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Enterprise AI Analysis: From Code to Field: Evaluating the Robustness of Convolutional Neural Networks for Disease Diagnosis in Mango Leaves

Enterprise AI Analysis

From Code to Field: Evaluating the Robustness of Convolutional Neural Networks for Disease Diagnosis in Mango Leaves

Authored by: Gabriel Vitorino de Andrade, Saulo Roberto dos Santos, Itallo Patrick Castro Alves da Silva, Emanuel Adler Medeiros Pereira, and Erick de Andrade Barboza

Executive Impact

This research demonstrates significant advancements in agricultural AI, providing robust solutions for real-world deployment challenges.

0 Peak Clean Accuracy (LCNN)
0 Relative Robustness Gain (LCNN vs ResNet-101 mCE)
0 Lowest Mean Corruption Error (LCNN)
Field Ready for Edge Device Deployment

Deep Analysis & Enterprise Applications

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

Methodology
Robustness Assessment
Key Findings
Implications & Future Work

Robustness Evaluation Framework

Create Corrupted Dataset (MangoLeafDB-C)
Implement & Validate CNN Models (5 Architectures)
Calculate Robustness Metrics (F1, CE, mCE, Relative mCE)
0 Corrupted Images Generated (19 types, 5 severities)
Model Characteristics Clean F1-Score (Our Work)
ResNet-50 Deep, Transfer Learning 0.66
ResNet-101 Deeper, Transfer Learning (Reference Model) 0.68
VGG-16 Standard, Transfer Learning 0.95
Xception Inception-based, Transfer Learning 0.93
LCNN Lightweight, Specialized (Mango Leaf Diagnosis) 0.97
0 Types of Corruptions Tested (Noise, Blur, Digital, Weather)

Defining Robustness Metrics

The study rigorously applied Corruption Error (CE) and Relative Corruption Error (Relative CE), along with their mean forms (mCE, Relative mCE), following the benchmark protocol established by Hendrycks & Dietterich [7]. CE normalizes a classifier's performance under corruption against a reference model (ResNet-101 in this study), while Relative CE measures performance degradation relative to the clean dataset, further relativized by the reference model's degradation. Lower mCE values indicate higher robustness.

Observation Deeper Models (ResNet) Lightweight/Specialized (LCNN)
General Trend Relatively stable at lower severities, then steeper drop. Much flatter performance curves under geometric/compression distortions.
High Severity Impact F1-scores fall significantly (e.g., 0.6160 to 0.3161 for ResNet-50). Maintains F1 score above 0.9 on Pixelate and Elastic.
Vulnerability Significant vulnerability to random noise corruptions (Impulse, Speckle, Shot). Also vulnerable to random noise corruptions, but overall lower mCE.
0 LCNN's Mean Corruption Error (mCE) - Lowest Overall

LCNN's Pareto Optimality

The Lightweight Convolutional Neural Network (LCNN) demonstrated distinct Pareto optimality, achieving a maximum clean accuracy of 99.5% and the lowest mCE of 48.9. This positions LCNN at the forefront of the Pareto front, proving that problem-specific architectures can achieve superior accuracy and robustness simultaneously, especially excelling on blur and digital distortions.

Model Clean Accuracy (%) mCE (Lower is Better)
LCNN 99.5 48.9
VGG-16 99.4 63.4
Xception 97.9 94.5
ResNet-50 71.1 105.3
ResNet-101 68.1 100 (Reference)
Critical Robustness Assessment for Agricultural AI in Developing Regions

Strategic Importance for Edge Devices

The findings strongly advocate for lightweight and specialized models, such as LCNN, in real-world agricultural applications, particularly on edge devices. These environments often face technological limitations and require solutions where computational efficiency and reliability under adverse conditions are paramount. LCNN's balanced performance across clean accuracy and robustness makes it ideal for deployment in the field.

Category Limitations of Current Study Proposed Future Work
Dataset No comparison with field images vs. algorithmically generated. Examine model robustness across domains (controlled vs. real-world).
Methodology No formal statistical tests for differences between models/corruptions. Introduce statistical assessments to validate findings rigorously.
Improvement Did not investigate methods for boosting robustness. Investigate adversarial training and noise-resistant loss functions.

Calculate Your Potential AI Impact

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Your AI Implementation Roadmap

A typical phased approach to integrate robust AI solutions into your enterprise operations.

Phase 1: Discovery & Strategy

Conduct detailed needs assessment, define objectives, evaluate existing infrastructure, and develop a tailored AI strategy focused on robustness and efficiency.

Phase 2: Pilot & Customization

Develop and train specialized models like LCNN with your specific agricultural data, deploy a pilot for selected use cases, and fine-tune for optimal performance under real-world conditions.

Phase 3: Full-Scale Deployment & Integration

Roll out robust AI solutions across all relevant operations, integrate with existing systems, and establish continuous monitoring and retraining protocols to maintain performance and adapt to new challenges.

Phase 4: Optimization & Expansion

Regularly review performance, identify further optimization opportunities, explore new AI applications, and expand the scope of AI integration across the enterprise for sustained innovation.

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