Genetic Algorithm based solver for jigsaw puzzles with piece size auto-detection.
Clone repo:
git clone https://github.com/nemanja-m/gaps.git
cd gaps
Install requirements:
poetry install
Install project locally:
pip install .
To create puzzle from image use gaps create
gaps create images/pillars.jpg puzzle.jpg --size=64
will create puzzle with 240 pieces from images/pillars.jpg
where each piece is
64x64 pixels.
Run gaps create --help
for detailed help.
NOTE: Created puzzle image dimensions may be smaller then original image depending on the given puzzle piece size. Maximum possible rectangle is cropped from original image.
In order to solve puzzles, use gaps run
:
gaps run puzzle.jpg solution.jpg --generations=20 --population=600
This will start genetic algorithm with initial population of 600 and 20 generations.
Following options are provided:
Option | Description |
---|---|
--size |
Puzzle piece size in pixels |
--generations |
Number of generations for genetic algorithm |
--population |
Number of individuals in population |
--debug |
Show the best solution after each generation |
Run gaps run --help
for detailed help.
If you don't explicitly provide --size
argument to gaps run
, piece size will
be detected automatically.
However, you can always provide gaps run
with --size
argument explicitly:
gaps run puzzle.jpg solution.jpg --generations=20 --population=600 --size=48
NOTE: Size detection feature works for the most images but there are some edge cases where size detection fails and detects incorrect piece size. In that case you can explicitly set piece size.
The termination condition of a Genetic Algorithm is important in determining when a GA run will end. It has been observed that initially, the GA progresses very fast with better solutions coming in every few iterations, but this tends to saturate in the later stages where the improvements are very small.
gaps
will terminate:
- when there has been no improvement in the population for
X
iterations, or - when it reaches an absolute number of generations
BibTeX entry:
@article{Sholomon2016,
doi = {10.1007/s10710-015-9258-0},
url = {https://doi.org/10.1007/s10710-015-9258-0},
year = {2016},
month = feb,
publisher = {Springer Science and Business Media {LLC}},
volume = {17},
number = {3},
pages = {291--313},
author = {Dror Sholomon and Omid E. David and Nathan S. Netanyahu},
title = {An automatic solver for very large jigsaw puzzles using genetic algorithms},
journal = {Genetic Programming and Evolvable Machines}
}
This project as available as open source under the terms of the MIT License