Double yolk duck egg feature discrimination and size grading based on machine vision and CH-GO rule

The internal irregular yolk shape makes it difficult to identify and grading the double yolk duck eggs accurately. In this paper, a machine vision detection method is proposed to realize the automatic detection of double yolk eggs with different sizes. Firstly, a yolk region extraction algorithm bas...

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Bibliographic Details
Published inJournal of food measurement & characterization Vol. 19; no. 3; pp. 1662 - 1672
Main Authors Le, Chu Jia, Dan, Liang, Cheng, Wang Jian, Jie, Ye Min
Format Journal Article
LanguageEnglish
Published New York Springer US 01.03.2025
Springer Nature B.V
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ISSN2193-4126
2193-4134
DOI10.1007/s11694-024-03062-z

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Summary:The internal irregular yolk shape makes it difficult to identify and grading the double yolk duck eggs accurately. In this paper, a machine vision detection method is proposed to realize the automatic detection of double yolk eggs with different sizes. Firstly, a yolk region extraction algorithm based on green component and threshold segmentation is designed. The yolk image contrast is obtained by extracting single-channel color component, and the preliminary double yolk region is got by adaptive threshold segmentation and morphological processing. Then, the yolk region is divided into separate or connected types, and yolk discrimination rules based on Convex Hull and Green’s Operator (CH-GO) are proposed to discriminate the double yolk features. The dimension parameters of the eggs are extracted and then get graded according to the yolk type and size criterion. Finally, experimental results show that the discrimination rate of double yolk reaches 97.6%, and the size grading accuracy is about 98.4%. The proposed method shows great application potential in the automatic detection and grading of special poultry eggs.
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ISSN:2193-4126
2193-4134
DOI:10.1007/s11694-024-03062-z