installation in place

      PyIPOL/new_wrappers$ python test_install.py 
    

    you should have the source code and the compiled executable in a subfolder of PyIPOL/ipol/csources

  • edit example.py by replacing the string new_paper_name by the name of the name of the paper you are adding with the underscores.

  • modify the content of wrapper.py by changing the name of the function , the list of its argument, and calling the executable with the right set of arguments and temporary file names.

  • modify examples.py to test the new wrapper and test it until it works using the following line:

      PyIPOL/new_wrappers$ python test_wrapper.py
    
  • edit example.py by replacing the string new_wrappers by wrappers and move your new wrapper into the folder PyIPOL/wrappers.

  • test the PyIPOL installation and the examples without being in th PyIPOL folder (in order to test the version that is copied in /usr/local/lib/python2.7/dist-packages/ and check that nothing breaks because of wrong relative paths)

      path/PyIPOL$ sudo python setup.py install
      path/PyIPOL$ cd ..
      path$  python
      >>> import ipol
      >>> import ipol.wrappers.my_wrapper_name.examples as ex
      >>> ex.example()
    
  • add the paper in the list of bindings in the readme.md file

  • if that works, push on github and try to reinstall ipol from your repo and run all the examples sudo pip unsintall ipol sudo pip install git+git://github.com/yourGithubUserName/PyIPOL.git sudo python import ipol.wrappers ipol.wrappers.run_all_examples()

  • if that works make a pull request on github. Thank you !

Using Cython

follow the same methodology as in the previous section, but copy one of the existing wrapper PyIPOL/wrappers that uses cython (with pxd and pyx files)

TODOS

  • generate a python wheel for windows throught the appveyor and save it in appveyor artifacts, so that a precompiled pyipol can easily be installed using pip
  • generate a python wheel for linux throught travis and upload it in the github repo (see https://stackoverflow.com/questions/12343452/how-to-publish-artifacts-in-travis-ci)
  • improve the module initialization files to get a better autocompletion in wingide or ipython
  • make it work on windows
  • test it on mac OS

Guidelines for IPOL code

  • provide an executable that performs the task without access to the ground truth: In some cases the executable does not provide a direct access to the method. For example the code for BM3D does not provide an executable that takes a noisy image as an input and denoise it. Instead, it takes a ground truth image that isn't noisy, add some noise to it and compares the denoised image with the ground truth image. While it is useful for research purpose, it is useless from a practical point of view because in practice we do not have access to the ground truth when we want to denoise an image.

  • take temporary folder as input: if your executable generates files without giving control of the names to the user, make it possible for the user to specify a folder where these files will be generated (example measures.txt generated by the NL-bayes denoising method). We can use a trick for now which consists in moving in a temporary folder before calling the executable, but this is not very elegant.

  • separate the algorithm implementation from file I/O and options parsing: this will make the cython binding easier to code by avoiding the need of patching the C++ code. This is a standard of good practice in programming and it is already given as a recommendation in the IPOL software guidelines, in section 4.3:c.

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python bindings for Image Processing On Line (IPOL) codes

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