I am working on a microscope that streams live images via a built-in video camera to a PC, where further image processing can be performed on the streamed image. Any processing done on the streamed image must be done in "real-time" (minimal frames dropped).
We take the average of a series of static images to counter random noise from the camera to improve the output of some of our image processing routines. My question is: how do I know if the image is no longer static - either the sample under inspection has moved or rotated/camera zoom-in or out - so I can reset the image series used for averaging?
I looked through some of the threads, and some ideas that seemed interesting: Note: using Windows, C++ and Intel IPP. With IPP the image is a byte array (Ipp8u). 1. Hash the images, and compare the hashes (normal hash or perceptual hash?) 2. Use normalized cross correlation (IPP has many variations - which to use?)
Which do you guys think is suitable for my situation (speed)?