--- dataset_info: features: - name: document dtype: image - name: bbox list: list: float32 - name: to_verify_signature dtype: image - name: sample_signature dtype: image - name: label dtype: int32 splits: - name: train num_bytes: 3345162323.328 num_examples: 23206 - name: test num_bytes: 831965018.26 num_examples: 6195 download_size: 3550853030 dataset_size: 4177127341.5880003 configs: - config_name: default data_files: - split: train path: data/train-* - split: test path: data/test-* license: apache-2.0 task_categories: - image-classification - object-detection tags: - signature - document pretty_name: Signature Detection and Verification size_categories: - 10K Detection and Verification Pipeline
Figure 1: Detection and Verification Pipeline.

- The **Detection Model** locates the signature in the document. - The cropped signature (`to_verify_signature`) is passed along with a sample signature (`sample_signature`) to the **Verification Model**. - The model then classifies the signature as either Genuine or Forged. ## Dataset Summary | Split | Samples | |-------|---------| | Train | 23,206 | | Test | 6,195 | | **Total** | **29,401** | This dataset supports two key tasks: - **Detection:** Identifying the bounding boxes of signatures in scanned document images. - **Verification:** Comparing a signature within the document to a reference (sample) signature to determine whether it's **genuine** (`label = 0`) or **forged** (`label = 1`). ## Features Each sample in the dataset contains the following fields: - `document` *(Image)*: The full document image that contains one or more handwritten signatures. - `bbox` *(List of Bounding Boxes)*: The coordinates of the signature(s) detected in the `document`. Format: `[x_min, y_min, x_max, y_max]`. - `to_verify_signature` *(Image)*: A cropped signature from the document image that needs to be verified. - `sample_signature` *(Image)*: A standard reference signature used for comparison. - `label` *(int)*: Indicates if the `to_verify_signature` is **genuine (0)** or **forged (1)** when compared to the `sample_signature`. ## Data Sources & Construction This dataset is **constructed by combining and modifying two publicly available datasets**: - **Signature Images** were sourced from the [Kaggle Signature Verification Dataset](https://www.kaggle.com/datasets/robinreni/signature-verification-dataset), which provides genuine and forged signatures from multiple individuals for verification tasks. - **Document Images with Signature Bounding Boxes** were taken from the [Signature Detection Dataset by NanoNets](https://github.com/NanoNets/SignatureDetectionDataset), which contains scanned documents with annotated signature regions. ### How This Dataset Was Created To create a seamless, unified pipeline dataset for **detection + verification**, the following modifications were made: - **Synthetic Placement**: Signature images were programmatically inserted into real documents at their correct signing regions (e.g., bottom of the page or designated signature lines). - **Blending with Background**: Signatures were rendered with varying opacities, filters, and transformations to match the document background, mimicking real-world signature scans. - **Labeling and BBoxes**: The new locations of the inserted signatures were used to generate accurate bounding boxes for detection tasks. - **Pairing for Verification**: Each inserted signature (`to_verify_signature`) was paired with a reference (`sample_signature`) and assigned a label: `0` for genuine or `1` for forged. This process enables researchers to train and evaluate models for **both signature localization and signature verification** in a realistic, document-centric setting. ## Sample Code ```python from datasets import load_dataset data = load_dataset("Mels22/SigDetectVerifyFlow") for i, example in enumerate(data['train']): example['document'].show() example['to_verify_signature'].show() example['sample_signature'].show() print(f"Bbox: {example['bbox']}") print(f"Label: {example['label']}") break ```