11

I am currently switching from PyQt to PySide.

With PyQt I converted QImage to a Numpy.Array using this code that I found on SO:

def convertQImageToMat(incomingImage):
    '''  Converts a QImage into an opencv MAT format  '''

    incomingImage = incomingImage.convertToFormat(4)

    width = incomingImage.width()
    height = incomingImage.height()

    ptr = incomingImage.bits()
    ptr.setsize(incomingImage.byteCount())
    arr = np.array(ptr).reshape(height, width, 4)  #  Copies the data
    return arr

However ptr.setsize(incomingImage.byteCount()) does not work with PySide as this is part of the void* support of PyQt.

My Question is: How can I convert a QImage to a Numpy.Array using PySide.

EDIT:

Version Info
> Windows 7 (64Bit)
> Python 2.7
> PySide Version 1.2.1
> Qt Version 4.8.5
4
  • 1
    PySide doesn't seem to offer a bits method. Is this also part of PyQt? How about using constBits? Commented Nov 11, 2013 at 12:35
  • m( can´t believe I didn´t see that! Thanks a lot. If you repost your comment as a Answer I will accept it. Thanks again! Commented Nov 11, 2013 at 13:05
  • Done, but is that adequate to answer the question? Commented Nov 11, 2013 at 13:15
  • Yes, as it was the only thing missing to get it working. I edit my Question to add the working code in a sec. Commented Nov 11, 2013 at 13:18

4 Answers 4

7

For me the solution with constBits() did not work, but the following worked:

def QImageToCvMat(incomingImage):
    '''  Converts a QImage into an opencv MAT format  '''

    incomingImage = incomingImage.convertToFormat(QtGui.QImage.Format.Format_RGBA8888)

    width = incomingImage.width()
    height = incomingImage.height()

    ptr = incomingImage.bits()
    ptr.setsize(height * width * 4)
    arr = np.frombuffer(ptr, np.uint8).reshape((height, width, 4))
    return arr
2
  • 3
    Be aware that using bits() instead of constBits() creates a deep copy. This may or may not be what you intend. Commented Nov 21, 2018 at 6:45
  • @Mailerdaimon I need the deep copy because I want to manipulate the data. At least I get an access violation if I do not use bits()
    – JTIM
    Commented Nov 21, 2018 at 7:24
3

The trick is to use QImage.constBits() as suggested by @Henry Gomersall. The code I use now is:

def QImageToCvMat(self,incomingImage):
    '''  Converts a QImage into an opencv MAT format  '''

    incomingImage = incomingImage.convertToFormat(QtGui.QImage.Format.Format_RGB32)

    width = incomingImage.width()
    height = incomingImage.height()

    ptr = incomingImage.constBits()
    arr = np.array(ptr).reshape(height, width, 4)  #  Copies the data
    return arr
4
  • Wonderful!Do you know the inverse of it ?
    – Maham
    Commented Oct 6, 2017 at 13:38
  • @Maham That would best be asked in a seperate question Commented Oct 6, 2017 at 13:47
  • @Silencer: You may want to ask that as a question showing us what exactly is not working. I am using PyQt5 and it is working for me. Commented Nov 16, 2017 at 7:24
  • Sorry about this. I find the reason: I display using cv2.imshow and QLabel at the same, then they confllict for some reason of gtkXXX. But when I comment off the cv2.imshow, it works. Sorry again.
    – Kinght 金
    Commented Nov 16, 2017 at 10:40
2

PySide doesn't seem to offer a bits method. How about using constBits to get the pointer to the array?

0

I have to admit, all of the previous answers fail horribly when dealing with images that don't necessarily have an alpha, much less an even amount of channels (say a compressed grayscale that only stores the single channel). I just had to invent this workaround for myself, and this code works (I'm pretty sure for any image).

def QImageToCvMat(incomingImage):
    '''  Converts a QImage into an opencv/numpy MAT format  '''

    
    ba = QByteArray()
    buff = QBuffer(ba)

    # Essentially open up a "RAM" file
    buff.open(QIODevice.ReadWrite)

    # Store a PNG formatted file into the "RAM" File
    incomingImage.save(buff, "PNG")

    # Convert the now PNG contents into a numpy array of bytes
    fBytes = np.asarray(bytearray(ba.data())), dtype=np.uint8)

    # Let OpenCV "decode" the bytes in RAM as a PNG
    return cv2.imdecode(fBytes, cv.IMREAD_COLOR)

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