Multi-Resolution Filtering (MRF) is a method for isolating faint, extended emission in low-resolution images.
Project description
MRF: Multi-Resolution Filtering
Multi-Resolution Filtering: a method for isolating faint, extended emission in Dragonfly data and other low resolution images.
Documentation
Please read the documentation and tutorial at https://mrfiltering.readthedocs.io/en/latest/.
Applications
- Subtract compact objects from low-resolution images (such as Dragonfly) to reveal low surface brightness features.
- Download corresponding high resolution image (HSC, CFHT) of given Dragonfly image.
- Characterize and subtract stellar halos in Dragonfly image.
Examples
This example shows the tidal feature of NGC 5907, described in van Dokkum et al. (2019). The images presented there just used this algorithm. Full resolution Dragonfly images and MRF results can be found here. Check this notebook for more details in how to do MRF using this Python package! :rocket:
This example shows how powerful MRF is in extracting low surface brightness features. The ultra-diffuse galaxy M101-DF3 is revealed by MRF after subtracting compact objects and bright star halos according to van Dokkum et al. (in prep). Check this notebook for more details.
You can also use this script to run the MRF task. Take NGC 5907 as an example:
python mrf-task.py n5907_df_g.fits ngc5907_cfht_g.fits ngc5907_cfht_r.fits ngc5907-task.yaml --galcat='gal_cat_n5907.txt' --output='n5907_g'
Installation
mkdir <install dir>
cd <install dir>
git clone git@github.com:AstroJacobLi/mrf.git
cd mrf
python setup.py install
If you don't have git
configured, you can also download the zip
file directly from https://github.com/AstroJacobLi/mrf/archive/master.zip, then unzip it and install in the same way.
To test if mrf
is installed successfully, import mrf
in Python:
import mrf, os
print(os.path.isfile(mrf.__path__[0] + 'iraf/macosx/x_images.e'))
True
means you have installed mrf
successfully! Bravo!
Python>=3
is needed, but you can try whether mrf
still works under python2
. Check out the dependence of mrf
depends from requirements.txt
.
Acknowledgement
Many scripts and snippets are from kungpao
(written by Song Huang and Jiaxuan Li). Johnny Greco kindly shared his idea of the code structure. Roberto Abbraham found the first few bugs of this package and provided useful solutions. Here we appreciate their help!
Citation
If you use this code, please reference the doi
below, and make sure to cite the dependencies as listed in requirements.
mrf
is a free software made available under MIT License. For details see the LICENSE file.
Copyright 2019 Jiaxuan Li and Pieter van Dokkum.
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.