Deep learning-based approach for identification of diseases of maize crop.

Journal: Scientific reports
Published Date:

Abstract

In recent years, deep learning techniques have shown impressive performance in the field of identification of diseases of crops using digital images. In this work, a deep learning approach for identification of in-field diseased images of maize crop has been proposed. The images were captured from experimental fields of ICAR-IIMR, Ludhiana, India, targeted to three important diseases viz. Maydis Leaf Blight, Turcicum Leaf Blight and Banded Leaf and Sheath Blight in a non-destructive manner with varied backgrounds using digital cameras and smartphones. In order to solve the problem of class imbalance, artificial images were generated by rotation enhancement and brightness enhancement methods. In this study, three different architectures based on the framework of 'Inception-v3' network were trained with the collected diseased images of maize using baseline training approach. The best-performed model achieved an overall classification accuracy of 95.99% with average recall of 95.96% on the separate test dataset. Furthermore, we compared the performance of the best-performing model with some pre-trained state-of-the-art models and presented the comparative results in this manuscript. The results reported that best-performing model performed quite better than the pre-trained models. This demonstrates the applicability of baseline training approach of the proposed model for better feature extraction and learning. Overall performance analysis suggested that the best-performed model is efficient in recognizing diseases of maize from in-field images even with varied backgrounds.

Authors

  • Md Ashraful Haque
    Department of Electrical and Electronic Engineering, Daffodil International University, Dhaka, 1207, Bangladesh. limon.ashraf@gmail.com.
  • Sudeep Marwaha
    ICAR-Indian Agricultural Statistics Research Institute, New Delhi, India.
  • Chandan Kumar Deb
    Division of Computer Applications, ICAR-Indian Agricultural Statistics Research Institute, New Delhi, 110012, India. chandan.deb@icar.gov.in.
  • Sapna Nigam
    Division of Computer Applications, ICAR-Indian Agricultural Statistics Research Institute, New Delhi, 110012, India.
  • Alka Arora
    Division of Computer Applications, ICAR-Indian Agricultural Statistics Research Institute, New Delhi, 110012, India.
  • Karambir Singh Hooda
    ICAR-National Bureau of Plant Genetic Resources, New Delhi, 110012, India.
  • P Lakshmi Soujanya
    ICAR-Indian Institute of Maize Research, Ludhiana, 141004, India.
  • Sumit Kumar Aggarwal
    ICAR-Indian Institute of Maize Research, Ludhiana, 141004, India.
  • Brejesh Lall
  • Mukesh Kumar
    Chitkara University School of Engineering and Technology, Chitkara University, Himachal Pradesh, India.
  • Shahnawazul Islam
    Division of Computer Applications, ICAR-Indian Agricultural Statistics Research Institute, New Delhi, 110012, India.
  • Mohit Panwar
    ICAR-Indian Institute of Maize Research, Ludhiana, 141004, India.
  • Prabhat Kumar
    National Agricultural Higher Education Project, Krishi Anusandhan Bhawan-II, New Delhi, 110012, India.
  • R C Agrawal
    National Agricultural Higher Education Project, Krishi Anusandhan Bhawan-II, New Delhi, 110012, India.