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Registro Completo |
Biblioteca(s): |
Embrapa Instrumentação. |
Data corrente: |
08/10/2012 |
Data da última atualização: |
16/11/2018 |
Tipo da produção científica: |
Artigo em Periódico Indexado |
Autoria: |
LUENGO, R. de F. A.; CALBO, A. G.; FREITAS, V. M. T. de; MATSUURA, F. C. A. U. |
Afiliação: |
RITA DE FATIMA ALVES LUENGO, CNPH; ADONAI GIMENEZ CALBO, CNPDIA; VINICIUS MELLO TEIXEIRA DE FREITAS, CNPAB; FERNANDO CESAR AKIRA U MATSUURA, SIN. |
Título: |
Evaluation of a box transporter as a harvest aid for some fruit and vegetables in Brazil. |
Ano de publicação: |
2012 |
Fonte/Imprenta: |
Acta Horticulturae, The Hague, v. 1, n. 934, p. 105-110, 2012. Ediçao dos Proceedings of the XXVIII international horticultural congress on science and horticulture for people; proceedings of the international symposium on postharvest technology in the global market - IHC, Lisbon, 2010. Editors M.I. Cantwell, D.P.F. Almeida. |
ISBN: |
978-90-6605-378-6 |
ISSN: |
0567-7572 |
DOI: |
10.17660/ActaHortic.2012.934.10 |
Idioma: |
Inglês |
Palavras-Chave: |
Eficiência de colheita; Handling; Harvest efficiency; Logistics; Manipulação; Perdas pós-colheita. |
Thesagro: |
Ergonomia; Logística. |
Thesaurus Nal: |
Ergonomics; Postharvest losses. |
Categoria do assunto: |
-- |
Marc: |
LEADER 01177naa a2200301 a 4500 001 1935995 005 2018-11-16 008 2012 bl uuuu u00u1 u #d 020 $a978-90-6605-378-6 022 $a0567-7572 024 7 $a10.17660/ActaHortic.2012.934.10$2DOI 100 1 $aLUENGO, R. de F. A. 245 $aEvaluation of a box transporter as a harvest aid for some fruit and vegetables in Brazil.$h[electronic resource] 260 $c2012 650 $aErgonomics 650 $aPostharvest losses 650 $aErgonomia 650 $aLogística 653 $aEficiência de colheita 653 $aHandling 653 $aHarvest efficiency 653 $aLogistics 653 $aManipulação 653 $aPerdas pós-colheita 700 1 $aCALBO, A. G. 700 1 $aFREITAS, V. M. T. de 700 1 $aMATSUURA, F. C. A. U. 773 $tActa Horticulturae, The Hague$gv. 1, n. 934, p. 105-110, 2012. Ediçao dos Proceedings of the XXVIII international horticultural congress on science and horticulture for people; proceedings of the international symposium on postharvest technology in the global market - IHC, Lisbon, 2010. Editors M.I. Cantwell, D.P.F. Almeida.
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Embrapa Instrumentação (CNPDIA) |
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| Acesso ao texto completo restrito à biblioteca da Embrapa Milho e Sorgo. Para informações adicionais entre em contato com cnpms.biblioteca@embrapa.br. |
Registro Completo
Biblioteca(s): |
Embrapa Milho e Sorgo. |
Data corrente: |
26/01/2006 |
Data da última atualização: |
28/05/2018 |
Tipo da produção científica: |
Artigo em Periódico Indexado |
Autoria: |
ZANDONADI, R. S.; PINTO, F. A. C.; SENA JUNIOR, D. G; QUEIROZ, D. M.; VIANA, P. A.; MANTOVANI, E. C. |
Afiliação: |
PAULO AFONSO VIANA, CNPMS; EVANDRO CHARTUNI MANTOVANI, CNPMS. |
Título: |
Identification of lesser cornstalk borer-attacked maize plants using infrared images |
Ano de publicação: |
2005 |
Fonte/Imprenta: |
Biosystems Engineering, London, v. 91, n. 4, p. 433-439, 2005. |
DOI: |
10.1016/j.biosystemseng.2005.05.002 |
Idioma: |
Inglês |
Conteúdo: |
The lesser cornstalk borer (Elasmopalpus lignosellus) is a pest that damages the maize plants in the initial growing phase causing stand reduction that can result in yield decrease. The machine vision system could be an alternative for the development of site-specific management of this pest. The objective of this work was to develop and evaluate a machine vision algorithm for identifying maize plants attacked by lesser cornstalk borer based on colour infrared images. To develop the algorithm, images of 40 maize plants were taken on different days after emergency. The plants were grown in pots, and 25 of them were infested with lesser cornstalk borer larvae and 15 were left healthy. The algorithm had three stages: leaf identification, image block classification, and plant classification. In the leaf identification stage, the plant leaves were segmented by thresholding the normalised difference vegetation index image. For the block classification stage, different neural network architectures and block sizes were tested for identification of non-attacked and attacked plant image blocks. Then, in the plant classification stage, discriminating functions were used to classify the scene as either a healthy or an attacked plant. The algorithm performance was compared with the performance of four human experts by using the Kappa coefficient of agreement. The largest size of image block, 9 by 9 pixels, was