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An object oriented approach to visualization of 1D to 4D data.

Project description

Visvis is a pure Python library for visualization of 1D to 4D data in an object oriented way. Essentially, visvis is an object oriented layer of Python on top of OpenGl, thereby combining the power of OpenGl with the usability of Python. A Matlab-like interface in the form of a set of functions allows easy creation of objects (e.g. plot(), imshow(), volshow(), surf()).

With visvis a range of different data can be visualized by simply adding world objects to a scene (or axes). These world objects can be anything from plots (lines with markers), to images, 3D rendered volumes, shaded meshes, or you can program your own world object class. If required, these data can also be moved in time.

Visvis can be used in Python scripts, interactive Python sessions (as with IPython or IEP) and can be embedded in applications.

Requirements:
  • Numpy

  • PyOpengl

  • A backend GUI toolkit (PySide, PyQt4, PyQt5, wxPython, GTK, fltk)

  • (optionally, to enable reading and writing of images) imageio

usage: import visvis as vv

All wobjects, wibjects and functions are present in the visvis namespace. For clean lists, see vv.wibjects, vv.wobjects, or vv.functions, respectively.

For more help, see …

Visvis is maintained by Almar Klein.

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