%global _empty_manifest_terminate_build 0 Name: python-mahotas Version: 1.4.13 Release: 1 Summary: Mahotas: Computer Vision Library License: MIT URL: http://luispedro.org/software/mahotas Source0: https://mirrors.nju.edu.cn/pypi/web/packages/ca/d7/072f0bba098df3acc8d2db25ae6dcb3d46882d241369038a0f8fe64b6702/mahotas-1.4.13.tar.gz %description # Mahotas ## Python Computer Vision Library Mahotas is a library of fast computer vision algorithms (all implemented in C++ for speed) operating over numpy arrays. ![GH Actions Status](https://github.com/luispedro/mahotas/workflows/Python%20Package%20using%20Conda/badge.svg) [![Coverage Status](https://coveralls.io/repos/github/luispedro/mahotas/badge.svg?branch=master)](https://coveralls.io/github/luispedro/mahotas?branch=master) [![License](https://img.shields.io/badge/License-MIT-blue)](http://opensource.org/licenses/MIT) [![Downloads](https://pepy.tech/badge/mahotas/month)](https://pepy.tech/project/mahotas/month) [![Install with Conda](https://anaconda.org/conda-forge/mahotas/badges/downloads.svg)](https://anaconda.org/conda-forge/mahotas) [![Install with Anaconda](https://anaconda.org/conda-forge/mahotas/badges/installer/conda.svg)](https://anaconda.org/conda-forge/mahotas) Python versions 2.7, 3.4+, are supported. Notable algorithms: - [watershed](http://mahotas.readthedocs.io/en/latest/distance.html) - [convex points calculations](http://mahotas.readthedocs.io/en/latest/polygon.html). - hit & miss, thinning. - Zernike & Haralick, LBP, and TAS features. - [Speeded-Up Robust Features (SURF)](http://mahotas.readthedocs.io/en/latest/surf.html), a form of local features. - [thresholding](http://mahotas.readthedocs.io/en/latest/thresholding.html). - convolution. - Sobel edge detection. - spline interpolation - SLIC super pixels. Mahotas currently has over 100 functions for image processing and computer vision and it keeps growing. The release schedule is roughly one release a month and each release brings new functionality and improved performance. The interface is very stable, though, and code written using a version of mahotas from years back will work just fine in the current version, except it will be faster (some interfaces are deprecated and will be removed after a few years, but in the meanwhile, you only get a warning). In a few unfortunate cases, there was a bug in the old code and your results will change for the better. Please cite [the mahotas paper](http://dx.doi.org/10.5334/jors.ac) (see details below under [Citation](#Citation)) if you use it in a publication. ## Examples This is a simple example (using an example file that is shipped with mahotas) of calling watershed using above threshold regions as a seed (we use Otsu to define threshold). # import using ``mh`` abbreviation which is common: import mahotas as mh # Load one of the demo images im = mh.demos.load('nuclear') # Automatically compute a threshold T_otsu = mh.thresholding.otsu(im) # Label the thresholded image (thresholding is done with numpy operations seeds,nr_regions = mh.label(im > T_otsu) # Call seeded watershed to expand the threshold labeled = mh.cwatershed(im.max() - im, seeds) Here is a very simple example of using `mahotas.distance` (which computes a distance map): import pylab as p import numpy as np import mahotas as mh f = np.ones((256,256), bool) f[200:,240:] = False f[128:144,32:48] = False # f is basically True with the exception of two islands: one in the lower-right # corner, another, middle-left dmap = mh.distance(f) p.imshow(dmap) p.show() (This is under [mahotas/demos/distance.py](https://github.com/luispedro/mahotas/blob/master/mahotas/demos/distance.py).) How to invoke thresholding functions: import mahotas as mh import numpy as np from pylab import imshow, gray, show, subplot from os import path # Load photo of mahotas' author in greyscale photo = mh.demos.load('luispedro', as_grey=True) # Convert to integer values (using numpy operations) photo = photo.astype(np.uint8) # Compute Otsu threshold T_otsu = mh.otsu(photo) thresholded_otsu = (photo > T_otsu) # Compute Riddler-Calvard threshold T_rc = mh.rc(photo) thresholded_rc = (photo > T_rc) # Now call pylab functions to display the image gray() subplot(2,1,1) imshow(thresholded_otsu) subplot(2,1,2) imshow(thresholded_rc) show() As you can see, we rely on numpy/matplotlib for many operations. ## Install If you are using [conda](http://anaconda.org/), you can install mahotas from [conda-forge](https://conda-forge.github.io/) using the following commands: conda config --add channels conda-forge conda install mahotas ### Compilation from source