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Human-Machine Cooperation in Large-Scale Multimedia Retrieval: A Survey

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dc.creator Shirahama, Kimiaki
dc.creator Grzegorzek, Marcin
dc.creator Indurkhya, Bipin
dc.date 2015-07-22T11:21:21Z
dc.date.accessioned 2015-07-24T14:18:21Z
dc.date.available 2015-07-24T14:18:21Z
dc.identifier http://docs.lib.purdue.edu/jps/vol8/iss1/3
dc.identifier http://docs.lib.purdue.edu/cgi/viewcontent.cgi?article=1173&context=jps
dc.identifier.uri http://docs.lib.purdue.edu/cgi/viewcontent.cgi?article=1173&context=jps
dc.identifier.uri http://evidence.thinkportal.org/handle/123456789/25688
dc.description Large-Scale Multimedia Retrieval(LSMR) is the task to fast analyze a large amount of multimedia data like images or videos and accurately find the ones relevant to a certain semantic meaning. Although LSMR has been investigated for more than two decades in the fields of multimedia processing and computer vision, a more interdisciplinary approach is necessary to develop an LSMR system that is really meaningful for humans. To this end, this paper aims to stimulate attention to the LSMR problem from diverse research fields. By explaining basic terminologies in LSMR, we first survey several representative methods in chronological order. This reveals that due to prioritizing the generality and scalability for large-scale data, recent methods interpret semantic meanings with a completely different mechanism from humans, though such humanlike mechanisms were used in classical heuristic-based methods. Based on this, we discuss human-machine cooperation, which incorporates knowledge about human interpretation into LSMR without sacrificing the generality and scalability. In particular, we present three approaches to human-machine cooperation (cognitive, ontological, and adaptive), which are attributed to cognitive science, ontology engineering, and metacognition, respectively. We hope that this paper will create a bridge to enable researchers in different fields to communicate about the LSMR problem and lead to a ground-breaking next generation of LSMR systems.
dc.format application/pdf
dc.publisher Purdue University
dc.source The Journal of Problem Solving
dc.subject large-scale multimedia retrieval
dc.subject humanmachine cooperation
dc.subject machine-based methods
dc.subject human-based methods
dc.title Human-Machine Cooperation in Large-Scale Multimedia Retrieval: A Survey
dc.type Article


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