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https://github.com/13hannes11/situr.git
synced 2024-09-03 20:50:58 +02:00
refactor: move peak_finder to registration
This commit is contained in:
@@ -1,3 +1,3 @@
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from .situ_image import extend_dim, remove_dim
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from .situ_image import SituImage, PeakFinderDifferenceOfGaussian
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from .situ_image import SituImage
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from .situ_tile import Tile
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@@ -1,10 +1,6 @@
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import abc
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from situr.transformation.transformation import Transform
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import numpy as np
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from PIL import Image, ImageDraw
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from skimage import img_as_float
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from skimage.feature import blob_dog
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from PIL import Image
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from typing import List
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from situr.transformation import Transform, IdentityTransform
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@@ -18,32 +14,6 @@ def extend_dim(array: np.ndarray):
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def remove_dim(array: np.ndarray):
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return array[:, :-1]
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# TODO: move peak finder out of image and reverse relationship (peakfinder know about image not the other way around)
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class PeakFinder:
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__metaclass__ = abc.ABCMeta
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@abc.abstractmethod
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def find_peaks(self, img_array: np.ndarray) -> np.ndarray:
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"""Finds the peaks in the input image"""
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raise NotImplementedError(
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self.__class__.__name__ + '.find_peaks')
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class PeakFinderDifferenceOfGaussian(PeakFinder):
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def __init__(self, min_sigma=0.75, max_sigma=3, threshold=0.1):
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self.min_sigma = min_sigma
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self.max_sigma = max_sigma
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self.threshold = threshold
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def find_peaks(self, img_array: np.ndarray) -> np.ndarray:
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img = img_as_float(img_array)
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peaks = blob_dog(img, min_sigma=self.min_sigma,
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max_sigma=self.max_sigma, threshold=self.threshold)
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# Swap x and y
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peaks = peaks[:, [0, 1]] = peaks[:, [1, 0]]
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return peaks
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class SituImage:
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"""
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@@ -62,14 +32,13 @@ class SituImage:
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peak_finder :
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"""
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def __init__(self, file_list: List[List[str]], nucleaus_channel: int = 4, peak_finder: PeakFinder = PeakFinderDifferenceOfGaussian()):
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def __init__(self, file_list: List[List[str]], nucleaus_channel: int = 4):
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self.files = file_list
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self.data = None
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self.nucleaus_channel = nucleaus_channel
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self.channel_transformations = [
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IdentityTransform() for file in file_list
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]
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self.peak_finder = peak_finder
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def get_data(self) -> np.ndarray:
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if self.data is None:
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@@ -136,58 +105,19 @@ class SituImage:
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"""
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self.data = None
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def show_channel(self, channel: int, focus_level: int = 0) -> Image:
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def show_channel(self, channel: int, focus_level: int = 0, img_show=True) -> Image:
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"""Prints and returns the specified channel and focus_level of the image.
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Args:
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channel (int): The channel that should be used when printing
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focus_level (int, optional): The focus level that should be used. Defaults to 0.
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img_show (bool, optional): Specifies if img.show is to be called or if just the image should be returned. Defaults to True.
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Returns:
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Image: The image of the specified focus level and channel
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"""
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img = Image.fromarray(
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self.get_data()[channel, focus_level, :, :].astype(np.uint8))
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img.show()
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return img
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def get_channel_peaks(self, channel: int, focus_level: int = 0) -> np.ndarray:
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"""Returns the coordinates of peaks (local maxima) in the specified channel and focus_level. It uses the self.
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Args:
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channel (int): The channel that should be used when printing
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focus_level (int, optional): The focus level that should be used. Defaults to 0.
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Returns:
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np.ndarray: The peaks found by this method as np.array of shape (n, 2)
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"""
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return self.peak_finder.find_peaks(self.get_data()[channel, focus_level, :, :])
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def show_channel_peaks(self, channel: int, focus_level: int = 0) -> Image:
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"""Returns and shows the found peaks drawn onto the image. Uses get_channel_peaks internally.
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Args:
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channel (int): The channel that should be used when printing
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focus_level (int, optional): The focus level that should be used. Defaults to 0.
