Machine Learning for Seed Quality Classification: An Advanced Approach Using Merger Data from FT-NIR Spectroscopy and X-ray Imaging
暂无分享,去创建一个
André Dantas de Medeiros | Laércio Junio da Silva | João Paulo Oliveira Ribeiro | Kamylla Calzolari Ferreira | Jorge Tadeu Fim Rosas | Abraão Almeida Santos | Clíssia Barboza da Silva | A. A. Santos | A. D. Medeiros | C. B. Silva | J. Rosas | L. J. Silva | João Paulo Oliveira Ribeiro | L. J. Silva
[1] Isabelle Guyon,et al. An Introduction to Variable and Feature Selection , 2003, J. Mach. Learn. Res..
[2] Mohammed Raju Ahmed,et al. X-ray CT image analysis for morphology of muskmelon seed in relation to germination , 2018, Biosystems Engineering.
[3] Étienne Belin,et al. Recent Applications of Multispectral Imaging in Seed Phenotyping and Quality Monitoring—An Overview , 2019, Sensors.
[4] M. Kim,et al. Rapid assessment of corn seed viability using short wave infrared line-scan hyperspectral imaging and chemometrics , 2018 .
[5] Changyeun Mo,et al. Non-Destructive Sorting Techniques for Viable Pepper (Capsicum annuum L.) Seeds Using Fourier Transform Near-Infrared and Raman Spectroscopy , 2016 .
[6] Hartwig Schulz,et al. Identification and quantification of valuable plant substances by IR and Raman spectroscopy , 2007 .
[7] A. Dell’Aquila,et al. Pepper seed germination assessed by combined X-radiography and computer-aided imaging analysis , 2007, Biologia Plantarum.
[8] Markku Hauta-Kasari,et al. Thermal and hyperspectral imaging for Norway spruce (Picea abies) seeds screening , 2015, Comput. Electron. Agric..
[9] J. Marcos-Filho,et al. Relationship between germination and bell pepper seed structure assessed by the X-ray test , 2011 .
[10] G. W. Small. Spectrometric Identification of Organic Compounds , 1992 .
[11] J. Demattê,et al. Soil subgroup prediction via portable X-ray fluorescence and visible near-infrared spectroscopy , 2020 .
[12] E. Finch-SavageW.. Seed vigour and crop establishment – extending performance beyond adaptation , 2022 .
[13] Yidan Bao,et al. Rapid Classification of Wheat Grain Varieties Using Hyperspectral Imaging and Chemometrics , 2019, Applied Sciences.
[14] Pieter Verboven,et al. Non-destructive porosity mapping of fruit and vegetables using X-ray CT , 2018, Postharvest Biology and Technology.
[15] Fei Liu,et al. Rapid and Nondestructive Measurement of Rice Seed Vitality of Different Years Using Near-Infrared Hyperspectral Imaging , 2019, Molecules.
[16] Ariadne Morbeck Santos Oliveira,et al. Relationship between internal morphology and physiological quality of pepper seeds during fruit maturation and storage , 2020 .
[17] C. Karunakaran,et al. Infrared spectroscopy combined with imaging: A new developing analytical tool in health and plant science , 2016 .
[18] Max Kuhn,et al. Building Predictive Models in R Using the caret Package , 2008 .
[19] André Dantas de Medeiros,et al. IJCropSeed: An open-access tool for high-throughput analysis of crop seed radiographs , 2020, Comput. Electron. Agric..
[20] N. Peixoto,et al. Evaluation of the Desiccation of Campomanesia adamantium Seed Using Radiographic Analysis and the Relation with Physiological Potential , 2019, Agronomy Journal.
[21] Ricard Boqué,et al. Data fusion methodologies for food and beverage authentication and quality assessment - a review. , 2015, Analytica chimica acta.
[22] B. Cho,et al. Determination of viability of Retinispora (Hinoki cypress) seeds using FT-NIR spectroscopy , 2019, Infrared Physics & Technology.
[23] Lei Mei,et al. Determination of gossypol content in cottonseeds by near infrared spectroscopy based on Monte Carlo uninformative variable elimination and nonlinear calibration methods. , 2017, Food chemistry.
[24] Santosh Lohumi,et al. Rapid Measurement of Soybean Seed Viability Using Kernel-Based Multispectral Image Analysis , 2019, Sensors.
[25] M. Kim,et al. Non-destructive technique for determining the viability of soybean (Glycine max) seeds using FT-NIR spectroscopy. , 2018, Journal of the science of food and agriculture.
[26] G. Jiang. Comparison and Application of Non-Destructive NIR Evaluations of Seed Protein and Oil Content in Soybean Breeding , 2020, Agronomy.
[27] C. Pasquini. Near infrared spectroscopy: A mature analytical technique with new perspectives - A review. , 2018, Analytica chimica acta.
[28] Chi Zhang,et al. Recent advances in emerging techniques for non-destructive detection of seed viability: A review , 2019, Artificial Intelligence in Agriculture.
[29] Tingting Wu,et al. Individual wheat kernels vigor assessment based on NIR spectroscopy coupled with machine learning methodologies , 2020 .
[30] Santosh Lohumi,et al. Comparative nondestructive measurement of corn seed viability using Fourier transform near-infrared (FT-NIR) and Raman spectroscopy , 2016 .
[31] D. Dias,et al. Quality classification of Jatropha curcas seeds using radiographic images and machine learning , 2020 .
[32] V. Uarrota,et al. Modelling the vigour of maize seeds submitted to artificial accelerated ageing based on ATR-FTIR data and chemometric tools (PCA, HCA and PLS-DA) , 2020, Heliyon.