Binary Healthy/Unhealthy Food Classifier โ€” ViT-B/16

Frozen ViT-B/16 + linear head. Trained on ethz/food101.

Test metrics

  • accuracy: 0.8088
  • macro F1: 0.8033
  • ROC-AUC: 0.8854

Files

File Format Use
best.pth PyTorch state dict training / fine-tuning
model.torchscript.pt TorchScript server / LibTorch
model_mobile.ptl TorchScript Lite iOS / Android (PyTorch Mobile)
model.onnx ONNX Core ML, TFLite (via onnx2tf), ONNX Runtime Mobile

Inference (Python)

import torch, torchvision.transforms as T
from PIL import Image
m = torch.jit.load("model.torchscript.pt").eval()
tf = T.Compose([T.Resize((224,224)), T.ToTensor(),
                T.Normalize([0.485,0.456,0.406],[0.229,0.224,0.225])])
img = tf(Image.open("food.jpg").convert("RGB")).unsqueeze(0)
probs = torch.softmax(m(img), dim=-1)[0]
print({"healthy": probs[0].item(), "unhealthy": probs[1].item()})
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