You will need python (naturally), numpy, and a C++ compiler. Then you should be able to use: pip install mahotas You can test your installation by running: python -c "import mahotas as mh; mh.test()" If you run into issues, the manual has more [extensive documentation on mahotas installation](https://mahotas.readthedocs.io/en/latest/install.html), including how to find pre-built for several platforms. ## Citation If you use mahotas on a published publication, please cite: > **Luis Pedro Coelho** Mahotas: Open source software for scriptable > computer vision in Journal of Open Research Software, vol 1, 2013. > [[DOI](http://dx.doi.org/10.5334/jors.ac)] In Bibtex format: > @article{mahotas, > author = {Luis Pedro Coelho}, > title = {Mahotas: Open source software for scriptable computer vision}, > journal = {Journal of Open Research Software}, > year = {2013}, > doi = {http://dx.doi.org/10.5334/jors.ac}, > month = {July}, > volume = {1} > } You can access this information using the `mahotas.citation()` function. ## Development Development happens on github ([http://github.com/luispedro/mahotas](https://github.com/luispedro/mahotas)). You can set the `DEBUG` environment variable before compilation to get a debug version: export DEBUG=1 python setup.py test You can set it to the value `2` to get extra checks: export DEBUG=2 python setup.py test Be careful not to use this in production unless you are chasing a bug. Debug level 2 is very slow as it adds many runtime checks. The `Makefile` that is shipped with the source of mahotas can be useful too. `make debug` will create a debug build. `make fast` will create a non-debug build (you need to `make clean` in between). `make test` will run the test suite. ## Links & Contacts *Documentation*: [https://mahotas.readthedocs.io/](https://mahotas.readthedocs.io/) *Issue Tracker*: [github mahotas issues](https://github.com/luispedro/mahotas/issues) *Mailing List*: Use the [pythonvision mailing list](http://groups.google.com/group/pythonvision?pli=1) for questions, bug submissions, etc. Or ask on [stackoverflow (tag mahotas)](http://stackoverflow.com/questions/tagged/mahotas) *Main Author & Maintainer*: [Luis Pedro Coelho](http://luispedro.org) (follow on [twitter](https://twitter.com/luispedrocoelho) or [github](https://github.com/luispedro)). Mahotas also includes code by Zachary Pincus [from scikits.image], Peter J. Verveer [from scipy.ndimage], and Davis King [from dlib], Christoph Gohlke, as well as [others](https://github.com/luispedro/mahotas/graphs/contributors). [Presentation about mahotas for bioimage informatics](http://luispedro.org/files/talks/2013/EuBIAS/mahotas.html) For more general discussion of computer vision in Python, the [pythonvision mailing list](http://groups.google.com/group/pythonvision?pli=1) is a much better venue and generates a public discussion log for others in the future. You can use it for mahotas or general computer vision in Python questions. ## Recent Changes ### Version 1.4.13 (Jun 28 2022) - Fix freeimage testing (and make freeimage loading more robust, see #129) - Add GIL fixed (which triggered crashes in newer NumPy versions) ### Version 1.4.12 (Oct 14 2021) - Update to newer NumPy - Build wheels for Python 3.9 & 3.10 ### Version 1.4.11 (Aug 16 2020) - Convert tests to pytest - Fix testing for PyPy ### Version 1.4.10 (Jun 11 2020) - Build wheels automatically (PR #114 by [nathanhillyer](https://github.com/nathanhillyer)) ### Version 1.4.9 (Nov 12 2019) - Fix FreeImage detection (issue #108) ### Version 1.4.8 (Oct 11 2019) - Fix co-occurrence matrix computation (patch by @databaaz) ### Version 1.4.7 (Jul 10 2019) - Fix compilation on Windows ### Version 1.4.6 (Jul 10 2019) - Make watershed work for >2³¹ voxels (issue #102) - Remove milk from demos - Improve performance by avoid unnecessary array copies in `cwatershed()`, `majority_filter()`, and color conversions - Fix bug in interpolation ### Version 1.4.5 (Oct 20 2018) - Upgrade code to newer NumPy API (issue #95) ### Version 1.4.4 (Nov 5 2017) - Fix bug in Bernsen thresholding (issue #84) ### Version 1.4.3 (Oct 3 2016) - Fix distribution (add missing `README.md` file) ### Version 1.4.2 (Oct 2 2016) - Fix `resize\_to` return exactly the requested size - Fix hard crash when computing texture on arrays with negative values (issue #72) - Added `distance` argument to haralick features (pull request #76, by Guillaume Lemaitre) ### Version 1.4.1 (Dec 20 2015) - Add `filter\_labeled` function - Fix tests on 32 bit platforms and older versions of numpy ### Version 1.4.0 (July 8 2015) - Added `mahotas-features.py` script - Add short argument to citation() function - Add max\_iter argument to thin() function - Fixed labeled.bbox when there is no background (issue \#61, reported by Daniel Haehn) - bbox now allows dimensions greater than 2 (including when using the `as_slice` and `border` arguments) - Extended croptobbox for dimensions greater than 2 - Added use\_x\_minus\_y\_variance option to haralick features - Add function `lbp_names` ### Version 1.3.0 (April 28 2015) - Improve memory handling in freeimage.write\_multipage - Fix moments parameter swap - Add labeled.bbox function - Add return\_mean and return\_mean\_ptp arguments to haralick function - Add difference of Gaussians filter (by Jianyu Wang) - Add Laplacian filter (by Jianyu Wang) - Fix crash in median\_filter when mismatched arguments are passed - Fix gaussian\_filter1d for ndim \> 2 ### Version 1.2.4 (December 23 2014) - Add PIL based IO ### Version 1.2.3 (November 8 2014) - Export mean\_filter at top level - Fix to Zernike moments computation (reported by Sergey Demurin) - Fix compilation in platforms without npy\_float128 (patch by Gabi Davar) ### Version 1.2.2 (October 19 2014) - Add minlength argument to labeled\_sum - Generalize regmax/regmin to work with floating point images - Allow floating point inputs to `cwatershed()` - Correctly check for float16 & float128 inputs - Make sobel into a pure function (i.e., do not normalize its input) - Fix sobel filtering ### Version 1.2.1 (July 21 2014) - Explicitly set numpy.include\_dirs() in setup.py [patch by Andrew Stromnov] ### Version 1.2 (July 17 2014) - Export locmax|locmin at the mahotas namespace level - Break away ellipse\_axes from eccentricity code as it can be useful on its own - Add `find()` function - Add `mean_filter()` function - Fix `cwatershed()` overflow possibility - Make labeled functions more flexible in accepting more types - Fix crash in `close_holes()` with nD images (for n \> 2) - Remove matplotlibwrap - Use standard setuptools for building (instead of numpy.distutils) - Add `overlay()` function ### Version 1.1.1 (July 4 2014) - Fix crash in close\_holes() with nD images (for n \> 2) ### 1.1.0 (February 12 2014) - Better error checking - Fix interpolation of integer images using order 1 - Add resize\_to & resize\_rgb\_to - Add coveralls coverage - Fix SLIC superpixels connectivity - Add remove\_regions\_where function - Fix hard crash in convolution - Fix axis handling in convolve1d - Add normalization to moments calculation See the [ChangeLog](https://github.com/luispedro/mahotas/blob/master/ChangeLog) for older version. ## License [![FOSSA Status](https://app.fossa.io/api/projects/git%2Bgithub.com%2Fluispedro%2Fmahotas.svg?type=large)](https://app.fossa.io/projects/git%2Bgithub.com%2Fluispedro%2Fmahotas?ref=badge_large) %package -n python3-mahotas Summary: Mahotas: Computer Vision Library Provides: python-mahotas BuildRequires: python3-devel BuildRequires: python3-setuptools BuildRequires: python3-pip BuildRequires: python3-cffi BuildRequires: gcc BuildRequires: gdb %description -n python3-mahotas # Mahotas ## Python Computer Vision Library Mahotas is a library of fast computer vision algorithms (all implemented in C++ for speed) operating over numpy arrays. ![GH Actions Status](https://github.com/luispedro/mahotas/workflows/Python%20Package%20using%20Conda/badge.svg) [![Coverage Status](https://coveralls.io/repos/github/luispedro/mahotas/badge.svg?branch=master)](https://coveralls.io/github/luispedro/mahotas?branch=master) [![License](https://img.shields.io/badge/License-MIT-blue)](http://opensource.org/licenses/MIT) [![Downloads](https://pepy.tech/badge/mahotas/month)](https://pepy.tech/project/mahotas/month) [![Install with Conda](https://anaconda.org/conda-forge/mahotas/badges/downloads.svg)](https://anaconda.org/conda-forge/mahotas) [![Install with Anaconda](https://anaconda.org/conda-forge/mahotas/badges/installer/conda.svg)](https://anaconda.org/conda-forge/mahotas) Python versions 2.7, 3.4+, are supported. Notable algorithms: - [watershed](http://mahotas.readthedocs.io/en/latest/distance.html) - [convex points calculations](http://mahotas.readthedocs.io/en/latest/polygon.html). - hit & miss, thinning. - Zernike & Haralick, LBP, and TAS features. - [Speeded-Up Robust Features (SURF)](http://mahotas.readthedocs.io/en/latest/surf.html), a form of local features. - [thresholding](http://mahotas.readthedocs.io/en/latest/thresholding.html). - convolution. - Sobel edge detection. - spline interpolation - SLIC super pixels. Mahotas currently has over 100 functions for image processing and computer