Computer Vision

Computer Vision Services

We build computer vision systems that extract actionable insight from images and video accurate, reliable, and built for production, not just demos.

PyTorch • TensorFlow • YOLO • OpenCV • Mask R-CNN • Vision Transformer

What We Do

Computer vision enables machines to interpret and understand visual information identifying objects, classifying scenes, tracking movement, reading text, detecting anomalies, and segmenting images at a speed and scale no human operator can match.

We build vision systems across the full development lifecycle data labelling, model training, deployment, integration, and performance monitoring. We work with the tools that are right for your use case and are honest about what your data can support.

Our Computer Vision Services

Data Labelling

Accurate, consistent labelling is the foundation of any reliable vision model. We provide specialist annotation using bounding boxes, polygons, segmentation masks, keypoints, cuboids, and classification labels with quality assurance built in.

Bounding box, polygon, and semantic segmentation annotation

Keypoint and pose estimation labelling

3D cuboid annotation for depth and spatial data

Quality assurance and inter-annotator agreement review

Object Detection

We build detection systems that identify and locate objects in images and video using YOLO, Faster R-CNN, and EfficientDet based on your accuracy and latency requirements.

Real-time object detection in live video streams

Defect and anomaly detection in manufacturing

Person detection for safety and security applications

Product and barcode detection for retail and logistics

Object Tracking

Single and multi-object tracking systems that follow targets across video frames recording trajectories, maintaining identity, and detecting zone events.

Multi-object tracking with identity persistence

Zone-based event detection and triggering

Player and ball tracking for sports analytics

Vehicle and pedestrian tracking for traffic applications

Image Classification

CNN and transfer learning models that assign images to categories sorting products, identifying conditions in medical scans, classifying document types, and routing visual inputs in automated workflows.

Binary and multi-class classification

Transfer learning from ResNet, EfficientNet, ViT

Medical image classification for diagnosis support

Product image categorisation at scale

Image Segmentation

Pixel-level classification for precise delineation of objects, regions, and boundaries semantic, instance, and panoptic segmentation for medical imaging, industrial QC, and autonomous perception.

Semantic segmentation using DeepLab and FCN

Instance segmentation using Mask R-CNN

Medical image segmentation for tissue and organ delineation

Satellite and aerial image segmentation

Intelligent Video Analysis

Real-time and batch video processing that extracts structured metadata detecting objects, recognising actions, identifying events, and triggering alerts from live camera feeds or recorded footage.

Action recognition and behaviour detection

Crowd density and movement analytics

Anomaly detection in CCTV and industrial camera feeds

Integration with existing camera infrastructure and VMS systems

Optical Character Recognition (OCR)

OCR systems that convert printed and handwritten text in images into machine-readable data with NLP post-processing for correction and entity extraction.

Invoice, form, and document OCR with structured field extraction

Product label and packaging text recognition

Multi-language OCR for international content

Integration with document management and ERP systems

Visual Search

Content-based image retrieval systems that let users search by photograph reverse image search, product similarity matching, and visual recommendation engines tailored to your catalogue.

Reverse image search for product discovery

Similarity search using embeddings and vector databases

Augmented reality try-on and overlay search

Image deduplication and near-duplicate detection

Industry Applications

Transportation

Pedestrian and vehicle detection, parking occupancy, traffic flow analysis, road condition monitoring, and licence plate recognition.

Retail & E-commerce

Footfall analysis, visual search, inventory inspection, counterfeit detection, and self-checkout automation.

Healthcare

X-ray, CT, and MRI analysis, digital pathology, patient identification, wearable integration, and rehabilitation monitoring.

Manufacturing

Automated defect detection, barcode and QR reading, predictive maintenance via visual monitoring, and safety compliance monitoring.

Education

Attendance tracking, learning engagement monitoring, campus safety, intrusion detection, and movement analysis.

Sports & Fitness

Player and ball tracking, real-time performance analysis, movement coaching feedback, and game analytics.

Smart Cities

Perimeter monitoring, weapon and threat detection, hygiene compliance, and traffic management from surveillance infrastructure.

Technology Stack

Languages

Python • Java • C++ • C • R

Vision Libraries

OpenCV • Dlib • Albumentations • SimpleCV • Mahotas

Deep Learning

PyTorch • TensorFlow • Keras • ONNX • Fast.ai • Caffe

Cloud AI Platforms

AWS SageMaker & Rekognition • Google Cloud AI • Azure Computer Vision

Vector Search

FAISS • Pinecone • Weaviate

Architectures

YOLO • Faster R-CNN • Mask R-CNN • ResNet • EfficientNet • Vision Transformer (ViT) • CNN • LSTM • GAN

Why Web Chip Armor

Industry-specific understanding

A vision system for healthcare imaging has completely different accuracy, privacy, and latency requirements from one monitoring a retail floor. We bring genuine domain understanding to every project.

Full pipeline capability

Data labelling, model training, optimisation, deployment, and integration we cover everything a production-grade vision system requires, not just one part of it.

You own everything

All code, models, and documentation are transferred to you on project completion. No artificial dependencies on us continuing to be involved unless you choose ongoing support.

Real-time and batch both

We build live streaming systems with low-latency inference and batch processing pipelines for recorded data. The architecture is chosen based on your actual performance requirements.

Data privacy built in

Facial images, medical imagery, proprietary product visuals sensitive data is handled with encryption, access controls, data minimisation, and GDPR-compliant workflows from day one.

Agile delivery with regular visibility

Structured sprints, working models at every stage, and clear communication throughout. You never receive a final system months later with no intermediate checkpoints.

Frequently Asked Questions

How much data do we need to build a computer vision model?

It depends on the task complexity. Simple binary classification using transfer learning can work with a few hundred labelled images. Object detection and segmentation typically need several thousand annotated examples. We assess your data at the start and advise honestly on whether it’s sufficient or what augmentation strategies could help.

Can your systems work in real time on live camera feeds?

Yes. We build both real-time streaming systems and batch processing pipelines. Real-time systems require careful model optimisation, hardware selection, and deployment engineering to meet latency targets. We design for your specific performance requirements from the outset not as an afterthought.

Can you integrate with our existing cameras and systems?

Yes. Integration with existing cameras, ERP platforms, IoT infrastructure, and business applications is a core part of every deployment. We connect vision system outputs to downstream processes via REST APIs, database writes, message queues, or direct application integration planned carefully before development begins to avoid rework.

How do you handle sensitive visual data like facial images or medical imagery?

Encryption in transit and at rest, strict access controls, audit logging, and data minimisation. For facial recognition we advise on the applicable legal and ethical framework before development begins. For medical imagery we apply clinical data governance standards. NDAs are signed before any project discussion starts.

Do you provide support after deployment?

Yes. Monitoring accuracy, detecting performance degradation as real-world data shifts, retraining on new data, and extending capabilities as requirements evolve. Vision systems degrade as the visual environment changes we prevent that through structured post-deployment maintenance.

What engagement models do you offer?

Dedicated team for sustained vision development needs, multiple models, or continuous improvement programmes. Fixed-price project for well-scoped deliverables like a specific detection system, OCR pipeline, or visual search model. We advise on which fits your situation after a discovery conversation.

Ready to Build Your Computer Vision Solution?

If you have image or video data and a problem that computer vision could help solve quality control, safety monitoring, visual search, document processing, or something more specific to your industry we’d like to hear about it.