Title :
Automated video chain optimization
Abstract :
Video processing algorithms found in complex video appliances such as television sets and set top boxes exhibit an interdependency that makes it is difficult to predict the picture quality of an end product before it is actually built. This quality is likely to improve when algorithm interaction is explicitly considered. Moreover, video algorithms tend to have many programmable parameters, which are traditionally tuned in manual fashion. Tuning these parameters automatically rather than manually is likely to speed up product development. We present a methodology that addresses these issues by means of a genetic algorithm that, driven by a novel objective image quality metric, finds high-quality configurations of the video processing chain of complex video products.
Keywords :
genetic algorithms; product development; tuning; video equipment; video signal processing; automated video chain optimization; automatic parameters tuning; genetic algorithm; genetic algorithms; objective image quality metric; picture quality; product development; programmable parameters; set top boxes; television sets; video algorithms; video appliances; video processing algorithms; Application software; Costs; Embedded software; Embedded system; Home appliances; Home computing; Java; Linux; Middleware; Prototypes;
Journal_Title :
Consumer Electronics, IEEE Transactions on