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# Install required packages
import os
import subprocess
import sys
import importlib
import pkg_resources
def install_package(package, version=None):
package_spec = f"{package}=={version}" if version else package
print(f"Installing {package_spec}...")
try:
subprocess.check_call([sys.executable, "-m", "pip", "install", "--no-cache-dir", package_spec])
except subprocess.CalledProcessError as e:
print(f"Failed to install {package_spec}: {e}")
raise
def ensure_package(package, version=None):
try:
if version:
pkg_resources.require(f"{package}=={version}")
else:
importlib.import_module(package)
print(f"{package} is already installed with the correct version.")
except (ImportError, pkg_resources.VersionConflict, pkg_resources.DistributionNotFound) as e:
print(f"Package requirement failed: {e}")
install_package(package, version)
# Check if running in a standard environment (not Colab/Jupyter)
if not os.path.exists("/.dockerenv") and not os.path.exists("/kaggle"):
print("Setting up environment...")
# Install packages in the correct order with compatible versions
ensure_package("numpy", "1.23.5") # Compatible with TensorFlow 2.10
ensure_package("protobuf", "3.20.3") # Critical for TensorFlow compatibility
ensure_package("tensorflow", "2.10.0") # Stable version with good compatibility
# Install core dependencies
for pkg in ["gradio", "opencv-python-headless", "matplotlib", "pillow", "pandas"]:
ensure_package(pkg)
# Install deepface last after all dependencies are set up
ensure_package("deepface")
# Now import the required modules
import gradio as gr
import json
import cv2
import numpy as np
from PIL import Image
import tempfile
import pandas as pd
import shutil
import matplotlib.pyplot as plt
# Import DeepFace after ensuring dependencies are properly installed
from deepface import DeepFace
def verify_faces(img1, img2, threshold=0.70, model="VGG-Face"):
temp_dir = tempfile.mkdtemp()
img1_path = os.path.join(temp_dir, "image1.jpg")
img2_path = os.path.join(temp_dir, "image2.jpg")
if isinstance(img1, np.ndarray):
Image.fromarray(img1).save(img1_path)
else:
img1.save(img1_path)
if isinstance(img2, np.ndarray):
Image.fromarray(img2).save(img2_path)
else:
img2.save(img2_path)
try:
result = DeepFace.verify(
img1_path=img1_path,
img2_path=img2_path,
model_name=model,
distance_metric="cosine",
threshold=threshold
)
fig, ax = plt.subplots(1, 2, figsize=(10, 5))
img1_display = cv2.imread(img1_path)
img1_display = cv2.cvtColor(img1_display, cv2.COLOR_BGR2RGB)
img2_display = cv2.imread(img2_path)
img2_display = cv2.cvtColor(img2_display, cv2.COLOR_BGR2RGB)
ax[0].imshow(img1_display)
ax[0].set_title("Image 1")
ax[0].axis("off")
ax[1].imshow(img2_display)
ax[1].set_title("Image 2")
ax[1].axis("off")
verification_result = "βœ… FACE MATCHED" if result["verified"] else "❌ FACE NOT MATCHED"
confidence = round((1 - result["distance"]) * 100, 2)
plt.suptitle(f"{verification_result}\nConfidence: {confidence}%\nDistance: {result['distance']:.4f}",
fontsize=16, fontweight='bold',
color='green' if result["verified"] else 'red')
plt.tight_layout()
os.remove(img1_path)
os.remove(img2_path)
os.rmdir(temp_dir)
return fig, json.dumps(result, indent=2)
except Exception as e:
if os.path.exists(img1_path):
os.remove(img1_path)
if os.path.exists(img2_path):
os.remove(img2_path)
if os.path.exists(temp_dir):
os.rmdir(temp_dir)
error_msg = f"Error: {str(e)}"
if "No face detected" in str(e):
error_msg = "No face detected in one or both images. Please try different images."
