Assessfy GovTech & Civic Lab Advanced 6 milestones 100 marks

AI-Driven Crowd Density Monitoring and Stampede Risk Alert System

Theme: Home Affairs & Disaster Management Type: Government / Civic-tech problem-statement project Tags: Public Safety, Disaster, SDG 16 Team: up to 4 Assessment: 6 impact-lifecycle milestones (100 marks) Hackathon/AICTE-activity-points eligible

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

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Available mentors
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Enrolled students
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Core skills
About this project

Objective: Develop a real-time predictive platform to help local police and disaster management authorities minimize stampede risks during large public gatherings.

Problem: India hosts thousands of large-scale public events—religious festivals, processions, political rallies, and melas—where crowd surges and unplanned movements cause deadly stampedes, endangering lives and overwhelming local police and disaster response teams. This issue directly impacts public safety and aligns with the mandates of the Ministry of Home Affairs and SDG 16 (Peace, Justice & Strong Institutions).

Solution: The proposed solution is a deployable digital platform that leverages AI, computer vision, and open geospatial data to monitor crowd densities in real time via CCTVs and smartphones. It analyzes movement patterns, predicts congestion and risk zones, and issues early warnings to authorities for targeted interventions.

Key Features/Deliverables: The prototype will include: (1) a dashboard for real-time crowd heatmaps and density trends using video feeds and crowd-sourced mobile data, (2) an AI model to predict stampede risk based on live movement/flow, (3) alerting tools for authorities, and (4) simulation and analytical reports for planning safer events. The solution will use anonymized data, respecting privacy norms.

Impact and Scaling: By enabling early, data-driven interventions, the platform can substantially reduce casualties in high-risk events, build trust in civic infrastructure, and provide a scalable, low-cost tool for police, disaster management units, and municipal bodies across states. The open-data foundation allows for easy adaptation to various event types and geographies.

Milestones
1. Problem & Stakeholder Understanding
8 marks 18d
Identify specific pain points through interviews with police/event managers and review past stampede incidents; submit a summary report reviewed by mentors.
2. Landscape Survey & Open-Data Sourcing
10 marks 20d
Survey global and Indian crowd management solutions and compile a dataset inventory (video, crowd, geospatial sources); review by external expert.
3. Solution Design & Architecture
12 marks 20d
Design system architecture, data flow, ethical guidelines, and user stories; validate via stakeholder walkthrough and advisor feedback.
4. Prototype / Build
34 marks 35d
Develop computer vision models, dashboard, and alerting module; demonstrate core features with test data and functional walkthrough.
5. Pilot & Impact Measurement
26 marks 27d
Conduct a simulated or small-scale real-world pilot (e.g., local mela); collect feedback, measure prediction accuracy and intervention value.
6. Stakeholder Demo & Pitch
10 marks 20d
Present the working system to a jury of civic-tech, police, and disaster management representatives with impact data and deployment plan.
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Skills you'll learn
GovTechCivicGovernmentPublic sectorDigital IndiaHome Affairs & Disaster ManagementPublic SafetyDisasterSDG 16Computer vision and machine learning model development for video analyticsIntegration of real-time data streams from CCTV and mobile devicesGIS mapping and spatial data visualizationUser-centric dashboard/UI/UX design for public safety teamsData privacy and ethical data handling in public settingsStakeholder interviews and requirements gathering with police/event organizersImpact measurement using pre/post event safety metrics
Tools used
OpenCV for computer visionTensorFlow or PyTorch for AI/ML modelingOpenStreetMap and ISRO Bhuvan for geospatial dataPublic CCTV and event crowd datasets (e.g.Crowd Surveillance Dataset)Node.js/React or Django for dashboard developmentData.gov.in for relevant open datasets on event locations/populationTwilio or similar for SMS alerts
Prerequisites
Foundations of AI and machine learningBasics of computer vision (OpenCVimage/video analytics)Web development (frontend and backend)Introductory GIS or spatial data analysis
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