References
- Barbieri, V. H. B., J. M. Q. Luz, C. H. Brito, J. M. Duarte, L. S. Gomes, and D. G. Santana. 2005. Sweet corn hybrids productivity and industrial yield as a function of spacing and plant population. Horticultura Brasileira 23 (3):826–30. doi: https://doi.org/10.1590/S0102-05362005000300027.
- Barman, U., and R. D. Choudhury. 2020. Smartphone image based digital chlorophyll meter to estimate the value of citrus leaves chlorophyll using Linear Regression, LMBP-ANN and SCGBP-ANN. Journal of King Saud University – Computer and Information Sciences 33 (3):1–13. doi: https://doi.org/10.1016/j.jksuci.2020.01.005.
- Borin, A. L. D. C., R. M. Q. Quintão Lana, and H. S. Pereira. 2010. Absorption, accumulation and export of macronutrients in sweet corn cultivated under field conditions. Ciência e Agrotecnologia 34 (spe):1591–7. doi: https://doi.org/10.1590/S1413-70542010000700001.
- Bullock, D. G., and D. S. Anderson. 1998. Evaluation of the Minolta SPAD‐502 chlorophyll meter for nitrogen management in corn. Journal of Plant Nutrition 21 (4):741–55. doi: https://doi.org/10.1080/01904169809365439.
- Carmo, M. S., S. C. S. Cruz, E. J. Souza, L. F. C. Campos, and C. G. Machado. 2012. Sources and doses of nitrogen en the desenvelopment of culture endproductivity of sweet corn (Zea mays convar. saccharata var. rugosa). Bioscience Journal 28 (1):223–31.
- Cruz, C. A., N. B. Meneses, T. P. L. Cunha, R. H. D. Nowaki, and J. C. Barbosa. 2015. Influence of amount and parceling of nitrogen fertilizer on productivity and industrial revenue of sweet corn (Zea mays L.). Australian Journal of Crop Science 9 (10):895–900.
- Cruz, C. 2014. Produtividade e rendimento industrial do milho doce irrigado em função de dose e parcelamento de nitrogênio. Dissertação (Mestrado em Agronomia) - Faculdade de Ciências Agrárias e Veterinárias, Universidade Estadual Paulista. Júlio Mesquita Filho
- Abd Djawad, Y., H. Rehman, O. Jumadi, M. Tufail, S. Anwar, and N. Bourgougnon. 2020. Discrimination of nitrogen concentration of fertilized corn with extracted algae and polymer based on its leaf color images. Ingénierie des systèmes d information 25 (3):303–9. doi: https://doi.org/10.18280/isi.250303.
- Doi, R. 2012. Quantification of leaf greenness and leaf spectral profile in plant diagnosis using an optical scanner. Ciênc. agrotec 36 (3):309–17. doi: https://doi.org/10.1590/S1413-70542012000300006.
- Dong, T., J. Shang, J. M. Chen, J. Liu, B. Qian, B. Ma, M. J. Morrison, C. Zhang, Y. Liu, Y. Shi, et al. 2019. Assessment of portable chlorophyll meters for measuring crop leaf chlorophyll concentration. Remote Sensing 11 (22):2706. doi: https://doi.org/10.3390/rs11222706.
- Dos Santos, C. L., T. L. Roberts, and L. C. Purcell. 2020. Leaf nitrogen sufficiency level guidelines for midseason fertilization in corn. Agronomy Journal. doi: https://doi.org/10.1002/agj2.20526.
- Gupta, D. S., Y. Ibaraki, and A. K. Pattanayak. 2013. Development of a digital image analysis method for real-time estimation of chlorophyll content in micropropagated potato plants. Plant Biotechnology Reports 7 (1):91–7. doi: https://doi.org/10.1007/s11816-012-0240-5.
- Edalat, M., R. Naderi, and T. P. Egan. 2019. Corn nitrogen management using NDVI and SPAD sensor-based data under conventional vs. reduced tillage systems. Journal of Plant Nutrition 42 (18):2310–22. doi: https://doi.org/10.1080/01904167.2019.1648686.
- Fontes, P. C. R. 2016. Nutrição mineral de plantas: Anamnese e diagnóstico. Viçosa: Editora Arka.
