Abstract

Decrease in crop yield and degradation in product quality due to plant diseases such as rust and blast in pearl millet is the cause of concern for farmers and the agriculture industry. The stipulation of expert advice for disease identification is also a challenge for the farmers. The traditional techniques adopted for plant disease detection require more human intervention, are unhandy for farmers, and have a high cost of deployment, operation, and maintenance. Therefore, there is a requirement for automating plant disease detection and classification. Deep learning and IoT-based solutions are proposed in the literature for plant disease detection and classification. However, there is a huge scope to develop low-cost systems by integrating these techniques for data collection, feature visualization, and disease detection. This research aims to develop the ‘Automatic and Intelligent Data Collector and Classifier’ framework by integrating IoT and deep learning. The framework automatically collects the imagery and parametric data from the pearl millet farmland at ICAR, Mysore, India. It automatically sends the collected data to the cloud server and the Raspberry Pi. The ‘Custom-Net’ model designed as a part of this research is deployed on the cloud server. It collaborates with the Raspberry Pi to precisely predict the blast and rust diseases in pearl millet. Moreover, the Grad-CAM is employed to visualize the features extracted by the ‘Custom-Net’. Furthermore, the impact of transfer learning on the ‘Custom-Net’ and state-of-the-art models viz. Inception ResNet-V2, Inception-V3, ResNet-50, VGG-16, and VGG-19 is shown in this manuscript. Based on the experimental results, and features visualization by Grad-CAM, it is observed that the ‘Custom-Net’ extracts the relevant features and the transfer learning improves the extraction of relevant features. Additionally, the ‘Custom-Net’ model reports a classification accuracy of 98.78% that is equivalent to state-of-the-art models viz. Inception ResNet-V2, Inception-V3, ResNet-50, VGG-16, and VGG-19. Although the classification of ‘Custom-Net’ is comparable to state-of-the-art models, it is effective in reducing the training time by 86.67%. It makes the model more suitable for automating disease detection. This proves that the proposed model is effective in providing a low-cost and handy tool for farmers to improve crop yield and product quality.

Highlights

  • IntroductionThe farmers used to grow more nutritious cereals creativecommons.org/licenses/by/ 4.0/)

  • The authors present the results obtained by evaluating the performance of the trained ‘Custom-Net’ model on the test dataset comprising 990 images of blast and rust diseases in pearl millet

  • The framework is an appropriate integration of Internet of Things (IoT) and deep learning to analyze imagery and numeric data

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Summary

Introduction

The farmers used to grow more nutritious cereals creativecommons.org/licenses/by/ 4.0/). Such as millets and sorghum rather than high-yielding grains such as rice and wheat. With the commercialization of agriculture, the farmers have shifted their interest towards high crop yields that can fulfill their dietary and financial requirements. This shift has increased the burden of malnutrition, causing undernourishment and micronutrient deficiencies [1]. The prime minister recognized millets as a treasure of nutrition and commended for a call to start a millet revolution in India.

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