# Datasets-Structure **(YOLOv8 format)** The Yolov8 dataset for segmentation is usually structured as follows: ``` yolo_dataset/ │ ├── train/ │ ├── images/ │ │ └── 🖼️ img_n # Example image │ │ │ └── labels/ │ └── 📄 img_n_labels.txt # Example labels file │ ├── valid/ │ │ ... (similar) │ └── 📄 data.yaml ``` Each ```img_x_labels.txt``` file contains multiple annotations (one per line) with corresponding class ID and segmentation coordinates: ` ... ` The file `data.yaml` contains keys such as: - names (the class names) - nc (number or classes) - train (path/to/train/images/) - val (path/to/val/images/) **(COCO Instance Segmentation format)** ``` coco_dataset/ │ ├── train/ │ ├── 🖼️ img_n # Example image │ └── 📄 annotations.json # The annotations json file │ └── valid/ └── ... (similar) ``` The annotations json file contains a dictionary of lists: - images (a list of dictionaries) - id - image ID - file_name - height - width - annotations (a list of dictionaries) - id - image_id - category_id - bbox - area - segmentation (a segmentation polygon) - iscrowd - categories (a list of dictionaries) - id - name