--- license: openrail task_categories: - image-segmentation tags: - Duckietown - Lane Following - Autonomous Driving pretty_name: Duckietown Multiclass Semantic Segmentation Dataset size_categories: - n<1K --- # Multiclass Semantic Segmentation Duckietown Dataset A dataset of multiclass semantic segmentation image annotations for the first 250 images of the ["Duckietown Object Detection Dataset"](https://docs.duckietown.org/daffy/AIDO/out/object_detection_dataset.html). | Raw Image | Segmentated Image | | --- | --- | | raw_image | segmentation_mask | # Semantic Classes This dataset defines 8 semantic classes (7 distinct classes + implicit background class): | Class | XML Label | Description | Color (RGB) | | --- | --- | --- | --- | | Ego Lane | `Ego Lane` | The lane the agent is supposed to be driving in (default right-hand traffic assumed) | `[102,255,102]` | | Opposite Lane | `Opposite Lane` | The lane opposite to the one the agent is supposed to be driving in (default right-hand traffic assumed) | `[245,147,49]` | | Road End | `Road End` | Perpendicular red indicator found in Duckietown indicating the end of the road or the beginning of an intersection | `[184,61,245]` | | Intersection | `Intersection` | Road tile with no lane markings that has either 3 (T-intersection) or 4 (X-intersection) adjacent road tiles | `[50,183,250]` | | Middle Lane | `Middle Lane` | Broken yellow lane in the middle of the road separating lanes | `[255,255,0]` | | Side Lane | `Side Lane` | Solid white lane marking the road boundary | `[255,255,255]` | | Background | `Background` | Unclassified | - (implicit class) | ### **Notice**: (1) The color assignment is purely a suggestion as the color information encoded in the annotation file is not used by the `cvat_preprocessor.py` and can therefore be overwritten by any other mapping. The specified color mapping is mentioned here for explanatory and consistency reasons as this mapping is used in `dataloader.py` (see [Usage](#usage) for more information). (2) `[Ego Lane, Opposite Lane, Intersection]` are three semantic classes for essentially the same road tiles - the three classes were added to introduce more information for some use cases. Keep in mind, that some semantic segmentation neural network have a hard time learning the difference between these classes, leading to a poor performance on detecting these classes. In such case, treating these three classes as one *"Road"* class helps improving the segmentation performance. (3) The `Middle Lane` and `Side Lane` classes were added later and thus only the first 125 images were annotated. If you want to use these, use the `segmentation_annotation.xml` annotation file. Otherwise, `segmentation_annotation_old.xml` stores 250 images (including the 125 images from the other annotation file) but without these two classes. (4) `Background` is a special semantic class as it is not stored in the annotation file. This class is assigned to all pixels that don't have any other class (see `dataloader.py` for a reference solution for that). # Usage [](#usage) Due to the rather large size of the original dataset *(~750MB)*, this repository only contains annotations file stored in `CVAT for Images 1.1` format as well as two python files: - `cvat_preprocessor.py`: A collection of helper functions to read the annotations file and extract the annotation masks stored as polygons. - `dataloader.py`: A [_PyTorch_](https://pytorch.org)-specific example implementation of a wrapper-dataset to use with PyTorch machine learning models.