Steel wire rope inspection
Broken wires, local wear and strand deformation on a moving rope — no stops for visual checks.
A computer vision quality inspection system: defect detection, surface flaw identification, photo capture and integration with PCS, MES, ERP and 1C. Designed for your production line.
Results depend on the operator, end-of-shift fatigue and attention.
At high speed it is impossible to check 100% of items by eye — some defects pass through.
Pass / reject judgments differ between shifts, disputed cases go unrecorded.
Without photo capture and analytics you cannot trace the root cause of defects or prove quality to the customer.
At the core are trained AI models: cameras capture the item, local AI analyzes every frame and makes a pass / reject decision in real time.
Cameras shoot the item under stable lighting.
Finds defect features in the frame.
Pass / reject + defect type.
Photo, status, event log.
Signal to our platform, PCS, MES, ERP, 1C and more.
Figures are based on delivered projects; the actual effect depends on product type, initial defect rate and line conditions.
We deploy machine vision quality control at operating plants — from steelmaking and rolled metal to agro and welding lines. Every project starts with a line survey and ends with a system running in the flow 24/7 and reporting statuses to enterprise systems. Below are real scenarios from our practice.
Broken wires, local wear and strand deformation on a moving rope — no stops for visual checks.
Rebar, rounds, angles, channels, I-beams.
Defect log for the QC department.
Granulometry, ore contamination and ore color in the flow.
Pores, undercuts, lack of fusion, overlaps and spatter along the seam. Photo capture of every joint for the QC log.
Weed and grain impurities, broken and damaged kernels at the elevator — batch quality assessment in the flow.





Not quite. We do not sell a boxed product — every project is tailored to the specific task, product type and the client's inspection scenarios. These define the camera setup, lighting, trainable defect classes and rejection rules.
Cameras capture the item in the flow, a trained CV model analyzes the image, classifies the result as pass or reject with the defect type, saves the photo and sends the event to the operator interface and to PCS, MES, ERP or 1C.
Chips and spalling, cracks, coating gaps and paint defects, deformation and geometry deviations, contamination and foreign inclusions, marking errors, incomplete assembly. The exact class set is configured for your product.
On capture conditions (lighting, angle, positioning stability), the volume and quality of training data and correctly defined rules. Our projects reach 95%+ classification accuracy with adaptive retraining on real data.
Yes. The system sends events and statuses to PCS, MES, ERP, SCADA and 1C, supports signal control and line stops on defects, and keeps an event log and photo archive.
No. Inspection runs in the flow without slowing production down. Deployment starts with a survey and a pilot section, and the transition to industrial operation is staged.
No, the system does not override GOST, spec or QMS requirements. It automates visual and optical inspection against defined pass / reject criteria, keeps photo records and an event log — building an evidence base for the QC department.
Manual visual inspection depends on the operator, line speed, lighting and fatigue, and leaves no statistics. A CV system applies uniform criteria to every item, works without gaps in the flow, keeps photo records and shift and batch analytics — complementing, not replacing, instrumental inspection.
We'll review your line and defects and propose a pilot scheme.
I-SOL develops and deploys a machine vision automated quality control system. It is not a boxed product: we select cameras and lighting and train the CV model for your specific line, product type and inspection scenarios. The system automates quality control where manual visual inspection depends on the operator, line speed and end-of-shift fatigue.
Computer vision provides in-line defect detection, optical surface inspection and pass / reject classification with defect typing. Every decision is backed by a photo, and events and statuses are sent to PCS, MES, ERP, SCADA and 1C.
I-SOL visual inspection systems are used in steelmaking and rolled metal production, for weld and joint inspection, casting, painting, pipes and rebar, packaging and assembly, as well as for incoming inspection and in-line quality control. The defect class set is retrained on the plant's real data.
Automated inspection complements instrumental quality control and does not override GOST, spec or QMS requirements: it helps the QC department keep evidence-based records against defined quality criteria. Describe your product and line — we'll propose a pilot scheme and estimate the effect.