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http://dx.doi.org/10.3745/KTSDE.2016.5.7.327

A Study on a Ginseng Grade Decision Making Algorithm Using a Pattern Recognition Method  

Jeong, Seokhoon (선문대학교 정보통신공학과)
Ko, Kuk Won (선문대학교 기계ICT융합공학부)
Kang, Je-Yong (KGC인삼공사(1급))
Jang, Suwon (KGC인삼공사)
Lee, Sangjoon (선문대학교 기계ICT융합공학부)
Publication Information
KIPS Transactions on Software and Data Engineering / v.5, no.7, 2016 , pp. 327-332 More about this Journal
Abstract
This study is a leading research project to develop an automatic grade decision making algorithm of a 6-years-old fresh ginseng. For this work, we developed a Ginseng image acquiring instrument which can take 4-direction's images of a Ginseng at the same time and obtained 245 jingen images using the instrument. The 12 parameters were extracted for each image by a manual way. Lastly, 4 parameters were selected depending on a Ginseng grade classification criteria of KGC Ginseng research institute and a survey result which a distribution of averaging 12 parameters. A pattern recognition classifier was used as a support vector machine, designed to "k-class classifier" using the OpenCV library which is a open-source platform. We had been surveyed the algorithm performance(Correct Matching Ratio, False Acceptance Ratio, False Reject Ratio) when the training data number was controlled 10 to 20. The result of the correct matching ratio is 94% of the $1^{st}$ ginseng grade, 98% of the $2^{nd}$ ginseng grade, 90% of the $3^{rd}$ ginseng grade, overall, showed high recognition performance with all grades when the number of training data are 10.
Keywords
Pattern Recognition; Ginseng Grade Decision Making; Pattern Classifier;
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  • Reference
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