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| | from __future__ import annotations
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| |
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| | import math
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| | from functools import cached_property
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| |
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| | from . import Image
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| |
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| |
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| | class Stat:
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| | def __init__(
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| | self, image_or_list: Image.Image | list[int], mask: Image.Image | None = None
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| | ) -> None:
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| | """
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| | Calculate statistics for the given image. If a mask is included,
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| | only the regions covered by that mask are included in the
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| | statistics. You can also pass in a previously calculated histogram.
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| |
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| | :param image: A PIL image, or a precalculated histogram.
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| |
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| | .. note::
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| |
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| | For a PIL image, calculations rely on the
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| | :py:meth:`~PIL.Image.Image.histogram` method. The pixel counts are
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| | grouped into 256 bins, even if the image has more than 8 bits per
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| | channel. So ``I`` and ``F`` mode images have a maximum ``mean``,
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| | ``median`` and ``rms`` of 255, and cannot have an ``extrema`` maximum
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| | of more than 255.
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| |
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| | :param mask: An optional mask.
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| | """
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| | if isinstance(image_or_list, Image.Image):
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| | self.h = image_or_list.histogram(mask)
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| | elif isinstance(image_or_list, list):
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| | self.h = image_or_list
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| | else:
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| | msg = "first argument must be image or list"
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| | raise TypeError(msg)
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| | self.bands = list(range(len(self.h) // 256))
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| |
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| | @cached_property
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| | def extrema(self) -> list[tuple[int, int]]:
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| | """
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| | Min/max values for each band in the image.
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| |
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| | .. note::
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| | This relies on the :py:meth:`~PIL.Image.Image.histogram` method, and
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| | simply returns the low and high bins used. This is correct for
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| | images with 8 bits per channel, but fails for other modes such as
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| | ``I`` or ``F``. Instead, use :py:meth:`~PIL.Image.Image.getextrema` to
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| | return per-band extrema for the image. This is more correct and
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| | efficient because, for non-8-bit modes, the histogram method uses
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| | :py:meth:`~PIL.Image.Image.getextrema` to determine the bins used.
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| | """
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| |
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| | def minmax(histogram: list[int]) -> tuple[int, int]:
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| | res_min, res_max = 255, 0
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| | for i in range(256):
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| | if histogram[i]:
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| | res_min = i
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| | break
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| | for i in range(255, -1, -1):
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| | if histogram[i]:
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| | res_max = i
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| | break
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| | return res_min, res_max
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| |
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| | return [minmax(self.h[i:]) for i in range(0, len(self.h), 256)]
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| |
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| | @cached_property
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| | def count(self) -> list[int]:
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| | """Total number of pixels for each band in the image."""
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| | return [sum(self.h[i : i + 256]) for i in range(0, len(self.h), 256)]
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| |
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| | @cached_property
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| | def sum(self) -> list[float]:
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| | """Sum of all pixels for each band in the image."""
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| |
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| | v = []
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| | for i in range(0, len(self.h), 256):
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| | layer_sum = 0.0
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| | for j in range(256):
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| | layer_sum += j * self.h[i + j]
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| | v.append(layer_sum)
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| | return v
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| |
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| | @cached_property
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| | def sum2(self) -> list[float]:
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| | """Squared sum of all pixels for each band in the image."""
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| |
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| | v = []
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| | for i in range(0, len(self.h), 256):
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| | sum2 = 0.0
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| | for j in range(256):
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| | sum2 += (j**2) * float(self.h[i + j])
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| | v.append(sum2)
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| | return v
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| |
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| | @cached_property
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| | def mean(self) -> list[float]:
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| | """Average (arithmetic mean) pixel level for each band in the image."""
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| | return [self.sum[i] / self.count[i] for i in self.bands]
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| |
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| | @cached_property
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| | def median(self) -> list[int]:
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| | """Median pixel level for each band in the image."""
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| |
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| | v = []
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| | for i in self.bands:
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| | s = 0
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| | half = self.count[i] // 2
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| | b = i * 256
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| | for j in range(256):
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| | s = s + self.h[b + j]
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| | if s > half:
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| | break
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| | v.append(j)
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| | return v
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| |
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| | @cached_property
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| | def rms(self) -> list[float]:
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| | """RMS (root-mean-square) for each band in the image."""
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| | return [math.sqrt(self.sum2[i] / self.count[i]) for i in self.bands]
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| |
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| | @cached_property
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| | def var(self) -> list[float]:
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| | """Variance for each band in the image."""
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| | return [
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| | (self.sum2[i] - (self.sum[i] ** 2.0) / self.count[i]) / self.count[i]
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| | for i in self.bands
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| | ]
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| |
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| | @cached_property
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| | def stddev(self) -> list[float]:
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| | """Standard deviation for each band in the image."""
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| | return [math.sqrt(self.var[i]) for i in self.bands]
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| |
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| |
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| | Global = Stat
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| |
|