Detection of Hawthorn Fruit Defects Using Hyperspectral Imaging
LIU De-hua1, ZHANG Shu-juan1*, WANG Bin1, YU Ke-qiang2, ZHAO Yan-ru2, HE Yong2
1. College of Engineering, Shanxi Agricultural University, Taigu 030801, China 2. College of Biosystems Engineering and Food Science, Zhejiang University, Hangzhou 310058, China
Abstract:Hyperspectral imaging technology covered the range of 380~1 000 nm was employed to detect defects (bruise and insect damage) of hawthorn fruit. A total of 134 samples were collected, which included damage fruit of 46, pest fruit of 30, injure and pest fruit of 10 and intact fruit of 48. Because calyx·s-1tem-end and bruise/insect damage regions offered a similar appearance characteristic in RGB images, which could produce easily confusion between them. Hence, five types of defects including bruise, insect damage, sound, calyx, and stem-end were collected from 230 hawthorn fruits. After acquiring hyperspectral images of hawthorn fruits, the spectral data were extracted from region of interest(ROI). Then, several pretreatment methods of standard normalized variate (SNV), savitzky golay (SG), median filter(MF) and multiplicative scatter correction (MSC) were used and partial least squares method(PLS) model was carried out to obtain the better performance. Accordingly to their results, SNV pretreatment methods assessed by PLS was viewed as best pretreatment method. Lastly, SNV was chosen as the pretreatment method. Spectral features of five different regions were combined with Regression coefficients(RCs) of partial least squares-discriminant analysis (PLS-DA) model was used to identify the important wavelengths and ten wavebands at 483,563,645,671,686,722,777,819,837 and 942 nm were selected from all of the wavebands. Using Kennard-Stone algorithm, all kinds of samples were randomly divided into training set (173) and test set (57) according to the proportion of 3∶1. And then, least squares-support vector machine (LS-SVM) discriminate model was established by using the selected wavebands. The results showed that the discriminate accuracy of the method was 91.23%. In the other hand, images at ten important wavebands were executed to Principal component analysis (PCA). Using “Sobel” operator and region growing algrorithm “Regiongrow”, the edge and defect feature of 86 Hawthorn could be recognized. Lastly, the detect precision of bruised, insect damage and two-defect samples is 95.65%, 86.67% and 100%, respectively. This investigation demonstrated that hyperspectral imaging technology could detect the defects of bruise, insect damage, calyx, and stem-end in hawthorn fruit in qualitative analysis and feature detection. which provided a theoretical reference for the defects nondestructive detection of hawthorn fruit.
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