I would use the Haarcascades available in open CV to perform quick and accurate face detection.
I would use a method such as Principal Component Analysis (PCA) a.k.a eigenfaces.
That link shows a tutorial on how to get that working with OpenCV - I think this is written for C but i'm sure you can get the basic jist of it.
You could also look at implementing it yourself if you feel brave (it's not too bad)...
I actually did something similar to you albeit on a PC not an iPhone but its still the same concept. I stored all my images in the database as Blob data types then loaded them into my program when necessary.
The database is a particularly tricky part of the system as this is where the biggest bottleneck is. In my application, I would go through the following steps...
- Open application and grab training images from database
- Generate training set based on these images
- Once 1 and 2 have been completed the system is very quick as it just performs recognition against the training set.
Fortunately for me, my database server was located on a LAN therefore speed wasn't a problem, however I can see why you have an issue due to the fact that on a mobile device you have a limited data connection (speed/bandwidth). You can compress the images however this may lead to a worse recognition rate, due to image quality reduction and also you will have to decode on the device. There is also the issue of how to expose the remote database to the application, however I do believe this is possible using PHP and JSON (and other technologies, see below).
Retrieving data from a remote database
Maybe you could do an initial synchronize with the database so that the images are cached on the phone? One way or another I think you are probably going to have to have the images on the phone at some point regardless.
Figuring out the best way to store the recognition data/images in the database was one of the biggest challenges I faced so I would be interested to hear if you find a good method.