waymo example

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QuanyiLi
2023-08-27 15:00:51 +01:00
parent f7e41bbf19
commit 518b9317d6
4 changed files with 87 additions and 8 deletions

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@@ -16,7 +16,7 @@ For Waymo data, please install the toolkit via::
pip install waymo-open-dataset-tf-2-11-0==1.5.0 pip install waymo-open-dataset-tf-2-11-0==1.5.0
# Or install with scenarionet # Or install with scenarionet
pip install -e .[scenarionet] pip install -e .[waymo]
.. note:: .. note::
This package is only supported on Linux platform. This package is only supported on Linux platform.
@@ -53,7 +53,7 @@ Run the following command to extract scenarios in ``exp_waymo`` to ``exp_convert
When running ``python -m``, make sure the directory you are at doesn't contain a folder called ``scenarionet``. When running ``python -m``, make sure the directory you are at doesn't contain a folder called ``scenarionet``.
Otherwise, the running may fail. For more details about the command, use ``python -m scenarionet.convert_waymo -h`` Otherwise, the running may fail. For more details about the command, use ``python -m scenarionet.convert_waymo -h``
Now all exracted scenarios will be placed in ``exp_converted`` directory. Now all extracted scenarios will be placed in ``exp_converted`` directory.
If we list the directory with ``ll`` command, the structure will be like:: If we list the directory with ``ll`` command, the structure will be like::
exp_converted exp_converted

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@@ -23,11 +23,6 @@ Please feel free to contact us if you have any suggestions or ideas!
install.rst install.rst
example.rst example.rst
.. toctree::
:maxdepth: 2
:caption: Database Operations
operations.rst operations.rst
.. modify the toctree in datasets.rst together .. modify the toctree in datasets.rst together

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.. _operations: ###########
Operations
###########
How to run How to run
~~~~~~~~~~ ~~~~~~~~~~

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Waymo Waymo
############################# #############################
| Website: https://waymo.com/open/
| Download: https://waymo.com/open/download/
| Paper: https://arxiv.org/abs/2104.10133
The dataset includes:
- 103,354, 20s 10Hz segments (over 20 million frames), mined for interesting interactions
- 574 hours of data
- Sensor data
- 4 short-range lidars
- 1 mid-range lidar
- Object data
- 10.8M objects with tracking IDs
- Labels for 3 object classes - Vehicles, Pedestrians, Cyclists
- 3D bounding boxes for each object
- Mined for interesting behaviors and scenarios for behavior prediction research, such as unprotected turns, merges, lane changes, and intersections
- 3D bounding boxes are generated by a model trained on the Perception Dataset and detailed in our paper: Offboard 3D Object Detection from Point Cloud Sequences
Map data
- 3D map data for each segment
- Locations include: San Francisco, Phoenix, Mountain View, Los Angeles, Detroit, and Seattle
- Added entrances to driveways (the map already Includes lane centers, lane boundaries, road boundaries, crosswalks, speed bumps and stop signs)
- Adjusted some road edge boundary height estimates
1. Install requirements
~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
First of all, we have to install the waymo toolkit and tensorflow::
pip install waymo-open-dataset-tf-2-11-0
pip install tensorflow==2.11.0
# Or install with scenarionet
pip install -e .[waymo]
.. note::
This package is only supported on Linux platform.
2. Download Raw Data
~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
Waymo motion dataset is at `Google Cloud <https://console.cloud.google.com/storage/browser/waymo_open_dataset_motion_v_1_2_0>`_.
For downloading all datasets, ``gsutil`` is required.
The installation tutorial is at https://cloud.google.com/storage/docs/gsutil_install.
After this, you can access all data and download them to current directory ``./`` by::
gsutil -m cp -r "gs://waymo_open_dataset_motion_v_1_2_0/uncompressed/scenario" .
Or one just can download a part of the dataset using command like::
gsutil -m cp -r "gs://waymo_open_dataset_motion_v_1_2_0/uncompressed/scenario/training_20s" .
The downloaded data should be stored in a directory like this::
waymo
├── training_20s/
| ├── training_20s.tfrecord-00000-of-01000
| ├── training_20s.tfrecord-00001-of-01000
| └── ...
├── validation/
| ├── validation.tfrecord-00000-of-00150
| ├── validation.tfrecord-00001-of-00150
| └── ...
└── testing/
├── testing.tfrecord-00000-of-00150
├── testing.tfrecord-00001-of-00150
└── ...
3. Build Database
~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
Run the following command to extract scenarios in any directory containing ``tfrecord``.
Here we take converting raw data in ``training_20s`` as an example::
python -m scenarionet.convert_waymo -d /path/to/your/database --raw_data_path ./waymo/training_20s --num_files=1000
Now all converted scenarios will be placed at ``/path/to/your/database`` and are ready to be used in your work.
Known Issues Known Issues
================== ==================
N/A