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# libraries
import os
from huggingface_hub import InferenceClient
from dotenv import load_dotenv
import json
import re
#import easyocr
from PIL import Image, ImageEnhance, ImageDraw
import cv2
import numpy as np
from paddleocr import PaddleOCR
import logging
from datetime import datetime
# Configure logging
logging.basicConfig(
level=logging.INFO,
handlers=[
logging.StreamHandler() # Remove FileHandler and log only to the console
]
)
# Set the PaddleOCR home directory to a writable location
os.environ['PADDLEOCR_HOME'] = '/tmp/.paddleocr'
RESULT_FOLDER = 'static/results/'
JSON_FOLDER = 'static/json/'
if not os.path.exists('/tmp/.paddleocr'):
os.makedirs(RESULT_FOLDER, exist_ok=True)
# Check if PaddleOCR home directory is writable
if not os.path.exists('/tmp/.paddleocr'):
os.makedirs('/tmp/.paddleocr', exist_ok=True)
logging.info("Created PaddleOCR home directory.")
else:
logging.info("PaddleOCR home directory exists.")
# Load environment variables from .env file
load_dotenv()
# Authenticate with Hugging Face
HFT = os.getenv('HF_TOKEN')
# Initialize the InferenceClient
client = InferenceClient(model="mistralai/Mistral-7B-Instruct-v0.3", token=HFT)
def load_image(image_path):
ext = os.path.splitext(image_path)[1].lower()
if ext in ['.png', '.jpg', '.jpeg', '.webp', '.tiff']:
image = cv2.imread(image_path)
if image is None:
raise ValueError(f"Failed to load image from {image_path}. The file may be corrupted or unreadable.")
return image
else:
raise ValueError(f"Unsupported image format: {ext}")
# Function for upscaling image using OpenCV's INTER_CUBIC
def upscale_image(image, scale=2):
height, width = image.shape[:2]
upscaled_image = cv2.resize(image, (width * scale, height * scale), interpolation=cv2.INTER_CUBIC)
return upscaled_image
# Function to denoise the image (reduce noise)
def reduce_noise(image):
return cv2.fastNlMeansDenoisingColored(image, None, 10, 10, 7, 21)
# Function to sharpen the image
def sharpen_image(image):
kernel = np.array([[0, -1, 0],
[-1, 5, -1],
[0, -1, 0]])
sharpened_image = cv2.filter2D(image, -1, kernel)
return sharpened_image
# Function to increase contrast and enhance details without changing color
def enhance_image(image):
pil_img = Image.fromarray(cv2.cvtColor(image, cv2.COLOR_BGR2RGB))
enhancer = ImageEnhance.Contrast(pil_img)
enhanced_image = enhancer.enhance(1.5)
enhanced_image_bgr = cv2.cvtColor(np.array(enhanced_image), cv2.COLOR_RGB2BGR)
return enhanced_image_bgr
# Complete function to process image
def process_image(image_path, scale=2):
# Load the image
image = load_image(image_path)
# Upscale the image
upscaled_image = upscale_image(image, scale)
# Reduce noise
denoised_image = reduce_noise(upscaled_image)
# Sharpen the image
sharpened_image = sharpen_image(denoised_image)
# Enhance the image contrast and details without changing color
final_image = enhance_image(sharpened_image)
return final_image
# Function for OCR with PaddleOCR, returning both text and bounding boxes
def ocr_with_paddle(img):
final_text = ''
boxes = []
# Initialize PaddleOCR
ocr = PaddleOCR(
lang='en',
use_angle_cls=True,
det_model_dir=os.path.join(os.environ['PADDLEOCR_HOME'], 'whl/det'),
rec_model_dir=os.path.join(os.environ['PADDLEOCR_HOME'], 'whl/rec/en/en_PP-OCRv4_rec_infer'),
cls_model_dir=os.path.join(os.environ['PADDLEOCR_HOME'], 'whl/cls/ch_ppocr_mobile_v2.0_cls_infer')
