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Simple python image viewer, largely intended for astronomical applications

Project description

ztv - astronomical image viewer

ztv is an astronomical image viewer designed to be used from a python command line for display and analysis.

ztv is useful as-is for display and simple analysis of images already loaded in to numpy arrays, as well as FITS files. It can display the most recently acquired image by watching a directory for new FITS files to appear or watching a single FITS file for when it changes. It can also receive new images via an ActiveMQ message stream.

ztv is intended for real-time display and analysis. ztv is not intended to produce publication quality figures.

ztv comes with a number of built-in control panels, for: - selecting input source (FITS file, auto-reload from FITS file, etc) - selecting a frame to subtract (e.g. sky or dark) and a flat field frame to divide by - setting colormap, stretch, and lower/upper limits - doing basic slice plots, statistics, and aperture photometry. Additional panels can be written and added, for e.g. controlling a camera. (One example add-on panel is included that generates faked images in the FITS format.)

If proper FITS header keywords are available, ztv will display the ra/dec of the cursor point.

Examples of usage

To launch:

import ztv
z = ztv.ZTV()

To load an image in a numpy array:

import numpy as np
im = np.random.normal(size=[10, 256, 256])  # create a 3-d image stack
z.load(im)

You can now look at your data, manipulate display parameters, etc all using the gui elements. All of these elements are accessible through the tabbed control panels. You can also switch amongst the control panel tabs by cmd-alt-# where # is the number of the panel, starting from 1. Or, by cmd-[ and cmd-] to move left/right amongst the tabs. You can even switch tabs from the command line api, e.g.:

z.control_panel('Color')

To change cursor mode, press cmd-# where # is the number shown in the pop-up menu that’s available by right-clicking in the primary image area:

To manipulate display parameters:

z.cmap('gist_heat')
z.minmax(0., 4.)
z.scaling('Sqrt')
z.xy_center(100, 100)
z.zoom(5.)

To set up a statistics box and see the GUI output (note that output is also returned to your command line as a dict):

z.stats_box(xrange=[80, 100], yrange=[100,120], show_overplot=True)
z.control_panel('Stats')

There’s a lot more you can do from the command line if you play with ztv, especially in an exploration-friendly environment like ipython. And, anything you can do from the command line can be done from the GUI.

Download an iconic FITS image from the web and display it:

from urllib import urlopen
from zipfile import ZipFile
from StringIO import StringIO
remote_url = 'http://www.spacetelescope.org/static/projects/fits_liberator/datasets/eagle/656nmos.zip'
local_filename = '/tmp/hst-eagle-nebula-656nmos.fits'
zip = ZipFile(StringIO(urlopen(remote_url).read()))
zip_filename = zip.filelist[0].filename
open(local_filename, 'w').write(zip.open(zip_filename).read())
z.load(local_filename)
z.scaling('Log')
z.minmax(0, 500)

We can even do a little aperture photometry while we’re here:

z.cmap('gray')
z.xy_center(624, 524)
z.zoom(4)
z.minmax(0, 1000)
z.scaling('Asinh')
z.control_panel('phot')
z.aperture_phot(xclick=614, yclick=516, show_overplot=True)

And, of course, you can adjust the window size to suit your needs, either smaller:

or larger:

Example of an Add-on Control Panel

One of the motivating use cases for ztv was real-time quick-look of incoming images and the ability to extend the basic installation, including instrumentat control. An example of this is that ztv will be used to both control and inspect the images from a slit viewing camera on a spectrograph of mine. To demonstrate this extensibility, there’s a simple example in ztv_examples/fits_faker_panel/:

from ztv_examples.fits_faker_panel.launch_ztv import launch_ztv
z = launch_ztv()
z.start_fits_faker()

Our fake example data looks a lot better when we subtract the sky and divide the flat field (someone needs to blow the dust off that fake dewar window…):

z.control_panel('Source')
z.sky_frame(True)
z.flat_frame(True)

Installation and Dependencies

ztv uses several packages, including wxPython, astropy. These should be automatically installed if you install ztv from pypi with:

pip install ztv

You can also grab source code from github.

Note that ztv was developed and tested on OS X.

