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Stretch the dynamic range of the given 8-bit grayscale image using MATL...

Why am I unable to preview 16-bit image data from my camera?

 When I open the preview window after acquiring image data from my camera:

 

 

h = preview(vid);

Instead of the video data, a blank or poor contrast white figure window is displayed.



NOTE:-

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If using MATLAB R2008b or later, a possible workaround is to use the following command before creating the videoinput object:

 

imaqmex('feature', '-previewFullBitDepth', true);

You can also configure the preview axes CDataMapping and CLim properties.

vid = videoinput('winvideo') 
h = preview(vid); 
a = ancestor(h, 'axes');
set(h, 'CDataMapping', 'scaled');
% Modify the following numbers to reflect the actual limits of the data
returned by the camera.
% For example the limit a 16-bit camera would be [0 65535].
set(a, 'CLim', [0 65535]);

Please ensure that the preview window remains open while setting the image properties.


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