Machine Vision

Object recognition, behaviour analytics & species counting

Vision systems that turn camera streams into decisions — recognising objects, reading fine-grained detail and spotting behaviour as it happens, deployed on the edge alongside the cameras already on site. From recognising and valuing objects to reading behaviour and counting wildlife — vision pipelines built to run in real time on the edge.

Core Capabilities

From recognising and valuing objects to reading behaviour and counting wildlife — vision pipelines built to run in real time on the edge.

How it works

Object & fine-grained recognition

We build models that don't just see an object but read it. For a casino operator we recognise gaming chips on the table — telling denominations apart, counting stacks and valuing bets in real time — and for a conservation project we classify individual bird species from field cameras to count vulnerable populations automatically, work that would take a specialist days by hand.

Behaviour & movement recognition

Beyond what is in frame, we analyse how people and objects move. Our movement-recognition models flag suspicious play and collusion at the casino table, and the same approach is reused for retail loss prevention — spotting the body language of shoplifting from existing CCTV — turning hours of footage no one watches into alerts staff can act on.

Real-time, edge-deployed pipelines

We engineer the whole pipeline — capture, detection, tracking and alerting — to run on modest hardware next to the cameras, with no cloud round-trip. That keeps latency low enough for live tables, keeps sensitive footage on site, and lets the same system run unattended at a remote field location.