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Changelog

kikuchipy is an open-source Python library for processing and analysis of electron backscatter diffraction patterns: https://kikuchipy.org.

All notable changes to this project will be documented in this file. The format is based on Keep a Changelog, and this project adheres to Semantic Versioning.

Contributors to each release are listed in alphabetical order.

0.2.2 (2020-05-24)

This is a patch release that fixes reading of EBSD data sets from h5ebsd files with arbitrary scan group names.

Contributors

  • Håkon Wiik Ånes

Fixed

  • Allow reading of EBSD patterns from h5ebsd files with arbitrary scan group names, not just "Scan 1", "Scan 2", etc., like was the case before. (#188)

0.2.1 (2020-05-20)

This is a patch release that enables installing kikuchipy 0.2 from Anaconda and not just PyPI.

Contributors

  • Håkon Wiik Ånes

Changed

  • Use numpy.fft instead of scipy.fft because HyperSpy requires scipy < 1.4 on conda-forge, while scipy.fft was introduced in scipy 1.4. (#180)

Fixed

  • With the change above, kikuchipy 0.2 should be installable from Anaconda and not just PyPI. (#180)

0.2.0 (2020-05-19)

Details of all development associated with this release are available here.

Contributors

  • Håkon Wiik Ånes
  • Tina Bergh

Added

  • Jupyter Notebooks with tutorials and example workflows available via https://github.com/kikuchipy/kikuchipy-demos.
  • Grey scale and RGB virtual backscatter electron (BSE) images can be easily generated with the VirtualBSEGenerator class. The generator return objects of the new signal class VirtualBSEImage, which inherit functionality from HyperSpy's Signal2D class. (#170)
  • EBSD master pattern class and reader of master patterns from EMsoft's EBSD master pattern file. (#159)
  • Python 3.8 support. (#157)
  • The public API has been restructured. The pattern processing used by the EBSD class is available in the kikuchipy.pattern subpackage, and filters/kernels used in frequency domain filtering and pattern averaging are available in the kikuchipy.filters subpackage. (#169)
  • Intensity normalization of scan or single patterns. (#157)
  • Fast Fourier Transform (FFT) filtering of scan or single patterns using SciPy's fft routines and Connelly Barnes' filterfft. (#157)
  • Numba dependency to improve pattern rescaling and normalization. (#157)
  • Computing of the dynamic background in the spatial or frequency domain for scan or single patterns. (#157)
  • Image quality (IQ) computation for scan or single patterns based on N. C. K. Lassen's definition. (#157)
  • Averaging of patterns with nearest neighbours with an arbitrary kernel, e.g. rectangular or Gaussian. (#134)
  • Window/kernel/filter/mask class to handle such things, e.g. for pattern averaging or filtering in the frequency or spatial domain. Available in the kikuchipy.filters module. (#134, #157)

Changed

  • Renamed five EBSD methods: static_background_correction to remove_static_background, dynamic_background_correction to remove_dynamic_background, rescale_intensities to rescale_intensity, virtual_backscatter_electron_imaging to plot_virtual_bse_intensity, and get_virtual_image to get_virtual_bse_intensity. (#157, #170)
  • Renamed kikuchipy_metadata to ebsd_metadata. (#169)
  • Source code link in the documentation should point to proper GitHub line. This linkcode_resolve in the conf.py file is taken from SciPy. (#157)
  • Read the Docs CSS style. (#157)
  • New logo with a gradient from experimental to simulated pattern (with EMsoft), with a color gradient from the plasma color maps. (#157)
  • Dynamic background correction can be done faster due to Gaussian blurring in the frequency domain to get the dynamic background to remove. (#157)

Removed

  • Explicit dependency on scikit-learn (it is imported via HyperSpy). (#168)
  • Dependency on pyxem. Parts of their virtual imaging methods are adapted here---a big thank you to the pyxem/HyperSpy team! (#168)

Fixed

  • RtD builds documentation with Python 3.8 (fixed problem of missing .egg leading build to fail). (#158)

0.1.3 (2020-05-11)

kikuchipy is an open-source Python library for processing and analysis of electron backscatter diffraction patterns: https://kikuchipy.org.

