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Context Sensitivity of Spatio-Temporal Activity Detection using Hierarchical Deep Neural Networks in Extended Videos

机译:扩展视频中使用分层深度神经网络的时空活动检测的上下文敏感性

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The amount of available surveillance video data is increasing rapidly and therefore makes manual inspection impractical. The goal of activity detection is to automatically localize activities spatially and temporally in a large collection of video data. In this work we will answer the question to what extent context plays a role in spatio-temporal activity detection in extended videos. Towards this end we propose a hierarchical pipeline for activity detection which spatially localizes objects first and subsequently generates spatial-temporal action tubes. Additionally, a suitable metric for performance evaluation is enhanced. Thus, we evaluate our system using the TRECVID 2019 ActEV challenge dataset. We investigated the sensitivity by detecting activities multiple times with various spatial margins around the performing actor. The results showed that our pipeline and metric is suited for detecting activities in extended videos.
机译:可用的监视视频数据量正在迅速增加,因此使手动检查变得不切实际。活动检测的目标是在大量视频数据中自动在空间和时间上定位活动。在这项工作中,我们将回答以下问题:在扩展视频中,上下文在时空活动检测中起多大作用。为此,我们提出了一种用于活动检测的分层流水线,该流水线首先在空间上定位对象,然后生成时空动作管。另外,增强了用于性能评估的合适度量。因此,我们使用TRECVID 2019 ActEV挑战数据集评估我们的系统。我们通过在表演演员周围以各种空间余量多次检测活动来研究敏感性。结果表明,我们的管道和指标适用于检测扩展视频中的活动。

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