vision and it keeps growing. The release schedule is roughly one release a month and each release brings new functionality and improved performance. The interface is very stable, though, and code written using a version of mahotas from years back will work just fine in the current version, except it will be faster (some interfaces are deprecated and will be removed after a few years, but in the meanwhile, you only get a warning). In a few unfortunate cases, there was a bug in the old code and your results will change for the better. Please cite [the mahotas paper](http://dx.doi.org/10.5334/jors.ac) (see details below under [Citation](#Citation)) if you use it in a publication. ## Examples This is a simple example (using an example file that is shipped with mahotas) of calling watershed using above threshold regions as a seed (we use Otsu to define threshold). # import using ``mh`` abbreviation which is common: import mahotas as mh # Load one of the demo images im = mh.demos.load('nuclear') # Automatically compute a threshold T_otsu = mh.thresholding.otsu(im) # Label the thresholded image (thresholding is done with numpy operations seeds,nr_regions = mh.label(im > T_otsu) # Call seeded watershed to expand the threshold labeled = mh.cwatershed(im.max() - im, seeds) Here is a very simple example of using `mahotas.distance` (which computes a distance map): import pylab as p import numpy as np import mahotas as mh f = np.ones((256,256), bool) f[200:,240:] = False f[128:144,32:48] = False # f is basically True with the exception of two islands: one in the lower-right # corner, another, middle-left dmap = mh.distance(f) p.imshow(dmap) p.show() (This is under [mahotas/demos/distance.py](https://github.com/luispedro/mahotas/blob/master/mahotas/demos/distance.py).) How to invoke thresholding functions: import mahotas as mh import numpy as np from pylab import imshow, gray, show, subplot from os import path # Load photo of mahotas' author in greyscale photo = mh.demos.load('luispedro', as_grey=True) # Convert to integer values (using numpy operations) photo = photo.astype(np.uint8) # Compute Otsu threshold T_otsu = mh.otsu(photo) thresholded_otsu = (photo > T_otsu) # Compute Riddler-Calvard threshold T_rc = mh.rc(photo) thresholded_rc = (photo > T_rc) # Now call pylab functions to display the image gray() subplot(2,1,1) imshow(thresholded_otsu) subplot(2,1,2) imshow(thresholded_rc) show() As you can see, we rely on numpy/matplotlib for many operations. ## Install If you are using [conda](http://anaconda.org/), you can install mahotas from [conda-forge](https://conda-forge.github.io/) using the following commands: conda config --add channels conda-forge conda install mahotas ### Compilation from source You will need python (naturally), numpy, and a C++ compiler. Then you should be able to use: pip install mahotas You can test your installation by running: python -c "import mahotas as mh; mh.test()" If you run into issues, the manual has more [extensive documentation on mahotas installation](https://mahotas.readthedocs.io/en/latest/install.html), including how to find pre-built for several platforms. ## Citation If you use mahotas on a published publication, please cite: > **Luis Pedro Coelho** Mahotas: Open source software for scriptable > computer vision in Journal of Open Research Software, vol 1, 2013. > [[DOI](http://dx.doi.org/10.5334/jors.ac)] In Bibtex format: > @article{mahotas, > author = {Luis Pedro Coelho}, > title = {Mahotas: Open source software for scriptable computer vision}, > journal = {Journal of Open Research Software}, > year = {2013}, > doi = {http://dx.doi.org/10.5334/jors.ac}, > month = {July}, > volume = {1} > } You can access this information using the `mahotas.citation()` function. ## Development Development happens on github ([http://github.com/luispedro/mahotas](https://github.com/luispedro/mahotas)). You can set the `DEBUG` environment variable before compilation to get a debug version: export DEBUG=1 python setup.py test You can set it to the value `2` to get extra checks: export DEBUG=2 python setup.py test Be careful not to use this in production unless you are chasing a bug. Debug level 2 is very slow as it adds many runtime checks. The `Makefile` that is shipped with the source of mahotas can be useful too. `make debug` will create a debug build. `make fast` will create a non-debug build (you need to `make clean` in between). `make test` will run the test suite. ## Links & Contacts *Documentation*: [https://mahotas.readthedocs.io/](https://mahotas.readthedocs.io/) *Issue Tracker*: [github mahotas