for taichi voxel-challange event

Overview

Taichi Voxel Challenge

Figure: result of python3 example6.py. Please replace the image above (demo.jpg) with yours, so that other people can immediately see your results :-)

We invite you to create your voxel artwork, by putting your Taichi code in main.py!

Rules:

  • You can only import two modules: taichi (pip installation guide below) and scene.py (in the repo).
  • The code in main.py cannot exceed 99 lines. Each line cannot exceed 120 characters.

The available APIs are:

  • scene = Scene(voxel_edges, exposure)
  • scene.set_voxel(voxel_id, material, color)
  • material, color = scene.get_voxel(voxel_id)
  • scene.set_floor(height, color)
  • scene.set_directional_light(dir, noise, color)
  • scene.set_background_color(color)

Remember to call scene.finish() at last.

Taichi Lang documentation: https://docs.taichi-lang.org/

Modifying files other than main.py is not allowed.

Installation

Make sure your pip is up-to-date:

pip3 install pip --upgrade

Assume you have a Python 3 environment, simply run:

pip3 install -r requirements.txt

to install the dependencies of the voxel renderer.

Quickstart

python3 example1.py  # example2/3/.../7/8.py

Mouse and keyboard interface:

  • Drag with your left mouse button to rotate the camera.
  • Press W/A/S/D/Q/E to move the camera.
  • Press P to save a screenshot.

More examples

Show your artwork

Please put your artwork at the beginning of this README file. Replacing the demo.jpg file with your creation will do the job.

Owner
Liming Xu
Liming Xu
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