- França, S., J. Mielniczuk, L. M. G. Rosa, H. Bergamaschi, and J. I. Bergonci. 2011. Nitrogen available to maize: Absorption, growth and yield. Revista Brasileira de Engenharia Agrícola e Ambiental 15 (11):1143–51. doi: https://doi.org/10.1590/S1415-43662011001100006.
- Gao, L., W. Li, U. Ashraf, W. Lu, Y. Li, C. Li, G. Li, G. Li, and J. Hu. 2020. Nitrogen fertilizer management and maize straw return modulate yield and nitrogen balance in sweet corn. Agronomy 10 (3):362. doi: https://doi.org/10.3390/agronomy10030362.
- Godinho, M. S., R. O. Pereira, K. O. Ribeiro, F. Schimidt, A. E. Oliveira, and S. B. Oliveira. 2008. Carbonated soft drink classification based on image analysis and PCA. Química Nova 31 (6):1485–9. doi: https://doi.org/10.1590/S0100-40422008000600039.
- Jha, S. K., N. K. Singh, and P. K. Agrawal. 2016. Complementation of sweet corn mutants: A method for grouping sweet corn genotypes. Journal of Genetics 95 (1):183–7. doi: https://doi.org/10.1007/s12041-015-0608-8.
- Kovács, P., and T. J. Vyn. 2017. Relationships between ear‐leaf nutrient concentrations at silking and corn biomass and grain yields at maturity. Agronomy Journal 109 (6):2898–906. doi: https://doi.org/10.2134/agronj2017.02.0119.
- Li, D., C. Li, Y. Yao, M. Li, and L. Liu. 2020. Modern imaging techniques in plant nutrition analysis: A review. Computers and Electronics in Agriculture 174:105459. doi: https://doi.org/10.1016/j.compag.2020.105459.
- Lima, C. P., C. Backes, D. M. Fernandes, A. J. M. Santos, L. J. G. Godoy, and R. L. V. Bôas. 2012. Leaves reflectance index of the bermuda grass to evaluate the nutritional status in nitrogen. Ciência Rural 42 (9):1568–74. doi: https://doi.org/10.1590/S0103-84782012005000062.
- Mercado-Luna, A., E. Rico-García, A. Lara-Herrera, G. Soto-Zarazúa, R. Ocampo-Velázquez, R. Guevara-González, G. Herrera-Ruiz, and I. Torres-Pacheco. 2013. Nitrogen determination on tomato (Lycopersicon esculentum Mill.) seedlings by color image analysis (RGB). African Journal of Biotechnology 9 (33):5326–32.
- Mohammed, A. A., Z. M. Majid, S. A. S. Kasnazany, S. J. Salih, S. B. Mustafa, and O. A. Salih. 2017. Growth and yield quality of sweet corn, as influenced by nitrogen fertilization levels in Sulaimani Region. Iraqi Journal of Agricultural Science 48 (6):1582–9.
- Naik, A. A., M. S. Reddy, P. R. Babu, and P. Kavitha. 2019. Effect of plant density and nitrogen management on growth, yield and economics of sweet corn (Zea mays var. Saccharata). Journal of Pharmaceutical Innovation 8 (6):839–42.
- Nelson, D. W., and L. E. Sommers. 1973. Determination of total nitrogen in plant material. Agronomy Journal 65 (1):109–12. doi: https://doi.org/10.2134/agronj1973.00021962006500010033x.
- Okumura, R. S., D. C. Mariano, A. A. N. Franco, P. V. C. Zaccheo, and T. O. Zorzenoni. 2013. Sweet corn: Genetic aspects, agronomic and nutritional traits. Revista Brasileira de Tecnologia Aplicada nas Ciências Agrárias 6 (1):105–14. doi: https://doi.org/10.5777/paet.v6i1.2166.
- Oplanic, M., A. S. Ilak-Peršurić, D. Ban, L. Rozman, and D. Žnidarčič. 2008. Economic analysis of different sweet corn varieties production. Cereal Research Communications 36:1847–50. doi: https://doi.org/10.1556/CRC.36.2008.
- Putra, B. T. W., and P. Soni. 2020. Improving nitrogen assessment with an RGB camera across uncertain natural light from above-canopy measurements. Precision Agriculture 21 (1):147–59. doi: https://doi.org/10.1007/s11119-019-09656-8.
