Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

Using a single matlab worker I easily can achieve maximal frames per seconds (fps) of with my camera (using matlab imaq toolbox). This simple code does it:

matlabpool(1)
start(vid)
pause(1); % give matlab time to initialize the camera
for j=1:frames
     data = getsnapshot(vid);
end

However, once I try to do some image processing on the fly, the effective rate drops by 50%. Since I have 5 more workers in the matlabpool (and also a gpu), can I optimize this such that each frame grabbed will be processed by a different worker? for example:

for j=1:frames
data = getsnapshot(vid);
      <do some analysis with worker mod((j),5)+2  i.e. worker 2 to 6 >  
end

the issue is the 'data' is serially obtained from the camera, and the analysis takes about 2 rounds of the loop, so if a different worker (or core) would take care of that each time, the maximum fps can be obtain again...

share|improve this question
    
I'm confused. Why do you only have a matlabpool(1)? –  arrayfire Aug 11 '12 at 0:33
    
That was just to restrict the code to one worker, to prove that one core is enough to handle the camera, hence the rest should handle the processing... –  natan Aug 11 '12 at 4:15
    
also what are you doing with the processed images? If you are displaying them in a figure, then you have to think about whether it's possible to update the GUI from multiple workers.. –  Amro Aug 11 '12 at 10:11
add comment

2 Answers 2

up vote 3 down vote accepted

I think I got the solution:

for i=1:frames

     for sf=1:6; % I got 6 cores
         m(:,:,sf) = getsnapshot(vid);
     end

     spmd 
         result=f(m(:,:,labindex));
     end
end

I manange to get better results with GPU parallelization though...

share|improve this answer
add comment

The way I see it, the workflow here is serial by nature..

Best you can do is to vectorize/parallelize your image processing function (so you still grab images one-by-one, but you distribute the processing on multiple cores)

share|improve this answer
    
The image is processed using various standard functions: threshold (i.e. 'image=image.*(image>threshold)' ) , conv2 with a filter, and peak detection using a simple local maxima finder. At the moment the processing code i use is pretty fast, but doesn't gain speed if I use more than one core (I've checked that with matlabpool(1)). Using a gpu might help, but there is the price of casting the variables each time to gdouble etc. So, I ask if a possible solution could be to analyze each event (or image) that arrives serially with a different core? or image1 by core1, image2 by core2 etc... –  natan Aug 11 '12 at 21:57
    
@wavepacket: I'm just brainstorming here, but perhaps you can have a buffer/queue were you store incoming images. It would be continually filled using a timer object with a certain interval. Think of this as running in the background. On the other hand, your code will process this queue of images in parallel; You fetch images from the queue one at a time, dispatching each to one worker, which should place the result on another queue of processed images. –  Amro Aug 12 '12 at 5:03
    
@wavepacket: [...]. Finally you can have a second timer that display images in order (assuming the worker in charge finished, otherwise wait for the next iteration) with a interval matching the desired frame rate (FPS). Again this is only an idea, not sure if it is even possible to implement :) HTH –  Amro Aug 12 '12 at 5:04
add comment

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.