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Smart Surveillance
Technology Category
- Analytics & Modeling - Machine Learning
- Functional Applications - Remote Monitoring & Control Systems
- Networks & Connectivity - Gateways
- Platform as a Service (PaaS) - Device Management Platforms
- Platform as a Service (PaaS) - Edge Computing Platforms
Use Cases
- Computer Vision
The Challenge
-Managing large scale fleet of remotely located Cameras and IoT Gateways turns out to be operational expensive job.
-Upgradation of AI/ML applications running on the Cameras.
-Application Orchestration and management becomes challenging for AI and ML applications running across the solution.
-Frequent failures require truck rolls.
About The Customer
Solution integrator for smart surveillance solutions
The Solution
-Single click provisioning of applications on LPU, upgrade ML models.
-Single click remote connectivity.
-Machine assisted remote debugging/troubleshoot.
Operational Impact
Quantitative Benefit
Related Case Studies.
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The municipality of Verona had the exigency to enforce the regulations for commercial vehicles for into the historic city center to reduce traffic, vehicles with permits dedicated to city logistics within certain hours often exceeded the permitted period of stay inside the congestion zone. In addition Verona had the goal to eliminate the falsification of disabled parking passes and increase the on street enforcement. The historic city center of Verona was already equipped with a congestion area system comprising of video cameras, but the ratification of the system limited the functionality of the system. It was not possible to measure time of ingress and egress nor the duration of stay of single vehicles. Once entered, it was not possible to verify if the vehicle spent more than the consented period of time inside the city leading to an increased congestion. For disabled people, the existing solution led to various problems: to access to the city center handicapped drivers or passengers had to inform the municipality up to 48 hours in advance for avoiding a fine and falsificated copies of disabled permits (CUDE) were a frequent problem. A new solution needed to cover all this aspects, while digitizing the related processes to increase efficiency and reduce the workload at the cities helpdesks.
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