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

Author:

Carnagie Jeremy Onesimus1,Prabowo Aditya Rio1,Istanto Iwan2,Budiana Eko Prasetya1,Singgih Ivan Kristianto3,Yaningsih Indri1,Mikšík František45

Affiliation:

1. Department of Mechanical Engineering, Universitas Sebelas Maret , Surakarta 57126 , Indonesia

2. Department of Electro-Mechanical, Polytechnic Institute of Nuclear Technology , Yogyakarta 55281 , Indonesia

3. Department of Industrial Engineering, University of Surabaya , Surabaya 60293 , Indonesia

4. Faculty of Engineering Sciences, Kyushu University , Fukuoka 816-8580 , Japan

5. Institute of Innovation for Future Society, Nagoya University , Aichi 464-8601 , Japan

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.

Publisher

Walter de Gruyter GmbH

Subject

Electrical and Electronic Engineering,Mechanical Engineering,Aerospace Engineering,General Materials Science,Civil and Structural Engineering,Environmental Engineering

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