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Open Source Computer Vision Library
https://opencv.org/
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340 lines
11 KiB
340 lines
11 KiB
15 years ago
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#########################################################################################
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#
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# IMPORTANT: READ BEFORE DOWNLOADING, COPYING, INSTALLING OR USING.
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#
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# By downloading, copying, installing or using the software you agree to this license.
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# If you do not agree to this license, do not download, install,
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# copy or use the software.
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#
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#
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# Intel License Agreement
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# For Open Source Computer Vision Library
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#
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# Copyright (C) 2000, Intel Corporation, all rights reserved.
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# Third party copyrights are property of their respective owners.
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#
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# Redistribution and use in source and binary forms, with or without modification,
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# are permitted provided that the following conditions are met:
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#
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# * Redistribution's of source code must retain the above copyright notice,
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# this list of conditions and the following disclaimer.
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#
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# * Redistribution's in binary form must reproduce the above copyright notice,
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# this list of conditions and the following disclaimer in the documentation
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# and/or other materials provided with the distribution.
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#
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# * The name of Intel Corporation may not be used to endorse or promote products
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# derived from this software without specific prior written permission.
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#
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# This software is provided by the copyright holders and contributors "as is" and
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# any express or implied warranties, including, but not limited to, the implied
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# warranties of merchantability and fitness for a particular purpose are disclaimed.
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# In no event shall the Intel Corporation or contributors be liable for any direct,
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# indirect, incidental, special, exemplary, or consequential damages
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# (including, but not limited to, procurement of substitute goods or services;
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# loss of use, data, or profits; or business interruption) however caused
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# and on any theory of liability, whether in contract, strict liability,
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# or tort (including negligence or otherwise) arising in any way out of
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# the use of this software, even if advised of the possibility of such damage.
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#
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#########################################################################################
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# 2004-03-16, Mark Asbach <asbach@ient.rwth-aachen.de>
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# Institute of Communications Engineering, RWTH Aachen University
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# 2007-02-xx, direct interface to numpy by Vicent Mas <vmas@carabos.com>
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# Carabos Coop. V.
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# 2007-10-08, try/catch
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"""Adaptors to interchange data with numpy and/or PIL
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This module provides explicit conversion of OpenCV images/matrices to and from
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the Python Imaging Library (PIL) and python's newest numeric library (numpy).
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Currently supported image/matrix formats are:
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- 3 x 8 bit RGB (GBR)
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- 1 x 8 bit Grayscale
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- 1 x 32 bit Float
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In numpy, images are represented as multidimensional arrays with
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a third dimension representing the image channels if more than one
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channel is present.
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"""
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import cv
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try:
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import PIL.Image
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###########################################################################
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def Ipl2PIL(input):
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"""Converts an OpenCV/IPL image to PIL the Python Imaging Library.
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Supported input image formats are
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IPL_DEPTH_8U x 1 channel
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IPL_DEPTH_8U x 3 channels
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IPL_DEPTH_32F x 1 channel
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"""
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if not isinstance(input, cv.CvMat):
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raise TypeError, 'must be called with a cv.CvMat!'
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#orientation
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if input.origin == 0:
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orientation = 1 # top left
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elif input.origin == 1:
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orientation = -1 # bottom left
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else:
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raise ValueError, 'origin must be 0 or 1!'
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# mode dictionary:
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# (channels, depth) : (source mode, dest mode, depth in byte)
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mode_list = {
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(1, cv.IPL_DEPTH_8U) : ("L", "L", 1),
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(3, cv.IPL_DEPTH_8U) : ("BGR", "RGB", 3),
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(1, cv.IPL_DEPTH_32F) : ("F", "F", 4)
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}
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key = (input.nChannels, input.depth)
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if not mode_list.has_key(key):
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raise ValueError, 'unknown or unsupported input mode'
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modes = mode_list[key]
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return PIL.Image.fromstring(
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modes[1], # mode
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(input.width, input.height), # size tuple
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input.imageData, # data
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"raw",
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modes[0], # raw mode
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input.widthStep, # stride
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orientation # orientation
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)
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###########################################################################
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def PIL2Ipl(input):
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"""Converts a PIL image to the OpenCV/IPL CvMat data format.
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Supported input image formats are:
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RGB
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L
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F
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"""
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if not (isinstance(input, PIL.Image.Image)):
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raise TypeError, 'Must be called with PIL.Image.Image!'
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# mode dictionary:
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# (pil_mode : (ipl_depth, ipl_channels)
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mode_list = {
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"RGB" : (cv.IPL_DEPTH_8U, 3),
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"L" : (cv.IPL_DEPTH_8U, 1),
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"F" : (cv.IPL_DEPTH_32F, 1)
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}
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if not mode_list.has_key(input.mode):
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raise ValueError, 'unknown or unsupported input mode'
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result = cv.cvCreateImage(
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cv.cvSize(input.size[0], input.size[1]), # size
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mode_list[input.mode][0], # depth
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mode_list[input.mode][1] # channels
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)
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# set imageData
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result.imageData = input.tostring()
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return result
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except ImportError:
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pass
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#############################################################################
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#############################################################################
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try:
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import numpy
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###########################################################################
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def NumPy2Ipl(input):
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"""Converts a numpy array to the OpenCV/IPL CvMat data format.
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Supported input array layouts:
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2 dimensions of numpy.uint8
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3 dimensions of numpy.uint8
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2 dimensions of numpy.float32
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2 dimensions of numpy.float64
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"""
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if not isinstance(input, numpy.ndarray):
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raise TypeError, 'Must be called with numpy.ndarray!'