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Returns:
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Image: The image of the specified focus level and channel with encircled peaks.
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"""
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peaks = self.get_channel_peaks(
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channel, focus_level)
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img = Image.fromarray(
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self.get_data()[channel, focus_level, :, :].astype(np.uint8)).convert('RGB')
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draw = ImageDraw.Draw(img)
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width = 3
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inner_radius = 5
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outer_radius = inner_radius + width
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for x, y in zip(peaks[:, 0], peaks[:, 1]):
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draw.ellipse((x - inner_radius, y - inner_radius, x + inner_radius, y + inner_radius),
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outline='navy', width=width)
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draw.ellipse((x - outer_radius, y - outer_radius, x + outer_radius, y + outer_radius),
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outline='yellow', width=width)
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img.show()
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if img_show:
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img.show()
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return img
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@@ -2,3 +2,4 @@ from .registration import Registration, RegistrationFunction, FilterregRegistrat
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from .channel_registration import ChannelRegistration
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from .round_registration import RoundRegistration
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from .tile_registration import CombinedRegistration
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from .peak_finder import PeakFinder, PeakFinderDifferenceOfGaussian
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@@ -1,23 +1,19 @@
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from situr.registration.peak_finder import PeakFinder, PeakFinderDifferenceOfGaussian
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from situr.image.situ_image import SituImage
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from situr.registration import Registration, RegistrationFunction, FilterregRegistrationFunction
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class ChannelRegistration(Registration):
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def __init__(self, registration_function: RegistrationFunction = FilterregRegistrationFunction()):
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"""Initialize channel registration and tell which registration function to use.
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Args:
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registration_function (RegistrationFunction, optional): Registration function. Defaults to FilterregRegistrationFunction(ScaleRotateTranslateChannelTransform).
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"""
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super().__init__(registration_function)
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def do_channel_registration(self, situ_img: SituImage, reference_channel: int = 0):
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# For each channel (except nucleus) compute transform compared to reference_channel
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# Add Channel transformation to Channel
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reference_peaks = situ_img.get_channel_peaks(reference_channel)
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reference_peaks = self.peak_finder.get_channel_peaks(
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situ_img, reference_channel)
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for channel in range(situ_img.get_channel_count()):
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if channel != situ_img.nucleaus_channel and channel != reference_channel:
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current_channel_peaks = situ_img.get_channel_peaks(channel)
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current_channel_peaks = self.peak_finder.get_channel_peaks(
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situ_img, channel)
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transformation = self.registration_function.do_registration(
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current_channel_peaks, reference_peaks)
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situ_img.set_channel_transformation(channel, transformation)
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77
situr/registration/peak_finder.py
Normal file
77
situr/registration/peak_finder.py
Normal file
@@ -0,0 +1,77 @@
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import abc
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from PIL import Image, ImageDraw
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from skimage import img_as_float
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from skimage.feature import blob_dog
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import numpy as np
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from situr.image.situ_image import SituImage
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class PeakFinder:
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__metaclass__ = abc.ABCMeta
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@abc.abstractmethod
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def find_peaks(self, img_array: np.ndarray) -> np.ndarray:
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"""Finds the peaks in the input image"""
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raise NotImplementedError(
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self.__class__.__name__ + '.find_peaks')
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def get_channel_peaks(self, img: SituImage, channel: int, focus_level: int = 0) -> np.ndarray:
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"""Returns the coordinates of peaks (local maxima) in the specified channel and focus_level. It uses the self.
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Args:
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img (SituImage): The image to find the peaks on.
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channel (int): The channel that should be used when printing
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focus_level (int, optional): The focus level that should be used. Defaults to 0.
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Returns:
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np.ndarray: np.ndarray: The peaks found by this method as np.array of shape (n, 2)
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"""
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return self.find_peaks(img.get_data()[channel, focus_level, :, :])
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def show_channel_peaks(self, img: SituImage, channel: int, focus_level: int = 0, img_show=True) -> Image:
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"""Returns and shows the found peaks drawn onto the image. Uses get_channel_peaks internally.
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Args:
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img (SituImage): The image to find the peaks on.
