Nirikshak: Overspeed Detection AI for Road Safety

Nirikshak marks a groundbreaking advancement in traffic management and road safety. Developed for a government client, this innovative solution uses a simple smartphone to accurately measure vehicle speeds and detect overspeeding. By harnessing advanced machine learning models and a seamless Android app interface, Nirikshak aims to significantly reduce road accidents and traffic violations, setting a new standard in traffic law enforcement technology.

The Challenge: Single Camera Dynamic Speed Detection

The primary challenge was to accurately measure vehicle speeds using only a smartphone, a feat never before accomplished in this domain. The project demanded high precision in speed estimation, robust vehicle identification in varied traffic conditions, and an intuitive user interface for efficient operation.

  • Achieving 95% accuracy in speed estimation
  • Unique vehicle identification in dense traffic
  • Designing a user-friendly and error-resistant interface

Engineering a First-of-its-Kind Solution

Our approach involved creating an intricate algorithm that analyzes video clips and timestamps to determine vehicle speed with exceptional accuracy. This required extensive research and testing of various neural networks for object detection and tracking.

  • Developed an optical flow algorithm for speed detection
  • Researched multiple neural networks for object tracking
  • Implemented advanced OCR for number plate recognition
  • Engineered anomaly detection for lane switching
  • Created a user-friendly app interface with guidance features

The Impact

Nirikshak set a new benchmark in road safety, enhancing traffic law enforcement, and promoting responsible driving.

  • 95% accuracy in speed detection
  • Enhanced road safety measures
  • Real-time vehicle identification

Project Information

Completed in

6 Weeks

Category

Govt, AI

Tech Stack

React, Python, SQL, ML Models

Contact Us

+9190548 72050