issues](https://github.com/luispedro/mahotas/issues) *Mailing List*: Use the [pythonvision mailing list](http://groups.google.com/group/pythonvision?pli=1) for questions, bug submissions, etc. Or ask on [stackoverflow (tag mahotas)](http://stackoverflow.com/questions/tagged/mahotas) *Main Author & Maintainer*: [Luis Pedro Coelho](http://luispedro.org) (follow on [twitter](https://twitter.com/luispedrocoelho) or [github](https://github.com/luispedro)). Mahotas also includes code by Zachary Pincus [from scikits.image], Peter J. Verveer [from scipy.ndimage], and Davis King [from dlib], Christoph Gohlke, as well as [others](https://github.com/luispedro/mahotas/graphs/contributors). [Presentation about mahotas for bioimage informatics](http://luispedro.org/files/talks/2013/EuBIAS/mahotas.html) For more general discussion of computer vision in Python, the [pythonvision mailing list](http://groups.google.com/group/pythonvision?pli=1) is a much better venue and generates a public discussion log for others in the future. You can use it for mahotas or general computer vision in Python questions. ## Recent Changes ### Version 1.4.13 (Jun 28 2022) - Fix freeimage testing (and make freeimage loading more robust, see #129) - Add GIL fixed (which triggered crashes in newer NumPy versions) ### Version 1.4.12 (Oct 14 2021) - Update to newer NumPy - Build wheels for Python 3.9 & 3.10 ### Version 1.4.11 (Aug 16 2020) - Convert tests to pytest - Fix testing for PyPy ### Version 1.4.10 (Jun 11 2020) - Build wheels automatically (PR #114 by [nathanhillyer](https://github.com/nathanhillyer)) ### Version 1.4.9 (Nov 12 2019) - Fix FreeImage detection (issue #108) ### Version 1.4.8 (Oct 11 2019) - Fix co-occurrence matrix computation (patch by @databaaz) ### Version 1.4.7 (Jul 10 2019) - Fix compilation on Windows ### Version 1.4.6 (Jul 10 2019) - Make watershed work for >2³¹ voxels (issue #102) - Remove milk from demos - Improve performance by avoid unnecessary array copies in `cwatershed()`, `majority_filter()`, and color conversions - Fix bug in interpolation ### Version 1.4.5 (Oct 20 2018) - Upgrade code to newer NumPy API (issue #95) ### Version 1.4.4 (Nov 5 2017) - Fix bug in Bernsen thresholding (issue #84) ### Version 1.4.3 (Oct 3 2016) - Fix distribution (add missing `README.md` file) ### Version 1.4.2 (Oct 2 2016) - Fix `resize\_to` return exactly the requested size - Fix hard crash when computing texture on arrays with negative values (issue #72) - Added `distance` argument to haralick features (pull request #76, by Guillaume Lemaitre) ### Version 1.4.1 (Dec 20 2015) - Add `filter\_labeled` function - Fix tests on 32 bit platforms and older versions of numpy ### Version 1.4.0 (July 8 2015) - Added `mahotas-features.py` script - Add short argument to citation() function - Add max\_iter argument to thin() function - Fixed labeled.bbox when there is no background (issue \#61, reported by Daniel Haehn) - bbox now allows dimensions greater than 2 (including when using the `as_slice` and `border` arguments) - Extended croptobbox for dimensions greater than 2 - Added use\_x\_minus\_y\_variance option to haralick features - Add function `lbp_names` ### Version 1.3.0 (April 28 2015) - Improve memory handling in freeimage.write\_multipage - Fix moments parameter swap - Add labeled.bbox function - Add return\_mean and return\_mean\_ptp arguments to haralick function - Add difference of Gaussians filter (by Jianyu Wang) - Add Laplacian filter (by Jianyu Wang) - Fix crash in median\_filter when mismatched arguments are passed - Fix gaussian\_filter1d for ndim \> 2 ### Version 1.2.4 (December 23 2014) - Add PIL based IO ### Version 1.2.3 (November 8 2014) - Export mean\_filter at top level - Fix to Zernike moments computation (reported by Sergey Demurin) - Fix compilation in platforms without npy\_float128 (patch by Gabi Davar) ### Version 1.2.2 (October 19 2014) - Add minlength argument to labeled\_sum - Generalize regmax/regmin to work with floating point images - Allow floating point inputs to `cwatershed()` - Correctly check for float16 & float128 inputs - Make sobel into a pure function (i.e., do not normalize its input) - Fix sobel filtering ### Version 1.2.1 (July 21 2014) - Explicitly set numpy.include\_dirs() in setup.py [patch by Andrew Stromnov] ### Version 1.2 (July 17 2014) - Export locmax|locmin at the mahotas namespace level - Break away ellipse\_axes from eccentricity code as it can be useful on its own - Add `find()` function - Add `mean_filter()` function - Fix `cwatershed()` overflow possibility - Make labeled functions more flexible in accepting more