phase1a-wavelet2 / train.py
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"""
Training script for surgical instrument classification
"""
import os
import pickle
import cv2
import pandas as pd
import numpy as np
from utils.utils import extract_features_from_image, fit_pca_transformer, train_svm_model
def train_and_save_model(base_path, images_folder, gt_csv, save_dir, n_components=100):
"""
Complete training pipeline that saves everything needed for submission
Args:
base_path: Base directory path
images_folder: Folder name containing images
gt_csv: Ground truth CSV filename
save_dir: Directory to save model artifacts
n_components: Number of PCA components
"""
print("="*80)
print("TRAINING SURGICAL INSTRUMENT CLASSIFIER")
print("="*80)
# Setup paths
PATH_TO_GT = os.path.join(base_path, gt_csv)
PATH_TO_IMAGES = os.path.join(base_path, images_folder)
print(f"\nConfiguration:")
print(f" Ground Truth: {PATH_TO_GT}")
print(f" Images: {PATH_TO_IMAGES}")
print(f" PCA Components: {n_components}")
print(f" Save directory: {save_dir}")
# Load ground truth
df = pd.read_csv(PATH_TO_GT)
print(f"\nLoaded {len(df)} training samples")
print(f"\nLabel distribution:")
print(df['category_id'].value_counts().sort_index())
# Extract features
print(f"\n{'='*80}")
print("STEP 1: FEATURE EXTRACTION")
print("="*80)
features = []
labels = []
for i in range(len(df)):
if i % 500 == 0:
print(f" Processing {i}/{len(df)}...")
image_name = df.iloc[i]["file_name"]
label = df.iloc[i]["category_id"]
path_to_image = os.path.join(PATH_TO_IMAGES, image_name)
try:
image = cv2.imread(path_to_image)
if image is None:
print(f" Warning: Could not read {image_name}, skipping...")
continue
# Extract features with enhanced configuration
image_features = extract_features_from_image(image)
features.append(image_features)
labels.append(label)
except Exception as e:
print(f" Error processing {image_name}: {e}")
continue
features_array = np.array(features)
labels_array = np.array(labels)
print(f"\nFeature extraction complete!")
print(f" Features shape: {features_array.shape}")
print(f" Labels shape: {labels_array.shape}")
print(f" Feature dimension: {features_array.shape[1]}")
# Apply PCA
print(f"\n{'='*80}")
print("STEP 2: DIMENSIONALITY REDUCTION (PCA)")
print("="*80)
pca_params, features_reduced = fit_pca_transformer(features_array, n_components)
print(f" Reduced from {features_array.shape[1]} to {n_components} dimensions")
print(f" Explained variance: {pca_params['cumulative_variance'][-1]:.4f}")
# Train SVM
print(f"\n{'='*80}")
print("STEP 3: TRAINING SVM CLASSIFIER")
print("="*80)
train_results = train_svm_model(features_reduced, labels_array)
svm_model = train_results['model']
print(f"\nTraining complete!")
print(f" Support vectors: {len(svm_model.support_)}")
# Save model artifacts
print(f"\n{'='*80}")
print("STEP 4: SAVING MODEL ARTIFACTS")
print("="*80)
os.makedirs(save_dir, exist_ok=True)
# Save SVM model
model_path = os.path.join(save_dir, "multiclass_model.pkl")
with open(model_path, "wb") as f:
pickle.dump(svm_model, f)
print(f" ✓ Saved SVM model: {model_path}")
# Save PCA parameters
pca_path = os.path.join(save_dir, "pca_params.pkl")
with open(pca_path, "wb") as f:
pickle.dump(pca_params, f)
print(f" ✓ Saved PCA params: {pca_path}")
print(f"\n{'='*80}")
print("TRAINING COMPLETE!")
print("="*80)
print(f"\nFiles saved to: {save_dir}")
print(f"\nNext steps:")
print(f" 1. Create a 'utils' folder in your HuggingFace repository")
print(f" 2. Copy utils.py into the 'utils' folder")
print(f" 3. Copy script.py, multiclass_model.pkl, and pca_params.pkl to the repository root")
print(f" 4. Create an empty __init__.py file in the 'utils' folder")
print(f" 5. Submit to competition!")
if __name__ == "__main__":
BASE_PATH = "C:/Users/anna2/ISM/ANNA/phase1a-wavelet"
IMAGES_FOLDER = "C:/Users/anna2/ISM/Images"
GT_CSV = "C:/Users/anna2/ISM/Baselines/phase_1a/gt_for_classification_multiclass_from_filenames_0_index.csv"
SAVE_DIR = "C:/Users/anna2/ISM/ANNA/phase1a-wavelet/submission"
# Number of PCA components
N_COMPONENTS = 250 #can be adjusted
# Train and save
train_and_save_model(BASE_PATH, IMAGES_FOLDER, GT_CSV, SAVE_DIR, N_COMPONENTS)