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Scene activity analysis using statistical and semantic features learnt from object trajectory data

机译:使用从对象轨迹数据中学到的统计和语义特征进行场景活动分析

摘要

Trajectory information of objects appearing in a scene can be used to cluster trajectories into groups of trajectories according to each trajectory's relative distance between each other for scene activity analysis. By doing so, a database of trajectory data can be maintained that includes the trajectories to be clustered into trajectory groups. This database can be used to train a clustering system, and with extracted statistical features of resultant trajectory groups a new trajectory can be analyzed to determine whether the new trajectory is normal or abnormal. Embodiments described herein, can be used to determine whether a video scene is normal or abnormal. In the event that the new trajectory is identified as normal the new trajectory can be annotated with the extracted semantic data. In the event that the new trajectory is determined to be abnormal a user can be notified that an abnormal behavior has occurred.
机译:场景中出现的对象的轨迹信息可用于根据每个轨迹彼此之间的相对距离将轨迹聚类为轨迹组,以进行场景活动分析。通过这样做,可以维护轨迹数据的数据库,该数据库包括要聚类为轨迹组的轨迹。该数据库可用于训练聚类系统,并使用提取的结果轨迹组的统计特征来分析新轨迹,以确定新轨迹是正常轨迹还是异常轨迹。本文描述的实施例可以用于确定视频场景是正常还是异常。在新轨迹被识别为正常的情况下,可以用提取的语义数据来注释新轨迹。在确定新轨迹异常的情况下,可以通知用户发生了异常行为。

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