Abstract
A new (post-Shannon) informational approach is suggested in this paper, which allows to make deep analysis of nature of the information. It was found that information could be presented as an aggregate of quantitative (physical) and qualitative (structural) components to be considered together. It turned out that such full information theory could be efficiently used as the guiding theory at modeling of video-information recognition, perception and understanding. These hierarchical processes are solving the intellectual tasks step-by-step for formation of the corresponding video-information evaluation and also represent a strong interactions-measurements video-information's ensuring adequacy of these assessments. That is why there is a need to build corresponding video information macro-objects (video-thesauruses) on every level of hierarchy of artificial vision system, which are formed by training (self-training) and form together an upward hierarchy of qualitative measuring scales. The top of this hierarchy is video-intelligence. Information theory of artificial intelligence is a logical development of new information approach from analysis to synthesis. Further "analysis through synthesis" allows establishing the informational nature and structure of not only video-intelligence, but also strong artificial intelligence, which for video-intelligence constitute as intellectual suprasystem.
Author supplied keywords
Cite
CITATION STYLE
Yarichin, E. M., Gruznov, V. M., & Yarichina, G. F. (2018). Intellectual paradigm of artificial vision: From video-intelligence to strong artificial intelligence. International Journal of Advanced Computer Science and Applications, 9(11), 16–32. https://doi.org/10.14569/IJACSA.2018.091103
Register to see more suggestions
Mendeley helps you to discover research relevant for your work.