)
# Check if img is a file path or an image array
if isinstance(img, str):
img = cv2.imread(img)
# Perform OCR
result = ocr.ocr(img)
# Iterate through the OCR result
for line in result[0]:
# Check how many values are returned (2 or 3) and unpack accordingly
if len(line) == 3:
box, (text, confidence), _ = line # When 3 values are returned
elif len(line) == 2:
box, (text, confidence) = line # When only 2 values are returned
# Store the recognized text and bounding boxes
final_text += ' ' + text # Extract the text from the tuple
boxes.append(box)
# Draw the bounding box
points = [(int(point[0]), int(point[1])) for point in box]
cv2.polylines(img, [np.array(points)], isClosed=True, color=(0, 255, 0), thickness=2)
# Store the image with bounding boxes in a variable
img_with_boxes = img
return final_text, img_with_boxes
def extract_text_from_images(image_paths):
all_extracted_texts = {}
all_extracted_imgs = {}
for image_path in image_paths:
try:
# Enhance the image before OCR
enhanced_image = process_image(image_path, scale=2)
# Perform OCR on the enhanced image and get boxes
result, img_with_boxes = ocr_with_paddle(enhanced_image)
# Draw bounding boxes on the processed image
img_result = Image.fromarray(enhanced_image)
#img_with_boxes = draw_boxes(img_result, boxes)
# genrating unique id to save the images
# Get the current date and time
current_time = datetime.now()
# Format it as a string to create a unique ID
unique_id = current_time.strftime("%Y%m%d%H%M%S%f")
#print(unique_id)
# Save the image with boxes
result_image_path = os.path.join(RESULT_FOLDER, f'result_{unique_id}_{os.path.basename(image_path)}')
#img_with_boxes.save(result_image_path)
cv2.imwrite(result_image_path, img_with_boxes)
# Store the text and image result paths
all_extracted_texts[image_path] = result
all_extracted_imgs[image_path] = result_image_path
except ValueError as ve:
print(f"Error processing image {image_path}: {ve}")
continue # Continue to the next image if there's an error
# Convert to JSON-compatible structure
all_extracted_imgs_json = {str(k): str(v) for k, v in all_extracted_imgs.items()}
return all_extracted_texts, all_extracted_imgs_json
# Function to call the Gemma model and process the output as Json
def Data_Extractor(data, client=client):
text = f'''Act as a Text extractor for the following text given in text: {data}
extract text in the following output JSON string:
{{
"Name": ["Identify and Extract All the person's name from the text."],
"Designation": ["Extract All the designation or job title mentioned in the text."],
"Company": ["Extract All the company or organization name if mentioned."],
"Contact": ["Extract All phone number, including country codes if present."],
"Address": ["Extract All the full postal address or location mentioned in the text."],
"Email": ["Identify and Extract All valid email addresses mentioned in the text else 'Not found'."],
"Link": ["Identify and Extract any website URLs or social media links present in the text."]
}}
Output:
'''
# Call the API for inference
response = client.text_generation(text, max_new_tokens=1000)#, temperature=0.4, top_k=50, top_p=0.9, repetition_penalty=1.2)
print("parse in text ---:",response)
# Convert the response text to JSON
try:
json_data = json.loads(response)
print("Json_data-------------->",json_data)
return json_data
