Determination of soluble solids content in tomatoes with different nitrogen levels based on hyperspectral imaging technique

Author:

Zhang Yiyang1ORCID,Zhang Yao2,Tian Yu1,Ma Hua1,Tian Xingwu3,Zhu Yanzhe1,Huang Yanfa1,Cao Yune1,Wu Longguo14

Affiliation:

1. School of Wine & Horticulture Ningxia University Yinchuan China

2. Key Laboratory of Quality and Safety of Wolfberry and Wine for State Administration for Market Regulation Ningxia Food Testing and Research Institute Yinchuan China

3. Ningxia Wuzhong National Agricultural Science and Technology Park Administrative Committee Wuzhong China

4. Ningxia Modern Protected Horticulture Engineering Technology Research Center Yinchuan China

Abstract

AbstractTomato is sweet and sour with high nutritional value, and soluble solids content (SSC) is an important indicator of tomato flavor. Due to the different mechanisms of nitrogen uptake and assimilation in plants, exogenous supply of different forms of nitrogen will have different effects on the growth, development, and physiological metabolic processes of tomato, thus affecting the tomato flavor. In this paper, hyperspectral imaging (HSI) technique combined with neural network prediction model was used to predict SSC of tomato under different nitrogen treatments. Competitive adaptive reweighed sampling (CARS) and iterative retained information variable (IRIV) were used to extract the feature wavelengths. Based on the characteristic wavelength, the prediction models of tomato SSC are established by custom convolutional neural network (CNN) model that was constructed and optimized. The results showed that the SSC of tomato was negatively correlated with nitrogen fertilizer concentration. For tomatoes treated with different nitrogen concentrations, the residual predictive deviation (RPD) of CARS‐CNN and IRIV‐parallel convolutional neural networks (PCNN) reached 1.64 and 1.66, both more than 1.6, indicating good model prediction. This study provides technical support for future online nondestructive testing of tomato quality.Practical ApplicationThe CARS‐CNN and IRIV‐PCNN were the best data processing model. Four customized convolutional neural networks were used for predictive modeling. The CNN model provides more accurate results than conventional methods.

Funder

Key Research and Development Program of Ningxia

Publisher

Wiley

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