Abstract

In agriculture, rice plant disease diagnosis has become a challenging issue, and early identification of this disease can avoid huge loss incurred from less crop productivity. Some of the recently-developed computer vision and Deep Learning (DL) approaches can be commonly employed in designing effective models for rice plant disease detection and classification processes. With this motivation, the current research work devises an Efficient Deep Learning based Fusion Model for Rice Plant Disease (EDLFM-RPD) detection and classification. The aim of the proposed EDLFM-RPD technique is to detect and classify different kinds of rice plant diseases in a proficient manner. In addition, EDLFM-RPD technique involves median filtering-based preprocessing and K-means segmentation to determine the infected portions. The study also used a fusion of handcrafted Gray Level Co-occurrence Matrix (GLCM) and Inception-based deep features to derive the features. Finally, Salp Swarm Optimization with Fuzzy Support Vector Machine (FSVM) model is utilized for classification. In order to validate the enhanced outcomes of EDLFM-RPD technique, a series of simulations was conducted. The results were assessed under different measures. The obtained values infer the improved performance of EDLFM-RPD technique over recent approaches and achieved a maximum accuracy of 96.170%.

Highlights

  • Detection of pests and plant diseases is one of the challenging problems in the domain of agriculture

  • The results demonstrate that Deep AE, Artificial neural networks (ANN), and K-nearest neighbor (KNN) techniques resulted in low accuy values namely, 86%, 80%, and 70% respectively

  • In order to validate the improved outcomes of EDLFMRPD approach, a series of simulations was conducted and the results were inspected under different dimensions

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Summary

Introduction

Detection of pests and plant diseases is one of the challenging problems in the domain of agriculture. Temniranrat et al [11] proposed an object refinement process and detection model training to enhance the performance of prior studies on rice leaf disease recognition. This method depends upon examining the model prediction outcomes and can be used recurrently to improve the quality of dataset in training the following model. Bhoi et al [14], proposed an Internet of Things (IoT)-enabled Unmanned Aerial Vehicles (UAVs)enabled rice pest detection method with Imagga cloud to recognize the pest in rice, at the time of crop production This IoT-enabled UAV model focused on Python programming and AI model to send the rice pest images to cloud and provide the pesticide data. A dense CNN framework undergone training on huge plant leaf image datasets from many nations and was used in this study

Contribution of the Paper
The Proposed Model
Image Preprocessing
K-Means Segmentation
Fusion Based Feature Extraction
Image Classification
Experimental Validation
Methods
Findings
Conclusion
Full Text
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