Assessfy Capstone Lab Advanced 6 milestones 100 marks

Convolutional Neural Network-Based Crop Disease Detection with Farmer Mobile Application

Branch: AI & Data Science Type: Industry-applied final-year Major Project Standard: Mumbai University Rev-2019 'C' Scheme (Major Project I + II) Group: up to 4 students Assessment: 6 review-based milestones (100 marks)

Real-world project · AICTE-aligned · AI-graded · Audit-ready certificate

6
Milestones
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Available mentors
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Enrolled students
15
Core skills
About this project

Objective: To develop and deploy a mobile application for Indian farmers that detects crop diseases from leaf images using a trained convolutional neural network model.

Crop diseases severely impact agricultural productivity and income for Indian farmers, especially those with limited access to expert diagnosis. Early and accurate disease detection is crucial to prevent losses, but rural farmers often lack the tools or knowledge to identify diseases from leaf symptoms.

This project proposes an AI-driven solution: a convolutional neural network (CNN) trained on labeled leaf images, integrated into a user-friendly Android mobile app. Farmers can capture leaf images, receive instant disease classification and suggestions, and access disease information in local languages.

Key deliverables include: a fully implemented CNN model (using a dataset like PlantVillage or custom Indian crop datasets), an optimized backend/API for inference, and a live demo of the mobile app with real-time diagnosis, offline support, and recommendation features. The working model will be validated on field samples and demonstrated before examiners.

Industry and societal impact: The solution empowers farmers with actionable insights, reduces dependency on experts, and can scale across crops and regions. It supports digital agritech adoption, potentially improving yields and rural livelihoods.

Milestones
1. Synopsis & Problem Definition (Stage-I Review-1)
10 marks 25d
Submit a synopsis outlining the crop disease detection problem, proposed AI solution, and expected impact; reviewed by project guide for scope and feasibility.
2. Literature / Market Survey & Requirement Analysis (Stage-I Review-2)
10 marks 25d
Conduct and document a survey of existing agritech solutions, relevant CNN-based methods, and market needs in India; requirements validated by faculty panel.
3. System Design, Methodology & Cost Analysis (Stage-I close)
18 marks 35d
Deliver detailed system architecture, technology selection, dataset plan, and cost analysis; design reviewed and approved for implementation readiness.
4. Implementation / Fabrication of Working Model (Stage-II Review-1)
24 marks 40d
Build and integrate the CNN model, backend, and mobile app; demonstrate a functional working prototype to guide and receive feedback.
5. Testing, Results & Validation (Stage-II Review-2)
20 marks 35d
Test the solution on real leaf samples, analyze accuracy/results, and validate usability; reviewed by examiners for robustness and performance.
6. Report, Paper & Demonstration / Oral Defense (Stage-II final Oral & Practical)
18 marks 30d
Submit comprehensive report and paper, and conduct a live demo plus oral defense of the deployed app/system before the examiner panel.
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Skills you'll learn
CapstoneFinal-year projectMajor projectAI & Data ScienceDeep learning model development and CNN architecture designMobile application development (AndroidUI/UX for rural users)Dataset collectionpreprocessingand augmentationModel deployment and API integrationTesting and validation with real-world samplesCost analysis and solution optimization for rural scalabilityTeamwork and project managementTechnical report writing and oral presentation skills
Tools used
Python (TensorFlow/Keras or PyTorch for CNN)Android Studio (Java/Kotlin for mobile app)PlantVillage dataset / Indian crop leaf datasetsOpenCV for image preprocessingRESTful API (Flask/FastAPI)SQLite or Firebase for backend data managementGit for code version controlIS/ISO 9126 for software quality assessment
Prerequisites
Machine Learning and Deep LearningComputer Vision and Image ProcessingMobile Application DevelopmentDatabase Management SystemsData Structures and Algorithms
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