--- license: mit metrics: - precision - recall base_model: - Ultralytics/YOLOv8 pipeline_tag: object-detection tags: - defect-detection - industrial, quality-control, yolov8 --- # Industrial Surface Defect Detection Model (NEU-DET) A YOLOv8-based deep learning model for real-time detection of 6 types of surface defects in industrial materials. ## 📋 Model Overview **Architecture:** YOLOv8 **Dataset:** NEU-DET (1,800 grayscale images) **Task:** Object Detection (Defect Classification) **Framework:** Ultralytics **Input:** Images (JPEG/PNG) **Output:** Bounding boxes + Confidence scores ## 🔍 Supported Defect Classes | Defect Type | Description | |------------|-------------| | **Crazing** | Fine surface cracks forming network patterns | | **Inclusion** | Foreign material embedded in surface | | **Patches** | Surface irregularities and discoloration | | **Pitted Surface** | Pitting and corrosion damage | | **Rolled-in Scale** | Scale/oxide layers rolled into material | | **Scratches** | Surface abrasions and scratch marks |