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Nondestructive classification of saffron using color and textural analysis

Morteza Mohamadzadeh Moghadam, Masoud Taghizadeh, Hassan Sadrnia, Hamid Reza Pourreza

2020Food Science & Nutrition22 citationsDOIOpen Access PDF

Abstract

Saffron classification based on machine vision techniques as well as the expert's opinion is an objective and nondestructive method that can increase the accuracy of this process in real applications. The experts in Iran classify saffron into three classes Pushal, Negin, and Sargol based on apparent characteristics. Four hundred and forty color images from saffron for the three different classes were acquired, using a mobile phone camera. Twenty-one color features and 99 textural features were extracted using image analysis. Twenty-two classifiers were employed for classification using mentioned features. The support vector machine and Ensemble classifiers were better than other classifiers. Our results showed that the mean classification accuracy was up to 83.9% using the Quadratic support vector machine and Subspace Discriminant classifier.

Topics & Concepts

Artificial intelligenceSupport vector machinePattern recognition (psychology)Linear discriminant analysisQuadratic classifierComputer scienceSubspace topologyClassifier (UML)Contextual image classificationRandom subspace methodComputer visionImage (mathematics)Saffron Plant Research StudiesAdvanced Image Fusion TechniquesSmart Agriculture and AI
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