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Retrieval of Commercials by Semantic Content: The Semiotic Perspective

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Abstract

Video information processing and retrieval is a key aspect of future multimedia technologies and applications. Commercial videos encode several planes of expression through a rich and dense use of colors, editing effects, viewpoints and rhythms, which are exploited together to attract potential purchasers. Databases of commercials can be accessed in order to analyze how a commercial has been developed, retrieve commercials similar to an example, catalog commercials according to the kind of message conveyed to the user. In this paper, we present a system allowing the retrieval of commercial streams based on their salient semantics. Semantics is regarded from the semiotics perspective: collections of signs and semantic features like colors, editing effects, motion, etc. are used as basic blocks with which the meaning of a commercial is constructed. In our system, it is possible to retrieve commercials according to both the meaning they convey and to their similarity to examples.

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Colombo, C., Bimbo, A.D. & Pala, P. Retrieval of Commercials by Semantic Content: The Semiotic Perspective. Multimedia Tools and Applications 13, 93–118 (2001). https://doi.org/10.1023/A:1009681324605

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  • DOI: https://doi.org/10.1023/A:1009681324605

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