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SEVA: A Salient Event Detection Framework from Video Shots Using Support Vector Data Description

机译:Seva:使用支持向量数据描述的视频拍摄的突出事件检测框架

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In this paper we propose SEVA (Salient Events for Video Analytics), a framework for accurate detection and localization of salient events from a given video shot. Our proposed method is based on statistical learning theory and models salient event detection as a one-class classification problem. Video frames are split into blocks for extracting both the spatial and temporal features. Given a video shots we first track the moving foreground blob. Features are extracted using only the foreground pixels to avoid influence of the background. Using Support Vector Data Description (SVDD) in kernel feature space for each block in a given video frame, the decision boundary for the normal activity class is modeled. For a test video sequence, feature vectors are computed from the video frames and the learnt model is utilized to classify each block as normal or salient. Finally, we have adapted a spatio-temporal smoothing approach to remove the false positives. We have reported both qualitative and quantitative results of our experiments on two real-world benchmarked video datasets. Performance of SEVA is compared with five recent works on video event detection to validate its effectiveness.
机译:在本文中,我们提出了自确认(用于视频分析凸活动),从给定的视频镜头精确检测和突出事件的本地化的框架。我们的方法是基于统计学习理论和模型突出事件检测作为一类分类问题。视频帧被划分成块两者中提取在空间和时间的特征。给定一个视频截图,我们首先跟踪移动前景团块。特点是仅使用前景像素,以避免背景的影响提取。在一种用于在给定视频帧中的每个块的内核特征空间使用支持向量数据描述(SVDD),对于正常的活动类的决策边界进行建模。为测试视频序列中,特征矢量从视频帧计算和学习的模型被用于每个块分类为正常或突出。最后,我们已经适应了一个时空平滑的方法来去除误报。我们曾报道我们的实验在两个现实世界的定性和定量结果基准视频数据集。 SEVA的性能与视频事件检测5部近期的作品相比,以验证其有效性。

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