316 lines
11 KiB
Python
316 lines
11 KiB
Python
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"""
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Adapted code from "Contrast Limited Adaptive Histogram Equalization" by Karel
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Zuiderveld <karel@cv.ruu.nl>, Graphics Gems IV, Academic Press, 1994.
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http://tog.acm.org/resources/GraphicsGems/
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The Graphics Gems code is copyright-protected. In other words, you cannot
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claim the text of the code as your own and resell it. Using the code is
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permitted in any program, product, or library, non-commercial or commercial.
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Giving credit is not required, though is a nice gesture. The code comes as-is,
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and if there are any flaws or problems with any Gems code, nobody involved with
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Gems - authors, editors, publishers, or webmasters - are to be held
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responsible. Basically, don't be a jerk, and remember that anything free
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comes with no guarantee.
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"""
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import numbers
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import numpy as np
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from ..util import img_as_float, img_as_uint
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from ..color.adapt_rgb import adapt_rgb, hsv_value
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from ..exposure import rescale_intensity
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NR_OF_GRAY = 2 ** 14 # number of grayscale levels to use in CLAHE algorithm
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@adapt_rgb(hsv_value)
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def equalize_adapthist(image, kernel_size=None,
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clip_limit=0.01, nbins=256):
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"""Contrast Limited Adaptive Histogram Equalization (CLAHE).
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An algorithm for local contrast enhancement, that uses histograms computed
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over different tile regions of the image. Local details can therefore be
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enhanced even in regions that are darker or lighter than most of the image.
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Parameters
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----------
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image : (N1, ...,NN[, C]) ndarray
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Input image.
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kernel_size: int or array_like, optional
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Defines the shape of contextual regions used in the algorithm. If
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iterable is passed, it must have the same number of elements as
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``image.ndim`` (without color channel). If integer, it is broadcasted
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to each `image` dimension. By default, ``kernel_size`` is 1/8 of
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``image`` height by 1/8 of its width.
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clip_limit : float, optional
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Clipping limit, normalized between 0 and 1 (higher values give more
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contrast).
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nbins : int, optional
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Number of gray bins for histogram ("data range").
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Returns
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-------
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out : (N1, ...,NN[, C]) ndarray
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Equalized image with float64 dtype.
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See Also
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--------
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equalize_hist, rescale_intensity
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Notes
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-----
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* For color images, the following steps are performed:
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- The image is converted to HSV color space
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- The CLAHE algorithm is run on the V (Value) channel
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- The image is converted back to RGB space and returned
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* For RGBA images, the original alpha channel is removed.
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.. versionchanged:: 0.17
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The values returned by this function are slightly shifted upwards
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because of an internal change in rounding behavior.
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References
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----------
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.. [1] http://tog.acm.org/resources/GraphicsGems/
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.. [2] https://en.wikipedia.org/wiki/CLAHE#CLAHE
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"""
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image = img_as_uint(image)
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image = np.round(
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rescale_intensity(image, out_range=(0, NR_OF_GRAY - 1))
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).astype(np.uint16)
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if kernel_size is None:
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kernel_size = tuple([image.shape[dim] // 8
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for dim in range(image.ndim)])
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elif isinstance(kernel_size, numbers.Number):
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kernel_size = (kernel_size,) * image.ndim
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elif len(kernel_size) != image.ndim:
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ValueError('Incorrect value of `kernel_size`: {}'.format(kernel_size))
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kernel_size = [int(k) for k in kernel_size]
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image = _clahe(image, kernel_size, clip_limit, nbins)
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image = img_as_float(image)
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return rescale_intensity(image)
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def _clahe(image, kernel_size, clip_limit, nbins):
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"""Contrast Limited Adaptive Histogram Equalization.
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Parameters
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----------
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image : (N1,...,NN) ndarray
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Input image.
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kernel_size: int or N-tuple of int
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Defines the shape of contextual regions used in the algorithm.
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clip_limit : float
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Normalized clipping limit between 0 and 1 (higher values give more
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contrast).