types - Fix crash in `close_holes()` with nD images (for n \> 2) - Remove matplotlibwrap - Use standard setuptools for building (instead of numpy.distutils) - Add `overlay()` function ### Version 1.1.1 (July 4 2014) - Fix crash in close\_holes() with nD images (for n \> 2) ### 1.1.0 (February 12 2014) - Better error checking - Fix interpolation of integer images using order 1 - Add resize\_to & resize\_rgb\_to - Add coveralls coverage - Fix SLIC superpixels connectivity - Add remove\_regions\_where function - Fix hard crash in convolution - Fix axis handling in convolve1d - Add normalization to moments calculation See the [ChangeLog](https://github.com/luispedro/mahotas/blob/master/ChangeLog) for older version. ## License [![FOSSA Status](https://app.fossa.io/api/projects/git%2Bgithub.com%2Fluispedro%2Fmahotas.svg?type=large)](https://app.fossa.io/projects/git%2Bgithub.com%2Fluispedro%2Fmahotas?ref=badge_large) %package help Summary: Development documents and examples for mahotas Provides: python3-mahotas-doc %description help # Mahotas ## Python Computer Vision Library Mahotas is a library of fast computer vision algorithms (all implemented in C++ for speed) operating over numpy arrays. ![GH Actions Status](https://github.com/luispedro/mahotas/workflows/Python%20Package%20using%20Conda/badge.svg) [![Coverage Status](https://coveralls.io/repos/github/luispedro/mahotas/badge.svg?branch=master)](https://coveralls.io/github/luispedro/mahotas?branch=master) [![License](https://img.shields.io/badge/License-MIT-blue)](http://opensource.org/licenses/MIT) [![Downloads](https://pepy.tech/badge/mahotas/month)](https://pepy.tech/project/mahotas/month) [![Install with Conda](https://anaconda.org/conda-forge/mahotas/badges/downloads.svg)](https://anaconda.org/conda-forge/mahotas) [![Install with Anaconda](https://anaconda.org/conda-forge/mahotas/badges/installer/conda.svg)](https://anaconda.org/conda-forge/mahotas) Python versions 2.7, 3.4+, are supported. Notable algorithms: - [watershed](http://mahotas.readthedocs.io/en/latest/distance.html) - [convex points calculations](http://mahotas.readthedocs.io/en/latest/polygon.html). - hit & miss, thinning. - Zernike & Haralick, LBP, and TAS features. - [Speeded-Up Robust Features (SURF)](http://mahotas.readthedocs.io/en/latest/surf.html), a form of local features. - [thresholding](http://mahotas.readthedocs.io/en/latest/thresholding.html). - convolution. - Sobel edge detection. - spline interpolation - SLIC super pixels. Mahotas currently has over 100 functions for image processing and computer vision and it keeps growing. The release schedule is roughly one release a month and each release brings new functionality and improved performance. The interface is very stable, though, and code written using a version of mahotas from years back will work just fine in the current version, except it will be faster (some interfaces are deprecated and will be removed after a few years, but in the meanwhile, you only get a warning). In a few unfortunate cases, there was a bug in the old code and your results will change for the better. Please cite [the mahotas paper](http://dx.doi.org/10.5334/jors.ac) (see details below under [Citation](#Citation)) if you use it in a publication. ## Examples This is a simple example (using an example file that is shipped with mahotas) of calling watershed using above threshold regions as a seed (we use Otsu to define threshold). # import using ``mh`` abbreviation which is common: import mahotas as mh # Load one of the demo images im = mh.demos.load('nuclear') # Automatically compute a threshold T_otsu = mh.thresholding.otsu(im) # Label the thresholded image (thresholding is done with numpy operations seeds,nr_regions = mh.label(im > T_otsu) # Call seeded watershed to expand the threshold labeled = mh.cwatershed(im.max() - im, seeds) Here is a very simple example of using `mahotas.distance` (which computes a distance map): import pylab as p import numpy as np import mahotas as mh f = np.ones((256,256), bool) f[200:,240:] = False f[128:144,32:48] = False # f is basically True with the exception of two islands: one in the lower-right # corner, another, middle-left dmap = mh.distance(f) p.imshow(dmap) p.show() (This is under [mahotas/demos/distance.py](https://github.com/luispedro/mahotas/blob/master/mahotas/demos/distance.py).) How to invoke thresholding functions: import mahotas as mh import numpy as np from pylab import imshow, gray, show, subplot from os import path # Load photo of mahotas' author in greyscale photo = mh.demos.load('luispedro', as_grey=True) # Convert to