- Is it possible to split an OpenCV application into a frontend and backend modules, such that frontend runs on thin-clients that have very limited processing power (running Intel Atom dual-core processors, with 1-2GB RAM), and backend does most the computational heavy-lifting s.a. using Google Compute Engine ?
- Is this possible with an additional constraint of the network communication between frontend and backend being not fast, s.a. being limited to say 128-256kbps ?
- Are there any precedents of this kind ? Is there any such opensource project ?
- Are there some common architectural patters that could help in such design ?
Additional clarification:
The front-end node, need NOT be purely a front-end, as in running the user-interface. I would imagine that certain OpenCV algorithms could be run on the front-end node, that is especially useful in reducing the amount of data that needs to be sent to the back-end for processing (s.a. colour-space transformation, conversion to grayscale, histogram etc.). I've successfully tested real-time face-detection (Haar cascade) on this low-end machine, in realtime, so the frontend node can pull some workload. In fact, I'd prefer to do most of the work in the frontend, and only push those computation heavy aspects to the backend, that are clearly and definitely well beyond the computational power of the frontend computer.
What I am looking for are suggestions/ideas on nature of algorithms that are best run on Google Compute Engine, and some architectural patterns that are tried & tested, for use with OpenCV to achieve such a split.