Stacking Ensemble for Pill Image Classification
Medication errors, commonly contributed by human factors, have the potential to cause serious harm to human beings. Therefore, a deep learning-based approach is necessary to be developed to ensure patient safety. The investigation involves three core base models?ResNet50, InceptionV3, and MobileNet?...
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my.uniten.dspace-370422025-03-03T15:46:53Z Stacking Ensemble for Pill Image Classification Ahammed F.A.A.B.S. Mohanan V. Yeo S.F. Jothi N. 59224694800 36069451500 56489745300 54928769700 Deep learning Economic and social effects Efficiency Image enhancement Learning systems Base models Ensemble methods Human being Images classification Learning-based approach Machine-learning Medication errors Patient safety Pill classification Stackings Image classification Medication errors, commonly contributed by human factors, have the potential to cause serious harm to human beings. Therefore, a deep learning-based approach is necessary to be developed to ensure patient safety. The investigation involves three core base models?ResNet50, InceptionV3, and MobileNet?assessing individual performances. A novel stacking ensemble method was proposed, and its efficacy is compared to the base models and related works. The research?s key findings reveal that the proposed stacking ensemble model outperforms all the other models with a 98.80% test accuracy. It also excels in precision, recall, and F1-score, with scores of 98.81%, 98.80%, and 98.80%, respectively. The study also indicates the time efficiency of the proposed stacking ensemble compared to other methods. Notably, MobileNet exhibits superiority in training and prediction time, emphasizing the trade-offs between accuracy and efficiency. Overall, this research sheds light on the overlooked potential of ensemble methods in pill image classification, contributing a robust solution to enhance our understanding of their effectiveness in healthcare and pharmaceutical applications. ? The Author(s), under exclusive license to Springer Nature Switzerland AG 2024. Final 2025-03-03T07:46:53Z 2025-03-03T07:46:53Z 2024 Conference paper 10.1007/978-3-031-62881-8_8 2-s2.0-85198911019 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85198911019&doi=10.1007%2f978-3-031-62881-8_8&partnerID=40&md5=17f6500e06ff66ef532ae50c9d73ebb3 https://irepository.uniten.edu.my/handle/123456789/37042 1036 LNNS 90 99 Springer Science and Business Media Deutschland GmbH Scopus |
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Deep learning Economic and social effects Efficiency Image enhancement Learning systems Base models Ensemble methods Human being Images classification Learning-based approach Machine-learning Medication errors Patient safety Pill classification Stackings Image classification |
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Deep learning Economic and social effects Efficiency Image enhancement Learning systems Base models Ensemble methods Human being Images classification Learning-based approach Machine-learning Medication errors Patient safety Pill classification Stackings Image classification Ahammed F.A.A.B.S. Mohanan V. Yeo S.F. Jothi N. Stacking Ensemble for Pill Image Classification |
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Medication errors, commonly contributed by human factors, have the potential to cause serious harm to human beings. Therefore, a deep learning-based approach is necessary to be developed to ensure patient safety. The investigation involves three core base models?ResNet50, InceptionV3, and MobileNet?assessing individual performances. A novel stacking ensemble method was proposed, and its efficacy is compared to the base models and related works. The research?s key findings reveal that the proposed stacking ensemble model outperforms all the other models with a 98.80% test accuracy. It also excels in precision, recall, and F1-score, with scores of 98.81%, 98.80%, and 98.80%, respectively. The study also indicates the time efficiency of the proposed stacking ensemble compared to other methods. Notably, MobileNet exhibits superiority in training and prediction time, emphasizing the trade-offs between accuracy and efficiency. Overall, this research sheds light on the overlooked potential of ensemble methods in pill image classification, contributing a robust solution to enhance our understanding of their effectiveness in healthcare and pharmaceutical applications. ? The Author(s), under exclusive license to Springer Nature Switzerland AG 2024. |
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59224694800 |
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59224694800 Ahammed F.A.A.B.S. Mohanan V. Yeo S.F. Jothi N. |
format |
Conference paper |
author |
Ahammed F.A.A.B.S. Mohanan V. Yeo S.F. Jothi N. |
author_sort |
Ahammed F.A.A.B.S. |
title |
Stacking Ensemble for Pill Image Classification |
title_short |
Stacking Ensemble for Pill Image Classification |
title_full |
Stacking Ensemble for Pill Image Classification |
title_fullStr |
Stacking Ensemble for Pill Image Classification |
title_full_unstemmed |
Stacking Ensemble for Pill Image Classification |
title_sort |
stacking ensemble for pill image classification |
publisher |
Springer Science and Business Media Deutschland GmbH |
publishDate |
2025 |
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1825816152539922432 |
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13.244109 |