except json.JSONDecodeError as e:
return {"error": f"Error decoding JSON: {e}"}
# For have text compatible to the llm
def json_to_llm_str(textJson):
str=''
for file,item in textJson.items():
str+=item + ' '
return str
# Define the RE for extracting the contact details like number, mail , portfolio, website etc
def extract_contact_details(text):
# Regex patterns
# Phone numbers with at least 5 digits in any segment
combined_phone_regex = re.compile(r'''
(?:
#(?:(?:\+91[-.\s]?)?\d{5}[-.\s]?\d{5})|(?:\+?\d{1,3})?[-.\s()]?\d{5,}[-.\s()]?\d{5,}[-.\s()]?\d{1,9} | /^[\.-)( ]*([0-9]{3})[\.-)( ]*([0-9]{3})[\.-)( ]*([0-9]{4})$/ |
\+1\s\(\d{3}\)\s\d{3}-\d{4} | # USA/Canada Intl +1 (XXX) XXX-XXXX
\(\d{3}\)\s\d{3}-\d{4} | # USA/Canada STD (XXX) XXX-XXXX
\(\d{3}\)\s\d{3}\s\d{4} | # USA/Canada (XXX) XXX XXXX
\(\d{3}\)\s\d{3}\s\d{3} | # USA/Canada (XXX) XXX XXX
\+1\d{10} | # +1 XXXXXXXXXX
\d{10} | # XXXXXXXXXX
\+44\s\d{4}\s\d{6} | # UK Intl +44 XXXX XXXXXX
\+44\s\d{3}\s\d{3}\s\d{4} | # UK Intl +44 XXX XXX XXXX
0\d{4}\s\d{6} | # UK STD 0XXXX XXXXXX
0\d{3}\s\d{3}\s\d{4} | # UK STD 0XXX XXX XXXX
\+44\d{10} | # +44 XXXXXXXXXX
0\d{10} | # 0XXXXXXXXXX
\+61\s\d\s\d{4}\s\d{4} | # Australia Intl +61 X XXXX XXXX
0\d\s\d{4}\s\d{4} | # Australia STD 0X XXXX XXXX
\+61\d{9} | # +61 XXXXXXXXX
0\d{9} | # 0XXXXXXXXX
\+91\s\d{5}-\d{5} | # India Intl +91 XXXXX-XXXXX
\+91\s\d{4}-\d{6} | # India Intl +91 XXXX-XXXXXX
\+91\s\d{10} | # India Intl +91 XXXXXXXXXX
\+91\s\d{3}\s\d{3}\s\d{4} | # India Intl +91 XXX XXX XXXX
\+91\s\d{3}-\d{3}-\d{4} | # India Intl +91 XXX-XXX-XXXX
\+91\s\d{2}\s\d{4}\s\d{4} | # India Intl +91 XX XXXX XXXX
\+91\s\d{2}-\d{4}-\d{4} | # India Intl +91 XX-XXXX-XXXX
\+91\s\d{5}\s\d{5} | # India Intl +91 XXXXX XXXXX
\d{5}\s\d{5} | # India XXXXX XXXXX
\d{5}-\d{5} | # India XXXXX-XXXXX
0\d{2}-\d{7} | # India STD 0XX-XXXXXXX
\+91\d{10} | # +91 XXXXXXXXXX
\d{10} | # XXXXXXXXXX # Here is the regex to handle all possible combination of the contact
\d{6}-\d{4} | # XXXXXX-XXXX
\d{4}-\d{6} | # XXXX-XXXXXX
\d{3}\s\d{3}\s\d{4} | # XXX XXX XXXX
\d{3}-\d{3}-\d{4} | # XXX-XXX-XXXX
\d{4}\s\d{3}\s\d{3} | # XXXX XXX XXX
\d{4}-\d{3}-\d{3} | # XXXX-XXX-XXX #-----
\+49\s\d{4}\s\d{8} | # Germany Intl +49 XXXX XXXXXXXX
\+49\s\d{3}\s\d{7} | # Germany Intl +49 XXX XXXXXXX
0\d{3}\s\d{8} | # Germany STD 0XXX XXXXXXXX
\+49\d{12} | # +49 XXXXXXXXXXXX
\+49\d{10} | # +49 XXXXXXXXXX
0\d{11} | # 0XXXXXXXXXXX
\+86\s\d{3}\s\d{4}\s\d{4} | # China Intl +86 XXX XXXX XXXX
0\d{3}\s\d{4}\s\d{4} | # China STD 0XXX XXXX XXXX
\+86\d{11} | # +86 XXXXXXXXXXX
\+81\s\d\s\d{4}\s\d{4} | # Japan Intl +81 X XXXX XXXX
\+81\s\d{2}\s\d{4}\s\d{4} | # Japan Intl +81 XX XXXX XXXX
0\d\s\d{4}\s\d{4} | # Japan STD 0X XXXX XXXX
\+81\d{10} | # +81 XXXXXXXXXX
\+81\d{9} | # +81 XXXXXXXXX
0\d{9} | # 0XXXXXXXXX
\+55\s\d{2}\s\d{5}-\d{4} | # Brazil Intl +55 XX XXXXX-XXXX
\+55\s\d{2}\s\d{4}-\d{4} | # Brazil Intl +55 XX XXXX-XXXX
0\d{2}\s\d{4}\s\d{4} | # Brazil STD 0XX XXXX XXXX
\+55\d{11} | # +55 XXXXXXXXXXX
\+55\d{10} | # +55 XXXXXXXXXX
0\d{10} | # 0XXXXXXXXXX
\+33\s\d\s\d{2}\s\d{2}\s\d{2}\s\d{2} | # France Intl +33 X XX XX XX XX
0\d\s\d{2}\s\d{2}\s\d{2}\s\d{2} | # France STD 0X XX XX XX XX
\+33\d{9} | # +33 XXXXXXXXX
0\d{9} | # 0XXXXXXXXX
\+7\s\d{3}\s\d{3}-\d{2}-\d{2} | # Russia Intl +7 XXX XXX-XX-XX
8\s\d{3}\s\d{3}-\d{2}-\d{2} | # Russia STD 8 XXX XXX-XX-XX
\+7\d{10} | # +7 XXXXXXXXXX
