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neverwhere: Hyper-Realistic Visual Locomotion Benchmark
pip install neverwhere
⬝
visit https://neverwhere.readthedocs.org for documentation
neverwhere is a hyper realistic visual benchmark for legged locomotion.
Installation
You can install neverwhere
with pip
:
pip install -U 'neverwhere[all]'
- add setup for the dataset.
Here is an example that loads a URDF file and displays it in the browser. For a more comprehensive list of examples, please refer to the examples page.
from neverwhere import make
env = make("Cones-BCS-v1")
env.reset()
for _ in range(1000):
random_action = env.action_space.sample()
env.step(random_action)
ego_view = env.render("rgb_array")
To get a quick overview of what you can do with neverwhere
, check out the following:
- take a look at the example gallery here
- or try to take a look at this demo with a Unitree Go1 robot in front of a flight of stairs here
For a comprehensive list of visualization components, please refer to the API documentation on Components.
For a comprehensive list of data types, please refer to the API documentation on Data Types.
Contributing to Documentation and Features
Documentation is a crucial part of the neverwhere
ecosystem. To contribute to documentation and usage examples, simply:
pip install -e '.[all]'
make docs
This should fire up an http server at the port 8888
, and you can view the documentation at http://localhost:8888
.
About Us
neverwhere is built by researchers at MIT and UCSD in fields including robotics, computer vision, and computer graphics.
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