Literature DB >> 33739969

Predicting sensory evaluation of spinach freshness using machine learning model and digital images.

Kento Koyama1, Marin Tanaka1, Byeong-Hyo Cho1, Yusaku Yoshikawa1, Shige Koseki1.   

Abstract

The visual perception of freshness is an important factor considered by consumers in the purchase of fruits and vegetables. However, panel testing when evaluating food products is time consuming and expensive. Herein, the ability of an image processing-based, nondestructive technique to classify spinach freshness was evaluated. Images of spinach leaves were taken using a smartphone camera after different storage periods. Twelve sensory panels ranked spinach freshness into one of four levels using these images. The rounded value of the average from all twelve panel evaluations was set as the true label. The spinach image was removed from the background, and then converted into a gray scale and CIE-Lab color space (L*a*b*) and Hue, Saturation and Value (HSV). The mean value, minimum value, and standard deviation of each component of color in spinach leaf were extracted as color features. Local features were extracted using the bag-of-words of key points from Oriented FAST (Features from Accelerated Segment Test) and Rotated BRIEF (Binary Robust Independent Elementary Features). The feature combinations selected from the spinach images were used to train machine learning models to recognize freshness levels. Correlation analysis between the extracted features and the sensory evaluation score showed a positive correlation (0.5 < r < 0.6) for four color features, and a negative correlation (‒0.6 < r < ‒0.5) for six clusters in the local features. The support vector machine classifier and artificial neural network algorithm successfully classified spinach samples with overall accuracy 70% in four-class, 77% in three-class and 84% in two-class, which was similar to that of the individual panel evaluations. Our findings indicate that a model using support vector machine classifiers and artificial neural networks has the potential to replace freshness evaluations currently performed by non-trained panels.

Entities:  

Year:  2021        PMID: 33739969      PMCID: PMC7978266          DOI: 10.1371/journal.pone.0248769

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


  4 in total

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Review 3.  Deep learning.

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Journal:  Nature       Date:  2015-05-28       Impact factor: 49.962

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1.  Prediction of storage time in different seafood based on color values with artificial neural network modeling.

Authors:  İsmail Yüksel Genç
Journal:  J Food Sci Technol       Date:  2021-09-29       Impact factor: 3.117

2.  Prediction of the Maturity of Greenhouse Grapes Based on Imaging Technology.

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Journal:  Plant Phenomics       Date:  2022-03-30
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