Rostislav Lán
c6d59dcd2c
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2 years ago | |
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config | 2 years ago | |
res | 2 years ago | |
src | 2 years ago | |
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README.md | 2 years ago |
README.md
About this Project
This project is being developed as a practical part of bachelor's thesis at Brno Universtiy of Technology - Faculty of Information Studies. It is as of now a work in progress, no results guaranteed.
The topic of this thesis is Generating a 3D Fingerprint Model. This application can be used to apply series of image processing filters to a fingerprint image to make it more suitable for conversion to 3D stl model and printing. It also includes the functionality to use generated image as a height map for generating an stl model. This model can either be planar or curved.
Prerequisites
For now this is only viable for ubuntu gnu/linux machines Before cloning repository, you need these to succesfully use the application.
-
python version 3.10 is a requirement might work on earlier python 3 versions
apt install python3.10
-
python graphical modules
pip install numpy matplotlib pillow
Installation
Installation is relatively fast and easy.
-
Clone the repository
git clone ssh://git@strade.fit.vutbr.cz:3022/xlanro00/BP_DP-xlanro00.git
-
Prepare an image file containing fingerprint
-
Run the application
Usage
There are two ways to enter filters
- manually from command line, list filter names and parameters
python src/main.py res/test_fp.png res/test_fp_cpy.png 100 denoise_tv_chambolle iterations=1 weight=0.1 median ksize=3
- manually from preset saved in a json config file, that can be used to create new presets
python src/main.py res/test_fp.png res/test_fp_cpy.png 100 --config config/config.json weak
Configuration
There is an option to input the filter series as a preset to json configuration file.
{
"weak": [
{
"name": "denoise_tv_chambolle",
"sigmaColor": 0.1,
"weight": 0.01,
"sigmaSpace": 3,
"channelAxis": 0,
"iterations": 1
},
{
"name": "median",
"ksize": 3
},
],
"strong": [
...
]
...
}
All the filters used and their parameters will be described in documentation.
Comparison
Image before processing the fingerprint and after applying a presets.
Before | After |
---|---|
Generating STL file
It is possible to generate 3D printable stl planar model using --stl
switch, which requires aditional parameter containing stl filename. Using -p
switch makes the model planar. This is not the main goal of the application.
Additional parameters with model thickness and papilar lines height will be optional.
- Example stl generation
python src/main.py res/test_fp.png res/test_fp_mod.png 508 --config config/config.json weak --stl res/test_fp.stl -p
Generating STL finger model
When --stl
switch is given without -p
, the output model will either be a generated curved finger model, or later (if implemented) a fingerprint mapped to finger model.
Mapping to existing finger model
This section will be added later.
Roadmap
- Load and store image
- Apply basic image processing filters
- Scale the image using given dpi
- Create filter library with more filters
- Add more suitable filters to the library
- Use presets from config files
- Add the option to save current filter preset to config file
- Add the option to modify filter parameters
- Convert the processed image to stl lithophane
- Add the option to curve the lithophane into the shape of a finger
- Add the option to map the lithophane on a given finger model
- Export final model ready for 3D print
Author
Rostislav Lán - xlanro00@stud.fit.vutbr.cz
Supervisor
Ing. Petr Malaník
Links
Project Link: https://strade.fit.vutbr.cz/git/xlanro00/BP_DP-xlanro00