KFUPM Logo

FraudX – Receipt Forgery Detection

KFUPM – ICS 619 | Rayan Alsubhi

New analysis Dashboard Queue 5
Demo: Hard case — model under-fires · expected Low Risk · ~15% (but actually forged)
← Analyse another receipt Open queue
Verdict — Low risk

Looks clean

No regions exceeded the forgery threshold. No VAT QR present to cross-check.

Patch CNN Low risk forgery confidence 15% VAT QR No QR no ZATCA QR detected
15%
CNN forgery confidence
No decision recorded.
Export audit PDF
⚠ Duplicate: exact match of a file already analysed in this session.

Saudi VAT QR check — no QR

No ZATCA VAT QR detected.

Key findings

Document — original & heatmap
Original
Original Document 🔍 Click to zoom
Suspicion heatmap
Base Document CNN Heatmap 🔍 Click to zoom

Suspicious regions

The top 5 highest-confidence regions out of all 103 that exceeded the model's threshold. Hover or click any thumbnail to highlight that 128 × 128 region on the document on the left.

1
Suspicious region 1 thumbnail
at (768, 960) 71%
CUT Product
2
Suspicious region 2 thumbnail
at (768, 1152) 70%
CUT Product
3
Suspicious region 3 thumbnail
at (384, 1472) 70%
CUT Product
4
Suspicious region 4 thumbnail
at (704, 448) 70%
CUT Product
5
Suspicious region 5 thumbnail
at (704, 384) 70%
CUT Product
Region breakdown table (5 rows)
# Coords Score Edit type Field affected
1 (768, 960) 71% CUT 73% Product 49% (low conf)
2 (768, 1152) 70% CUT 78% Product 48% (low conf)
3 (384, 1472) 70% CUT 80% Product 48% (low conf)
4 (704, 448) 70% CUT 80% Product 48% (low conf)
5 (704, 384) 70% CUT 80% Product 48% (low conf)
Methodology, audit metadata & technical details
File: X51008099081.png SHA-256: 9f59acf9fa1b… Size: 932 × 1659 px Analysed: 2026-05-11 23:28:10 Model: FraudX v2-multi · ResNet-18 · ep13 · thr=0.08
Patch precision
92.25% vs paper OH-JPEG 79.41%
Patch F1 / AUC
91.79 / 0.97
Image-level F1
29.66 vs paper ChatGPT-relaxed 28.39
Patches scored (this image)
350 · 188 text-bearing
Regions ≥ threshold
103 · thr 0.08
Top-region score
0.150

Approach. ResNet-18 patch classifier (128×128, stride 64) trained on FINDIT2 (Tornes et al., ICDAR 2023). Two auxiliary heads classify the modification technique and the document field; the binary backbone is frozen so the headline patch precision (92.25%) is preserved bit-for-bit while adding explainability. Image-level fraud score is the top-k mean of patch probabilities over text-bearing regions only (edge density ≥ 0.02) — keeps blank regions from poisoning the score.

Class accuracies on the FINDIT2 test set.

  • Edit type: CPI 73% · CUT 100% · IMI 38% · PIX 55% · Other 14%
  • Field: Total/payment 67% · Metadata 47% · Product 27% · Company 24%

Original technical findings (raw).

  • Patch CNN flagged 103 of 188 text-rich patches (top score 0.71).
  • Top 5 suspicious regions clustered around image coordinates (768,960), (768,1152), (384,1472), (704,448), (704,384).
  • Predicted modification mix across top regions: 5× CUT.
  • Predicted entity types: 5× Product.
  • Document is an EXACT duplicate of a file already analysed in this session (resubmission).