return None, error_msg
def find_faces(query_img, db_folder, threshold=0.70, model="VGG-Face"):
temp_dir = tempfile.mkdtemp()
query_path = os.path.join(temp_dir, "query.jpg")
if isinstance(query_img, np.ndarray):
Image.fromarray(query_img).save(query_path)
else:
query_img.save(query_path)
if isinstance(db_folder, str):
db_path = db_folder
else:
db_path = os.path.join(temp_dir, "db")
os.makedirs(db_path, exist_ok=True)
for i, file in enumerate(db_folder):
file_ext = os.path.splitext(file.name)[1]
shutil.copy(file.name, os.path.join(db_path, f"image_{i}{file_ext}"))
try:
dfs = DeepFace.find(
img_path=query_path,
db_path=db_path,
model_name=model,
distance_metric="cosine",
threshold=threshold
)
if isinstance(dfs, list):
if len(dfs) == 0:
return None, "No matching faces found in the database."
df = dfs[0]
else:
df = dfs
if df.empty:
return None, "No matching faces found in the database."
df = df.sort_values(by=["distance"])
num_matches = min(4, len(df))
fig, axes = plt.subplots(1, num_matches + 1, figsize=(15, 5))
query_display = cv2.imread(query_path)
query_display = cv2.cvtColor(query_display, cv2.COLOR_BGR2RGB)
axes[0].imshow(query_display)
axes[0].set_title("Query Image")
axes[0].axis("off")
for i in range(num_matches):
match_path = df.iloc[i]["identity"]
distance = df.iloc[i]["distance"]
confidence = round((1 - distance) * 100, 2)
match_img = cv2.imread(match_path)
match_img = cv2.cvtColor(match_img, cv2.COLOR_BGR2RGB)
axes[i+1].imshow(match_img)
axes[i+1].set_title(f"Match #{i+1}\nConfidence: {confidence}%")
axes[i+1].axis("off")
plt.suptitle(f"Found {len(df)} matching faces", fontsize=16, fontweight='bold')
plt.tight_layout()
results = df[["identity", "distance"]].copy()
results["confidence"] = (1 - results["distance"]) * 100
results["confidence"] = results["confidence"].round(2)
results = results.rename(columns={"identity": "Image Path"})
os.remove(query_path)
if not isinstance(db_folder, str):
shutil.rmtree(db_path)
return fig, results.to_dict('records')
except Exception as e:
if os.path.exists(query_path):
os.remove(query_path)
error_msg = f"Error: {str(e)}"
if "No face detected" in str(e):
error_msg = "No face detected in the query image. Please try a different image."
return None, error_msg
def analyze_face(img, actions=['age', 'gender', 'race', 'emotion']):
temp_dir = tempfile.mkdtemp()
img_path = os.path.join(temp_dir, "analyze.jpg")
if isinstance(img, np.ndarray):
Image.fromarray(img).save(img_path)
else:
img.save(img_path)
try:
results = DeepFace.analyze(
img_path=img_path,
actions=actions,
enforce_detection=True,
detector_backend='opencv'
)
if isinstance(results, list):
num_faces = len(results)
else:
num_faces = 1
results = [results]
fig = plt.figure(figsize=(14, 7))
img_display = cv2.imread(img_path)
img_display = cv2.cvtColor(img_display, cv2.COLOR_BGR2RGB)
main_ax = plt.subplot2grid((2, 4), (0, 0), colspan=2, rowspan=2)
main_ax.imshow(img_display)
main_ax.set_title(f"Analyzed Image ({num_faces} face{'s' if num_faces > 1 else ''} detected)")
main_ax.axis('off')
for i, face_result in enumerate(results):
if i >= 4:
break
age = face_result.get('age', 'N/A')
gender = face_result.get('dominant_gender', 'N/A')
race = face_result.get('dominant_race', 'N/A')
emotion = face_result.get('dominant_emotion', 'N/A')
gender_conf = 'N/A'
if 'gender' in face_result and isinstance(face_result['gender'], dict):
for g, conf in face_result['gender'].items():
if g.lower() == gender.lower():
gender_conf = f"{conf:.1f}%"
break
race_conf = 'N/A'
if 'race' in face_result and isinstance(face_result['race'], dict):
for r, conf in face_result['race'].items():
if r.lower() == race.lower():
race_conf = f"{conf:.1f}%"
break
emotion_conf = 'N/A'
if 'emotion' in face_result and isinstance(face_result['emotion'], dict):
for e, conf in face_result['emotion'].items():
if e.lower() == emotion.lower():
emotion_conf = f"{conf:.1f}%"
break
ax = plt.subplot2grid((2, 4), (0 if i < 2 else 1, 2 + (i % 2)))
text = (
f"Face #{i+1}\n\n"
f"Age: {age}\n\n"
f"Gender: {gender} ({gender_conf})\n\n"
f"Race: {race} ({race_conf})\n\n"
f"Emotion: {emotion} ({emotion_conf})"
)
ax.text(0.5, 0.5, text, ha='center', va='center', fontsize=11)
ax.axis('off')
plt.tight_layout()
os.remove(img_path)
os.rmdir(temp_dir)
formatted_results = []
for i, res in enumerate(results[:8]):
face_data = {
"face_number": i+1,
"age": res.get("age", "N/A"),
"gender": {
"dominant": res.get("dominant_gender", "N/A"),
"confidence": res.get("gender", {})
},
"race": {
"dominant": res.get("dominant_race", "N/A"),
"confidence": res.get("race", {})
},
"emotion": {
"dominant": res.get("dominant_emotion", "N/A"),
"confidence": res.get("emotion", {})
}
}
formatted_results.append(face_data)
return fig, formatted_results
except Exception as e:
if os.path.exists(img_path):
os.remove(img_path)
if os.path.exists(temp_dir):
os.rmdir(temp_dir)
error_msg = f"Error: {str(e)}"
if "No face detected" in str(e):
error_msg = "No face detected in the image. Please try a different image."
