Abstract

Pinus massoniana is a pioneer reforestation tree species in China. It is crucial to evaluate the seedling vigor of Pinus massoniana for reforestation work, and leaf moisture and nitrogen content are key factors used to achieve it. In this paper, we proposed a non-destructive testing method based on the multi-scale short cut convolutional neural network (MS-SC-CNN) to measure moisture and nitrogen content in leaves of Pinus massoniana seedlings. By designing a reasonable short cut structure, the method realized the transmission of loss function gradient across the multi-layer structure in the network and reduced the information loss caused by the multi-layer transmission in the forward propagation. Meanwhile, in the back propagation stage, the loss caused by the multi-layer transmission of gradient was reduced. Thus, the gradient vanishing problem in training was avoided. Since the method realized cross-layer transmission error, the convolutional layer could be increased appropriately to obtain higher measurement accuracy. To verify the performance of the proposed MS-SC-CNN non-destructive measurement method, the near-infrared hyperspectral data of sample leaves of 219 Pinus massoniana seedlings were collected from the Huangping Forest Farm in Guizhou Province. The correlation coefficient between the measured and real values of the prediction was as high as 0.977 and the root mean square error was 0.242 for the moisture content of Pinus massoniana seedling leaves. For the nitrogen content of Pinus massoniana seedling leaves, the correlation coefficient between the measured and real values of the prediction was 0.906 and the root-mean-square error was 0.061. The results showed that the non-destructive testing method based on MS-SC-CNN that we proposed can accurately measure the moisture and nitrogen content in leaves of Pinus massoniana seedlings.

Highlights

  • Pinus massoniana is a pioneer tree species that plays an essential role in reforestation work in South China due to its wide distribution, rapid growth, and strong environmental adaptability [1]

  • We proposed a method named multi-scale short cut convolutional neural network (MS-SC-Convolutional neural network (CNN)) for measuring moisture and nitrogen content in leaves of Pinus massoniana seedlings based on the residual network and CNN’s characteristics with Near-infrared spectroscopy (NIRS)

  • The MS-SC-CNN model was proposed to realize the non-destructive measurement of moisture and nitrogen content in leaves of Pinus massoniana seedlings

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Summary

Introduction

Pinus massoniana is a pioneer tree species that plays an essential role in reforestation work in South China due to its wide distribution, rapid growth, and strong environmental adaptability [1]. The moisture and nitrogen content in leaves of Pinus massoniana seedlings are closely related to plants’ physiological functions and can reflect the health status of seedlings [2]. During the initial stage of reforestation, to evaluate the health status of Pinus massoniana seedlings, the most rapid method is to measure the moisture and nitrogen content in Pinus massoniana seedling leaves. Peng et al [8] applied multi-spectral technology and the back propagation (BP) neural network to predict the moisture content in corn leaves. Xue et al [9] used NIRS technology, combined with genetic algorithm screening, to construct a rice moisture content predictive model

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