2008
DOI: 10.1109/jproc.2008.916362
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Event Mining in Multimedia Streams

Abstract: | Events are real-world occurrences that unfold over space and time. Event mining from multimedia streams improves the access and reuse of large media collections, and it has been an active area of research with notable recent progress. This paper contains a survey on the problems and solutions in event mining, approached from three aspects: event description, event-modeling components, and current event mining systems. We present a general characterization of multimedia events, motivated by the maxim of five … Show more

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Cited by 79 publications
(9 citation statements)
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References 135 publications
(152 reference statements)
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“…12 In rhetoric, 5W+H are the circumstances, the elements (moria peristaseos-particulars of circumstance) of an event, and in narrative they represent the basic grammar of a story. Computer scientists attempting to extract events from multimedia DDSs have revitalized the 5W+H model, 13 which is now at the heart of several provenance ontologies. 14 While the model can readily handle structured (e.g., a single numeric) or ill-structured (e.g., a text string) data, extracting value from illstructured data is challenging and has galvanized considerable research on text mining.…”
Section: The Basic Elements Of a Digital Data Streammentioning
confidence: 99%
“…12 In rhetoric, 5W+H are the circumstances, the elements (moria peristaseos-particulars of circumstance) of an event, and in narrative they represent the basic grammar of a story. Computer scientists attempting to extract events from multimedia DDSs have revitalized the 5W+H model, 13 which is now at the heart of several provenance ontologies. 14 While the model can readily handle structured (e.g., a single numeric) or ill-structured (e.g., a text string) data, extracting value from illstructured data is challenging and has galvanized considerable research on text mining.…”
Section: The Basic Elements Of a Digital Data Streammentioning
confidence: 99%
“…Every device and application should identify the associated events and write them to a shared event ledger. For example, a life logging application would find out when you are having a meal and write it to the ledger along with the associated metadata, including location, time stamp, and relevant experiential information [8], such as the name of the dish and an image if available. Figure 2 illustrates how we find the causal relationships from the event ledger and add them to the knowledge graph.…”
Section: Explore: Building the Knowledge Graphmentioning
confidence: 99%
“…especially when the considered system is distributed over heterogeneous networks ("There is the need of querying and event processing architectures, simple schemes for sensor networks are not designed for multimedia sensors" [6]). Among the most interesting new approaches to multimedia event management, it is worth noting the six-dimensional "5W+1H" approach, derived from the journalism [7], [8] and particularly related to the emerging field of multimedia event management.…”
Section: Event-based Systemsmentioning
confidence: 99%
“…In a centralized system, time can be described as a completely ordered sequence of points 7 , where instants correspond to readings of the system local clock. Let e 1 and e 2 be two events, detected respectively at the instants I occ (e 1 ) and I occ (e 2 ).…”
Section: Productionmentioning
confidence: 99%