Mobile Manufacturing, Device Repair, Insurance
Cloud-Based AI Image Analysis Platform
Screen crack detection, damage classification, fraud validation
It is an AI-powered computer vision platform built to assess mobile phone screen damage with speed and precision. Designed for manufacturers, service centers, and insurance providers, the system automates inspection by analyzing device images for cracks, scratches, and glass imperfections.
Traditional manual inspection methods were slow, inconsistent, and prone to subjective judgment. The mobile screen damage detection system replaces this with a scalable, cloud-deployed solution that leverages deep learning models to classify damage severity accurately.
The system leverages computer vision and deep learning models (VGG + YOLO architectures) to detect cracks, scratches, and glass imperfections from device images.
The platform integrates seamlessly with existing enterprise systems, enabling real-time or batch-based evaluations while maintaining strict data privacy and auditability.
The deployment of phone screen damage detection using AI delivered immediate operational and financial impact.
82% reduction in inspection time per device compared to manual assessment.
97.8% precision in damage classification, including crack depth, surface scratch, and glass shatter.
46 percent reduction in fraudulent insurance claims using automated image validation.
Enabled parallel processing for batch analysis for 10,000 plus images daily
The collaboration felt less like vendor engagement and more like a true product partnership.
Manual screen inspections were slow, inconsistent, and costly. Automated screen damage detection system reduced human dependency and introduced transparency and accuracy into repair and insurance decision-making. It revolutionized how mobile insurers and repair vendors evaluate claims and repair needs with precision and transparency.
We built a scalable AI vision system that detects, classifies, and validates mobile screen damage in real time.
| Feature/Metric | Before (Manual Process) | After (AI-Powered) |
|---|---|---|
| Average Inspection Time | 5–6 minutes per device | 40–50 seconds per device |
| Damage Detection Accuracy | 70–75% human variability | 97.8 percent consistent |
| Fraudulent Claim Detection | Less than 10 percent | 46 percent reduction |
| Processing Capacity | 100 devices per day | 10,000 plus devices per day |
| Traceability & Audit Logs | Manual spreadsheets | Automated cloud-based logs |
Find out how MoogleLabs can help your organization. We’d love to answer your queries.