Identification of Passion Fruit Nutrients for Elderly People Using Network in Network Architecture: An Empirical Study in Thailand

A. Kengpol, Akksatcha Duangsuphasin
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Abstract

The growing elderly population has led to a rise in health issues, particularly chronic diseases. Passion fruits contain numerous nutrients that may help in the treatment of chronic diseases. However, specific recommendations for daily passion fruit nutrient intake for the elderly are currently lacking in the literature. This research aimed to identify passion fruit groups and to suggest the appropriate daily passion fruit nutrient intake for elderly people using network in network (NiN) architecture. This research demonstrates that the NiN model can be effectively applied to identify passion fruit groups for the elderly. It is more efficient than other convolutional neural network (CNN) architectures. The results show that NiN can correctly identify passion fruit groups and suggest the appropriate amount of nutrient intake for the elderly, achieving + 96.76% accuracy in the training dataset and 95.89% accuracy in the validation dataset, surpassing 84.6% accuracy achieved by EaglAI. Sensitivity analysis of the NiN model using mean absolute error (MAE) for geometric transformations revealed consistent training image results and model robustness. This research benefits elderly people with chronic diseases by providing tailored recommendations for daily passion fruit intake, based on the analysis of sugar nutrients using the NiN model.
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利用网络架构识别老年人食用的百香果营养成分:泰国实证研究
老年人口的不断增长导致健康问题,尤其是慢性疾病的增加。百香果含有多种营养物质,可能有助于治疗慢性疾病。然而,目前文献中还缺乏针对老年人每日百香果营养摄入量的具体建议。本研究旨在利用网络中的网络(NiN)架构来识别百香果群,并提出适合老年人的每日百香果营养摄入量建议。研究表明,NiN 模型可有效地用于识别老年人的百香果群。它比其他卷积神经网络(CNN)架构更有效。结果表明,NiN 可以正确识别百香果组,并为老年人建议适当的营养摄入量,其训练数据集的准确率达到 + 96.76%,验证数据集的准确率达到 95.89%,超过了 EaglAI 84.6% 的准确率。使用几何变换的平均绝对误差(MAE)对NiN模型进行的灵敏度分析表明,训练图像结果一致,模型稳健。这项研究通过使用 NiN 模型分析糖类营养成分,为患有慢性疾病的老年人提供每日百香果摄入量的定制建议,使他们受益匪浅。
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来源期刊
Applied Science and Engineering Progress
Applied Science and Engineering Progress Engineering-Engineering (all)
CiteScore
4.70
自引率
0.00%
发文量
56
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