用于暴力场景检测的两级时空视觉变换

M. Constantin, B. Ionescu
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引用次数: 0

摘要

闭路电视系统的迅速扩展和采用带来了一系列问题,如果不加以控制,可能会阻碍这种系统所带来的优势,降低这种系统在安全监控场景中的有效性。与CCTV系统相关的可能大量的数据覆盖了一个城市或该城市的问题区域、场地、活动、工业场所甚至更小的安全范围,这些数据可能会使人类操作员不堪重负,并且很难将重要的安全事件与其他正常数据区分开来。因此,创建能够在某些事件发生时为操作人员提供准确警报的自动化系统至关重要,因为这可以大大减少他们的工作量并提高系统的效率。在这方面,我们提出了一个基于两阶段视觉变压器(2SViT)的系统来检测暴力场景。在这种设置中,第一阶段处理帧级处理,而第二阶段通过收集帧级特征来处理时间信息。我们在流行的XD- Violence数据集上训练并验证了我们提出的Transformer体系结构,同时测试了该体系结构的一些大小变化,与基线分数相比显示出良好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Two-Stage Spatio- Temporal Vision Transformer for the Detection of Violent Scenes
The rapid expansion and adoption of CCTV systems brings with itself a series of problems that, if remain unchecked, have the potential of hindering the advantages brought by such systems and reduce the effectiveness of this type of system in security surveillance scenarios. The possibly vast quantities of data associated with a CCTV system that covers a city or problematic areas of that city, venues, events, industrial sites or even smaller security perimeters can over-whelm the human operators and make it hard to distinguish important security events from the rest of the normal data. Therefore, the creation of automated systems that are able to provide operators with accurate alarms when certain events take place is of paramount importance, as this can heavily reduce their workload and improve the efficiency of the system. In this regard, we propose a Two-Stage Vision Transformer-based (2SViT) system for the detection of violent scenes. In this setup, the first stage handles frame-level processing, while the second stage processes temporal information by gathering frame-level features. We train and validate our proposed Transformer architecture on the popular XD- Violence dataset, while testing some size variations for the architecture, and show good results when compared with baseline scores.
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