2012
DOI: 10.1007/s13735-012-0024-2
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High-level event recognition in unconstrained videos

Abstract: The goal of high-level event recognition is to automatically detect complex high-level events in a given video sequence. This is a difficult task especially when videos are captured under unconstrained conditions by nonprofessionals. Such videos depicting complex events have limited quality control, and therefore, may include severe camera motion, poor lighting, heavy background clutter, and occlusion. However, due to the fast growing popularity of such videos, especially on the Web, solutions to this problem … Show more

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Cited by 161 publications
(112 citation statements)
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“…The CBVR problem itself has an unconstrained nature [9,12] because the concept to retrieve is a priori unknown. Moreover, the performance of these methods highly depends on the used training data but in the CBVR application the initialisation and feedback are often too limited to provide a consistent training set.…”
Section: Ranking Functionsmentioning
confidence: 99%
“…The CBVR problem itself has an unconstrained nature [9,12] because the concept to retrieve is a priori unknown. Moreover, the performance of these methods highly depends on the used training data but in the CBVR application the initialisation and feedback are often too limited to provide a consistent training set.…”
Section: Ranking Functionsmentioning
confidence: 99%
“…Complex or high-level events are defined as 'long-term spatially and temporally dynamic object interactions that happen under certain scene settings' [20] or 'something happening at a given time and in a given location' [3]. Research regarding complex event detection and the semantic gap increased with the benchmark TRECVID.…”
Section: Complex Event Detectionmentioning
confidence: 99%
“…Typically, such visual search engines use metadata information such as tags provided with the video, but the information within the video itself can also be extracted by making use of concept detectors. Concepts that can be detected include objects, scenes and actions [20]. Concept detectors are trained by exploiting the commonality between large amounts of training images.…”
Section: Introductionmentioning
confidence: 99%
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“…Event detection has been intensively studied in recent decades and many methods depend on building classifiers of specific instances to infer the events [3]. For example, Lai [5] learns an instance-level event detection model based on video-level labels, and Aarflot [1] applies face detection to reduce the need of ever deleting digital objects from a digital library.…”
Section: Introductionmentioning
confidence: 99%