Quantifying hail size distributions from the sky – application of drone aerial photogrammetry

<p>A new technique, named “HailPixel”, is introduced for measuring the maximum dimension and intermediate dimension of hailstones from aerial imagery. The photogrammetry procedure applies a convolutional neural network for robust detection of hailstones against complex backgrounds and an edge...

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Main Authors: J. S. Soderholm, M. R. Kumjian, N. McCarthy, P. Maldonado, M. Wang
Format: Article
Language:English
Published: Copernicus Publications 2020-02-01
Series:Atmospheric Measurement Techniques
Online Access:https://www.atmos-meas-tech.net/13/747/2020/amt-13-747-2020.pdf
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spelling doaj-6b9529192c15482aad7ff9fcdda1f6ef2020-11-25T01:45:03ZengCopernicus PublicationsAtmospheric Measurement Techniques1867-13811867-85482020-02-011374775410.5194/amt-13-747-2020Quantifying hail size distributions from the sky – application of drone aerial photogrammetryJ. S. Soderholm0M. R. Kumjian1N. McCarthy2P. Maldonado3M. Wang4Meteorological Institute, University of Bonn, Bonn, GermanyDepartment of Meteorology and Atmospheric Science, The Pennsylvania State University, State College, USASchool of Earth and Environmental Science, The University of Queensland, St Lucia, AustraliaCentro de Investigaciones del Mar y la Atmósfera, University of Buenos Aires, Buenos Aires, ArgentinaNorthraine Pty. Ltd., Melbourne, Australia<p>A new technique, named “HailPixel”, is introduced for measuring the maximum dimension and intermediate dimension of hailstones from aerial imagery. The photogrammetry procedure applies a convolutional neural network for robust detection of hailstones against complex backgrounds and an edge detection method for measuring the shape of identified hailstones. This semi-automated technique is capable of measuring many thousands of hailstones within a single survey, which is several orders of magnitude larger (e.g. <span class="inline-formula">10 000</span> or more hailstones) than population sizes from existing sensors (e.g. a hail pad). Comparison with a co-located hail pad for an Argentinian hailstorm event during the RELAMPAGO project demonstrates the larger population size of the HailPixel survey significantly improves the shape and tails of the observed hail size distribution. When hail fall is sparse, such as during large and giant hail events, the large survey area of this technique is especially advantageous for resolving the hail size distribution.</p>https://www.atmos-meas-tech.net/13/747/2020/amt-13-747-2020.pdf
collection DOAJ
language English
format Article
sources DOAJ
author J. S. Soderholm
M. R. Kumjian
N. McCarthy
P. Maldonado
M. Wang
spellingShingle J. S. Soderholm
M. R. Kumjian
N. McCarthy
P. Maldonado
M. Wang
Quantifying hail size distributions from the sky – application of drone aerial photogrammetry
Atmospheric Measurement Techniques
author_facet J. S. Soderholm
M. R. Kumjian
N. McCarthy
P. Maldonado
M. Wang
author_sort J. S. Soderholm
title Quantifying hail size distributions from the sky – application of drone aerial photogrammetry
title_short Quantifying hail size distributions from the sky – application of drone aerial photogrammetry
title_full Quantifying hail size distributions from the sky – application of drone aerial photogrammetry
title_fullStr Quantifying hail size distributions from the sky – application of drone aerial photogrammetry
title_full_unstemmed Quantifying hail size distributions from the sky – application of drone aerial photogrammetry
title_sort quantifying hail size distributions from the sky – application of drone aerial photogrammetry
publisher Copernicus Publications
series Atmospheric Measurement Techniques
issn 1867-1381
1867-8548
publishDate 2020-02-01
description <p>A new technique, named “HailPixel”, is introduced for measuring the maximum dimension and intermediate dimension of hailstones from aerial imagery. The photogrammetry procedure applies a convolutional neural network for robust detection of hailstones against complex backgrounds and an edge detection method for measuring the shape of identified hailstones. This semi-automated technique is capable of measuring many thousands of hailstones within a single survey, which is several orders of magnitude larger (e.g. <span class="inline-formula">10 000</span> or more hailstones) than population sizes from existing sensors (e.g. a hail pad). Comparison with a co-located hail pad for an Argentinian hailstorm event during the RELAMPAGO project demonstrates the larger population size of the HailPixel survey significantly improves the shape and tails of the observed hail size distribution. When hail fall is sparse, such as during large and giant hail events, the large survey area of this technique is especially advantageous for resolving the hail size distribution.</p>
url https://www.atmos-meas-tech.net/13/747/2020/amt-13-747-2020.pdf
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