EfficientAD - Cable
EfficientAD model for detecting bent wires, cable swaps, and cut insulation in cables
Model Details
- Architecture: EfficientAD (Teacher-Student-Autoencoder)
- Model Size: Medium (512-dimensional features)
- Dataset: MVTec AD - Cable
- AU-ROC: 94.2%
- Training: Custom training on Apple Silicon (MPS)
Files
teacher.pth: Pre-trained teacher network (31MB)student.pth: Trained student network (44MB)autoencoder.pth: Trained autoencoder (4.2MB)
Usage
import torch
# Load models
teacher = torch.load('teacher.pth')
student = torch.load('student.pth')
autoencoder = torch.load('autoencoder.pth')
Citation
@article{efficientad2023,
title={EfficientAD: Accurate Visual Anomaly Detection at Millisecond-Level Latencies},
author={Batzner, Kilian and Heckler, Lars and König, Rebecca},
journal={arXiv preprint arXiv:2303.14535},
year={2023}
}
Generated with Lumina Tech Platform
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