Research article
Identification of Tuna and Skipjack Fish Texture Using GLCM With Naive Bayes Classification
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Abstract
Fish in Indonesian waters have various types, the famous ones are tuna and skipjack. The two types of fish look similar, because they come from the same family, namely scombridae. To find out and differentiate types of tuna and skipjack fish, it can be seen based on the texture image. The method that can be used in analyzing texture is the Gray Level Coocurent Matrix (GLCM) method. There are several methods of image classification, one of which is the Naive Bayes method. This study aims to identify types of tuna and skipjack based on texture analysis using the GLCM and Naive Bayes methods. Based on the results of testing data analysis on types of tuna and skipjack meat using GLCM with angles and , the distance of each pixel is 1, indicating the value of Energy, Entropy Contrast, Homogeneity, Correlation, Sum Average, and Sum of Variance are highly varies. As well as the Naive Bayes classification results obtained a probability of 0.58 or 58% categorized as tuna meat, while the remaining probability of 0.42 or 42% is categorized as skipjack.
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Introduction
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Funding Information
UMMU Ternate
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No conflict of interest has been declared by the authors.
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Bibliographic Information
Cite this article as:
-
Submitted
16 August 2020 -
Revised
11 October 2020 -
Accepted
4 November 2020 -
Published
4 November 2020 -
Version of record
24 June 2021 -
Issue date
3 December 2020
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Discipline(s)
Perikanan
Copyright
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