Assessment of techniques for analyzing snow crystals in two dimensions

Three-dimensional (3-D) snow analysis techniques provide comprehensive and accurate snow microstructure data. Nevertheless, there remains a requirement for less elaborate methods for snow characterization, as numerical snow models such as SNOWPACK are presently based on two-dimensional (2-D) grain a...

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Main Authors: Bartlett, S.J., Rüedi, J.-D, Craig, A., Fierz, C.
Format: Article in Journal/Newspaper
Language:unknown
Published: 2008
Subjects:
Online Access:https://eprints.soton.ac.uk/271559/
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spelling ftsouthampton:oai:eprints.soton.ac.uk:271559 2023-07-30T03:56:16+02:00 Assessment of techniques for analyzing snow crystals in two dimensions Bartlett, S.J. Rüedi, J.-D Craig, A. Fierz, C. 2008 https://eprints.soton.ac.uk/271559/ unknown Bartlett, S.J., Rüedi, J.-D, Craig, A. and Fierz, C. (2008) Assessment of techniques for analyzing snow crystals in two dimensions. Annals of Glaciology, 48, 103-112. Article PeerReviewed 2008 ftsouthampton 2023-07-09T21:36:11Z Three-dimensional (3-D) snow analysis techniques provide comprehensive and accurate snow microstructure data. Nevertheless, there remains a requirement for less elaborate methods for snow characterization, as numerical snow models such as SNOWPACK are presently based on two-dimensional (2-D) grain analysis. We present a detailed assessment of various methods and shape descriptors used for snow characterization from digitized images. Dendricity, the ratio of the square of grain perimeter to its area, allows distinction between new and old snow while sphericity distinguishes between faceted and rounded grains. The concept of sphericity is based on curvature, yet another powerful shape descriptor. However, curvatures obtained from images of disaggregated snow grains depend on both resolution and methods chosen. We compared the standard parabola method with a cubic smoothing spline approach for curvature measurement. Applying both methods to parametrically generated shapes, descriptor values were compared with their analytical counterparts. The spline method was found to be able to measure a wider range of curvatures accurately, but both methods suffered from a filtering effect. Although some descriptor errors were as high as 50%, a method for effectively outlining snow grains was found. As well as assessing the classification potential of 2-D analysis on full samples, new descriptors were also investigated. Article in Journal/Newspaper Annals of Glaciology University of Southampton: e-Prints Soton
institution Open Polar
collection University of Southampton: e-Prints Soton
op_collection_id ftsouthampton
language unknown
description Three-dimensional (3-D) snow analysis techniques provide comprehensive and accurate snow microstructure data. Nevertheless, there remains a requirement for less elaborate methods for snow characterization, as numerical snow models such as SNOWPACK are presently based on two-dimensional (2-D) grain analysis. We present a detailed assessment of various methods and shape descriptors used for snow characterization from digitized images. Dendricity, the ratio of the square of grain perimeter to its area, allows distinction between new and old snow while sphericity distinguishes between faceted and rounded grains. The concept of sphericity is based on curvature, yet another powerful shape descriptor. However, curvatures obtained from images of disaggregated snow grains depend on both resolution and methods chosen. We compared the standard parabola method with a cubic smoothing spline approach for curvature measurement. Applying both methods to parametrically generated shapes, descriptor values were compared with their analytical counterparts. The spline method was found to be able to measure a wider range of curvatures accurately, but both methods suffered from a filtering effect. Although some descriptor errors were as high as 50%, a method for effectively outlining snow grains was found. As well as assessing the classification potential of 2-D analysis on full samples, new descriptors were also investigated.
format Article in Journal/Newspaper
author Bartlett, S.J.
Rüedi, J.-D
Craig, A.
Fierz, C.
spellingShingle Bartlett, S.J.
Rüedi, J.-D
Craig, A.
Fierz, C.
Assessment of techniques for analyzing snow crystals in two dimensions
author_facet Bartlett, S.J.
Rüedi, J.-D
Craig, A.
Fierz, C.
author_sort Bartlett, S.J.
title Assessment of techniques for analyzing snow crystals in two dimensions
title_short Assessment of techniques for analyzing snow crystals in two dimensions
title_full Assessment of techniques for analyzing snow crystals in two dimensions
title_fullStr Assessment of techniques for analyzing snow crystals in two dimensions
title_full_unstemmed Assessment of techniques for analyzing snow crystals in two dimensions
title_sort assessment of techniques for analyzing snow crystals in two dimensions
publishDate 2008
url https://eprints.soton.ac.uk/271559/
genre Annals of Glaciology
genre_facet Annals of Glaciology
op_relation Bartlett, S.J., Rüedi, J.-D, Craig, A. and Fierz, C. (2008) Assessment of techniques for analyzing snow crystals in two dimensions. Annals of Glaciology, 48, 103-112.
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