Spectral indexes for identification of nitrogen deficiency in maize

ABSTRACT Image analysis can provide information extracted from the leaves of crops, and contribute to early identification of nutrient deficiency. The objective of this study was to recognize nutritional nitrogen (N) patterns in maize plants, at the V4 and V7 stages, using digital image analysis bas...

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Main Authors: Liliane Maria Romualdo, Pedro Henrique de Cerqueira Luz, Murilo Mesquita Baesso, Fernanda de Fatima da Silva Devechio, Jessica Angela Bet
Format: Article
Language:English
Published: Universidade Federal do Ceará
Series:Revista Ciência Agronômica
Subjects:
Online Access:http://www.scielo.br/scielo.php?script=sci_arttext&pid=S1806-66902018000200183&lng=en&tlng=en
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spelling doaj-60c862e020184152bb8104b650b425332020-11-25T00:26:19ZengUniversidade Federal do CearáRevista Ciência Agronômica 1806-669049218319110.5935/1806-6690.20180021S1806-66902018000200183Spectral indexes for identification of nitrogen deficiency in maizeLiliane Maria RomualdoPedro Henrique de Cerqueira LuzMurilo Mesquita BaessoFernanda de Fatima da Silva DevechioJessica Angela BetABSTRACT Image analysis can provide information extracted from the leaves of crops, and contribute to early identification of nutrient deficiency. The objective of this study was to recognize nutritional nitrogen (N) patterns in maize plants, at the V4 and V7 stages, using digital image analysis based on spectral indexes. The experiment was carried out in a greenhouse under hydroponic cultivation. Treatments consisted of a completely randomized design, in a 4 × 2 factorial arrangement, with four replications. The factors were constituted by the doses of N (0; 3.0; 6.0 e 15 mmol L-1) combined at V4 and V7. In each stage, digital images were taken of leaf blades, with subsequent chemical composition and image analysis. For image recognition and classification, a vector of characteristics based on the spectral indexes was used as follows: excess of green, normalized red, normalized green and red-green ratio, and the combination among them. Additionally, extracted blocks of 9 × 9, 20 × 20 and 40 × 40 pixels on original images were used. The N content in the leaf blade, the dry mass of the plants and the external critical level of N in the nutrient solution were determined for result validation, based on 90% dry matter production. Maximum the global accuracy rate for N patterns was 80 and 93% at V4 and V7, respectively. The use of combined spectral indexes provided better classification performance, and the 9 × 9 pixel image block appeared more adequate for differentiation among the doses of N.http://www.scielo.br/scielo.php?script=sci_arttext&pid=S1806-66902018000200183&lng=en&tlng=enZea mays L.Image analysisMineral nutritionImage processing.
collection DOAJ
language English
format Article
sources DOAJ
author Liliane Maria Romualdo
Pedro Henrique de Cerqueira Luz
Murilo Mesquita Baesso
Fernanda de Fatima da Silva Devechio
Jessica Angela Bet
spellingShingle Liliane Maria Romualdo
Pedro Henrique de Cerqueira Luz
Murilo Mesquita Baesso
Fernanda de Fatima da Silva Devechio
Jessica Angela Bet
Spectral indexes for identification of nitrogen deficiency in maize
Revista Ciência Agronômica
Zea mays L.
Image analysis
Mineral nutrition
Image processing.
author_facet Liliane Maria Romualdo
Pedro Henrique de Cerqueira Luz
Murilo Mesquita Baesso
Fernanda de Fatima da Silva Devechio
Jessica Angela Bet
author_sort Liliane Maria Romualdo
title Spectral indexes for identification of nitrogen deficiency in maize
title_short Spectral indexes for identification of nitrogen deficiency in maize
title_full Spectral indexes for identification of nitrogen deficiency in maize
title_fullStr Spectral indexes for identification of nitrogen deficiency in maize
title_full_unstemmed Spectral indexes for identification of nitrogen deficiency in maize
title_sort spectral indexes for identification of nitrogen deficiency in maize
publisher Universidade Federal do Ceará
series Revista Ciência Agronômica
issn 1806-6690
description ABSTRACT Image analysis can provide information extracted from the leaves of crops, and contribute to early identification of nutrient deficiency. The objective of this study was to recognize nutritional nitrogen (N) patterns in maize plants, at the V4 and V7 stages, using digital image analysis based on spectral indexes. The experiment was carried out in a greenhouse under hydroponic cultivation. Treatments consisted of a completely randomized design, in a 4 × 2 factorial arrangement, with four replications. The factors were constituted by the doses of N (0; 3.0; 6.0 e 15 mmol L-1) combined at V4 and V7. In each stage, digital images were taken of leaf blades, with subsequent chemical composition and image analysis. For image recognition and classification, a vector of characteristics based on the spectral indexes was used as follows: excess of green, normalized red, normalized green and red-green ratio, and the combination among them. Additionally, extracted blocks of 9 × 9, 20 × 20 and 40 × 40 pixels on original images were used. The N content in the leaf blade, the dry mass of the plants and the external critical level of N in the nutrient solution were determined for result validation, based on 90% dry matter production. Maximum the global accuracy rate for N patterns was 80 and 93% at V4 and V7, respectively. The use of combined spectral indexes provided better classification performance, and the 9 × 9 pixel image block appeared more adequate for differentiation among the doses of N.
topic Zea mays L.
Image analysis
Mineral nutrition
Image processing.
url http://www.scielo.br/scielo.php?script=sci_arttext&pid=S1806-66902018000200183&lng=en&tlng=en
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