--- configs: - config_name: default data_files: - split: train path: "*.parquet" dataset_info: features: - name: document_type dtype: string - name: document_id dtype: string - name: clean_image dtype: image # Включает автоматический авто-декодер картинок HF - name: clean_pdf dtype: string # Отдает путь к файлу в репозитории - name: clean_xlsx dtype: string - name: clean_bbox_px dtype: string - name: clean_bbox_pdf_pt dtype: string - name: dirty_1_image dtype: image - name: dirty_1_bbox dtype: string - name: dirty_2_image dtype: image - name: dirty_2_bbox dtype: string - name: dirty_3_image dtype: image - name: dirty_3_bbox dtype: string - name: dirty_4_image dtype: image - name: dirty_4_bbox dtype: string - name: dirty_5_image dtype: image - name: dirty_5_bbox dtype: string task_categories: - object-detection tags: - financial - document-ai pretty_name: FinDoc-Robust --- # Financial Document Extraction & Robustness Dataset (FinDoc-Robust) ## Dataset Description FinDoc-Robust is a multimodal, benchmark-grade dataset designed for **Document Layout Analysis (DLA)**, **Visual Information Extraction (VIE)**, and evaluating model robustness against real-world degradation. The dataset contains financial reports across **5 distinct document categories** (e.g., cash flow statements, balance sheets, trial balances, shareholders' equity, corporate income statements). For every document, it provides perfect digital vectors, tabular ground truths, pixel-level bounding boxes, and **5 structurally degraded ("dirty") variants** simulating camera captures, scans, and physical artifacts. ### Key Applications * **Robust Document AI:** Training models to resist geometric distortions, noise, and blur. * **Table Reconstruction:** Benchmarking end-to-end Image-to-Excel/HTML/Markdown pipelines. * **Multimodal Alignment:** Fine-tuning models like LayoutLMv3, Donut, or proprietary Vision-LLMs on complex financial structures. --- ## Dataset Structure The repository is organized hierarchically by document type and numerical index. Each sample folder contains a complete sub-set of modalities: ```text dataset_root/ ├── new_type_cash_flow_statement/ ├── new_type_shareholders_equity/ ├── new_type_trial_balance/ ├── pro_doc_corporate_income_statement/ └── pro_doc_full_balance_sheet/ ├── 001/ │ ├── 001.pdf # Original clean vector PDF │ ├── 001.png # Rendered high-res image (clean) │ ├── 001.xlsx # Target ground-truth table structure │ ├── 001.json # Word/Phrase Bounding Boxes (Pixel space) │ ├── 001_pdf.json # Word/Phrase Bounding Boxes (DTP Point space) │ ├── 001_dirty_1.png # Degraded scan/photo simulation variant 1 │ ├── 001_dirty_1.json # Adjusted Bounding Boxes for variant 1 │ ... │ ├── 001_dirty_5.png # Degraded variant 5 │ └── 001_dirty_5.json # Adjusted Bounding Boxes for variant 5 └── 1001/ # Scale-tested deep indices (up to 4 digits) ... ``` --- ## Modality Specifications ### 1. Ground Truth Structures * **`.pdf`**: Original vector file preserving strict semantic layout. * **`.xlsx`**: The ideal downstream target layout. Contains finalized cell alignments, structures, and text groups. ### 2. Multi-Coordinate Bounding Boxes (`.json`) The dataset includes two coordinate topologies to match different ingestion pipelines: * **`001_pdf.json` (Vector Scale):** Stored in DTP Points ($1 \text{ inch} = 72 \text{ points}$), native to engines like PyMuPDF or `pdfplumber`. Origin is typically evaluated from Top-Left or Bottom-Left depending on the parser. * **`001.json` (Raster Scale):** Mapped directly to high-resolution pixel coordinates matching the native `001.png` dimensions (e.g., A4 at 200 DPI: $1654 \times 2339 \text{ px}$). ### 3. Robustness & Degradation Layers (`_dirty_X`) Each baseline sheet is supplemented with 5 alternative states mimicking typical pipeline damage: * Sensor noise, blur, and lighting gradients. * Rotation, skewing, and affine perspective warps. * Contrast loss and compression artifacts. Every dirty image has a corresponding `.json` containing transformed bounding box parameters adjusted to the physical distortion. --- ## JSON Schema Example ```json { "img_file": "001.png", "img_width": 1654, "img_height": 2339, "labels": [ { "text": "CASH FLOWS FROM CORE OPERATIONS", "bbox_px": [173.1, 415.24, 781.99, 446.65] } ] } ``` *Note: `bbox_px` format is `[xmin, ymin, xmax, ymax]`.* --- ## Usage & Evaluation ```python from datasets import load_dataset # Configuration for loading the structured layout hierarchy # Dataset script coming soon dataset = load_dataset("arcolab-dev/FinDoc-Robust") ``` ### Recommended Evaluation Metrics * **Tree-edit distance / TEDS:** For structural table matching via the `.xlsx` layout. * **ANLS (Average Normalized Levenshtein Similarity):** For text extraction robustness under dirty variants. * **mAP (mean Average Precision):** For word/cell layout extraction bounding boxes. ``` ```