Kevin's solution can be sped up using random sampling. If you have some idea of the percentage of pixels that should be different from the background (assuming you aren't dealing with lots of images with only 1 different pixel), you can use the Poisson distribution:

probability of finding a nonblank pixel = 1 - e^(-n*p)

where n is the number of samples to try, and p is the percentage of pixels expected to be nonblank. Solve for n to get the appropriate number of samples to try:

n = -log(1 - x) / p

where x is the desired probability and log is natural log. For example, if you are reasonably sure that 0.1% of the image should be nonblank, and you want to have a 99.99% chance of finding at least one nonblank pixel,

n = -log(1-.9999)/.001 = 9210 samples needed.

Much faster than checking every pixel. To be 100% sure, you can always go back and check all of them if the sampling doesn't find any.