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# Check the number of dimensions of the input array
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ndim = input.ndim
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if not ndim in (2, 3):
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raise ValueError, 'Only 2D-arrays and 3D-arrays are supported!'
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# Get the number of channels
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if ndim == 2:
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channels = 1
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else:
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channels = input.shape[2]
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# Get the image depth
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if input.dtype == numpy.uint8:
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depth = cv.IPL_DEPTH_8U
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elif input.dtype == numpy.float32:
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depth = cv.IPL_DEPTH_32F
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elif input.dtype == numpy.float64:
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depth = cv.IPL_DEPTH_64F
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# supported modes list: [(channels, dtype), ...]
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modes_list = [(1, numpy.uint8), (3, numpy.uint8), (1, numpy.float32), (1, numpy.float64)]
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# Check if the input array layout is supported
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if not (channels, input.dtype) in modes_list:
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raise ValueError, 'Unknown or unsupported input mode'
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result = cv.cvCreateImage(
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cv.cvSize(input.shape[1], input.shape[0]), # size
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depth, # depth
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channels # channels
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)
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# set imageData
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result.imageData = input.tostring()
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return result
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###########################################################################
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def Ipl2NumPy(input):
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"""Converts an OpenCV/IPL image to a numpy array.
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Supported input image formats are
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IPL_DEPTH_8U x 1 channel
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IPL_DEPTH_8U x 3 channels
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IPL_DEPTH_32F x 1 channel
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IPL_DEPTH_32F x 2 channels
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IPL_DEPTH_32S x 1 channel
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IPL_DEPTH_64F x 1 channel
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IPL_DEPTH_64F x 2 channels
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"""
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if not isinstance(input, cv.CvMat):
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raise TypeError, 'must be called with a cv.CvMat!'
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# data type dictionary:
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# (channels, depth) : numpy dtype
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ipl2dtype = {
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(1, cv.IPL_DEPTH_8U) : numpy.uint8,
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(3, cv.IPL_DEPTH_8U) : numpy.uint8,
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(1, cv.IPL_DEPTH_32F) : numpy.float32,
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(2, cv.IPL_DEPTH_32F) : numpy.float32,
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(1, cv.IPL_DEPTH_32S) : numpy.int32,
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(1, cv.IPL_DEPTH_64F) : numpy.float64,
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(2, cv.IPL_DEPTH_64F) : numpy.float64
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}
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key = (input.nChannels, input.depth)
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if not ipl2dtype.has_key(key):
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raise ValueError, 'unknown or unsupported input mode'
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# Get the numpy array and reshape it correctly
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# ATTENTION: flipped dimensions width/height on 2007-11-15
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if input.nChannels == 1:
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array_1d = numpy.fromstring(input.imageData, dtype=ipl2dtype[key])
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return numpy.reshape(array_1d, (input.height, input.width))
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elif input.nChannels == 2:
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array_1d = numpy.fromstring(input.imageData, dtype=ipl2dtype[key])
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return numpy.reshape(array_1d, (input.height, input.width, 2))
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elif input.nChannels == 3:
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# Change the order of channels from BGR to RGB
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rgb = cv.cvCreateImage(cv.cvSize(input.width, input.height), input.depth, 3)
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cv.cvCvtColor(input, rgb, cv.CV_BGR2RGB)
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array_1d = numpy.fromstring(rgb.imageData, dtype=ipl2dtype[key])
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return numpy.reshape(array_1d, (input.height, input.width, 3))
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except ImportError:
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pass
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###########################################################################
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###########################################################################
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try:
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import PIL.Image
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import numpy
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###########################################################################
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def PIL2NumPy(input):
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"""THIS METHOD IS DEPRECATED
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Converts a PIL image to a numpy array.
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Supported input image formats are:
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RGB
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L
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F
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"""
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if not (isinstance(input, PIL.Image.Image)):
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raise TypeError, 'Must be called with PIL.Image.Image!'
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# modes dictionary:
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# pil_mode : numpy dtype
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modes_map = {
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"RGB" : numpy.uint8,
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"L" : numpy.uint8,
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"F" : numpy.float32
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}
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if not modes_map.has_key(input.mode):
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raise ValueError, 'Unknown or unsupported input mode!. Supported modes are RGB, L and F.'
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result_ro = numpy.asarray(input, dtype=modes_map[input.mode]) # Read-only array
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return result_ro.copy() # Return a writeable array
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###########################################################################
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def NumPy2PIL(input):
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"""THIS METHOD IS DEPRECATED
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Converts a numpy array to a PIL image.
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Supported input array layouts:
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2 dimensions of numpy.uint8
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3 dimensions of numpy.uint8
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2 dimensions of numpy.float32
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"""
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if not isinstance(input, numpy.ndarray):
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raise TypeError, 'Must be called with numpy.ndarray!'
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# Check the number of dimensions of the input array
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ndim = input.ndim
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if not ndim in (2, 3):
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raise ValueError, 'Only 2D-arrays and 3D-arrays are supported!'
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if ndim == 2:
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channels = 1
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else:
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channels = input.shape[2]
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# supported modes list: [(channels, dtype), ...]
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modes_list = [(1, numpy.uint8), (3, numpy.uint8), (1, numpy.float32)]
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mode = (channels, input.dtype)
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if not mode in modes_list:
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raise ValueError, 'Unknown or unsupported input mode'
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return PIL.Image.fromarray(input)
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except ImportError:
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pass
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