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.

πŸ“‹ 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

πŸ” 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
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