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Learning to Recognize Complex Actions Using Conditional Random Fields

机译:学习使用条件随机字段来识别复杂的操作

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Surveillance systems that operate continuously generate large volumes of data. One such system is described here, continuously tracking and storing observations taken from multiple stereo systems. Automated event recognition is one way of annotating track databases for faster search and retrieval. Recognition of complex events in such data sets often requires context for successful disambiguation of apparently similar activities. Conditional random fields permit straightforward incorporation of temporal context into the event recognition task. This paper describes experiments in activity learning, using conditional random fields to learn and recognize composite events that are captured by the observation stream.
机译:操作连续生成大量数据的监控系统。这里描述了一种这样的系统,连续跟踪和存储从多个立体声系统采取的观察。自动事件识别是注释轨道数据库的一种方式,以便更快地搜索和检索。在这些数据集中识别复杂事件通常需要上下文,以便成功消除显然相似的活动。条件随机字段许可证将时间上下文直接纳入事件识别任务。本文介绍了在活动学习中的实验,使用条件随机字段来学习和识别观察流捕获的复合事件。

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