A System for Visual Analysis of Objects Behavior in Surveillance Videos

Cibele Mara Fonseca, J. G. Paiva
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引用次数: 1

Abstract

Closed-circuit television (CCTV) surveillance systems are employed in different scenarios to prevent a variety of threats, producing a large volume of video footage. Several surveillance tasks consist of detecting/tracking moving objects in the scene to analyze their behavior and comprehend their role in events that occur in the video. Such analysis is unfeasible if manually performed, due to the large volume of long duration videos, as well as due to intrinsic human limitations, which may compromise the perception of multiple strategic events. Most of smart surveillance approaches designed for moving objects analysis focus only on the detection/tracking process, providing a limited comprehension of objects behavior, and rely on automatic procedures with no/few user interaction, which may hamper the comprehension of the produced results. Visual analytics techniques may be useful to highlight behavior patterns, improving the comprehension of how the objects contribute to the occurrence of observed events in the video. In this work, we propose a video surveillance visual analysis system for identification/ exploration of objects behavior and their relationship with events occurrence. We introduce the Appearance Bars layout to perform a temporal analysis of each object presence in the scene, highlighting the involved dynamics and spatial distribution, as well as its interaction with other objects. Coordinated with other support layouts, these bars represent multiple aspects of the objects behavior during video extent. We demonstrate the utility of our system in surveillance scenarios that shows different aspects of objects behavior, which we relate to events that occur in the videos.
一种监控视频中物体行为的视觉分析系统
闭路电视(CCTV)监控系统用于不同的场景,以防止各种威胁,产生大量的视频片段。几个监控任务包括检测/跟踪场景中的移动物体,以分析它们的行为并理解它们在视频中发生的事件中的作用。由于大量的长时间视频,以及由于人类固有的局限性,这种分析如果手工执行是不可行的,这可能会损害对多个战略事件的感知。大多数用于移动物体分析的智能监控方法只关注检测/跟踪过程,对物体行为的理解有限,并且依赖于没有或很少用户交互的自动过程,这可能会妨碍对所产生结果的理解。视觉分析技术可能有助于突出行为模式,提高对对象如何促成视频中观察到的事件发生的理解。在这项工作中,我们提出了一个视频监控视觉分析系统,用于识别/探索物体的行为及其与事件发生的关系。我们引入了外观条布局来执行场景中每个对象的时间分析,突出涉及的动态和空间分布,以及它与其他对象的交互。与其他支持布局协调,这些条表示在视频范围内对象行为的多个方面。我们演示了我们的系统在监控场景中的效用,该场景显示了物体行为的不同方面,我们将其与视频中发生的事件联系起来。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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