Computer Vision For Traffic Management

Solution We Delivered

Improving Traffic Intelligence with Computer Vision-Based Vehicle Recognition

Managing traffic flow and enforcement in challenging conditions—such as low light or adverse weather—can hinder the effectiveness of traditional monitoring systems. Manual analysis of video feeds is not scalable and often fails to capture critical vehicle details in real time.

To address this, a computer vision-based solution was developed to process image and video data from ANPR (Automatic Number Plate Recognition) cameras. The system intelligently identifies key vehicular attributes including vehicle type, length, position, number plate, and other characteristics—even under poor visibility conditions.

This AI-powered approach enhances traffic monitoring accuracy, supports smarter enforcement, and enables more efficient traffic management in urban and highway scenarios. By leveraging real-time video analytics, authorities gain actionable insights to optimize road safety and traffic flow.

Technology Used

Core C++ OpenCV C++
traffic-computer-vision-we-delivered
traffic-computer-vision-what-we-did
What we did

Advanced Traffic Monitoring with Computer Vision

Implemented image and video analysis using data from ANPR cameras to enhance traffic management, even in low light and adverse weather conditions.

Vehicle Identification and Classification

Accurately detected vehicle type, length, and position—enabling better categorization and flow analysis.

Number Plate Recognition

Extracted and interpreted license plate data for vehicle tracking, enforcement, and record-keeping.

Robust Performance in Challenging Conditions

Ensured reliable operation across varied environments, including nighttime and poor weather—supporting uninterrupted surveillance and control.

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