Development of Artificial Vision System for Quality Assessment of Oyster Mushrooms

被引:0
|
作者
Alok Mukherjee
Tanmay Sarkar
Kingshuk Chatterjee
Dibyajit Lahiri
Moupriya Nag
Maksim Rebezov
Mohammad Ali Shariati
Alevtin Miftakhutdinov
Jose M. Lorenzo
机构
[1] Government College of Engineering and Ceramic Technology,Department of Food Processing Technology, Malda Polytechnic, West Bengal State Council of Technical Education
[2] Government of West Bengal,Department of Biotechnology
[3] University of Engineering & Management,Department of Scientific Research
[4] V. M. Gorbatov Federal Research Center for Food Systems,Department of Scientific Research
[5] Prokhorov General Physics Institute of the Russian Academy of Sciences,Área de Tecnología de los Alimentos, Facultad de Ciencias de Ourense
[6] K. G. Razumovsky Moscow State University of Technologies and Management (The First Cossack University),undefined
[7] South Ural State Agrarian University,undefined
[8] Centro Tecnológico de La Carne de Galicia,undefined
[9] Universidade de Vigo,undefined
来源
Food Analytical Methods | 2022年 / 15卷
关键词
Mushroom; Freshness classification; Correlation coefficient; Food safety; Quality control;
D O I
暂无
中图分类号
学科分类号
摘要
In this paper, we have illustrated a simple and effective method of assessing the fresh and deteriorated oyster mushroom samples. Analysis of correlation coefficients is done very effectively here to identify the interrelationship of different color layers of the RGB and HSV color map of the samples, as this degrades progressively. These correlation features are further analyzed using two supervised learning models incorporating support vector machine (SVM) and artificial neural network (ANN) to develop a simple classifier model to identify the two different classes of the mushroom images. The proposed work is simple as it includes a simple computational supervised model, and, more importantly, it is very effective as it explores the interrelation between the different layers of two different color maps of the image samples. The highest classifier accuracy achieved using ANN and SVM models exceeds 95% and 98% respectively; and the mean accuracy level from fifty such observations stands 94.7% and 93.4%, which are high considering contemporary researches. High accuracy of classification, simplicity of analysis and image acquisition through smartphones makes the proposed work suitable for implementing in application-based software for smartphone users which would further enhance the wide applicability of the proposed mushroom classifier scheme.
引用
收藏
页码:1663 / 1676
页数:13
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