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I am using Numpy and OpenCV2.4.1, my IP Camera has an SDK that returns the picture buffer through a callback function. The simplified function is as follows:

def py_fDecodeCallBack(lPort, pBuffer, lSize, pFrameInfo, lReserved1, lReserved2):
    frameInfo = pFrameInfo.contents
    pBufY = np.asarray( pBuffer[:frameInfo.lHeight*frameInfo.lWidth],dtype=np.uint8).reshape(frameInfo.lHeight,frameInfo.lWidth, 1)


pBuffer is of POINTER(c_ubyte) type as I am using ctypes.

I try to acquire the Y channel of the pBuffer, which is in YV12 format, and put it into a Numpy Array for OpenCV to process.

However, there is a big bottleneck in np.asarray(), it takes too long to acquire the frame data and put into a 3D numpy array (Height, Width, Channel). I have tested that pointer access operation of pBuffer for slicing the Y data out is not the bottle neck. This callback can only run at 3 frames per second on a dual core computer with 4GB ram. Without the np.asarray() operation, the callback can run at 30 frames per second.

Please suggest a method in order to put the pBuffer Data into a 3D numpy array which is FAST enough to get 30frames per second .

share|improve this question
up vote 3 down vote accepted

If you don't need to copy the data (i.e. your callback will process it and then discard it) you can construct the array using the buffer directly:

array = (ctypes.c_ubyte * frameInfo.lHeight * frameInfo.lWidth * 1
pBufY = np.ndarray(buffer=array, dtype=np.uint8,
                   shape=(frameInfo.lHeight, frameInfo.lWidth, 1))
share|improve this answer
Thank you so much! It is much faster now~ – Rex Sham Sep 6 '12 at 9:16

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