Supervisely Point Cloud

Format specification

Specification for the Point Cloud data format is available here.

You can also find examples of working with the dataset here.

Supported annotation types:

  • cuboid_3d

Supported annotation attributes:

  • track_id (read/write, integer), responsible for object field
  • createdAt (write, string),
  • updatedAt (write, string),
  • labelerLogin (write, string), responsible for the corresponding fields in the annotation file.
  • arbitrary attributes

Supported image attributes:

  • description (read/write, string),
  • createdAt (write, string),
  • updatedAt (write, string),
  • labelerLogin (write, string), responsible for the corresponding fields in the annotation file.
  • frame (read/write, integer). Indicates frame number of the image.
  • arbitrary attributes

Import Supervisely Point Cloud dataset

An example dataset in Supervisely Point Cloud format is available for download:

https://drive.google.com/u/0/uc?id=1BtZyffWtWNR-mk_PHNPMnGgSlAkkQpBl&export=download

Point Cloud dataset directory should have the following structure:

└─ Dataset/
    ├── ds0/
    │   ├── ann/
    │   │   ├── <pcdname1.pcd.json>
    │   │   ├── <pcdname2.pcd.json>
    │   │   └── ...
    │   ├── pointcloud/
    │   │   ├── <pcdname1.pcd>
    │   │   ├── <pcdname1.pcd>
    │   │   └── ...
    │   ├── related_images/
    │   │   ├── <pcdname1_pcd>/
    │   │   |  ├── <image_name.ext.json>
    │   │   |  ├── <image_name.ext.json>
    │   │   └── ...
    ├── key_id_map.json
    └── meta.json

There are two ways to import a Supervisely Point Cloud dataset:

datum create
datum import --format sly_pointcloud --input-path <path/to/dataset>

or

datum create
datum import -f sly_pointcloud <path/to/dataset>

To make sure that the selected dataset has been added to the project, you can run datum project info, which will display the project and dataset information.

Export to other formats

Datumaro can convert Supervisely Point Cloud dataset into any other format Datumaro supports.

Such conversion will only be successful if the output format can represent the type of dataset you want to convert, e.g. 3D point clouds can be saved in KITTI Raw format, but not in COCO keypoints.

There are several ways to convert a Supervisely Point Cloud dataset to other dataset formats:

datum create
datum import -f sly_pointcloud <path/to/sly_pcd/>
datum export -f kitti_raw -o <output/dir>

or

datum convert -if sly_pointcloud -i <path/to/sly_pcd/> -f kitti_raw

Or, using Python API:

import datumaro as dm

dataset = dm.Dataset.import_from('<path/to/dataset>', 'sly_pointcloud')
dataset.export('save_dir', 'kitti_raw', save_images=True)

Export to Supervisely Point Cloud

There are several ways to convert a dataset to Supervisely Point Cloud format:

# export dataset into Supervisely Point Cloud format from existing project
datum export -p <path/to/project> -f sly_pointcloud -o <output/dir> \
    -- --save-images
# converting to Supervisely Point Cloud format from other format
datum convert -if kitti_raw -i <path/to/dataset> \
    -f sly_pointcloud -o <output/dir> -- --save-images

Extra options for exporting in Supervisely Point Cloud format:

  • --save-images allow to export dataset with saving images. This will include point clouds and related images (by default False)
  • --image-ext IMAGE_EXT allow to specify image extension for exporting dataset (by default - keep original or use .png, if none)
  • --reindex assigns new indices to frames and annotations.
  • --allow-undeclared-attrs allows writing arbitrary annotation attributes. By default, only attributes specified in the input dataset metainfo will be written.

Examples

Example 1. Import dataset, compute statistics

datum create -o project
datum import -p project -f sly_pointcloud ../sly_dataset/
datum stats -p project

Example 2. Convert Supervisely Point Clouds to KITTI Raw

datum convert -if sly_pointcloud -i ../sly_pcd/ \
    -f kitti_raw -o my_kitti/ -- --save-images --reindex --allow-attrs

Example 3. Create a custom dataset

import datumaro as dm

dataset = dm.Dataset.from_iterable([
    dm.DatasetItem(id='frame_1',
        annotations=[
            dm.Cuboid3d(id=206, label=0,
                position=[320.86, 979.18, 1.04],
                attributes={'occluded': False, 'track_id': 1, 'x': 1}),

            dm.Cuboid3d(id=207, label=1,
                position=[318.19, 974.65, 1.29],
                attributes={'occluded': True, 'track_id': 2}),
        ],
        pcd='path/to/pcd1.pcd',
        attributes={'frame': 0, 'description': 'zzz'}
    ),

    dm.DatasetItem(id='frm2',
        annotations=[
            dm.Cuboid3d(id=208, label=1,
                position=[23.04, 8.75, -0.78],
                attributes={'occluded': False, 'track_id': 2})
        ],
        pcd='path/to/pcd2.pcd', related_images=['image2.png'],
        attributes={'frame': 1}
    ),
], categories=['cat', 'dog'])

dataset.export('my_dataset/', format='sly_pointcloud', save_images=True,
    allow_undeclared_attrs=True)

Examples of using this format from the code can be found in the format tests