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      Enhancing grain drying methods with hyperspectral imaging technology: A visualanalysis

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          Abstract

          This study proposes a recognition model for different drying methods of grain using hyperspectral imaging technology (HSI) and multivariate analysis. Fresh harvested grain samples were dried using three different methods: rotating ventilation drying, mechanical drying, and natural drying. Hyperspectral images of the samples were collected within the 388–1065 nm band range. The spectral features of the samples were extracted using principal component analysis (PCA), while the texture features were extracted using second-order probability statistical filtering. Partial least squares regression (PLSR) drying models with different characteristics were established. At the same time, a BPNN (Back-propagation neural network, BPNN) based on spectral texture fusion features was established to compare the recognition effects of different models. Texture analysis indicated that the mean-image had the clearest contour, and the texture characteristics of mechanical drying were smaller than those of rotating ventilation drying and natural drying. The BPNN model established using spectral-texture feature variables showed the best performance in distinguishing grain in different drying modes, with a prediction model obtained based on the correlation coefficients of special variables. The spectral and texture feature values were fused for pseudo-color visualization expression, and the three drying methods of grain showed different colors. This study provides a reference for non-destructive and rapid detection of grain with different drying methods.

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          Highlights

          • HSI can be used as a recognition tool for different drying methods of rice.

          • The texture characteristics are mechanical > rotary ventilation > natural drying.

          • The PLSR model performed best in distinguishing rice from different drying methods.

          • Rice from mechanical, rotary ventilation and natural drying showed different colors.

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          Most cited references38

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          A new deep convolutional neural network for fast hyperspectral image classification

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            Application of Hyperspectral Imaging and Chemometric Calibrations for Variety Discrimination of Maize Seeds

            Hyperspectral imaging in the visible and near infrared (VIS-NIR) region was used to develop a novel method for discriminating different varieties of commodity maize seeds. Firstly, hyperspectral images of 330 samples of six varieties of maize seeds were acquired using a hyperspectral imaging system in the 380–1,030 nm wavelength range. Secondly, principal component analysis (PCA) and kernel principal component analysis (KPCA) were used to explore the internal structure of the spectral data. Thirdly, three optimal wavelengths (523, 579 and 863 nm) were selected by implementing PCA directly on each image. Then four textural variables including contrast, homogeneity, energy and correlation were extracted from gray level co-occurrence matrix (GLCM) of each monochromatic image based on the optimal wavelengths. Finally, several models for maize seeds identification were established by least squares-support vector machine (LS-SVM) and back propagation neural network (BPNN) using four different combinations of principal components (PCs), kernel principal components (KPCs) and textural features as input variables, respectively. The recognition accuracy achieved in the PCA-GLCM-LS-SVM model (98.89%) was the most satisfactory one. We conclude that hyperspectral imaging combined with texture analysis can be implemented for fast classification of different varieties of maize seeds.
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              Classification of hybrid seeds using near-infrared hyperspectral imaging technology combined with deep learning

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                Author and article information

                Contributors
                Journal
                Curr Res Food Sci
                Curr Res Food Sci
                Current Research in Food Science
                Elsevier
                2665-9271
                08 February 2024
                2024
                08 February 2024
                : 8
                : 100695
                Affiliations
                [a ]Huanggang Public Testing Center, No.128 Huangzhou Avenue, Huanggang City, Hubei Province, China
                [b ]Academy of State Administration of Grain, Beijing, 100037, China
                [c ]College of Information and Electrical Engineering, Heilongjiang Bayi Agricultural Reclamation University, Daqing, 163319, Heilongjiang, China
                [d ]Nutrition and Food Science Area, Preventive Medicine and Public Health, Food Science, Toxicology and Forensic Medicine Department, Faculty of Pharmacy, Universitat de València, Avda. Vi-cent Andrés Estellés, s/n, 46100, Burjassot, Spain
                [e ]College of Science, Health, Engineering and Education, Murdoch University, Perth, 6150, Australia
                [f ]Department of Biotechnology, Institute of Agrochemistry and Food Technology-National Re-search Council (IATA-CSIC), Agustin Escardino 7, 46980, Paterna, Spain
                Author notes
                []Corresponding author. Nutrition and Food Science Area, Preventive Medicine and Public Health, Food Science, Toxicology and Forensic Medicine Department, Faculty of Pharmacy, Universitat de València, Avda. Vi-cent Andrés Estellés, s/n, 46100, Burjassot, Spain jianz@ 123456alumni.uv.es
                Article
                S2665-9271(24)00021-2 100695
                10.1016/j.crfs.2024.100695
                10867766
                38362161
                12f45cc1-d405-4b24-8de4-514e4148d3ee
                © 2024 Published by Elsevier B.V.

                This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).

                History
                : 19 September 2023
                : 13 January 2024
                : 7 February 2024
                Categories
                Research Article

                grain drying,hyperspectral imaging,partial least squares model,visualization

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