This is a patch release. It is anticipated to be the final release in the 0.1.x series.

Added

Fixed

  • Static and dynamic background corrections are done at float 32-bit precision, and not integer 16-bit.
  • Chunking of static background pattern.
  • Chunking of patterns in the h5ebsd reader.

0.1.2 (2020-01-09)

kikuchipy is an open-source Python library for processing and analysis of electron backscatter diffraction patterns: https://kikuchipy.org.

This is a bug-fix release that ensures, unlike the previous bug-fix release, that necessary files are downloaded when installing from PyPI.

0.1.1 (2020-01-04)

This is a bug fix release that ensures that necessary files are uploaded to PyPI.

0.1.0 (2020-01-04)

We're happy to announce the release of kikuchipy v0.1.0!

kikuchipy is an open-source Python library for processing and analysis of electron backscatter diffraction (EBSD) patterns. The library builds upon the tools for multi-dimensional data analysis provided by the HyperSpy library.

For more information, a user guide, and the full reference API documentation, please visit: https://kikuchipy.org.

This is the initial pre-release, where things start to get serious... seriously fun!

Features

  • Load EBSD patterns and metadata from the NORDIF binary format (.dat), or Bruker Nano's or EDAX TSL's h5ebsd formats (.h5) into an EBSD object, e.g. s, based upon HyperSpy's Signal2D class, using s = kp.load(). This ensures easy access to patterns and metadata in the attributes s.data and s.metadata, respectively.
  • Save EBSD patterns to the NORDIF binary format (.dat) and our own h5ebsd format (.h5), using s.save(). Both formats are readable by EMsoft's NORDIF and EMEBSD readers, respectively.
  • All functionality in kikuchipy can be performed both directly and lazily (except some multivariate analysis algorithms). The latter means that all operations on a scan, including plotting, can be done by loading only necessary parts of the scan into memory at a time. Ultimately, this lets us operate on scans larger than memory using all of our cores.
  • Visualize patterns easily with HyperSpy's powerful and versatile s.plot(). Any image of the same navigation size, e.g. a virtual backscatter electron image, quality map, phase map, or orientation map, can be used to navigate in. Multiple scans of the same size, e.g. a scan of experimental patterns and the best matching simulated patterns to that scan, can be plotted simultaneously with HyperSpy's plot_signals().
  • Virtual backscatter electron (VBSE) imaging is easily performed with s.virtual_backscatter_electron_imaging() based upon similar functionality in pyXem. Arbitrary regions of interests can be used, and the corresponding VBSE image can be inspected interactively. Finally, the VBSE image can be obtained in a new EBSD object with vbse = s.get_virtual_image(), before writing the data to an image file in your desired format with matplotlib's imsave('filename.png', vbse.data).
  • Change scan and pattern size, e.g. by cropping on the detector or extracting a region of interest, by using s.isig or s.inav, respectively. Patterns can be binned (upscaled or downscaled) using s.rebin. These methods are provided by HyperSpy.
  • Perform static and dynamic background correction by subtraction or division with s.static_background_correction() and s.dynamic_background_correction(). For the former correction, relative intensities between patterns can be kept if desired.
  • Perform adaptive histogram equalization by setting an appropriate contextual region (kernel size) with s.adaptive_histogram_equalization().
  • Rescale pattern intensities to desired data type and range using s.rescale_intensities().
  • Multivariate statistical analysis, like principal component analysis and many other decomposition algorithms, can be easily performed with s.decomposition(), provided by HyperSpy.
  • Since the EBSD class is based upon HyperSpy's Signal2D class, which itself is based upon their BaseSignal class, all functionality available to Signal2D is also available to the EBSD class. See HyperSpy's user guide (http://hyperspy.org/hyperspy-doc/current/user_guide/tools.html) for details.

Contributors

  • Håkon Wiik Ånes
  • Tina Bergh