PatchMatch based Inpainting ===================================== This library implements the PatchMatch based inpainting algorithm. It provides both C++ and Python interfaces. This implementation is heavily based on the implementation by Younesse ANDAM: (younesse-cv/PatchMatch)[https://github.com/younesse-cv/PatchMatch], with some bugs fix. Usage ------------------------------------- You need to first install OpenCV to compile the C++ libraries. Then, run `make` to compile the shared library `libpatchmatch.so`. For Python users (example available at `examples/py_example.py`) ```python import patch_match image = ... # either a numpy ndarray or a PIL Image object. mask = ... # either a numpy ndarray or a PIL Image object. result = patch_match.inpaint(image, mask, patch_size=5) ``` For C++ users (examples available at `examples/cpp_example.cpp`) ```cpp #include "inpaint.h" int main() { cv::Mat image = ... cv::Mat mask = ... cv::Mat result = Inpainting(image, mask, 5).run(); return 0; } ``` README and COPYRIGHT by Younesse ANDAM ------------------------------------- @Author: Younesse ANDAM @Contact: younesse.andam@gmail.com Description: This project is a personal implementation of an algorithm called PATCHMATCH that restores missing areas in an image. The algorithm is presented in the following paper PatchMatch A Randomized Correspondence Algorithm for Structural Image Editing by C.Barnes,E.Shechtman,A.Finkelstein and Dan B.Goldman ACM Transactions on Graphics (Proc. SIGGRAPH), vol.28, aug-2009 For more information please refer to http://www.cs.princeton.edu/gfx/pubs/Barnes_2009_PAR/index.php Copyright (c) 2010-2011 Requirements ------------------------------------- To run the project you need to install Opencv library and link it to your project. Opencv can be download it here http://opencv.org/downloads.html