2016
DOI: 10.3390/app6060183
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Maize Seed Variety Classification Using the Integration of Spectral and Image Features Combined with Feature Transformation Based on Hyperspectral Imaging

Abstract: Hyperspectral imaging (HSI) technology has been extensively studied in the classification of seed variety. A novel procedure for the classification of maize seed varieties based on HSI was proposed in this study. The optimal wavelengths for the classification of maize seed varieties were selected using the successive projections algorithm (SPA) to improve the acquiring and processing speed of HSI. Subsequently, spectral and imaging features were extracted from regions of interest of the hyperspectral images. P… Show more

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Cited by 56 publications
(28 citation statements)
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“…In the past, selection of corn varieties possessing high lodging resistance depended on counting lodged plants by harvest [4]. This method, however, is disadvantageous, as a high coefficient of variation is frequently produced by various uncontrolled environmental factors such as wind and rain storms [5][6][7]. For instance, a harsh wind storm may lead to flattening of a whole corn field irrespective of the lodging resistance of stalks in the field, and therefore makes it hard to discriminate stronger varieties from weaker ones [8][9][10].…”
Section: Introductionmentioning
confidence: 99%
“…In the past, selection of corn varieties possessing high lodging resistance depended on counting lodged plants by harvest [4]. This method, however, is disadvantageous, as a high coefficient of variation is frequently produced by various uncontrolled environmental factors such as wind and rain storms [5][6][7]. For instance, a harsh wind storm may lead to flattening of a whole corn field irrespective of the lodging resistance of stalks in the field, and therefore makes it hard to discriminate stronger varieties from weaker ones [8][9][10].…”
Section: Introductionmentioning
confidence: 99%
“…The spectral analysis method reflects the difference in the internal physical structure and the chemical composition of seed varieties through spectral information, which has the advantages of being fast, accurate, and nondestructive [12]; it has been applied to multiple tasks related to seeds, such as the identification of soybean [13,14], rice [6] and maize [15][16][17] seed varieties, the identification of nontransgenic and transgenic seeds [18][19][20], the identification of seed geographical sources [21], the identification of infected germ seeds [22], the identification of infected pest seeds and healthy seeds [23], identification of the year of seeds [24,25], and the determination of tomato [26], soybean [27,28], corn [28], muskmelon [29], cabbage and radish [30] seed vitality. Less research has been performed on image analysis than spectral analysis, and only some plants have been studied through image analysis, such as peppers [31], paddy [32,33], and corn [34].…”
mentioning
confidence: 99%
“…By extracting spectra and image information, the discrimination of waxy corn varieties was achieved with over 96.3% accuracy based on the SPA‐SVM model (Yang and others ). To classify different varieties of maize seeds, multispectral imaging in combination with the SPA‐LS‐SVM model developed with 11 variables obtained more than a 92% classification accuracy (Huang and others ). To further optimize the classification of varieties of maize seeds, Wang and others () reduced the 11 feature wavelengths to almost half that number.…”
Section: Determination Of Quality Parameters Of Plant Foodsmentioning
confidence: 99%