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Enterprise AI Analysis: An explainable deep learning framework for few shot crop disease detection in rice and sugarcane using CNN based feature extraction

Agriculture & Deep Learning

Revolutionizing Crop Health: AI for Early Disease Detection

Where crop health is essential to global food security. Our focus is on early crop disease detection in the field of agriculture, especially Rice and Sugar cane leaf disease. This prompts researchers to consider quick, automated, cost-effective, precise, and efficient methods of identifying the kinds of diseases utilizing contemporary technologies like image processing, artificial intelligence (AI), and Explainable Artificial Intelligence (XAI). This paper proposes an framework to detect pest infestation for rice and Sugar cane cultivation and suggests an effective framework for rice and Sugar cane disease detection and forecasting that uses image processing to standard, resizing, and normalization rice and Sugar cane images then, using feature extractor using CNN after that we using few-shot learning (FSL) techniques such as like Prototypical Networks and Model-Agnostic Meta-Learning (MAML) learning techniques for superior decision-making in smart farming systems. The experimental findings demonstrated the Accuracy and specificity of the suggested framework in identifying and effectively predicting the kind of disease. According to the results, the suggested framework outperformed the state-of-the-art benchmark algorithms in disease prediction while producing results that were plausible. With Prototypical Networks and MAML for rice leaf disease datasets, it increased by up to 97.6% and 95.27%, respectively. For effective rice disease identification, Prototypical Networks and MAML for Sugar cane leaf disease datasets increased by up to 91.68% and 90.27%, respectively. Interpretable Al-driven insights were further made possible by the combination of proposed system with Grad-CAM Explanation, which improved decision-making transparency.

Impact at a Glance

Our explainable deep learning framework delivers unparalleled accuracy and transparency for critical agricultural decision-making.

0 Accuracy (Rice Leaf Diseases)
0 Accuracy (Sugarcane Leaf Diseases)
1 Enhanced Interpretability (XAI)

Deep Analysis & Enterprise Applications

Select a topic to dive deeper, then explore the specific findings from the research, rebuilt as interactive, enterprise-focused modules.

Enterprise Process Flow

Data Collection
Data Augmentation
Data Preprocessing
CNN Feature Extraction
Few-Shot Learning Classification
XAI Explanation (Grad-CAM & SHAP)
Disease Detection & Prediction

Sugarcane Leaf Disease Detection: Proposed System vs. Benchmarks

MethodAccuracyPrecisionRecallF1-score
VGG1967.3378.2366.2769.34
RESNet81.4283.6481.3381.61
XCEPTION79.2180.678.4679.15
EfficientNet78.6677.4376.5678.31
MAML85.686.0185.585.1
Proposed System91.6891.6891.5091.68

Rice Leaf Disease Detection: Proposed System vs. Benchmarks

AlgorithmsAccuracyPrecisionRecallF-score
RES5090.9890.5590.3390.37
VGG-1689.0289.9889.5889.70
VGG-1990.8790.9090.2590.98
MN-188.9888.8688.4088.79
MN-287.9888.9888.7886.69
INC89.7989.2389.9389.56
XP90.0190.8991.9092.86
DN88.3988.2588.2888.93
Proposed system97.697.697.397.6
97.6% Maximum Accuracy Achieved for Rice Leaf Disease Detection
91.68% Maximum Accuracy Achieved for Sugarcane Leaf Disease Detection
High Enhanced Model Interpretability through XAI

AI-Driven Crop Disease Detection: A Breakthrough in Smart Farming

This research addresses the critical challenge of early crop disease detection, particularly in rice and sugarcane, where traditional methods are often slow and labor-intensive. By integrating advanced few-shot learning (FSL) techniques like Prototypical Networks and MAML with Explainable AI (XAI) methods such as Grad-CAM and SHAP, the proposed framework achieves superior accuracy and provides transparent insights into its predictions. This breakthrough allows for quicker, more precise disease identification, enabling farmers to implement targeted interventions, reduce pesticide use, and significantly boost crop yields.

Key Results:

  • Achieved 97.6% accuracy for rice leaf disease detection.
  • Achieved 91.68% accuracy for sugarcane leaf disease detection.
  • Provided interpretable AI insights for improved decision-making.

Quantify Your AI Advantage

Estimate the potential cost savings and efficiency gains for your enterprise by integrating an advanced AI framework for disease detection.

Estimated Annual Savings $0
Annual Hours Reclaimed 0

Your Path to Smarter Agriculture

Our phased approach ensures a seamless integration of AI-driven crop disease detection into your existing agricultural operations.

Discovery & Data Integration

Initial consultation to understand existing infrastructure and data sources. Securely integrate crop image datasets (rice, sugarcane) and establish data pipelines.

Model Customization & Training

Tailor FSL models (Prototypical Networks, MAML) to specific regional crop varieties and disease patterns. Initial model training and validation.

XAI Integration & Validation

Implement Grad-CAM and SHAP for model interpretability. Validate model decisions with agricultural experts to build trust and refine accuracy.

Deployment & Monitoring

Deploy the AI framework on chosen platforms (e.g., edge devices, cloud). Continuous monitoring of performance and retraining with new data for sustained high accuracy.

Ready to Transform Your Agricultural Operations?

Don't let crop diseases diminish your yields. Discover how our explainable AI framework can empower your agricultural enterprise with unparalleled disease detection capabilities.

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