Manuscript ID : JFST-2103-1708 (R2)
Visit : 114
Page: 113 - 124
10.30495/jfst.2021.1925643.1708
20.1001.1.24234966.1402.15.3.9.1
Article Type:
Original Research
Designing an Automatic System for Grading Raisins and Determining its Tailing Percentage Using Image Processing Techniques
Subject Areas :
Masoud khazaee Fadafen
1
,
Seyyed Hossein Estiri
2
1 - گروه مهندسی برق و کامپیوتر ، دانشکده امام خمینی(ره) سبزوار، واحد خراسان رضوی ، دانشگاه فنی و حرفه ای، تهران، ایران.
2 - گروه علوم و صنایع غذائی، واحد سبزوار، دانشگاه آزاد اسلامی ، سبزوار، ایران.
Received: 2021-03-08
Accepted : 2021-05-16
Published : 2023-09-23
Keywords:
References:
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