test fixing thumbnails
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+84
-4
@@ -25,7 +25,7 @@ have_PIL = True
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try:
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import PIL.Image, PIL.ImageOps
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from pydicom.pixel_data_handlers.util import apply_voi_lut, apply_modality_lut
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from pydicom.pixels import apply_voi_lut, apply_modality_lut, apply_windowing
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except ImportError:
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have_PIL = False
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@@ -36,6 +36,32 @@ try:
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except ImportError:
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have_numpy = False
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def lin_stretch_img(img, low_prc, high_prc, do_ignore_minmax=True):
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"""
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Apply linear "stretch" - low_prc percentile goes to 0,
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and high_prc percentile goes to 255.
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The result is clipped to [0, 255] and converted to np.uint8
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Additional feature:
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When computing high and low percentiles, ignore the minimum and maximum intensities (assumed to be outliers).
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"""
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# For ignoring the outliers, replace them with the median value
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if do_ignore_minmax:
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tmp_img = img.copy()
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med = np.median(img) # Compute median
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tmp_img[img == img.min()] = med
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tmp_img[img == img.max()] = med
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else:
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tmp_img = img
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lo, hi = np.percentile(tmp_img, (low_prc, high_prc)) # Example: 1% - Low percentile, 99% - High percentile
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if lo == hi:
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return np.full(img.shape, 128, np.uint8) # Protection: return gray image if lo = hi.
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stretch_img = (img.astype(float) - lo) * (255/(hi-lo)) # Linear stretch: lo goes to 0, hi to 255.
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stretch_img = stretch_img.clip(0, 255).astype(np.uint8) # Clip range to [0, 255] and convert to uint8
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return stretch_img
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def get_LUT_value(data, window, level):
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"""Apply the RGB Look-Up Table for the given
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@@ -65,7 +91,7 @@ def get_PIL_image(dataset):
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# Apply modality lut
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array = apply_modality_lut(dataset.pixel_array, dataset)
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#array = apply_modality_lut(dataset.pixel_array, dataset)
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# voi lut doesn't seem to help
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#array = apply_voi_lut(array, dataset)
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@@ -89,14 +115,21 @@ def get_PIL_image(dataset):
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# PIL size = (width, height)
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size = (dataset.Columns, dataset.Rows)
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array = apply_modality_lut(dataset.pixel_array, dataset)
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array = dataset.pixel_array
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#array = apply_modality_lut(array, dataset)
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array = apply_voi_lut(array, dataset, index=0)
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#array = apply_windowing(array, dataset)
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array = lin_stretch_img(array, 0.1, 99.9) # Apply "linear stretching" (lower percentile 0.1 goes to 0, and percentile 99.9 to 255).
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array = apply_voi_lut(array, dataset)
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if dataset["PhotometricInterpretation"].value == "MONOCHROME1":
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# We need to invert
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array = np.invert(array)
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return PIL.Image.fromarray(array).convert('L')
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pixel_data = array.tostring()
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# Recommended to specify all details
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# by http://www.pythonware.com/library/pil/handbook/image.htm
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@@ -116,6 +149,53 @@ def get_PIL_image(dataset):
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return im
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def get_PIL_image2(dataset):
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"""Get Image object from Python Imaging Library(PIL)"""
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if not have_PIL:
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raise ImportError("Python Imaging Library is not available. "
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"See http://www.pythonware.com/products/pil/ "
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"to download and install")
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if ('PixelData' not in dataset):
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raise TypeError("Cannot show image -- DICOM dataset does not have "
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"pixel data")
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# can only apply LUT if these window info exists
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if ('WindowWidth' not in dataset) or ('WindowCenter' not in dataset):
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bits = dataset.BitsAllocated
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samples = dataset.SamplesPerPixel
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if bits == 8 and samples == 1:
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mode = "L"
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elif bits == 8 and samples == 3:
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mode = "RGB"
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elif bits == 16:
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# not sure about this -- PIL source says is 'experimental'
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# and no documentation. Also, should bytes swap depending
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# on endian of file and system??
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mode = "I;16"
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else:
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raise TypeError("Don't know PIL mode for %d BitsAllocated "
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"and %d SamplesPerPixel" % (bits, samples))
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# PIL size = (width, height)
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size = (dataset.Columns, dataset.Rows)
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# Recommended to specify all details
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# by http://www.pythonware.com/library/pil/handbook/image.htm
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im = PIL.Image.frombuffer(mode, size, dataset.PixelData,
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"raw", mode, 0, 1)
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else:
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ew = dataset['WindowWidth']
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ec = dataset['WindowCenter']
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ww = int(ew.value[0] if ew.VM > 1 else ew.value)
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wc = int(ec.value[0] if ec.VM > 1 else ec.value)
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image = get_LUT_value(dataset.pixel_array, ww, wc)
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# Convert mode to L since LUT has only 256 values:
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# http://www.pythonware.com/library/pil/handbook/image.htm
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im = PIL.Image.fromarray(image).convert('L')
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return im
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def show_PIL(dataset):
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"""Display an image using the Python Imaging Library (PIL)"""
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im = get_PIL_image(dataset)
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