Abstract

Grain moisture content (GMC) is a key indicator of the appropriate harvest period of rice. Conventional testing is time-consuming and laborious, thus not to be implemented over vast areas and to enable the estimation of future changes for revealing optimal harvesting. Images of single panicles were shot with smartphones and corrected using a spectral–geometric correction board. In total, 86 panicle samples were obtained each time and then dried at 80 °C for 7 days to acquire the wet-basis GMC. In total, 517 valid samples were obtained, in which 80% was randomly used for training and 20% was used for testing to construct the image-based GMC assessment model. In total, 17 GMC surveys from a total of 201 samples were also performed from an area of 1 m2 representing on-site GMC, which enabled a multi-day GMC prediction. Eight color indices were selected using principal component analysis for building four machine learning models, including random forest, multilayer perceptron, support vector regression (SVR), and multivariate linear regression. The SVR model with a MAE of 1.23% was the most suitable for GMC of less than 40%. This study provides a real-time and cost-effective non-destructive GMC measurement using smartphones that enables on-farm prediction of harvest dates and facilitates the harvesting scheduling of agricultural machinery.

Highlights

  • Grain moisture content (GMC), which represents the maturity of rice [1], is a key indicator for determining the paddy rice harvest period, which could effectively stabilize rice products and further increase farmers’ income

  • The optimal harvest date (OHD) coincides with a GMC of 25% [3] and head rice recovery is the highest when harvest moisture content (HMC) ranges from 24% to 26% [4]

  • [42] Sanaeifar et al (2016) used support vector regression (SVR) to establish non-destructive quality inspection of agricultural products according to color traits; the results revealed a significant correlation between color traits and quality [43]

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Summary

Introduction

Grain moisture content (GMC), which represents the maturity of rice [1], is a key indicator for determining the paddy rice harvest period, which could effectively stabilize rice products and further increase farmers’ income. The optimal harvest date (OHD) coincides with a GMC of 25% [3] and head rice recovery is the highest when HMC ranges from 24% to 26% [4]. This study first adopted the ExG value (150) of ROI images as the threshold and removed the pixels of the rubber band (Figure 9a). The hue values above 60 (Figure 9b), as well as the paper card in the image, were removed. The rice panicle stem was removed through the hue value and the threshold was modified according to grain color, ranging from 25 to 35. HSV, Gray, and ExG [56,57,58] were calculated as follows

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