Source code for phenotypic.detect._otsu_detector
from __future__ import annotations
from typing import TYPE_CHECKING
if TYPE_CHECKING:
from phenotypic._core._image import Image
from skimage.filters import threshold_otsu
from skimage.segmentation import clear_border
from ..abc_ import ThresholdDetector
[docs]
class OtsuDetector(ThresholdDetector):
"""Detect colonies by minimising intra-class variance of the intensity histogram.
Automatically compute a single global threshold that separates colony
foreground from agar background by maximising the between-class intensity
variance. The resulting binary mask cleanly segments plates whose histograms
are bimodal. For a comparison of all available detection strategies see
:doc:`/explanation/detection_strategies_compared`.
Best For:
- Plates imaged under standardised lighting where the intensity
histogram shows two well-separated peaks.
- High-throughput screens with uniform agar colour and colony density.
- Clean plates with minimal dust, scratches, or condensation.
- Quick baseline detection requiring no parameter tuning.
Consider Also:
- :class:`TriangleDetector` when colonies occupy a small fraction of
the plate and the histogram is strongly skewed toward background.
- :class:`HysteresisDetector` when colony intensity varies across the
plate and a single threshold under-segments faint regions.
- :class:`WatershedDetector` when touching colonies must be split into
individually labelled objects.
Args:
ignore_zeros: Exclude zero-intensity pixels from the histogram before
computing the threshold. Enable for plates with black borders or
masked regions. Default: False.
ignore_borders: Remove colonies touching image edges via
``clear_border()``. Recommended for grid-based colony counting
to eliminate partial colonies at plate boundaries. Default: True.
Returns:
Image: Input image with ``objmask`` set to the binary colony mask and
``objmap`` set to labeled connected components.
Raises:
ValueError: If threshold computation fails due to a degenerate
histogram (e.g., all pixels share the same intensity value).
References:
[1] N. Otsu, "A threshold selection method from gray-level
histograms," *IEEE Trans. Syst., Man, Cybern.*, vol. 9, no. 1,
pp. 62--66, 1979.
See Also:
:doc:`/tutorials/notebooks/02_detecting_colonies` for a step-by-step
tutorial on basic colony detection.
:doc:`/how_to/notebooks/choose_detection_algorithm` for guidance on
selecting the right detector for your plate images.
:doc:`/explanation/detection_strategies_compared` for an in-depth
comparison of all thresholding strategies.
"""
ignore_zeros: bool = False
ignore_borders: bool = True
def _operate(self, image: Image) -> Image:
"""Binarizes the given image matrix using the Otsu threshold method.
This function modifies the arr image by applying a binary mask to
its enhanced matrix (`detect_mat`). The binarization threshold is
automatically determined using Otsu's method. The resulting binary
mask is stored in the image's `objmask` attribute.
Args:
image (Image): The arr image object. It must have an `detect_mat`
attribute, which is used as the basis for creating the binary mask.
Returns:
Image: The arr image object with its `objmask` attribute updated
to the computed binary mask other_image.
"""
enh_matrix = image.detect_mat[:]
nbins = 2 ** int(image.bit_depth)
mask = image.detect_mat[:] >= threshold_otsu(
enh_matrix[enh_matrix != 0] if self.ignore_zeros else enh_matrix,
nbins=nbins,
)
mask = clear_border(mask) if self.ignore_borders else mask
image.objmask = mask
return image
# Set the docstring so that it appears in the sphinx documentation
OtsuDetector.apply.__doc__ = OtsuDetector._operate.__doc__