Security cameras have been standard equipment on production floors for over two decades. For most of that time, their value was limited to incident recording and after-the-fact investigation. The footage sat in NVR storage for 30 days, overwrote itself, and contributed nothing to production decisions. That equation has changed.
CCTV analytics for manufacturing floors now enables manufacturers to use the same cameras that were installed for security purposes to generate real-time production intelligence: machine state, cycle counts, process deviations, SOP compliance, and OEE component data, all from a camera network that is already powered, networked, and positioned.
Why CCTV infrastructure is a manufacturing asset, not just a security tool
The typical mid-sized manufacturing plant has between 40 and 120 CCTV cameras installed across its production floor, warehouses, and shipping areas. Each camera was installed to deter theft, investigate incidents, and satisfy insurance requirements. In most plants, no one watches the feeds live except during a security incident.
From an operational intelligence standpoint, those cameras are observing everything that matters: machines starting and stopping, operators executing or skipping process steps, material moving through stations, assembly sequences proceeding in correct or incorrect order. The footage exists. The gap has been the software to interpret it in real time.
AI-powered CCTV analytics closes that gap by running computer vision inference on live camera feeds to classify production events as they occur.
What can CCTV analytics extract from a manufacturing floor?
From a single camera covering a machine station, AI inference can extract:
Machine running state. Whether a machine is in production, stopped, in changeover, or in a maintenance state. This feeds directly into availability calculations for OEE.
Cycle count. By detecting the completion of each production cycle, the system generates accurate throughput data without connecting to the machine’s control system. On a press, the cycle is detectable by the ram movement. On an assembly station, it is detectable by the moment a completed sub-assembly moves off the station.
Operator presence and activity. Whether an operator is at the station, whether they are performing a standard task, and whether they have completed required process steps before starting the next cycle.
Process deviations. Whether a component was installed, whether a fastener was applied, whether a label was affixed before the product moved to the next station. These are the deviations that generate quality escapes when missed.
How does CCTV analytics differ from traditional factory monitoring?
Traditional factory monitoring connects to machine PLCs or dedicated sensors to collect state data. This approach is accurate and integrates well with existing MES systems, but it has three constraints that CCTV analytics does not share.
First, it requires digital output from every machine. Older equipment on most production floors has no PLC and no communication protocol. Traditional monitoring skips these machines entirely.
Second, it captures machine state but not process state. A PLC can tell you a machine is running; it cannot tell you whether the operator completed the required pre-cycle check. CCTV analytics can do both.
Third, it requires installation work at each machine, which extends deployment timelines. A 50-machine floor with PLC integration typically requires 3-6 months to fully deploy. A CCTV analytics deployment using existing cameras typically takes 4-8 weeks.
What the Nagare platform adds to CCTV analytics
Nagare, Jidoka Tech’s production monitoring platform, is built to run on existing CCTV infrastructure. It uses the same camera feeds that serve the plant’s security NVR to generate the operational intelligence layer described above. The platform surfaces machine state, throughput, process compliance, and OEE component data in real time for supervisors, managers, and plant directors.
A case study from a Nagare deployment at a P&G facility and a Maruti Suzuki plant demonstrates the pattern: existing camera networks, redeployed for operational intelligence, generating OEE visibility and process deviation alerts that were not previously available without dedicated sensor infrastructure.
What to check before deploying CCTV analytics
Three infrastructure factors determine deployment success:
Camera positioning relative to machine work areas. Security cameras are often positioned to cover aisles and egress points. Production monitoring requires cameras positioned to observe the machine’s working area. In most plants, 30-40% of cameras need repositioning or supplementation.
Network bandwidth on the camera segments. AI inference runs at the edge to minimise bandwidth requirements. A standard edge device handles 8-12 camera streams. Confirm your network topology supports edge device placement near camera concentrations.
NVR access protocol. Most modern NVR systems support RTSP streams that AI inference software can tap without disrupting the security recording function. Confirm compatibility with your NVR vendor before deployment planning.

