Deep Learning Based Effective Rice Leaf Disease Classification using MobileNet- Attention

Authors

  • Dr.Muhammad Suleman Memon Department of Information Technology, Dadu Campus, University of Sindh, Dadu, Pakistan https://orcid.org/0000-0002-0418-0681
  • Dr.Mumtaz Qabulio 2Department of Software Engineering, Faculty of Engineering & Technology, University of Sindh, Jamshoro, Pakistan https://orcid.org/0000-0002-9294-2657
  • Ms.Asia Khatoon Soomro Institute of Mathematic & Computer Science, University of Sindh, Jamshoro, Pakistan

DOI:

https://doi.org/10.62019/abbdm.v4i4.255

Keywords:

Rice disease, MobileNet, Attention Block, Squeeze and Excitation, Rice leaf disease classification, Rice disease, MobileNet, Attention Block, Squeeze and Excitation, leaf disease classification.

Abstract

Agriculture is one of the most promising fields for contributing to the growth of the economy of the country. Rice is considered as one of the important crops that contributes to the economy and food demand. The production of rice is mainly affected by disease in plants which severely impacts the production. The diseases include bacterial blight, blast, browspot, tungro. The dataset was obtained from the internet that contains a total of 5932 images. In this research, we proposed a method based on Mobilenet with an attention block to classify four different diseases of rice. The mobilenet architecture is effective for mobile devices. The proposed approach is a lightweight model with the combination of an attention block that uses squeeze excite block. The mobilenet was used for the feature extraction process. The Squeeze-and-Excitation Block allows a network to execute dynamic channel-wise feature recalibration, hence increasing its representational power. The proposed approach recognizes the diseases effectively and increases the model accuracy and is computationally effective. The model achieved an accuracy of 100% on rice dataset.

Author Biographies

  • Dr.Muhammad Suleman Memon, Department of Information Technology, Dadu Campus, University of Sindh, Dadu, Pakistan

    Dr.Muhammad Suleman Memon holds a Ph.D. in Computer Systems Engineering with a research focus on Deep Learning. Currently serving as an Assistant Professor and Incharge of the Department of Information Technology, Dr.Memon has over 13 years of teaching experience in subjects including Computer Vision, Python Programming, Data Science, Web Engineering, and Programming Fundamentals. With a strong research portfolio, they have authored more than 22 publications in national and international journals and serve as the reviewer and an editorial member of different international journals.

  • Dr.Mumtaz Qabulio, 2Department of Software Engineering, Faculty of Engineering & Technology, University of Sindh, Jamshoro, Pakistan

    Dr.Mumtaz Qabulio currently hold a PhD. in Computer Science with a research focus on Wireless Sesnor Networks, IOT, Machine Learning. Currently working as Assistant Professor in the Department of Software Engineering.

  • Ms.Asia Khatoon Soomro, Institute of Mathematic & Computer Science, University of Sindh, Jamshoro, Pakistan

    Ms.Asia Khatoon Soomro holds a MS Degree and a PhD. Scholar in Computer Science at University of Sindh with a research focus on pervasive computing, wireless sensor networks and machine learning. Currently working as Assistant Professor in Institute of Mathematic & Computer Science, University of Sindh, Jamshoro.

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Published

2024-12-27

How to Cite

Deep Learning Based Effective Rice Leaf Disease Classification using MobileNet- Attention. (2024). The Asian Bulletin of Big Data Management , 4(4), 117-128. https://doi.org/10.62019/abbdm.v4i4.255

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