integer values (using numpy operations) photo = photo.astype(np.uint8) # Compute Otsu threshold T_otsu = mh.otsu(photo) thresholded_otsu = (photo > T_otsu) # Compute Riddler-Calvard threshold T_rc = mh.rc(photo) thresholded_rc = (photo > T_rc) # Now call pylab functions to display the image gray() subplot(2,1,1) imshow(thresholded_otsu) subplot(2,1,2) imshow(thresholded_rc) show() As you can see, we rely on numpy/matplotlib for many operations. ## Install If you are using [conda](http://anaconda.org/), you can install mahotas from [conda-forge](https://conda-forge.github.io/) using the following commands: conda config --add channels conda-forge conda install mahotas ### Compilation from source You will need python (naturally), numpy, and a C++ compiler. Then you should be able to use: pip install mahotas You can test your installation by running: python -c "import mahotas as mh; mh.test()" If you run into issues, the manual has more [extensive documentation on mahotas installation](https://mahotas.readthedocs.io/en/latest/install.html), including how to find pre-built for several platforms. ## Citation If you use mahotas on a published publication, please cite: > **Luis Pedro Coelho** Mahotas: Open source software for scriptable > computer vision in Journal of Open Research Software, vol 1, 2013. > [[DOI](http://dx.doi.org/10.5334/jors.ac)] In Bibtex format: > @article{mahotas, > author = {Luis Pedro Coelho}, > title = {Mahotas: Open source software for scriptable computer vision}, > journal = {Journal of Open Research Software}, > year = {2013}, > doi = {http://dx.doi.org/10.5334/jors.ac}, > month = {July}, > volume = {1} > } You can access this information using the `mahotas.citation()` function. ## Development Development happens on github ([http://github.com/luispedro/mahotas](https://github.com/luispedro/mahotas)). You can set the `DEBUG` environment variable before compilation to get a debug version: export DEBUG=1 python setup.py test You can set it to the value `2` to get extra checks: export DEBUG=2 python setup.py test Be careful not to use this in production unless you are chasing a bug. Debug level 2 is very slow as it adds many runtime checks. The `Makefile` that is shipped with the source of mahotas can be useful too. `make debug` will create a debug build. `make fast` will create a non-debug build (you need to `make clean` in between). `make test` will run the test suite. ## Links & Contacts *Documentation*: [https://mahotas.readthedocs.io/](https://mahotas.readthedocs.io/) *Issue Tracker*: [github mahotas issues](https://github.com/luispedro/mahotas/issues) *Mailing List*: Use the [pythonvision mailing list](http://groups.google.com/group/pythonvision?pli=1) for questions, bug submissions, etc. Or ask on [stackoverflow (tag mahotas)](http://stackoverflow.com/questions/tagged/mahotas) *Main Author & Maintainer*: [Luis Pedro Coelho](http://luispedro.org) (follow on [twitter](https://twitter.com/luispedrocoelho) or [github](https://github.com/luispedro)). Mahotas also includes code by Zachary Pincus [from scikits.image], Peter J. Verveer [from scipy.ndimage], and Davis King [from dlib], Christoph Gohlke, as well as [others](https://github.com/luispedro/mahotas/graphs/contributors). [Presentation about mahotas for bioimage informatics](http://luispedro.org/files/talks/2013/EuBIAS/mahotas.html) For more general discussion of computer vision in Python, the [pythonvision mailing list](http://groups.google.com/group/pythonvision?pli=1) is a much better venue and generates a public discussion log for others in the future. You can use it for mahotas or general computer vision in Python questions. ## Recent Changes ### Version 1.4.13 (Jun 28 2022) - Fix freeimage testing (and make freeimage loading more robust, see #129) - Add GIL fixed (which triggered crashes in newer NumPy versions) ### Version 1.4.12 (Oct 14 2021) - Update to newer NumPy - Build wheels for Python 3.9 & 3.10 ### Version 1.4.11 (Aug 16 2020) - Convert tests to pytest - Fix testing for PyPy ### Version 1.4.10 (Jun 11 2020) - Build wheels automatically (PR #114 by [nathanhillyer](https://github.com/nathanhillyer)) ### Version 1.4.9 (Nov 12 2019) - Fix FreeImage detection (issue #108) ### Version 1.4.8 (Oct 11 2019) - Fix co-occurrence matrix computation (patch by @databaaz) ### Version 1.4.7 (Jul 10 2019) - Fix compilation on Windows ### Version 1.4.6 (Jul 10 2019) - Make watershed work for >2³¹ voxels (issue #102) - Remove milk from demos - Improve performance by avoid unnecessary array copies in `cwatershed()`, `majority_filter()`, and color conversions - Fix