Automatic measurement of acidity from roasted coffee beans images using efficient deep learning

Sourness is one of the basic yet essential tastes of coffee that is chemically composed of acids and quantitatively represented in the pH scale. Current tools for measuring the acidity level in roasted coffee beans, including traditional methods, require brewing sample coffee and probing the chemica...

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Main Author: Sajjacholapunt P.
Other Authors: Mahidol University
Format: Article
Published: 2023
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Online Access:https://repository.li.mahidol.ac.th/handle/123456789/84042
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spelling th-mahidol.840422023-06-18T23:54:01Z Automatic measurement of acidity from roasted coffee beans images using efficient deep learning Sajjacholapunt P. Mahidol University Chemical Engineering Sourness is one of the basic yet essential tastes of coffee that is chemically composed of acids and quantitatively represented in the pH scale. Current tools for measuring the acidity level in roasted coffee beans, including traditional methods, require brewing sample coffee and probing the chemical components, limiting the applicability to end customers seeking to estimate the acidity level before choosing the right coffee beans to purchase. This paper proposes a novel approach to directly estimate the acidity levels from roasted coffee beans images by framing the problem into an image classification task, where a picture of roasted coffee beans is categorized into its appropriate pH range. As a result, end customers could simply estimate coffee beans' acidity levels by taking photos with conventional cameras. Multiple traditional machine learning and deep learning algorithms are validated for their ability to predict the correct acidity levels. The experiment results reveal that EfficientNet yields the best performance with an average F1 of 0.71 when trained with images from separate portable devices. Practical Applications: The research's findings could also be extended to applications in the coffee-industrial settings, such as automatically monitoring roasted coffee beans' quality from image and video streams. For end customers, the trade-off between efficacy and efficiency of the EfficientNet algorithm is also investigated, which sheds light on the implementation aspects of state-of-the-art deep learning models in portable devices such as smartphones or cameras. Such applications could prove to be a cost-effective and convenient solution for customers to quickly measure roasted coffee beans' sourness before deciding to purchase. 2023-06-18T16:54:01Z 2023-06-18T16:54:01Z 2022-11-01 Article Journal of Food Process Engineering Vol.45 No.11 (2022) 10.1111/jfpe.14147 17454530 01458876 2-s2.0-85135252320 https://repository.li.mahidol.ac.th/handle/123456789/84042 SCOPUS
institution Mahidol University
building Mahidol University Library
continent Asia
country Thailand
Thailand
content_provider Mahidol University Library
collection Mahidol University Institutional Repository
topic Chemical Engineering
spellingShingle Chemical Engineering
Sajjacholapunt P.
Automatic measurement of acidity from roasted coffee beans images using efficient deep learning
description Sourness is one of the basic yet essential tastes of coffee that is chemically composed of acids and quantitatively represented in the pH scale. Current tools for measuring the acidity level in roasted coffee beans, including traditional methods, require brewing sample coffee and probing the chemical components, limiting the applicability to end customers seeking to estimate the acidity level before choosing the right coffee beans to purchase. This paper proposes a novel approach to directly estimate the acidity levels from roasted coffee beans images by framing the problem into an image classification task, where a picture of roasted coffee beans is categorized into its appropriate pH range. As a result, end customers could simply estimate coffee beans' acidity levels by taking photos with conventional cameras. Multiple traditional machine learning and deep learning algorithms are validated for their ability to predict the correct acidity levels. The experiment results reveal that EfficientNet yields the best performance with an average F1 of 0.71 when trained with images from separate portable devices. Practical Applications: The research's findings could also be extended to applications in the coffee-industrial settings, such as automatically monitoring roasted coffee beans' quality from image and video streams. For end customers, the trade-off between efficacy and efficiency of the EfficientNet algorithm is also investigated, which sheds light on the implementation aspects of state-of-the-art deep learning models in portable devices such as smartphones or cameras. Such applications could prove to be a cost-effective and convenient solution for customers to quickly measure roasted coffee beans' sourness before deciding to purchase.
author2 Mahidol University
author_facet Mahidol University
Sajjacholapunt P.
format Article
author Sajjacholapunt P.
author_sort Sajjacholapunt P.
title Automatic measurement of acidity from roasted coffee beans images using efficient deep learning
title_short Automatic measurement of acidity from roasted coffee beans images using efficient deep learning
title_full Automatic measurement of acidity from roasted coffee beans images using efficient deep learning
title_fullStr Automatic measurement of acidity from roasted coffee beans images using efficient deep learning
title_full_unstemmed Automatic measurement of acidity from roasted coffee beans images using efficient deep learning
title_sort automatic measurement of acidity from roasted coffee beans images using efficient deep learning
publishDate 2023
url https://repository.li.mahidol.ac.th/handle/123456789/84042
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