Midv-550 May 2026

Data augmentation (random motion blur, brightness jitter, perspective warp) during OCR training yields a 22 % relative CER reduction. | Pipeline | E2E Accuracy | Composite Score (S) | |----------|--------------|---------------------| | YOLOv8

Geometric refinement (enforcing known field layout) reduces out‑of‑order predictions by 12 % and improves the MRZ IoU substantially. | OCR Model | Avg. CER (all fields) | MRZ CER | Name‑field CER | |-----------|----------------------|---------|----------------| | CRNN (ResNet‑34) | 0.074 | 0.058 | 0.089 | | TrOCR‑large | 0.058 | 0.042 | 0.074 | | TrOCR‑large + Data Aug (baseline) | 0.045 | 0.032 | 0.058 | MIDV-550

A composite score is reported for overall ranking. 5. Experimental Results 5.1 Document Detection | Model | mAP@0.5 | Inference (ms / img) | |-------|---------|----------------------| | Faster R‑CNN (ResNet‑101) | 0.89 | 128 | | EfficientDet‑D4 | 0.92 | 71 | | YOLOv8‑x (baseline) | 0.95 | 38 | CER (all fields) | MRZ CER | Name‑field