- Rambo, L., P. R. F. Silva, M. L. Strieder, L. Sangoi, C. Bayer, and G. Argenta. 2007. Monitoring plant and soil nitrogen status to predict nitrogen fertilization in corn. Pesquisa Agropecuária Brasileira 42 (3):407–17. doi: https://doi.org/10.1590/S0100-204X2007000300015.
- Rhezali, A., and M. Rabii. 2020. Evaluation of a digital camera and a smartphone application, using the dark green color index, in assessing maize nitrogen status. Communications in Soil Science and Plant Analysis 51 (14):1946–59. doi: https://doi.org/10.1080/00103624.2020.1808013.
- Romualdo, L. M., P. H. C. Luz, F. F. S. Devechio, M. A. Marin, A. M. G. Zúñiga, O. M. Bruno, and V. R. Herling. 2014. Use of artificial vision techniques for diagnostic of nitrogen nutritional status in maize plants. Computers and Electronics in Agriculture 104:63–70. doi: https://doi.org/10.1016/j.compag.2014.03.009.
- Rorie, R. L., L. C. Purcell, M. Mozaffari, D. E. Karcher, C. A. King, M. C. Marsh, and D. E. Longer. 2011. Association of “greenness” in corn with yield and leaf nitrogen concentration. Agronomy Journal 103 (2):529–35. doi: https://doi.org/10.2134/agronj2010.0296.
- Rosa, N. K. F., L. J. G. Godoy, A. T. Perez, C. R. Campos, and A. K. Kiyomura. 2015. Imagem digital da folha do milho como diagnóstico do teor de nitrogênio e clorofila. XXXV Congresso Brasileiro de Ciência do Solo
- Saiz-Fernández, I., N. De Diego, M. C. Sampedro, A. Mena-Petite, A. Ortiz-Barredo, and M. Lacuesta. 2015. High nitrate supply reduces growth in maize, from cell to whole plant. Journal of Plant Physiology 173:120–9. doi: https://doi.org/10.1016/j.jplph.2014.06.018.
- Schneider, C. A., W. S. Rasband, and K. W. Eliceiri. 2012. NIH Image to ImageJ: 25 years of image analysis. Nature Methods 9 (7):671–5. doi: https://doi.org/10.1038/nmeth.2089.
- Segatto, C., R. Conte, C. R. Lajús, and G. L. Luz. 2017. Relationship of reading of portable chlorophyll meter with contents of extractable chlorophyll and leaf nitrogen in maize. Scientia Agraria Paranaensis 16:253–9. doi: https://doi.org/10.18188/1983-1471/sap.v16n1p253-259.
- Taiz, L., E. Zeiger, I. M. Møller, and A. Murphy. 2017. Fisiologia e desenvolvimento vegetal, vol. 6. Edição. Porto Alegre: Editora Artmed.
- Toth, C., and G. Jóźków. 2016. Remote sensing platforms and sensors: A survey. ISPRS Journal of Photogrammetry and Remote Sensing 115:22–36. doi: https://doi.org/10.1016/j.isprsjprs.2015.10.004.
- Umbarkar, S. P., A. P. Wagh, P. S. Umbarkar, N. V. Mane, and S. P. Deokar. 2020. Effect of different levels of nitrogen and potassium on soil and plant nutrient analysis of sweet corn. Journal of Pharmacognosy and Phytochemistry 9 (6):1135–7.
- Vakilian, K. A., and J. Massah. 2017. A farmer-assistant robot for nitrogen fertilizing management of greenhouse crops. Computers and Electronics in Agriculture 139:153–63. doi: https://doi.org/10.1016/j.compag.2017.05.012.
- Vibhute, A., and K. Bodhe. 2013. Color image processing approach for nitrogen estimation of vineyard. International Journal of Agricultural Science and Research 3 (3):189–95.
- Zucareli, C., J. H. B. Bazzo, J. B. Silva, D. S. Costa, and I. C. B. Fonseca. 2018. Nitrogen rates and side-dressing timing on sweet corn seed production and physiological potential. Revista Caatinga 31 (2):344–51. doi: https://doi.org/10.1590/1983-21252018v31n210rc.