Welcome to Chinese Agricultural Science Bulletin,

Chinese Agricultural Science Bulletin ›› 2016, Vol. 32 ›› Issue (12): 65-70.doi: 10.11924/j.issn.1000-6850.casb15120055

Special Issue: 油料作物 园艺

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Modeling for Rapeseed’s Leaf Nitrogen Nutrient Diagnosis Based on Multifractal Detrended Moving Average Analysis

Su Le, Zou Ruibiao, Wang Fang   

  1. (College of Science, Hunan Agricultural University, Changsha 410128)
  • Received:2015-12-09 Revised:2016-02-21 Accepted:2016-02-25 Online:2016-04-27 Published:2016-04-27

Abstract: In order to identify and diagnose the texture features of rape leaf under different nitrogen levels, eleven kinds of generalized Hurst indexes and other six kinds of related multifractal characteristic parameters of the rape leaf images were calculated by using multifractal detrended moving average analysis (MF-DMA) with three key position parameters, namely, θ=0, 0.5 and 1, respectively. By applying different combinations of characteristic parameters, the nitrogen nutrition diagnosis and recognition were conducted for the base leaf, central leaf and top leaf, respectively. The results showed that the performance of diagnosis with position parameter of θ=0 was better than that with 0.5 and 1. In addition, the best diagnose accuracy came from the base leaf and the central leaf, which demonstrated that the base leaf and the central leaf were more sensitive to the nitrogen deficiency than the top leaf. By diagnosing the nitrogen deficiency and nitrogen moderation of the three parts of the mixed rape leaf samples, it showed that support vector machines and kernel method (SVMKM) and the random forest were the best two methods to obtain the accuracy, by which the best recognition accuracy rate reached 95.81% and 96.63%, respectively. It indicated that our model possessed good effectiveness.