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Adaptive Neuro-Fuzzy Inference System Based Grading of Basmati Rice Grains Using Image Processing Technique

机译:基于自适应模糊神经推理系统的印度香米粒评级

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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.
机译:大米的分级旨在从样品中识别出破碎的谷物和全谷物。使用高级统计方法进行基于图像的水稻分级的标准技术很少考虑与数据相关的领域知识。在具有基于图像的分级过程的高产品价值的印度香米的背景下,应该考虑谷物的物理性质和相关知识。在本工作中,提出了使用新型数字图像处理和基于知识的自适应神经模糊推理系统(ANFIS)进行质量等级测试和识别的模型。采用基于模糊规则的分级系统的基本原理依赖于ANFIS的功能,可以利用米粒的物理特性模拟专家对米粒表征的行为。水稻籽粒的形态特征和几何特征来自于碾碎的印度香米的样品图像。已经在足够数量的印度香米粒的训练和测试图像上测试了所提出技术的预测能力。与标准的机器学习技术相比,所提出的方法在大米品质方面的表现优于大米,其破碎和全谷类的分类精度> 98.5%。支持向量机(SVM)和K最近邻(KNN)。还使用糙米和碎米百分比之间的比率来评估研磨效率,对于测试样品,该比率为77.27%。就分类准确性和效率而言,所采用方法的总体结果令人鼓舞。

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