Technical review of supervised machine learning studies and potential implementation to identify herbal plant dataset

IF 1.5 Q2 ENGINEERING, MULTIDISCIPLINARY
Jeremy Onesimus Carnagie, A. Prabowo, Iwan Istanto, E. P. Budiana, Ivan Kristianto Singgih, I. Yaningsih, F. Mikšík
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引用次数: 0

Abstract

Abstract The use of technology in everyday life is unavoidable, considering that technological advancement occurs very quickly. The current era is also known as industry 4.0. In the industry 4.0 era, there is a convergence between the industrial world and information technology. The use of modern machines in the industry makes it possible for business actors to digitize their production facilities and open up new business opportunities. One of the developments in information technology that is being widely used in its implementation is machine learning (ML) technology and its branches such as computer vision and image recognition. In this work, we propose a customized convolutional neural network-based ML model to perform image classification technique for Indonesian herb image dataset, along with the detailed review and discussion of the methods and results. In this work, we use the transfer learning method to adopt the opensource pre-trained model, namely, Xception, developed by Google.
监督机器学习研究的技术回顾和识别草药植物数据集的潜在实现
考虑到技术进步非常迅速,技术在日常生活中的使用是不可避免的。当前的时代也被称为工业4.0。在工业4.0时代,工业世界与信息技术之间存在融合。现代机器在行业中的使用使得业务参与者将其生产设施数字化并开辟新的商业机会成为可能。在信息技术的发展中,被广泛应用于其实现的是机器学习(ML)技术及其分支,如计算机视觉和图像识别。在这项工作中,我们提出了一个定制的基于卷积神经网络的ML模型来执行印度尼西亚草药图像数据集的图像分类技术,并详细回顾和讨论了方法和结果。在这项工作中,我们使用迁移学习方法,采用谷歌开发的开源预训练模型Xception。
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来源期刊
Open Engineering
Open Engineering ENGINEERING, MULTIDISCIPLINARY-
CiteScore
3.90
自引率
0.00%
发文量
52
审稿时长
30 weeks
期刊介绍: Open Engineering publishes research results of wide interest in emerging interdisciplinary and traditional engineering fields, including: electrical and computer engineering, civil and environmental engineering, mechanical and aerospace engineering, material science and engineering. The journal is designed to facilitate the exchange of innovative and interdisciplinary ideas between researchers from different countries. Open Engineering is a peer-reviewed, English language journal. Researchers from non-English speaking regions are provided with free language correction by scientists who are native speakers. Additionally, each published article is widely promoted to researchers working in the same field.
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