Detection of Pesticide Residues on Lettuce Leaves Based on Piece-wise Discrete Wavelet Transform and Hyperspectral Data
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    Abstract:

    In order to fast, accurately and nondestructively detect pesticide residues in lettuce, combining discrete wavelet transform (DWT) algorithm with the approximate position of frequency doubling center of organic compounds in near infrared spectra, a method of feature extraction algorithm of piece-wise discrete wavelet transform (PDWT) was proposed. PDWT was used to extract the feature of four different concentrations of pesticide residues on the lettuce leaves. Transmission electron microscope (TEM) was carried out to detect the microstructure of lettuce. Hyperspectral image acquisition system was used to get information of near infrared hyperspectral image of lettuce, and the region of interest (ROI) was selected to get the near infrared spectrum data of the lettuce samples, which was ranged from 870 nm to 1800 nm. According to the approximate position of organic compounds in near infrared spectral region, appropriate piecewise paragraphs were selected. Each section of the spectral data was divided into seven layers by PDWT in turn, using sym5 as the basis function. Then, based on the analysis of the singular value of the high frequency wavelet coefficient curve, the characteristic band of lettuce was extracted by the optimal decomposition layer, which was the largest corresponding to the characteristic difference of the singular value. In order to evaluate the value of the feature extracted by singular value, a parameter of fit degree (FD) was proposed. Combined with the SVM classification accuracy, the feature extracted by PDWT was further evaluated. The results showed that under different concentrations of pesticide residues, the arrangement and structure of internal cells of lettuce leaves were different. The spectra of different concentrations of pesticide residues were different. PDWT had a higher classification accuracy of predictive classification compared with that of SVM. The classification accuracy of FD, calibration, cross validation and predictive classification accuracy of SVM were 75%, 95%, 92.86% and 90.63%, respectively, under the N value of 4 with PDWT. PDWT combined with FD was suitable for the feature extraction of spectrum, it provided a novel method for fast and nondestructive identification of lettuce pesticide concentration.

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History
  • Received:June 14,2016
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  • Online: December 10,2016
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