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Autori principali: Tan, Shu-Min, Hung, Shih-Hsun, Tsai, Je-Chiang
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2409.04068
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author Tan, Shu-Min
Hung, Shih-Hsun
Tsai, Je-Chiang
author_facet Tan, Shu-Min
Hung, Shih-Hsun
Tsai, Je-Chiang
contents Coffee is one of the most valuable primary commodities. Despite this, the common selection technique of green coffee beans relies on personnel visual inspection, which is labor-intensive and subjective. Therefore, an efficient way to evaluate the quality of beans is needed. In this paper, we demonstrate a site-independent approach to find site-specific color features of the seed coat in qualified green coffee beans. We then propose two evaluation schemes for green coffee beans based on this site-specific color feature of qualified beans. Due to the site-specific properties of these color features, machine learning classifiers indicate that compared with the existing evaluation schemes of beans, our evaluation schemes have the advantages of being simple, having less computational costs, and having universal applicability. Finally, this site-specific color feature can distinguish qualified beans from different growing sites. Moreover, this function can prevent cheating in the coffee business and is unique to our evaluation scheme of beans.
format Preprint
id arxiv_https___arxiv_org_abs_2409_04068
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Site-Specific Color Features of Green Coffee Beans
Tan, Shu-Min
Hung, Shih-Hsun
Tsai, Je-Chiang
Computer Vision and Pattern Recognition
I.5
Coffee is one of the most valuable primary commodities. Despite this, the common selection technique of green coffee beans relies on personnel visual inspection, which is labor-intensive and subjective. Therefore, an efficient way to evaluate the quality of beans is needed. In this paper, we demonstrate a site-independent approach to find site-specific color features of the seed coat in qualified green coffee beans. We then propose two evaluation schemes for green coffee beans based on this site-specific color feature of qualified beans. Due to the site-specific properties of these color features, machine learning classifiers indicate that compared with the existing evaluation schemes of beans, our evaluation schemes have the advantages of being simple, having less computational costs, and having universal applicability. Finally, this site-specific color feature can distinguish qualified beans from different growing sites. Moreover, this function can prevent cheating in the coffee business and is unique to our evaluation scheme of beans.
title Site-Specific Color Features of Green Coffee Beans
topic Computer Vision and Pattern Recognition
I.5
url https://arxiv.org/abs/2409.04068