chosen because of its less computational exigency and because its performance was not significantly different from the other tested block sizes. The algorithm performance was significantly better than just one human expert. The Kappa coefficients for the algorithm and the three best human experts were 63.0 and 49.7%, respectively. The overall accuracy of the algorithm and the best three human experts was 81.6 and 73.4%, respectively. (c) 2005 Silsoe Research Institute. All rights reserved Published by Elsevier Ltd. MenosThe lesser cornstalk borer (Elasmopalpus lignosellus) is a pest that damages the maize plants in the initial growing phase causing stand reduction that can result in yield decrease. The machine vision system could be an alternative for the development of site-specific management of this pest. The objective of this work was to develop and evaluate a machine vision algorithm for identifying maize plants attacked by lesser cornstalk borer based on colour infrared images. To develop the algorithm, images of 40 maize plants were taken on different days after emergency. The plants were grown in pots, and 25 of them were infested with lesser cornstalk borer larvae and 15 were left healthy. The algorithm had three stages: leaf identification, image block classification, and plant classification. In the leaf identification stage, the plant leaves were segmented by thresholding the normalised difference vegetation index image. For the block classification stage, different neural network architectures and block sizes were tested for identification of non-attacked and attacked plant image blocks. Then, in the plant classification stage, discriminating functions were used to classify the scene as either a healthy or an attacked plant. The algorithm performance was compared with the performance of four human experts by using the Kappa coefficient of agreement. The largest size of image block, 9 by 9 pixels, was chosen because of its less computational exigency and because its performance ... Mostrar Tudo |
Thesagro: |
Milho; Praga de planta; Zea mays. |
Categoria do assunto: |
-- |
Marc: |
LEADER 02632naa a2200229 a 4500 001 1489194 005 2018-05-28 008 2005 bl uuuu u00u1 u #d 024 7 $a10.1016/j.biosystemseng.2005.05.002$2DOI 100 1 $aZANDONADI, R. S. 245 $aIdentification of lesser cornstalk borer-attacked maize plants using infrared images$h[electronic resource] 260 $c2005 520 $aThe lesser cornstalk borer (Elasmopalpus lignosellus) is a pest that damages the maize plants in the initial growing phase causing stand reduction that can result in yield decrease. The machine vision system could be an alternative for the development of site-specific management of this pest. The objective of this work was to develop and evaluate a machine vision algorithm for identifying maize plants attacked by lesser cornstalk borer based on colour infrared images. To develop the algorithm, images of 40 maize plants were taken on different days after emergency. The plants were grown in pots, and 25 of them were infested with lesser cornstalk borer larvae and 15 were left healthy. The algorithm had three stages: leaf identification, image block classification, and plant classification. In the leaf identification stage, the plant leaves were segmented by thresholding the normalised difference vegetation index image. For the block classification stage, different neural network architectures and block sizes were tested for identification of non-attacked and attacked plant image blocks. Then, in the plant classification stage, discriminating functions were used to classify the scene as either a healthy or an attacked plant. The algorithm performance was compared with the performance of four human experts by using the Kappa coefficient of agreement. The largest size of image block, 9 by 9 pixels, was chosen because of its less computational exigency and because its performance was not significantly different from the other tested block sizes. The algorithm performance was significantly better than just one human expert. The Kappa coefficients for the algorithm and the three best human experts were 63.0 and 49.7%, respectively. The overall accuracy of the algorithm and the best three human experts was 81.6 and 73.4%, respectively. (c) 2005 Silsoe Research Institute. All rights reserved Published by Elsevier Ltd. 650 $aMilho 650 $aPraga de planta 650 $aZea mays 700 1 $aPINTO, F. A. C. 700 1 $aSENA JUNIOR, D. G 700 1 $aQUEIROZ, D. M. 700 1 $aVIANA, P. A. 700 1 $aMANTOVANI, E. C. 773 $tBiosystems Engineering, London$gv. 91, n. 4, p. 433-439, 2005.
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