MIDV-550MIDV-550MIDV-550
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Midv-550

: Object detectors such as Faster R‑CNN [5], YOLOv8 [6], and EfficientDet [7] have become de‑facto standards. However, their performance on low‑resolution, heavily distorted ID images remains under‑explored.

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 MIDV-550

Existing public benchmarks (e.g., [1], IDDoc [2], SROIE [3]) either contain a limited number of document classes, provide only coarse bounding‑box annotations, or lack realistic mobile acquisition conditions. Consequently, progress in robust MIV systems has been hindered by a mismatch between training data and real‑world deployment scenarios. : Object detectors such as Faster R‑CNN [5],

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 | | Pipeline | E2E Accuracy | Composite Score