8\d{10} | # 8 XXXXXXXXXX
\+27\s\d{2}\s\d{3}\s\d{4} | # South Africa Intl +27 XX XXX XXXX
0\d{2}\s\d{3}\s\d{4} | # South Africa STD 0XX XXX XXXX
\+27\d{9} | # +27 XXXXXXXXX
0\d{9} | # 0XXXXXXXXX
\+52\s\d{3}\s\d{3}\s\d{4} | # Mexico Intl +52 XXX XXX XXXX
\+52\s\d{2}\s\d{4}\s\d{4} | # Mexico Intl +52 XX XXXX XXXX
01\s\d{3}\s\d{4} | # Mexico STD 01 XXX XXXX
\+52\d{10} | # +52 XXXXXXXXXX
01\d{7} | # 01 XXXXXXX
\+234\s\d{3}\s\d{3}\s\d{4} | # Nigeria Intl +234 XXX XXX XXXX
0\d{3}\s\d{3}\s\d{4} | # Nigeria STD 0XXX XXX XXXX
\+234\d{10} | # +234 XXXXXXXXXX
0\d{10} | # 0XXXXXXXXXX
\+971\s\d\s\d{3}\s\d{4} | # UAE Intl +971 X XXX XXXX
0\d\s\d{3}\s\d{4} | # UAE STD 0X XXX XXXX
\+971\d{8} | # +971 XXXXXXXX
0\d{8} | # 0XXXXXXXX
\+54\s9\s\d{3}\s\d{3}\s\d{4} | # Argentina Intl +54 9 XXX XXX XXXX
\+54\s\d{1}\s\d{4}\s\d{4} | # Argentina Intl +54 X XXXX XXXX
0\d{3}\s\d{4} | # Argentina STD 0XXX XXXX
\+54\d{10} | # +54 9 XXXXXXXXXX
\+54\d{9} | # +54 XXXXXXXXX
0\d{7} | # 0XXXXXXX
\+966\s\d\s\d{3}\s\d{4} | # Saudi Intl +966 X XXX XXXX
0\d\s\d{3}\s\d{4} | # Saudi STD 0X XXX XXXX
\+966\d{8} | # +966 XXXXXXXX
0\d{8} | # 0XXXXXXXX
\+1\d{10} | # +1 XXXXXXXXXX
\+1\s\d{3}\s\d{3}\s\d{4} | # +1 XXX XXX XXXX
\d{5}\s\d{5} | # XXXXX XXXXX
\d{10} | # XXXXXXXXXX
\+44\d{10} | # +44 XXXXXXXXXX
0\d{10} | # 0XXXXXXXXXX
\+61\d{9} | # +61 XXXXXXXXX
0\d{9} | # 0XXXXXXXXX
\+91\d{10} | # +91 XXXXXXXXXX
\+49\d{12} | # +49 XXXXXXXXXXXX
\+49\d{10} | # +49 XXXXXXXXXX
0\d{11} | # 0XXXXXXXXXXX
\+86\d{11} | # +86 XXXXXXXXXXX
\+81\d{10} | # +81 XXXXXXXXXX
\+81\d{9} | # +81 XXXXXXXXX
0\d{9} | # 0XXXXXXXXX
\+55\d{11} | # +55 XXXXXXXXXXX
\+55\d{10} | # +55 XXXXXXXXXX
0\d{10} | # 0XXXXXXXXXX
\+33\d{9} | # +33 XXXXXXXXX
0\d{9} | # 0XXXXXXXXX
\+7\d{10} | # +7 XXXXXXXXXX
8\d{10} | # 8 XXXXXXXXXX
\+27\d{9} | # +27 XXXXXXXXX
0\d{9} | # 0XXXXXXXXX (South Africa STD)
\+52\d{10} | # +52 XXXXXXXXXX
01\d{7} | # 01 XXXXXXX
\+234\d{10} | # +234 XXXXXXXXXX
0\d{10} | # 0XXXXXXXXXX
\+971\d{8} | # +971 XXXXXXXX
0\d{8} | # 0XXXXXXXX
\+54\s9\s\d{10} | # +54 9 XXXXXXXXXX
\+54\d{9} | # +54 XXXXXXXXX
0\d{7} | # 0XXXXXXX
\+966\d{8} | # +966 XXXXXXXX
0\d{8} # 0XXXXXXXX
\+\d{3}-\d{3}-\d{4}
)
''',re.VERBOSE)
# Email regex
email_regex = re.compile(r'\b[A-Za-z0-9._%+-]+@[A-Za-z0-9.-]+\.[A-Za-z]{2,}\b')
# URL and links regex, updated to avoid conflicts with email domains
link_regex = re.compile(r'\b(?:https?:\/\/)?(?:www\.)[a-zA-Z0-9-]+\.(?:com|co\.in|co|io|org|net|edu|gov|mil|int|uk|us|in|de|au|app|tech|xyz|info|biz|fr|dev)\b')
# Find all matches in the text
phone_numbers = [num for num in combined_phone_regex.findall(text) if len(num) >= 5]
emails = email_regex.findall(text)
links_RE = [link for link in link_regex.findall(text) if len(link)>=11]
# Remove profile links that might conflict with emails
links_RE = [link for link in links_RE if not any(email in link for email in emails)]
return {
"phone_numbers": phone_numbers,
"emails": emails,
"links_RE": links_RE
}
# preprocessing the data
def process_extracted_text(extracted_text):
# Load JSON data
data = json.dumps(extracted_text, indent=4)
data = json.loads(data)
# Create a single dictionary to hold combined results
combined_results = {
"phone_numbers": [],
"emails": [],
"links_RE": []
}
# Process each text entry
for filename, text in data.items():
contact_details = extract_contact_details(text)
