CVMay 19

DocQT: Improving Document Forgery Localization Robustness via Diverse JPEG Quantization Tables

arXiv:2605.1968871.1Has Code
Predicted impact top 41% in CV · last 90 daysOriginality Incremental advance
AI Analysis

This work addresses the robustness gap of document forgery localization models for real-world deployment in insurance document pipelines.

The paper identifies that the mismatch between JPEG quantization tables used in training and those in real-world document pipelines causes poor generalization of document forgery localization models. By training with operationally calibrated quantization tables (Real-QT), they achieve substantial localization gains and reduce false positives on authentic documents, but only for architectures that explicitly use the quantization table as input.

Document manipulation localization models achieve strong performance on public benchmarks yet fail to generalize to operational document workflows. We identify a critical and overlooked source of this gap: the mismatch between the narrow distribution of JPEG quantization tables used during training -restricted to standard libjpeg quality factors -and the heterogeneous compression profiles encountered in real-world insurance document pipelines. To isolate this factor, we conduct a controlled factorial study comparing two architectures with contrasting levels of quantization table awareness -FFDN [2] and Mesorch [20] -each trained under either standard quality factor augmentation (Standard-QT ) or operationally calibrated quantization tables sampled from DocQT, a quantization-table bank derived from a MAIF operational image corpus (Real-QT ), and evaluated under three recompression conditions. Training under Real-QT yields substantial localization gains on DocTamper [15] and significantly reduces the pixel-level false positive rate on authentic operational documents, but only for architectures that explicitly ingest the quantization table as input. The released DocQT quantization-table dataset and compression-reproduction material are directly available at https://github.com/Kyliroco/Improving-Document-Forgery-Localization-Robustness-via-Diverse-JPEG-Quantization-Tables. These results demonstrate that standard quality factor augmentation does not adequately proxy operational compression diversity, and that architectural choices explicitly conditioning on the quantization table provide a meaningful robustness advantage for real-world deployment.

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