GoldNet Model Weights
Trained checkpoints for GoldFormer and baseline models from the paper:
GoldFormer: A Texture-Aware Vision Transformer-based Algorithm for Detecting Near-Identical Images
Z. Raisi, Algorithms (MDPI), under review.
Code & dataset: github.com/zobeirraisi/GoldNet
Task
Binary image classification — authentic vs. counterfeit gold items — from ordinary smartphone photographs. The two classes are near-identical to the eye; trained experts reached 89.80% accuracy on a blind subset.
Available Checkpoints (weights/)
| File | Model | Accuracy (5-fold CV) |
|---|---|---|
GoldFormer_best.pth |
GoldFormer (CNN + Swin-T + TAAG) | 94.69 ± 0.79% |
Swin_T_best.pth |
Swin Transformer-Tiny | 94.31 ± 0.78% |
ViT_B16_best.pth |
ViT-B/16 | 94.31 ± 0.94% |
ResNet101_best.pth |
ResNet-101 | 92.29 ± 1.01% |
ResNet50_best.pth |
ResNet-50 | — |
ResNet18_best.pth |
ResNet-18 | — |
DenseNet121_best.pth |
DenseNet-121 | — |
EfficientNet_B3_best.pth |
EfficientNet-B3 | — |
EfficientNet_B0_best.pth |
EfficientNet-B0 | — |
MobileNet_V2_best.pth |
MobileNet-V2 | — |
All models trained with 5-fold stratified cross-validation, AdamW, AMP (bfloat16), freeze-then-unfreeze fine-tuning on the GoldNet dataset (2,127 images, 1,044 authentic / 1,083 counterfeit).
Usage
import torch
from torchvision import transforms
from PIL import Image
# Download weights
# bash fetch_weights.sh (from the GitHub repo)
# Load a checkpoint
model = torch.load("weights/GoldFormer_best.pth", weights_only=True)
model.eval()
transform = transforms.Compose([
transforms.Resize((299, 299)),
transforms.ToTensor(),
transforms.Normalize([0.485, 0.456, 0.406],
[0.229, 0.224, 0.225]),
])
img = Image.open("your_image.jpg").convert("RGB")
x = transform(img).unsqueeze(0)
with torch.no_grad():
logits = model(x)
prob_authentic = torch.softmax(logits, dim=1)[0, 0].item()
print(f"P(authentic) = {prob_authentic:.3f}")
Note: All baseline models use 224×224 input. GoldFormer uses 299×299.
Themodels.pyclass definitions are in the GitHub repo.
Citation
@article{raisi2026goldformer,
title = {GoldFormer: A Texture-Aware Vision Transformer-based Algorithm
for Detecting Near-Identical Images},
author = {Raisi, Zobeir},
journal = {Algorithms},
year = {2026},
note = {Under review}
}
License
Model weights: MIT License
Dataset: CC BY 4.0