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nbins : int
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Number of gray bins for histogram ("data range").
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Returns
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-------
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out : (N1,...,NN) ndarray
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Equalized image.
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The number of "effective" graylevels in the output image is set by `nbins`;
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selecting a small value (e.g. 128) speeds up processing and still produces
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an output image of good quality. A clip limit of 0 or larger than or equal
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to 1 results in standard (non-contrast limited) AHE.
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"""
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ndim = image.ndim
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dtype = image.dtype
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# pad the image such that the shape in each dimension
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# - is a multiple of the kernel_size and
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# - is preceded by half a kernel size
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pad_start_per_dim = [k // 2 for k in kernel_size]
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pad_end_per_dim = [(k - s % k) % k + int(np.ceil(k / 2.))
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for k, s in zip(kernel_size, image.shape)]
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image = np.pad(image, [[p_i, p_f] for p_i, p_f in
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zip(pad_start_per_dim, pad_end_per_dim)],
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mode='reflect')
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# determine gray value bins
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bin_size = 1 + NR_OF_GRAY // nbins
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lut = np.arange(NR_OF_GRAY)
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lut //= bin_size
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image = lut[image]
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# calculate graylevel mappings for each contextual region
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# rearrange image into flattened contextual regions
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ns_hist = [int(s / k) - 1 for s, k in zip(image.shape, kernel_size)]
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hist_blocks_shape = np.array([ns_hist, kernel_size]).T.flatten()
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hist_blocks_axis_order = np.array([np.arange(0, ndim * 2, 2),
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np.arange(1, ndim * 2, 2)]).flatten()
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hist_slices = [slice(k // 2, k // 2 + n * k)
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for k, n in zip(kernel_size, ns_hist)]
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hist_blocks = image[tuple(hist_slices)].reshape(hist_blocks_shape)
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hist_blocks = np.transpose(hist_blocks, axes=hist_blocks_axis_order)
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hist_block_assembled_shape = hist_blocks.shape
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hist_blocks = hist_blocks.reshape((np.product(ns_hist), -1))
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# Calculate actual clip limit
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if clip_limit > 0.0:
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clim = int(np.clip(clip_limit * np.product(kernel_size), 1, None))
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else:
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# largest possible value, i.e., do not clip (AHE)
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clim = np.product(kernel_size)
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hist = np.apply_along_axis(np.bincount, -1, hist_blocks, minlength=nbins)
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hist = np.apply_along_axis(clip_histogram, -1, hist, clip_limit=clim)
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hist = map_histogram(hist, 0, NR_OF_GRAY - 1, np.product(kernel_size))
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hist = hist.reshape(hist_block_assembled_shape[:ndim] + (-1,))
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# duplicate leading mappings in each dim
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map_array = np.pad(hist,
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[[1, 1] for _ in range(ndim)] + [[0, 0]],
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mode='edge')
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# Perform multilinear interpolation of graylevel mappings
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# using the convention described here:
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# https://en.wikipedia.org/w/index.php?title=Adaptive_histogram_
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# equalization&oldid=936814673#Efficient_computation_by_interpolation
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# rearrange image into blocks for vectorized processing
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ns_proc = [int(s / k) for s, k in zip(image.shape, kernel_size)]
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blocks_shape = np.array([ns_proc, kernel_size]).T.flatten()
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blocks_axis_order = np.array([np.arange(0, ndim * 2, 2),
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np.arange(1, ndim * 2, 2)]).flatten()
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blocks = image.reshape(blocks_shape)
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blocks = np.transpose(blocks, axes=blocks_axis_order)
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blocks_flattened_shape = blocks.shape
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blocks = np.reshape(blocks, (np.product(ns_proc),
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np.product(blocks.shape[ndim:])))
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# calculate interpolation coefficients
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coeffs = np.meshgrid(*tuple([np.arange(k) / k
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for k in kernel_size[::-1]]), indexing='ij')
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coeffs = [np.transpose(c).flatten() for c in coeffs]
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inv_coeffs = [1 - c for dim, c in enumerate(coeffs)]
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# sum over contributions of neighboring contextual
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# regions in each direction
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result = np.zeros(blocks.shape, dtype=np.float32)
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for iedge, edge in enumerate(np.ndindex(*([2] * ndim))):
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edge_maps = map_array[tuple([slice(e, e + n)
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for e, n in zip(edge, ns_proc)])]
