NormalizedCrossCorrelationMetric#
- class kikuchipy.indexing.NormalizedCrossCorrelationMetric(n_experimental_patterns: int | None = None, n_dictionary_patterns: int | None = None, navigation_mask: ndarray | None = None, signal_mask: ndarray | None = None, dtype: str | dtype | type = 'float32', rechunk: bool = False)[source]#
Bases:
SimilarityMetricSimilarity metric implementing the normalized cross-correlation, or Pearson Correlation Coefficient [Gonzalez and Woods, 2017].
The metric is defined as
\[r = \frac {\sum^n_{i=1}(x_i - \bar{x})(y_i - \bar{y})} { \sqrt{\sum ^n _{i=1}(x_i - \bar{x})^2} \sqrt{\sum ^n _{i=1}(y_i - \bar{y})^2} },\]where experimental patterns \(x\) and simulated patterns \(y\) are centered by subtracting out the mean of each pattern, and the sum of cross-products of the centered patterns is accumulated. The denominator adjusts the scales of the patterns to have equal units.
Equivalent results are obtained with
dask.array.tensordot()withaxes=([2, 3], [1, 2]))for 4D and 3D experimental and simulated data sets, respectively.See
SimilarityMetricfor the description of the initialization parameters and the list of attributes.Attributes
Methods