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channel (int): The channel that should be used when printing
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focus_level (int, optional): The focus level that should be used. Defaults to 0.
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img_show (bool, optional): Specifies if img.show is to be called or if just the image should be returned. Defaults to True.
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Returns:
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Image: The image of the specified focus level and channel with encircled peaks.
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"""
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peaks = self.get_channel_peaks(img, channel, focus_level)
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img = img.show_channel(
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channel, focus_level=focus_level, img_show=False).convert('RGB')
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draw = ImageDraw.Draw(img)
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width = 3
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inner_radius = 5
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outer_radius = inner_radius + width
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for x, y in zip(peaks[:, 0], peaks[:, 1]):
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draw.ellipse((x - inner_radius, y - inner_radius, x + inner_radius, y + inner_radius),
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outline='navy', width=width)
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draw.ellipse((x - outer_radius, y - outer_radius, x + outer_radius, y + outer_radius),
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outline='yellow', width=width)
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if img_show:
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img.show()
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return img
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class PeakFinderDifferenceOfGaussian(PeakFinder):
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def __init__(self, min_sigma=0.75, max_sigma=3, threshold=0.1):
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self.min_sigma = min_sigma
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self.max_sigma = max_sigma
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self.threshold = threshold
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def find_peaks(self, img_array: np.ndarray) -> np.ndarray:
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img = img_as_float(img_array)
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peaks = blob_dog(img, min_sigma=self.min_sigma,
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max_sigma=self.max_sigma, threshold=self.threshold)
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# Swap x and y
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peaks = peaks[:, [0, 1]] = peaks[:, [1, 0]]
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return peaks
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@@ -1,4 +1,5 @@
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import abc
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from situr.registration.peak_finder import PeakFinderDifferenceOfGaussian
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import open3d as o3
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from probreg import filterreg
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import numpy as np
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@@ -31,5 +32,12 @@ class FilterregRegistrationFunction(RegistrationFunction):
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class Registration:
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__metaclass__ = abc.ABCMeta
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def __init__(self, registration_function: RegistrationFunction):
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def __init__(self, registration_function: RegistrationFunction() = FilterregRegistrationFunction(), peak_finder=PeakFinderDifferenceOfGaussian()):
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"""Initialize channel registration and tell which registration function to use.
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Args:
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registration_function (RegistrationFunction, optional): Registration function. Defaults to FilterregRegistrationFunction(ScaleRotateTranslateChannelTransform).
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peak_finder (PeakFinder, optional): The peak finder to be used for the registration. Defaults to PeakFinderDifferenceOfGaussian().
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"""
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self.registration_function = registration_function
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self.peak_finder = peak_finder
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@@ -2,13 +2,6 @@ from situr.registration import Registration, RegistrationFunction, FilterregRegi
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class RoundRegistration(Registration):
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def __init__(self, registration_function: RegistrationFunction = FilterregRegistrationFunction()):
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"""Initialize round registration and tell which registration function to use.
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Args:
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registration_function (RegistrationFunction[RoundTransform], optional): Registration function. Defaults to FilterregRegistrationFunction(ScaleRotateTranslateChannelTransform).
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"""
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super().__init__(registration_function)
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def do_round_registration(self, situ_tile, reference_round: int = 0, reference_channel: int = 0):
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"""This method generates a round registration transformation for a tile and saves it in the tile.
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@@ -20,13 +13,12 @@ class RoundRegistration(Registration):
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"""
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# TODO: instead of one reference channel use all channels (maybe without nucleus channel)
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reference_peaks = situ_tile.get_round(
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reference_round).get_channel_peaks(reference_channel)
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reference_peaks = self.peak_finder.get_channel_peaks(situ_tile.get_round(
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reference_round), reference_channel)
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for round in range(situ_tile.get_round_count()):
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if round != reference_channel:
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current_round_peaks = situ_tile.get_round(
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round
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).get_channel_peaks(reference_channel)
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current_round_peaks = self.peak_finder.get_channel_peaks(
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situ_tile.get_round(round), reference_channel)
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transformation = self.registration_function.do_registration(
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current_round_peaks, reference_peaks)
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situ_tile.set_round_transformation(round, transformation)
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