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Why is my DCAM (IEEE-1394) FireWire camera not

 Why is my DCAM (IEEE-1394) FireWire camera not recognized by the Image Acquisition Toolbox?

I am using a DCAM (IEEE-1394) FireWire camera with the Image Acquisition Toolbox. However, the toolbox fails to recognize my camera.

NOTE:-

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The Image Acquisition Toolbox supports connections to IEEE-1394 (FireWire) DCAM-compliant devices using the Carnegie Mellon University (CMU) DCAM driver. If the toolbox does not recognize a DCAM camera connected to your computer, most likely the camera has not been configured to use the CMU DCAM driver.
 
The supported version of the driver is shipped with MATLAB and can be located in the following directory:
 
$MATLABROOT\toolbox\imaq\imaqextern\drivers\win32\dcam
 
(where $MATLABROOT is the MATLAB root directory on your machine, as returned by typing
matlabroot
at the MATLAB Command Prompt.)
 
Be sure to install the CMU DCAM demo application when you install the CMU DCAM driver. To verify your FireWire camera has been successfully configured to use the CMU DCAM driver, try accessing your camera from the CMU demo application.

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