SMS_scam_detection / app.py.working_ocr
hackerbyhobby
updated app to have user choose text or OCR
63a0483 unverified
import gradio as gr
import pytesseract
from PIL import Image
from transformers import pipeline
import re
from langdetect import detect
from deep_translator import GoogleTranslator
# Translator instance
translator = GoogleTranslator(source="auto", target="es")
# 1. Load separate keywords for SMiShing and Other Scam (assumed in English)
with open("smishing_keywords.txt", "r", encoding="utf-8") as f:
SMISHING_KEYWORDS = [line.strip().lower() for line in f if line.strip()]
with open("other_scam_keywords.txt", "r", encoding="utf-8") as f:
OTHER_SCAM_KEYWORDS = [line.strip().lower() for line in f if line.strip()]
# 2. Zero-Shot Classification Pipeline
model_name = "joeddav/xlm-roberta-large-xnli"
classifier = pipeline("zero-shot-classification", model=model_name)
CANDIDATE_LABELS = ["SMiShing", "Other Scam", "Legitimate"]
def get_keywords_by_language(text: str):
"""
Detect language using `langdetect` and translate keywords if needed.
"""
snippet = text[:200] # Use a snippet for detection
try:
detected_lang = detect(snippet)
except Exception:
detected_lang = "en" # Default to English if detection fails
if detected_lang == "es":
smishing_in_spanish = [
translator.translate(kw).lower() for kw in SMISHING_KEYWORDS
]
other_scam_in_spanish = [
translator.translate(kw).lower() for kw in OTHER_SCAM_KEYWORDS
]
return smishing_in_spanish, other_scam_in_spanish, "es"
else:
return SMISHING_KEYWORDS, OTHER_SCAM_KEYWORDS, "en"
def boost_probabilities(probabilities: dict, text: str):
"""
Boost probabilities based on keyword matches and presence of URLs.
"""
lower_text = text.lower()
smishing_keywords, other_scam_keywords, detected_lang = get_keywords_by_language(text)
smishing_count = sum(1 for kw in smishing_keywords if kw in lower_text)
other_scam_count = sum(1 for kw in other_scam_keywords if kw in lower_text)
smishing_boost = 0.30 * smishing_count
other_scam_boost = 0.30 * other_scam_count
found_urls = re.findall(r"(https?://[^\s]+)", lower_text)
if found_urls:
smishing_boost += 0.35
p_smishing = probabilities.get("SMiShing", 0.0)
p_other_scam = probabilities.get("Other Scam", 0.0)
p_legit = probabilities.get("Legitimate", 1.0)
p_smishing += smishing_boost
p_other_scam += other_scam_boost
p_legit -= (smishing_boost + other_scam_boost)
p_smishing = max(p_smishing, 0.0)
p_other_scam = max(p_other_scam, 0.0)
p_legit = max(p_legit, 0.0)
total = p_smishing + p_other_scam + p_legit
if total > 0:
p_smishing /= total
p_other_scam /= total
p_legit /= total
else:
p_smishing, p_other_scam, p_legit = 0.0, 0.0, 1.0
return {
"SMiShing": p_smishing,
"Other Scam": p_other_scam,
"Legitimate": p_legit,
"detected_lang": detected_lang
}
def smishing_detector(text, image):
"""
Main detection function combining text and OCR.
"""
combined_text = text or ""
if image is not None:
ocr_text = pytesseract.image_to_string(image, lang="spa+eng")
combined_text += " " + ocr_text
combined_text = combined_text.strip()
if not combined_text:
return {
"text_used_for_classification": "(none)",
"label": "No text provided",
"confidence": 0.0,
"keywords_found": [],
"urls_found": []
}
result = classifier(
sequences=combined_text,
candidate_labels=CANDIDATE_LABELS,
hypothesis_template="This message is {}."
)
original_probs = {k: float(v) for k, v in zip(result["labels"], result["scores"])}
boosted = boost_probabilities(original_probs, combined_text)
boosted = {k: float(v) for k, v in boosted.items() if isinstance(v, (int, float))}
detected_lang = boosted.pop("detected_lang", "en")
final_label = max(boosted, key=boosted.get)
final_confidence = round(boosted[final_label], 3)
lower_text = combined_text.lower()
smishing_keys, scam_keys, _ = get_keywords_by_language(combined_text)
found_urls = re.findall(r"(https?://[^\s]+)", lower_text)
found_smishing = [kw for kw in smishing_keys if kw in lower_text]
found_other_scam = [kw for kw in scam_keys if kw in lower_text]
return {
"detected_language": detected_lang,
"text_used_for_classification": combined_text,
"original_probabilities": {k: round(v, 3) for k, v in original_probs.items()},
"boosted_probabilities": {k: round(v, 3) for k, v in boosted.items()},
"label": final_label,
"confidence": final_confidence,
"smishing_keywords_found": found_smishing,
"other_scam_keywords_found": found_other_scam,
"urls_found": found_urls,
}
demo = gr.Interface(
fn=smishing_detector,
inputs=[
gr.Textbox(
lines=3,
label="Paste Suspicious SMS Text (English/Spanish)",
placeholder="Type or paste the message here..."
),
gr.Image(
type="pil",
label="Or Upload a Screenshot (Optional)"
)
],
outputs="json",
title="SMiShing & Scam Detector (Language Detection + Keyword Translation)",
description="""
This tool classifies messages as SMiShing, Other Scam, or Legitimate using a zero-shot model
(joeddav/xlm-roberta-large-xnli). It automatically detects if the text is Spanish or English.
If Spanish, it translates the English-based keyword lists to Spanish before boosting the scores.
Any URL found further boosts SMiShing specifically.
""",
allow_flagging="never"
)
if __name__ == "__main__":
demo.launch()