| ================================== | |
| Quick Start | |
| ================================== | |
| Once the PDF-Extract-Kit environment is set up and the models are downloaded, we can start using PDF-Extract-Kit. | |
| Layout Detection Example | |
| ============== | |
| Layout detection offers several models: ``LayoutLMv3``, ``YOLOv10``, and ``DocLayout-YOLO``. Compared to ``LayoutLMv3``, ``YOLOv10`` is faster. ``DocLayout-YOLO`` is based on YOLOv10 and includes diverse document pre-training and model optimization, offering both speed and high accuracy. | |
| **1. Using Layout Detection Models** | |
| .. code-block:: console | |
| $ python scripts/layout_detection.py --config configs/layout_detection.yaml | |
| After execution, we can view the detection results in the `outputs/layout_detection` directory. | |
| .. note:: | |
| The ``layout_detection.yaml`` file sets the input, output, and model configuration. For a more detailed tutorial on layout detection, see :ref:`Layout Detection Algorithm <algorithm_layout_detection>`. | |
| Formula Detection Example | |
| ============== | |
| .. code-block:: console | |
| $ python scripts/formula_detection.py --config configs/formula_detection.yaml | |
| After execution, we can view the detection results in the `outputs/formula_detection` directory. | |
| .. note:: | |
| The ``formula_detection.yaml`` file sets the input, output, and model configuration. For a more detailed tutorial on formula detection, see :ref:`Formula Detection Algorithm <algorithm_formula_detection>`. |