For all the progress in artificial intelligence, most video security systems still fail at recognising context in real-world conditions. The majority of cameras can capture real-time footage, but struggle to interpret it. This is a problem turning into a growing concern for smart city designers, manufacturers and schools, each of which may depend on AI to keep people and property safe.

Lumana, an AI video surveillance company, believes the fault in these systems lies deep in the foundations of how they are built. “Traditional video platforms were created decades ago to record footage, not interpret it,” said Jordan Shou, Lumana’s Vice President of Marketing. “Adding AI on top of outdated infrastructure is like putting a smart chip in a rotary phone. It might function, but it will never be truly intelligent or reliable enough to understand what’s being captured or help teams make smarter real-time decisions.”

Big consequences

When traditional video security systems layer AI on older infrastructure, false alerts and performance issues arise. Alerts and missed detections are not just technical hiccups, but risks that can have devastating consequences. Shou points to a recent case where a school surveillance system, which used an AI add-on for gun detection, misidentified a harmless object for a weapon, setting off an unnecessary police response.

“Every mistake, whether it’s a missed event or a false alert, which leads to improper response, erodes trust,” he said. “It wastes time, money, and can traumatise people who did nothing wrong.”

Errors can also be costly. Each false alarm forces teams to pause real work and investigate, a process that can drain millions from public safety and operational budgets every year.

Building a smarter foundation

Instead of layering AI on top of old video security frameworks, Lumana rebuilt the infrastructure itself with an all-in-one platform that combines modern video security hardware, software, and proprietary AI. The company’s hybrid-cloud design connects any security camera to GPU-powered processors and adaptive AI models that operate at the edge – meaning they are located as close as possible to where the footage is captured.

The result, Shou says, is faster performance and more accurate analysis. Each camera becomes a continuous-learning device that improves over time, understanding motion, behaviour, and patterns unique to its environment.

“The issue is that most of today’s video surveillance systems use static, off-the-shelf AI models that were only designed to work in specific environments. AI shouldn’t need a perfect lab environment to work,” Shou explained. “It should work in real-world conditions and adapt based on the video data that’s coming in. That’s why, when customers compare Lumana to their existing or other AI systems, the difference and performance gaps are immediately clear.”

The company’s design also prioritises privacy. All data is encrypted, governed by…


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Last Update: October 31, 2025