bug in interpolation ### Version 1.4.5 (Oct 20 2018) - Upgrade code to newer NumPy API (issue #95) ### Version 1.4.4 (Nov 5 2017) - Fix bug in Bernsen thresholding (issue #84) ### Version 1.4.3 (Oct 3 2016) - Fix distribution (add missing `README.md` file) ### Version 1.4.2 (Oct 2 2016) - Fix `resize\_to` return exactly the requested size - Fix hard crash when computing texture on arrays with negative values (issue #72) - Added `distance` argument to haralick features (pull request #76, by Guillaume Lemaitre) ### Version 1.4.1 (Dec 20 2015) - Add `filter\_labeled` function - Fix tests on 32 bit platforms and older versions of numpy ### Version 1.4.0 (July 8 2015) - Added `mahotas-features.py` script - Add short argument to citation() function - Add max\_iter argument to thin() function - Fixed labeled.bbox when there is no background (issue \#61, reported by Daniel Haehn) - bbox now allows dimensions greater than 2 (including when using the `as_slice` and `border` arguments) - Extended croptobbox for dimensions greater than 2 - Added use\_x\_minus\_y\_variance option to haralick features - Add function `lbp_names` ### Version 1.3.0 (April 28 2015) - Improve memory handling in freeimage.write\_multipage - Fix moments parameter swap - Add labeled.bbox function - Add return\_mean and return\_mean\_ptp arguments to haralick function - Add difference of Gaussians filter (by Jianyu Wang) - Add Laplacian filter (by Jianyu Wang) - Fix crash in median\_filter when mismatched arguments are passed - Fix gaussian\_filter1d for ndim \> 2 ### Version 1.2.4 (December 23 2014) - Add PIL based IO ### Version 1.2.3 (November 8 2014) - Export mean\_filter at top level - Fix to Zernike moments computation (reported by Sergey Demurin) - Fix compilation in platforms without npy\_float128 (patch by Gabi Davar) ### Version 1.2.2 (October 19 2014) - Add minlength argument to labeled\_sum - Generalize regmax/regmin to work with floating point images - Allow floating point inputs to `cwatershed()` - Correctly check for float16 & float128 inputs - Make sobel into a pure function (i.e., do not normalize its input) - Fix sobel filtering ### Version 1.2.1 (July 21 2014) - Explicitly set numpy.include\_dirs() in setup.py [patch by Andrew Stromnov] ### Version 1.2 (July 17 2014) - Export locmax|locmin at the mahotas namespace level - Break away ellipse\_axes from eccentricity code as it can be useful on its own - Add `find()` function - Add `mean_filter()` function - Fix `cwatershed()` overflow possibility - Make labeled functions more flexible in accepting more types - Fix crash in `close_holes()` with nD images (for n \> 2) - Remove matplotlibwrap - Use standard setuptools for building (instead of numpy.distutils) - Add `overlay()` function ### Version 1.1.1 (July 4 2014) - Fix crash in close\_holes() with nD images (for n \> 2) ### 1.1.0 (February 12 2014) - Better error checking - Fix interpolation of integer images using order 1 - Add resize\_to & resize\_rgb\_to - Add coveralls coverage - Fix SLIC superpixels connectivity - Add remove\_regions\_where function - Fix hard crash in convolution - Fix axis handling in convolve1d - Add normalization to moments calculation See the [ChangeLog](https://github.com/luispedro/mahotas/blob/master/ChangeLog) for older version. ## License [![FOSSA Status](https://app.fossa.io/api/projects/git%2Bgithub.com%2Fluispedro%2Fmahotas.svg?type=large)](https://app.fossa.io/projects/git%2Bgithub.com%2Fluispedro%2Fmahotas?ref=badge_large) %prep %autosetup -n mahotas-1.4.13 %build %py3_build %install %py3_install install -d -m755 %{buildroot}/%{_pkgdocdir} if [ -d doc ]; then cp -arf doc %{buildroot}/%{_pkgdocdir}; fi if [ -d docs ]; then cp -arf docs %{buildroot}/%{_pkgdocdir}; fi if [ -d example ]; then cp -arf example %{buildroot}/%{_pkgdocdir}; fi if [ -d examples ]; then cp -arf examples %{buildroot}/%{_pkgdocdir}; fi pushd %{buildroot} if [ -d usr/lib ]; then find usr/lib -type f -printf "/%h/%f\n" >> filelist.lst fi if [ -d usr/lib64 ]; then find usr/lib64 -type f -printf "/%h/%f\n" >> filelist.lst fi if [ -d usr/bin ]; then find usr/bin -type f -printf "/%h/%f\n" >> filelist.lst fi if [ -d usr/sbin ]; then find usr/sbin -type f -printf "/%h/%f\n" >> filelist.lst fi touch doclist.lst if [ -d usr/share/man ]; then find usr/share/man -type f -printf "/%h/%f.gz\n" >> doclist.lst fi popd mv %{buildroot}/filelist.lst . mv %{buildroot}/doclist.lst . %files -n python3-mahotas -f filelist.lst %dir %{python3_sitearch}/* %files help -f doclist.lst %{_docdir}/* %changelog * Tue Apr 11 2023 Python_Bot - 1.4.13-1 - Package Spec generated