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Representative Based Clustering of Long Multivariate Sequences with Different Lengths

机译:基于代表性的长变量序列聚类,具有不同的长度

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Video streams as unstructured or poorly structured data issue a challenge to create a unified framework capable to depict and convey high-level stories. Up-to-date indexing and search techniques to manage video data are able to operate the voluminous amounts of contained in video information in order to detect spatial and temporal events. Nevertheless, bridging semantic gap between the low-level frame or video features and high-level semantic concepts necessitates extremely high-speed procedures of temporal unlabeled data. Automatic video annotation in visual forms appears one of the promising approaches representing most pertinent and crucially important information. This goal is achieved by (among others) clustering large collections of video data.
机译:视频流作为非结构化或结构性不良的数据发布挑战,以创建能够描绘和传达高级故事的统一框架。管理视频数据的最新索引和搜索技术能够操作视频信息中包含的庞大量,以便检测空间和时间事件。然而,低级帧或视频特征与高级语义概念之间的桥接语义差距需要极高的时间未标记数据的高速程序。视觉表单中的自动视频注释出现了代表大多数相关性和关键重要信息的有希望的方法之一。这种目标是通过(其中)聚类大集合视频数据来实现。

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