return None, error_msg
with gr.Blocks(title="Complete Face Recognition Tool", theme=gr.themes.Soft()) as demo:
gr.Markdown("""
# πŸ” Complete Face Recognition Tool
This tool provides three face recognition features:
- **Verify Faces**: Compare two specific images to check if they contain the same person
- **Find Faces**: Search for matching faces in a database/folder
- **Analyze Face**: Determine age, gender, race, and emotion from a facial image
""")
with gr.Tabs():
with gr.TabItem("Verify Faces"):
with gr.Row():
img1_input = gr.Image(label="First Image", type="pil")
img2_input = gr.Image(label="Second Image", type="pil")
with gr.Row():
verify_threshold = gr.Slider(minimum=0.1, maximum=0.9, value=0.6, step=0.05,
label="Similarity Threshold (lower = stricter matching)")
verify_model = gr.Dropdown(
choices=["VGG-Face", "Facenet", "OpenFace", "DeepFace", "ArcFace"],
value="VGG-Face",
label="Face Recognition Model"
)
verify_button = gr.Button("Verify Faces", variant="primary")
verify_result_plot = gr.Plot(label="Verification Result")
verify_json = gr.JSON(label="Technical Details")
verify_button.click(
verify_faces,
inputs=[img1_input, img2_input, verify_threshold, verify_model],
outputs=[verify_result_plot, verify_json]
)
with gr.TabItem("Find Faces"):
query_img = gr.Image(label="Query Image (Face to find)", type="pil")
db_path_input = gr.Textbox(label="Database Path (folder containing images to search in)")
db_files_input = gr.File(label="Or upload images for database", file_count="multiple")
with gr.Row():
find_threshold = gr.Slider(minimum=0.1, maximum=0.9, value=0.6, step=0.05,
label="Similarity Threshold (lower = stricter matching)")
find_model = gr.Dropdown(
choices=["VGG-Face", "Facenet", "OpenFace", "DeepFace", "ArcFace"],
value="VGG-Face",
label="Face Recognition Model"
)
find_button = gr.Button("Find Matching Faces", variant="primary")
find_result_plot = gr.Plot(label="Search Results")
find_results_table = gr.JSON(label="Detailed Results")
find_button.click(
find_faces,
inputs=[query_img, db_path_input, find_threshold, find_model],
outputs=[find_result_plot, find_results_table]
)
db_files_input.change(
lambda x: "",
inputs=db_files_input,
outputs=db_path_input
)
with gr.TabItem("Analyze Face"):
analyze_img = gr.Image(label="Upload Image for Analysis", type="pil")
actions_checkboxes = gr.CheckboxGroup(
choices=["age", "gender", "race", "emotion"],
value=["age", "gender", "race", "emotion"],
label="Select Attributes to Analyze"
)
analyze_button = gr.Button("Analyze Face", variant="primary")
analyze_result_plot = gr.Plot(label="Analysis Results")
analyze_json = gr.JSON(label="Detailed Analysis")
analyze_button.click(
analyze_face,
inputs=[analyze_img, actions_checkboxes],
outputs=[analyze_result_plot, analyze_json]
)
demo.launch()