Example of installation using Mac OS X’s included Python

The following steps worked on a fresh install of OS X Yosemite 10.10.5 on 2015-09-06:

  • Install Xcode from the App Store

  • Launch Xcode one time to accept licenses

  • Install pip and other necessary python packages

Run following command lines in a terminal:

curl -o ~/Downloads/get-pip.py https://bootstrap.pypa.io/get-pip.py
sudo -H python ~/Downloads/get-pip.py
sudo -H pip install matplotlib
sudo -H pip install astropy
sudo -H pip install astropy-helpers

(This is necessary because package isn’t properly signed & is an old-style package, see here. Obviously may need to update exact file path to the pkg.)

sudo installer -pkg /Volumes/wxPython3.0-osx-3.0.2.0-cocoa-py2.7/wxPython3.0-osx-cocoa-py2.7.pkg -target /

Finally, install ztv:

sudo -H pip install ztv

Example of installation into anaconda python distribution

The following was tested on a fresh install of OS X 10.10.5 on 2015-09-08.

Install Xcode from the App Store and launch Xcode one time to accept its licenses.

Download Anaconda-2.3.0-MacOSX-x86_64.sh from here.

bash Anaconda-2.3.0-MacOSX-x86_64.sh
source ~/.bash_profile
conda create --name ztv-test wxpython matplotlib
source activate ztv-test
pip install ztv

Example of installation into a Homebrew python distribution

The following was tested on a fresh install of OS X 10.10.5 on 2015-09-07.

Install Xcode from the App Store and launch Xcode one time to accept its licenses.

Install Homebrew with the one-line ruby command on Homebrew’s home page

Install python & other necessary bits with the following commands.

brew install python
brew install wxpython
pip install numpy
pip install ztv

Note that numpy is explicitly installed first using pip install numpy before ztv is installed. During testing on OS X 10.10.5 on 2015-09-07 allowing the numpy dependency to be automatically filled by pip install ztv resulted in an installation error that does not occur if you follow the above sequence.

Linux/Ubuntu

I tested briefly on Ubuntu 14.04. ztv basically works, although the pulldown colormap menus will not have bitmaps of the colormaps. Also, (at least on my testing virtual machine) the performance of ztv was much laggier than on my main OS X laptop. For the colormaps you could try looking at this link, but it didn’t work on my test system.

Background

In graduate school in the late 1990’s I learned IDL and used Aaron Barth’s ATV extensively. I even contributed a little to a now-outdated version of ATV, adding 3-d image stack capability. ATV was and is incredibly useful for quick-looks at image data, analysis, and all the things you want when working with typical astronomical image data.

After graduate school I began migrating toward python and away from IDL. I’ve written about this choice elsewhere, but some of the basic reasons were to avoid IDL licensing issues and being beholden to one company. (To be fair, how much I pay every year to keep my IDL license current has always been reasonable. It helps that my license has some obscure history to it that makes the maintenance fees moderate. But, at any time they could raise the prices on me massively. And, I wanted to use a language that could effectively be on every machine I touch, from my main laptop to an embedded server.)

In python there are already a multitude of possible image viewers. Many of which are great and can do much of what I needed. (See next section for some links.) But, inevitably as I’ve played with them I’ve found they each doesn’t scratch my itch in some way. I wanted something that worked exactly the way I wanted, with the right (for me) mix of complexity and simplicity. I need day-to-day image quicklook from the python command-line, e.g. while I’m developing some new image processing algorithm or to check on last night’s data. But, I also need to be able to easily adapt my viewer to other situations, including real-time use on a slit-viewing camera, quick-reduction of incoming data, etc.. So, I wrote ztv.

The name ztv is an obvious play off of ATV. And, “z” is my daughter’s middle initial.

Other Image Viewers You Should Check Out

(If your favorite isn’t on this list, please email hroe@hroe.me to get it added.)

Acknowledgements

Thank you to Aaron Barth for his original ATV. Thank you to all the numerous people who have put so much effort in to all the packages that make my work not only easier but possible. I especially thank the developers of astropy and its associated packages. e.g. It’s an amazing thing to do correct FITS coordinate conversions in one line of code.

Author

Henry Roe (hroe@hroe.me)

License

ztv is licensed under the MIT License, see LICENSE.txt. Basically, feel free to use any or all of this code in any way. But, no warranties, guarantees, etc etc..

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