🌿 Gumi Banten Plant Identification — CNN EfficientNet-B4

Model identifikasi tanaman Gumi Banten menggunakan arsitektur hybrid CNN (EfficientNet-B4) + Vision Transformer (ViT).

📊 Performa Model

Metrik Nilai
Test Accuracy 0.9851 (98.51%)
Best Val Accuracy 0.9876 (98.76%)
Jumlah Kelas 10

🏗️ Arsitektur

  • CNN Backbone: EfficientNet-B4 (pretrained, global_pool=avg)
  • Classifier Head: Dropout → Linear(1792→512) → GELU → Dropout → Linear(512→N)
  • Input Size: 224×224 px
  • Framework: PyTorch (weights disimpan sebagai HDF5/.h5)

📦 File dalam Repo

File Deskripsi
gumi_banten_cnn_vit.h5 Model weights dalam format HDF5
best_model.pth Checkpoint PyTorch lengkap
config.json Konfigurasi model
class_names.txt Daftar nama kelas

🚀 Cara Menggunakan

Load dari .pth (PyTorch — Direkomendasikan)

import torch
from huggingface_hub import hf_hub_download

pth_path = hf_hub_download(repo_id="Wisnu1354/CNN-GumiBanten", filename="best_model.pth")
ckpt = torch.load(pth_path, map_location='cpu')
model.load_state_dict(ckpt['model_state'])
model.eval()

Load dari .h5

import h5py, torch, numpy as np
from huggingface_hub import hf_hub_download

def load_from_h5(h5_path, model_class, cfg):
    with h5py.File(h5_path, 'r') as hf:
        class_names = list(hf['metadata/class_names'][:])
        state_dict = {}
        def _load(name, obj):
            if isinstance(obj, h5py.Dataset):
                state_dict[name.replace('/', '.')] = torch.tensor(obj[()])
        hf['model_weights'].visititems(_load)
    model = model_class(cfg)
    model.load_state_dict(state_dict)
    model.eval()
    return model, class_names

h5_path = hf_hub_download(repo_id="Wisnu1354/CNN-GumiBanten", filename="gumi_banten_cnn_vit.h5")
model, class_names = load_from_h5(h5_path, EfficientNetB4, CFG)

📋 Kelas yang Didukung

  • Daun Ancak
  • Daun Base
  • Daun Bila
  • Daun Bingin
  • Daun Dapdap
  • Daun Intaran
  • Daun Kayu Tulak
  • Daun Kelor
  • Daun Nagasari
  • Daun Pucuk Rejuna

🧑‍💻 Training

Dilatih di Google Colab menggunakan GPU A100/V100/T4.


Dibuat oleh: Gumi Banten Research | 2026-04-28

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Evaluation results