# Extend combined results with the details from this file
combined_results["phone_numbers"].extend(contact_details["phone_numbers"])
combined_results["emails"].extend(contact_details["emails"])
combined_results["links_RE"].extend(contact_details["links_RE"])
# Convert the combined results to JSON
#combined_results_json = json.dumps(combined_results, indent=4)
combined_results_json = combined_results
# Print the final JSON results
print("Combined contact details in JSON format:")
print(combined_results_json)
return combined_results_json
# Function to remove duplicates (case-insensitive) from each list in the dictionary
def remove_duplicates_case_insensitive(data_dict):
for key, value_list in data_dict.items():
seen = set()
unique_list = []
for item in value_list:
if item.lower() not in seen:
unique_list.append(item) # Add original item (preserving its case)
seen.add(item.lower()) # Track lowercase version
# Update the dictionary with unique values
data_dict[key] = unique_list
return data_dict
# Process the model output for parsed result
def process_resume_data(LLMdata,cont_data,extracted_text):
# Removing duplicate emails
unique_emails = []
for email in cont_data['emails']:
if not any(email.lower() == existing_email.lower() for existing_email in LLMdata['Email']):
unique_emails.append(email)
# Removing duplicate links (case insensitive)
unique_links = []
for link in cont_data['links_RE']:
if not any(link.lower() == existing_link.lower() for existing_link in LLMdata['Link']):
unique_links.append(link)
# Removing duplicate phone numbers
normalized_contact = [num[-10:] for num in LLMdata['Contact']]
unique_numbers = []
for num in cont_data['phone_numbers']:
if num[-10:] not in normalized_contact:
unique_numbers.append(num)
# Add unique emails, links, and phone numbers to the original LLMdata
LLMdata['Email'] += unique_emails
LLMdata['Link'] += unique_links
LLMdata['Contact'] += unique_numbers
# Apply the function to the data
LLMdata=remove_duplicates_case_insensitive(LLMdata)
# Initialize the processed data dictionary
processed_data = {
"name": [],
"contact_number": [],
"Designation":[],
"email": [],
"Location": [],
"Link": [],
"Company":[],
"extracted_text": extracted_text
}
#LLM
processed_data['name'].extend(LLMdata.get('Name', None))
#processed_data['contact_number'].extend(LLMdata.get('Contact', []))
processed_data['Designation'].extend(LLMdata.get('Designation', []))
#processed_data['email'].extend(LLMdata.get("Email", []))
processed_data['Location'].extend(LLMdata.get('Address', []))
#processed_data['Link'].extend(LLMdata.get('Link', []))
processed_data['Company'].extend(LLMdata.get('Company', []))
#Contact
#processed_data['email'].extend(cont_data.get("emails", []))
#processed_data['contact_number'].extend(cont_data.get("phone_numbers", []))
#processed_data['Link'].extend(cont_data.get("links_RE", []))
#New_merge_data
processed_data['email'].extend(LLMdata['Email'])
processed_data['contact_number'].extend(LLMdata['Contact'])
processed_data['Link'].extend(LLMdata['Link'])
#to remove not found fields
# List of keys to check for 'Not found'
keys_to_check = ["name", "contact_number", "Designation", "email", "Location", "Link", "Company"]
# Replace 'Not found' with an empty list for each key
for key in keys_to_check:
if processed_data[key] == ['Not found'] or processed_data[key] == ['not found']:
processed_data[key] = []
return processed_data