Penilaian Sejawat The Identification of Beef and Pork Using Neural Network Based on Texture Features

Khoerul, Anwar and Sigit, Setyowibowo (2022) Penilaian Sejawat The Identification of Beef and Pork Using Neural Network Based on Texture Features. Kuwait University.

[thumbnail of The Identification of Beep and Pork.pdf] Text
The Identification of Beep and Pork.pdf - Published Version

Download (225kB)

Abstract

The actual problem that frequently happens related to meat sales at conventional markets is the manipulation of pork and beef. It can happen as both visual textures bear resemblances. Texture is a crucial part of an object. In image processing, textures can be used for classification, recognition or prediction of an image. This paper offers the Minimum Overlap Probability - Neural Network method for the identification of digital image features of pork and beef.. Minimum Overlap Probability was employed to
select features of the strongest characteristics, whilst Neural Network is used for training and classification. Based on the test results, the strongest features are maximum probability, contrast, sum average, autocorrelation, and energy and entropy sum. Based
on MOP-NN Model test result, the digital image identification of beef and pork has performance with an accuracy of 96% on 400 images of sample data

Item Type: Other
Subjects: 000 - Komputer, Informasi dan Referensi Umum > 000 Ilmu komputer, ilmu pengetahuan dan sistem-sistem > 000 Ilmu komputer, informasi dan pekerjaan umum
000 - Komputer, Informasi dan Referensi Umum > 000 Ilmu komputer, ilmu pengetahuan dan sistem-sistem > 004 Pemrosesan data dan ilmu komputer
000 - Komputer, Informasi dan Referensi Umum > 000 Ilmu komputer, ilmu pengetahuan dan sistem-sistem > 005 Pemrograman komputer, program dan data
Depositing User: Mr Sigit Setyowibowo
Date Deposited: 22 Sep 2022 05:13
Last Modified: 22 Sep 2022 05:13
URI: http://repo.stimata.ac.id/id/eprint/93

Actions (login required)

View Item
View Item