A novel computer vision approach to classify the mechanical stability of natural rubber latex concentrate
Natural rubber (NR) latex is sensitive to mechanical influences which can occur at almost every stage of its manufacturing process. Moreover its mechanical stability can also change during storage or be modified with the addition of suitable soaps such as oleates, laureates, and stearates [1]. Hence...
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my.um.eprints.205322019-02-28T04:55:34Z http://eprints.um.edu.my/20532/ A novel computer vision approach to classify the mechanical stability of natural rubber latex concentrate Tan, Ming Chieng Chan, Chee Seng Lai, Weng Kin Chew, Khoon Hee Chua, Ping Yong QA75 Electronic computers. Computer science Natural rubber (NR) latex is sensitive to mechanical influences which can occur at almost every stage of its manufacturing process. Moreover its mechanical stability can also change during storage or be modified with the addition of suitable soaps such as oleates, laureates, and stearates [1]. Hence the Mechanical Stability Test (MST) is of vital importance to the rubber industry as it gives an indication of the quality of the latex. Currently the assessment is performed manually by trained laboratory technicians, following the procedures as defined by the ISO 35 standard mechanical stability test. However, the test is highly dependent on the human visual capability and the experience of the laboratory technician performing the test, potentially leading to either inconsistent or inaccurate results. In this paper, we proposed a computer vision-based mechanical stability classification system to minimise the potential for biasness in the current standard test. We investigated this with a novel feature descriptor - Histogram of Size Distribution (HSD) that is based on the coagulum count and size. Experimental results demonstrated that the proposed system was able to provide essentially good classification accuracies on the data tested. IOS Press 2018 Article PeerReviewed Tan, Ming Chieng and Chan, Chee Seng and Lai, Weng Kin and Chew, Khoon Hee and Chua, Ping Yong (2018) A novel computer vision approach to classify the mechanical stability of natural rubber latex concentrate. Intelligent Decision Technologies, 12 (3). pp. 323-334. ISSN 1872-4981 https://doi.org/10.3233/IDT-180336 doi:10.3233/IDT-180336 |
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QA75 Electronic computers. Computer science Tan, Ming Chieng Chan, Chee Seng Lai, Weng Kin Chew, Khoon Hee Chua, Ping Yong A novel computer vision approach to classify the mechanical stability of natural rubber latex concentrate |
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Natural rubber (NR) latex is sensitive to mechanical influences which can occur at almost every stage of its manufacturing process. Moreover its mechanical stability can also change during storage or be modified with the addition of suitable soaps such as oleates, laureates, and stearates [1]. Hence the Mechanical Stability Test (MST) is of vital importance to the rubber industry as it gives an indication of the quality of the latex. Currently the assessment is performed manually by trained laboratory technicians, following the procedures as defined by the ISO 35 standard mechanical stability test. However, the test is highly dependent on the human visual capability and the experience of the laboratory technician performing the test, potentially leading to either inconsistent or inaccurate results. In this paper, we proposed a computer vision-based mechanical stability classification system to minimise the potential for biasness in the current standard test. We investigated this with a novel feature descriptor - Histogram of Size Distribution (HSD) that is based on the coagulum count and size. Experimental results demonstrated that the proposed system was able to provide essentially good classification accuracies on the data tested. |
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Article |
author |
Tan, Ming Chieng Chan, Chee Seng Lai, Weng Kin Chew, Khoon Hee Chua, Ping Yong |
author_facet |
Tan, Ming Chieng Chan, Chee Seng Lai, Weng Kin Chew, Khoon Hee Chua, Ping Yong |
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Tan, Ming Chieng |
title |
A novel computer vision approach to classify the mechanical stability of natural rubber latex concentrate |
title_short |
A novel computer vision approach to classify the mechanical stability of natural rubber latex concentrate |
title_full |
A novel computer vision approach to classify the mechanical stability of natural rubber latex concentrate |
title_fullStr |
A novel computer vision approach to classify the mechanical stability of natural rubber latex concentrate |
title_full_unstemmed |
A novel computer vision approach to classify the mechanical stability of natural rubber latex concentrate |
title_sort |
novel computer vision approach to classify the mechanical stability of natural rubber latex concentrate |
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IOS Press |
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2018 |
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http://eprints.um.edu.my/20532/ https://doi.org/10.3233/IDT-180336 |
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