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A Python package to provide easy to use tools to learn and teach digital (biomedical) image processing with Python.

Project description

DIPTools

Digital Image Processing Tools is a Python package to provide easy to use tools to learn and teach digital (biomedical) image processing with Python.

Version: 2025.03.14

Modules:

  • bitlevel: Provides functions for exploring bit-level representations of images.
  • filters: Provides basic spatial filters.
  • freqfilters: Provides basic frequency domain filters.
  • graph: Provides functionality to easily visualise images. Functions show_image() and show_histogram() are already available in the namespace.
  • pointprocessing: Provides point processing functionality, Function plot_transformation() is already available in the namespace.
  • region: Provides region based segmentation algorithms. Functions region_filling() and region_growing() are already available in the namespace.
  • video: Provides basic video loading tools.

Installation and usage:

Please install this package using PiP by typing:

pip install USJ_diptools

Import this module as:

import diptools as dip

Author:

Alejandro Alcaine, Ph.D
CoMBA research group
MESC Working Group on e-Cardiology
MESC European Association of Cardiovascular Imaging (EACVI)
lalcaine@usj.es

Faculty of Health Sciences
University San Jorge
Villanueva de Gallego (Zaragoza)
Spain

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