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Currently the world swiftly adapts to visual communication. Online services like
YouTube and Vine show that video is no longer the domain of broadcast television only.
Video is used for different purposes like entertainment, information, education or communication.
The rapid growth of today’s video archives with sparsely available editorial data creates
a big problem of its retrieval. The humans see a video like a complex interplay of
cognitive concepts. As a result there is a need to build a bridge between numeric values and semantic concepts. This establishes a connection that will facilitate videos’ retrieval by humans.
The critical aspect of this bridge is video annotation. The process could be done manually or automatically. Manual annotation is very tedious, subjective and expensive.
Therefore automatic annotation is being actively studied.
In this thesis we focus on the multimedia content automatic annotation. Namely
the use of analysis techniques for information retrieval allowing to automatically extract
metadata from video in a videomail system. Furthermore the identification of text, people, actions, spaces, objects, including animals and plants.
Hence it will be possible to align multimedia content with the text presented in the
email message and the creation of applications for semantic video database indexing and retrieving
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