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Medicinal Plant Identification Using Deep Learning

    Authors

    • Geerthana R. 1
    • Nandhini P. 1
    • Suriyakala R. 2

    1 Dept. of Computer Science & Engineering,Velammal College of Engineering and Technology Tamilnadu, India.

    2 Department of Computer Science & Engineering, Velammal College of Engineering and Technology Tamilnadu, India.

,

Document Type : Research Article

10.47392/irjash.2021.139
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Abstract

In this paper, our main aim is to create a Medicinal plant identification system using Deep Learning concept. This system will classify the medicinal plant species with high accuracy. Identification and classification of medicinal plants are essential for better treatment. In this system we are going to use five different Indian medicinal plant species namely Pungai, Jamun (Naval), Jatropha curcas, kuppaimeni and Basil. We utilize dataset contains 58,280 images, includes approximately 10,000 images for each species. We use leaf texture, shape, and color, physiological or morphological as the features set of the data. The data are collected by us. We use CNN architecture to train our data and develop the system with high accuracy. Several model architectures were trained, with the best performance reaching a 96.67% success rate in identifying the corresponding medicinal plant. The significantly high success rate makes the model a very useful advisory or early warning tool.

Keywords

  • Deep learning
  • Neural Networks
  • convolutional neural network
  • Regression
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International Research Journal on Advanced Science Hub
Volume 03, Special Issue ICITCA-2021 5S - Issue Serial Number 5
May 2021
Page 48-53
Files
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  • PDF 318.63 K
History
  • Receive Date: 01 January 1970
  • Accept Date: 01 January 1970
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  • Article View: 481
  • PDF Download: 1,852

APA

R., G. , P., N. and R., S. (2021). Medicinal Plant Identification Using Deep Learning. International Research Journal on Advanced Science Hub, 03(Special Issue ICITCA-2021 5S), 48-53. doi: 10.47392/irjash.2021.139

MLA

R., G. , , P., N. , and R., S. . "Medicinal Plant Identification Using Deep Learning", International Research Journal on Advanced Science Hub, 03, Special Issue ICITCA-2021 5S, 2021, 48-53. doi: 10.47392/irjash.2021.139

HARVARD

R., G., P., N., R., S. (2021). 'Medicinal Plant Identification Using Deep Learning', International Research Journal on Advanced Science Hub, 03(Special Issue ICITCA-2021 5S), pp. 48-53. doi: 10.47392/irjash.2021.139

CHICAGO

G. R. , N. P. and S. R., "Medicinal Plant Identification Using Deep Learning," International Research Journal on Advanced Science Hub, 03 Special Issue ICITCA-2021 5S (2021): 48-53, doi: 10.47392/irjash.2021.139

VANCOUVER

R., G., P., N., R., S. Medicinal Plant Identification Using Deep Learning. International Research Journal on Advanced Science Hub, 2021; 03(Special Issue ICITCA-2021 5S): 48-53. doi: 10.47392/irjash.2021.139

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