Fast Dynamic Programming for Elastic Registration of Curves
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DOI Access to Fast Dynamic Programming for Elastic Registration of Curves
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SHA256 Hash
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Fast_Dynamic_Programming.zip
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Fast_Dynamic_Programming.zip
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Complete Metadata
| @type | dcat:Dataset |
|---|---|
| accessLevel | public |
| accrualPeriodicity | irregular |
| bureauCode |
[ "006:55" ] |
| contactPoint |
{ "fn": "Javier Bernal", "hasEmail": "mailto:javier.bernal@nist.gov" } |
| description | This is a software suite for computing optimal diffeomorphisms for elastic registration of curves. Algorithm adapt-DP is based on DP (dynamic programming) restricted to an adapting strip which is able to perform this computation in linear time. Description of Algorithm adapt-DP can be found in "Fast Dynamic Programming for Elastic Registration of Curves", Proceedings of the 2nd International Workshop on Differential Geometry in Computer Vision and Machine Learning (DIFF-CVML'16) in conjunction with Computer Vision Pattern Recognition Conference (CVPR) 2016, Las Vegas, Nevada, June 26-July 1, 2016. The zip file Fast_Dynamic_Programming.zip contains copies of implementation of Algorithm adapt-DP as Fortran files (a Matlab Fortran mex file and a Python compatible Fortran file) for execution with Matlab/Python, Matlab/Python test files for executing adapt-DP Matlab Fortran mex file and Python compatible Fortran file, respectively, example data files, usage instructions in README files, etc. |
| distribution |
[ { "title": "DOI Access to Fast Dynamic Programming for Elastic Registration of Curves", "format": "text/html", "accessURL": "https://doi.org/10.18434/T4/1502501", "description": "DOI Access to Fast Dynamic Programming for Elastic Registration of Curves" }, { "title": "SHA256 Hash", "format": "SHA256", "mediaType": "text/plain", "description": "Hash of the data file", "downloadURL": "https://data.nist.gov/od/ds/6FCA2C44E87B3E49E05324570681DCB11939/Fast_Dynamic_Programming.zip.sha256" }, { "title": "Fast_Dynamic_Programming.zip", "format": "zip archive", "mediaType": "application/zip", "description": "zip file with copies of implementation of Algorithm adapt-DP as Fortran files (a Matlab Fortran mex file and a Python compatible Fortran file) for execution with Matlab/Python, Matlab/Python test file for executing adapt-DP Matlab Fortran mex file and Python compatible Fortran file, respectively, example data files, usage intructions in README files, etc. Algorithm adapt-DP is based on DP (dynamic programming) restricted to an adapting strip for computing in linear time optimal diffeomorphisms for elastic registration of curves. Description of Algorithm adapt-DP can be found in "Fast Dynamic Programming for Elastic Registration of Curves", Proceedings of the 2nd International Workshop on Differential Geometry in Computer Vision and Machine Learning (DIFF-CVML'16) in conjunction with Computer Vision Pattern Recognition Conference (CVPR) 2016, Las Vegas, Nevada, June 26-July 1, 2016.", "downloadURL": "https://data.nist.gov/od/ds/6FCA2C44E87B3E49E05324570681DCB11939/Fast_Dynamic_Programming.zip" }, { "title": "Fast_Dynamic_Programming.zip", "format": "zip file", "mediaType": "application/pdf", "description": "zip file with copies of implementation of Algorithm adapt-DP as Fortran files (a Matlab Fortran mex file and a Python compatible Fortran file) for execution with Matlab/Python, Matlab/Python test file for executing adapt-DP Matlab Fortran mex file and Python compatible Fortran file, respectively, example data files, usage intructions in README files, etc. Algorithm adapt-DP is based on DP (dynamic programming) restricted to an adapting strip for computing in linear time optimal diffeomorphisms for elastic registration of curves. Description of Algorithm adapt-DP can be found in "Fast Dynamic Programming for Elastic Registration of Curves", Proceedings of the 2nd International Workshop on Differential Geometry in Computer Vision and Machine Learning (DIFF-CVML'16) in conjunction with Computer Vision Pattern Recognition Conference (CVPR) 2016, Las Vegas, Nevada, June 26-July 1, 2016.", "downloadURL": "https://math.nist.gov/~JBernal/Fast_Dynamic_Programming.zip" } ] |
| identifier | 6FCA2C44E87B3E49E05324570681DCB11939 |
| keyword |
[ "adapting strip", "dynamic programming", "elastic registration", "shape analysis" ] |
| landingPage | https://data.nist.gov/od/id/6FCA2C44E87B3E49E05324570681DCB11939 |
| language |
[ "en" ] |
| license | https://www.nist.gov/open/license |
| modified | 2018-06-01 00:00:00 |
| programCode |
[ "006:045" ] |
| publisher |
{ "name": "National Institute of Standards and Technology", "@type": "org:Organization" } |
| references |
[ "https://dx.doi.org/10.1109/CVPRW.2016.137" ] |
| theme |
[ "Mathematics and Statistics:Image and signal processing" ] |
| title | Fast Dynamic Programming for Elastic Registration of Curves |