Proceedings of the Eleventh ACM International Conference on Multimedia - MULTIMEDIA '03 2003
DOI: 10.1145/957052.957076
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Extracting information about emotions in films

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Cited by 22 publications
(36 citation statements)
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“…Hotspot detection for meeting summarization and/or meeting browsing (i.e., localization of events with a high level of activity in a meeting) has recently gained interest (Neiberg et al [124], Wrede and Shriberg [211]). Salway and Graham [157], Hanjalic and Xu [74] are modeling emotion in the context of information-retrieval like applications, such as movie browsing. In general, negative emotions receive more attention from researchers than positive emotions; there simply is a greater need for applications that detect negative emotions than positive emotions.…”
Section: Data Acquisition and Annotationmentioning
confidence: 99%
“…Hotspot detection for meeting summarization and/or meeting browsing (i.e., localization of events with a high level of activity in a meeting) has recently gained interest (Neiberg et al [124], Wrede and Shriberg [211]). Salway and Graham [157], Hanjalic and Xu [74] are modeling emotion in the context of information-retrieval like applications, such as movie browsing. In general, negative emotions receive more attention from researchers than positive emotions; there simply is a greater need for applications that detect negative emotions than positive emotions.…”
Section: Data Acquisition and Annotationmentioning
confidence: 99%
“…State of the art algorithms for emotion recognition usually use the speech signal and/or the facial expression [15]. Few efforts have been done to link emotions to content-based indexing and retrieval of multimedia [16]. In [17], the concept of speech-assisted facial expression analysis and synthesis is proposed and provides useful information for expression analysis.…”
Section: Related Workmentioning
confidence: 99%
“…To study the granularity of labeling and the overall quality of affective labeling, we explored an additional two sets of verbal labels with coarser granularity. These consisted of 22 labels suggested by [15] and 6 labels based on word described in [16]. A similar approach was used in [17] using manual placement of 40 labels for the FEELTRACE system.…”
Section: Verbal Labeling Of the Affect Curvementioning
confidence: 99%