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Autor
Mieszkalski Leszek (Warsaw University of Life Sciences - SGGW, Poland)
Tytuł
Geometrical Model of Lemon Fruit
Geometryczny model owoców cytryn
Źródło
Agricultural Engineering, 2017, R. 21, nr 2 (162), s. 101-110, tab., rys., bibliogr. 31 poz.
Słowa kluczowe
Rolnictwo, Owoce, Cechy fizyczne
Agriculture, Fruit, Physical properties
Uwagi
summ., streszcz.
Abstrakt
Przedstawiono propozycję metody matematycznego modelowania kształtu cytryn z wykorzystaniem krzywych Béziera. Do weryfikacji metody modelowania wybrano cytryny odmian Lisbon, Verna, Genoa. Kontur cytryny, który jest jej południkiem, opisano trzema gładko połączonymi krzywymi Béziera. Podstawą do opisu konturów cytryn są ich fotografie wykonane w 10 zmieniających się co 36o położeniach. Krzywe Béziera aproksymujące południki leżące na powierzchni cytryn są ich modelami 3D. Przedstawiona metoda może być stosowana do matematycznego modelowania kształtu cytryn.(abstrakt oryginalny)

A proposal of a mathematical method of modelling of the lemon shape with Bézier's curves was presented. Lisbon, Verna, Genoa lemon cultivars were selected for verification of the modelling method. The lemon contour, which is its meridian, was described with three smoothly combined Bézier's curves. Pictures taken in 10 locations changing every 36o were the basis for description of lemon contours. Bézier's curves, which approximate meridians located on the surface of lemons, are their 3D models. The presented method may be applied for mathematical modelling of the lemon shape.(original abstract)
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Bibliografia
Pokaż
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Cytowane przez
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ISSN
2083-1587
Język
eng
URI / DOI
http://dx.doi.org/10.1515/agriceng-2017-0020
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