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edge_maps = edge_maps.reshape((np.product(ns_proc), -1))
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# apply map
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edge_mapped = np.take_along_axis(edge_maps, blocks, axis=-1)
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# interpolate
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edge_coeffs = np.product([[inv_coeffs, coeffs][e][d]
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for d, e in enumerate(edge[::-1])], 0)
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result += (edge_mapped * edge_coeffs).astype(result.dtype)
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result = result.astype(dtype)
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# rebuild result image from blocks
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result = result.reshape(blocks_flattened_shape)
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blocks_axis_rebuild_order =\
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np.array([np.arange(0, ndim),
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np.arange(ndim, ndim * 2)]).T.flatten()
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result = np.transpose(result, axes=blocks_axis_rebuild_order)
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result = result.reshape(image.shape)
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# undo padding
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unpad_slices = tuple([slice(p_i, s - p_f) for p_i, p_f, s in
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zip(pad_start_per_dim, pad_end_per_dim,
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image.shape)])
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result = result[unpad_slices]
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return result
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def clip_histogram(hist, clip_limit):
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"""Perform clipping of the histogram and redistribution of bins.
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The histogram is clipped and the number of excess pixels is counted.
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Afterwards the excess pixels are equally redistributed across the
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whole histogram (providing the bin count is smaller than the cliplimit).
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Parameters
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----------
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hist : ndarray
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Histogram array.
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clip_limit : int
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Maximum allowed bin count.
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Returns
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-------
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hist : ndarray
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Clipped histogram.
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"""
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# calculate total number of excess pixels
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excess_mask = hist > clip_limit
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excess = hist[excess_mask]
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n_excess = excess.sum() - excess.size * clip_limit
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hist[excess_mask] = clip_limit
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# Second part: clip histogram and redistribute excess pixels in each bin
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bin_incr = n_excess // hist.size # average binincrement
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upper = clip_limit - bin_incr # Bins larger than upper set to cliplimit
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low_mask = hist < upper
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n_excess -= hist[low_mask].size * bin_incr
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hist[low_mask] += bin_incr
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mid_mask = np.logical_and(hist >= upper, hist < clip_limit)
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mid = hist[mid_mask]
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n_excess += mid.sum() - mid.size * clip_limit
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hist[mid_mask] = clip_limit
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while n_excess > 0: # Redistribute remaining excess
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prev_n_excess = n_excess
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for index in range(hist.size):
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under_mask = hist < clip_limit
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step_size = max(1, np.count_nonzero(under_mask) // n_excess)
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under_mask = under_mask[index::step_size]
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hist[index::step_size][under_mask] += 1
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n_excess -= np.count_nonzero(under_mask)
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if n_excess <= 0:
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break
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if prev_n_excess == n_excess:
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break
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return hist
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def map_histogram(hist, min_val, max_val, n_pixels):
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"""Calculate the equalized lookup table (mapping).
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It does so by cumulating the input histogram.
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Histogram bins are assumed to be represented by the last array dimension.
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Parameters
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----------
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hist : ndarray
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Clipped histogram.
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min_val : int
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Minimum value for mapping.
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max_val : int
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Maximum value for mapping.
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n_pixels : int
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Number of pixels in the region.
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Returns
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-------
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out : ndarray
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Mapped intensity LUT.
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"""
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out = np.cumsum(hist, axis=-1).astype(float)
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out *= (max_val - min_val) / n_pixels
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out += min_val
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np.clip(out, a_min=None, a_max=max_val, out=out)
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return out.astype(int)
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