DOKK / manpages / debian 10 / montage / mViewer.1.en
MVIEWER(1) Montage MVIEWER(1)

mViewer - Render multi-dimensional images and large-scale images

mViewer generates a JPEG image file from a FITS file (or a set of three FITS files in full color). A data range for each image can be defined, and the data can be stretched by any power of the log() function (including zero: linear) or using custom gaussian histogram equalization algorithms. Pseudo-color color tables can be applied in single-image mode.

mViewer can also generate overlays on the image of coordinate grids, source catalogs (with scaled symbols), image outlings from metadata tables, plus various markers and labels.

Along with a few other Montage modules, mViewer can be wrapped to support interactive image analysis from Python or through AJAX web interfaces.

The functionality of mViewer goes beyond what is reasonable to capture in a man page. The user is therefore directed to the mViewer documentation suite.

Examples:

To create a grayscale image from a FITS file:

To create a full color image from three co-registered FITS files:

A complex example with a catalog overlay (symbol size, shape and color controlled by table columns), image metadata, a coordinate grid and some custom labeling:

The drizzle algorithm has been implemented but has not been tested in this release.

If a header template contains carriage returns (i.e., created/modified on a Windows machine), the cfitsio library will be unable to read it properly, resulting in the error: [struct stat="ERROR", status=207, msg="illegal character in keyword"]

It is best for the background correction algorithms if the area described in the header template completely encloses all of the input images in their entirety. If parts of input images are "chopped off" by the header template, the background correction will be affected. We recommend you use an expanded header for the reprojection and background modeling steps, returning to the originally desired header size for the final coaddition. The default background matching assumes that there are no non-linear background variations in the individual images (and therefore in the overlap differences). If there is any uncertainty in this regard, it is safer to turn on the "level only" background matching (the "-l" flag in mBgModel.

2001-2015 California Institute of Technology, Pasadena, California

If your research uses Montage, please include the following acknowledgement: "This research made use of Montage. It is funded by the National Science Foundation under Grant Number ACI-1440620, and was previously funded by the National Aeronautics and Space Administration's Earth Science Technology Office, Computation Technologies Project, under Cooperative Agreement Number NCC5-626 between NASA and the California Institute of Technology."

The Montage distribution includes an adaptation of the MOPEX algorithm developed at the Spitzer Science Center.

Dec 2016 Montage 5