Abstract

Grading of rice intents to discriminate broken and whole grain from a sample. Standard techniques for image-based rice grading using advanced statistical methods seldom take into account the domain knowledge associated with the data. In the context of a high product value basmati rice with an image based grading process, one ought to consider the physical properties of grain and the associated knowledge. In this present work, a model of quality grade testing and identification is proposed using a novel digital image processing and knowledge-based adaptive neuro-fuzzy inference system (ANFIS). The rationale behind adopting a grading system based on fuzzy rules relies on capabilities of ANFIS to simulate the behaviour of an expert in the characterization of rice grain using the physical properties of rice grains. The rice kernels are characterized with the help of morphological descriptors and geometric features which are derived from sample images of milled basmati rice. The predictive capability of the proposed technique has been tested on a sufficient number of training and test images of basmati rice grain. The proposed method outperforms with a promising result in an evaluation of rice quality with >98.5% classification accuracy for broken and whole grain as compared to standard machine learning technique viz. support vector machine (SVM) and K-nearest neighbour (KNN). The milling efficiency is also assessed using the ratio between head rice and broken rice percentage and it is 77.27% for the test sample. The overall results of the adopted methodology are promising in terms of classification accuracy and efficiency.

Highlights

  • India is the leading exporter of the basmati rice (Oryza sativa) to the global market

  • This section explains the results of the adaptive neuro-fuzzy inference system (ANFIS) based rice grading technique

  • Standard classification technique seldom incorporates domain knowledge associated with the physical properties of rice grain

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Summary

Introduction

India is the leading exporter of the basmati rice (Oryza sativa) to the global market. Basmati rice is a protracted slender grain variety of aromatic rice grown in the Indian sub-continent It has a high product value due to its flavour, delicate texture, delightful fragrance, and softness. In a rice milling facility, the quality grade of product is being monitored by visual inspection by experienced quality control personnel at 2–3 h intervals, rather utilizing a continuous operational measurement method. This means that the operator, based on his experience and proficiency with the processing machinery, assesses the quality grade of the product by mere visual inspection of rice grain appearance and making the required adjustments which are time-consuming and subjective

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