CASE STUDY
Computer Vision Model Counts Bridge Crossings in African Villages
Discover how a machine vision model that was created is helping to maintain critical forms of transportation for people living in African villages.
Challenge
The successful pilot plan gives a once-in-a-lifetime chance to investigate the relationship between bridge usage and various crucial economic, health, agricultural, and educational outcomes in rural areas. `Automated counting techniques and analytic tools may also monitor mobility patterns throughout the globe.
Problem Statment
According to the World Bank, more than a billion people do not have year-round access to a road. Many of these people are deprived of clean drinking water and adequate sanitary facilities. Rewisdom AI’s client based in the United States collaborated with a reputable non-profit organization and other partners to better quantify and tackle this issue.
The non-profit created bridges between rural communities that have been isolated for too long. Their conventional monitoring techniques often depend on manual, in-person data collecting, which takes time, generates limited data, and is labor-intensive. It was necessary to use a continuous and automated procedure
Outcome
Rewisdom AI’s client collaborated with one of the university counted in the top research universities in international research associations. Teams from the non-profit built many bridges spanning high-traffic flood zones to preserve communities' access to healthcare and other services. They required a precise count of people crossing each bridge to estimate their usage and influence on commerce, economic success, and other factors. So the team of Rewisdom AI created, built, and tested a unique AI approach for assessing bridge use that combined low-cost, commonly accessible motion-activated digital cameras with open-source computer vision algorithms.
Our study enabled the international association of global engineering to conclude that the bridges were indeed successful, furthering an endeavor to safeguard the access to critical services of a substantial number of African villages. During one observation period, 33,800 pedestrian crossings were counted. Thousands of Africans and other residents may now sell items at their local market or go to school without scare of being attacked.
Rewisdom AI created the vision model to count pedestrian bridge crossings.
Open-source Computer vision algorithms were used with motion-activated digital cameras.
Core Technologies Behind This Case Study
Enhancing Safety with Voice AI Agents for Smarter Escalation Management
In a world where swift action can save lives, our AI consulting firm partnered with a client to revolutionize incident reporting through advanced language models. We implemented an intelligent
Computer Vision Model Counts Bridge Crossings in African Villages
Discover how a machine vision model that was created is helping to maintain critical forms of transportation for people living in African villages. The perfect agent for trading should be fast...
Virtual Wardrobe Revolutionizes Personal Styling: A Case Study on eStyleShaker
eStyleShaker revolutionizes personal style with its innovative virtual wardrobe solution, empowering users to organize and express their fashion effortlessly.
Transforming Visual Excellence for CuddlyNest with AI Solutions
CuddlyNest consulted us to transform their image management process using AI. Through innovative solutions in image enhancement, watermark removal, and automated classification.
Empowering COVID-19 Response with AI: A Data-Driven Approach
Harnessing AI to unify complex datasets, Empiric AI enabled real-time insights and predictive modeling, transforming pandemic response strategies with actionable intelligence.
Pioneering AI Platform for Scalable, Personalized Marketing Campaigns
We partnered with CIENCE to develop an innovative AI platform that leverages artificial intelligence for scalable and personalized marketing campaigns. This platform significantly enhanced...