
ui.adsabs.harvard.edu/abs/1996PASP..108..535C/abstract
Preview meta tags from the ui.adsabs.harvard.edu website.
Linked Hostnames
5- 25 links toui.adsabs.harvard.edu
- 3 links towww.si.edu
- 2 links towww.cfa.harvard.edu
- 1 link toadsisdownorjustme.herokuapp.com
- 1 link towww.nasa.gov
Thumbnail
Search Engine Appearance
Parallelization and Algorithmic Enhancements of High Resolution IRAS Image Construction
The Infrared Astronomical Satellite carried out a nearly complete survey of the infrared sky, and the survey data are important for the study of many astrophysical phenomena. However, many data sets at other wavelengths have higher resolutions than that of the co-added IRAS maps, and high resolution IRAS images are strongly desired both for their own information content and their usefulness in correlation studies. The HIRES program was developed by the Infrared Processing and Analysis Center (IPAC) to produce high resolution (~1') images from IRAS data using the Maximum Correlation Method (MCM). We describe the port of HIRES to the Intel Paragon, a massively parallel supercomputer, other software developments for mass production of HIRES images, and the IRAS Galaxy Atlas, a project to map the Galactic plane at 60 and 100 microns. Images produced from the MCM algorithm sometimes suffer from visible striping and ringing artifacts. Correcting detector gain offsets and using a Burg entropy metric in the reconstruction scheme were found to be effective in suppressing these artifacts. A variation of the destriping algorithm was used to subtract zodiacal emission. (SECTION: Computing and Data Analysis)
Bing
Parallelization and Algorithmic Enhancements of High Resolution IRAS Image Construction
The Infrared Astronomical Satellite carried out a nearly complete survey of the infrared sky, and the survey data are important for the study of many astrophysical phenomena. However, many data sets at other wavelengths have higher resolutions than that of the co-added IRAS maps, and high resolution IRAS images are strongly desired both for their own information content and their usefulness in correlation studies. The HIRES program was developed by the Infrared Processing and Analysis Center (IPAC) to produce high resolution (~1') images from IRAS data using the Maximum Correlation Method (MCM). We describe the port of HIRES to the Intel Paragon, a massively parallel supercomputer, other software developments for mass production of HIRES images, and the IRAS Galaxy Atlas, a project to map the Galactic plane at 60 and 100 microns. Images produced from the MCM algorithm sometimes suffer from visible striping and ringing artifacts. Correcting detector gain offsets and using a Burg entropy metric in the reconstruction scheme were found to be effective in suppressing these artifacts. A variation of the destriping algorithm was used to subtract zodiacal emission. (SECTION: Computing and Data Analysis)
DuckDuckGo

Parallelization and Algorithmic Enhancements of High Resolution IRAS Image Construction
The Infrared Astronomical Satellite carried out a nearly complete survey of the infrared sky, and the survey data are important for the study of many astrophysical phenomena. However, many data sets at other wavelengths have higher resolutions than that of the co-added IRAS maps, and high resolution IRAS images are strongly desired both for their own information content and their usefulness in correlation studies. The HIRES program was developed by the Infrared Processing and Analysis Center (IPAC) to produce high resolution (~1') images from IRAS data using the Maximum Correlation Method (MCM). We describe the port of HIRES to the Intel Paragon, a massively parallel supercomputer, other software developments for mass production of HIRES images, and the IRAS Galaxy Atlas, a project to map the Galactic plane at 60 and 100 microns. Images produced from the MCM algorithm sometimes suffer from visible striping and ringing artifacts. Correcting detector gain offsets and using a Burg entropy metric in the reconstruction scheme were found to be effective in suppressing these artifacts. A variation of the destriping algorithm was used to subtract zodiacal emission. (SECTION: Computing and Data Analysis)
General Meta Tags
40- titleParallelization and Algorithmic Enhancements of High Resolution IRAS Image Construction - ADS
- apple-mobile-web-app-titleADS
- application-nameADS
- msapplication-TileColor#ffc40d
- theme-color#ffffff
Open Graph Meta Tags
6- og:typearticle
- og:titleParallelization and Algorithmic Enhancements of High Resolution IRAS Image Construction
- og:site_nameADS
- og:descriptionThe Infrared Astronomical Satellite carried out a nearly complete survey of the infrared sky, and the survey data are important for the study of many astrophysical phenomena. However, many data sets at other wavelengths have higher resolutions than that of the co-added IRAS maps, and high resolution IRAS images are strongly desired both for their own information content and their usefulness in correlation studies. The HIRES program was developed by the Infrared Processing and Analysis Center (IPAC) to produce high resolution (~1') images from IRAS data using the Maximum Correlation Method (MCM). We describe the port of HIRES to the Intel Paragon, a massively parallel supercomputer, other software developments for mass production of HIRES images, and the IRAS Galaxy Atlas, a project to map the Galactic plane at 60 and 100 microns. Images produced from the MCM algorithm sometimes suffer from visible striping and ringing artifacts. Correcting detector gain offsets and using a Burg entropy metric in the reconstruction scheme were found to be effective in suppressing these artifacts. A variation of the destriping algorithm was used to subtract zodiacal emission. (SECTION: Computing and Data Analysis)
- og:urlhttps://ui.adsabs.harvard.edu/abs/1996PASP..108..535C/abstract
Twitter Meta Tags
7- twitter:cardsummary_large_image
- twitter:descriptionThe Infrared Astronomical Satellite carried out a nearly complete survey of the infrared sky, and the survey data are important for the study of many astrophysical phenomena. However, many data sets at other wavelengths have higher resolutions than that of the co-added IRAS maps, and high resolution IRAS images are strongly desired both for their own information content and their usefulness in correlation studies. The HIRES program was developed by the Infrared Processing and Analysis Center (IPAC) to produce high resolution (~1') images from IRAS data using the Maximum Correlation Method (MCM). We describe the port of HIRES to the Intel Paragon, a massively parallel supercomputer, other software developments for mass production of HIRES images, and the IRAS Galaxy Atlas, a project to map the Galactic plane at 60 and 100 microns. Images produced from the MCM algorithm sometimes suffer from visible striping and ringing artifacts. Correcting detector gain offsets and using a Burg entropy metric in the reconstruction scheme were found to be effective in suppressing these artifacts. A variation of the destriping algorithm was used to subtract zodiacal emission. (SECTION: Computing and Data Analysis)
- twitter:titleParallelization and Algorithmic Enhancements of High Resolution IRAS Image Construction
- twitter:site@adsabs
- twitter:domainADS
Link Tags
9- apple-touch-icon/styles/favicon/apple-touch-icon.png
- canonicalhttp://ui.adsabs.harvard.edu/abs/1996PASP..108..535C/abstract
- icon/styles/favicon/favicon-32x32.png
- icon/styles/favicon/favicon-16x16.png
- manifest/styles/favicon/site.webmanifest
Links
32- http://www.cfa.harvard.edu/sao
- http://www.nasa.gov
- http://www.si.edu
- http://www.si.edu/Privacy
- http://www.si.edu/Termsofuse