论文标题
I-Vise:使用无监督的功能查询作为边缘服务的交互式视频监视
I-ViSE: Interactive Video Surveillance as an Edge Service using Unsupervised Feature Queries
论文作者
论文摘要
情况意识(SAW)对于许多关键任务应用至关重要。但是,当试图立即识别感兴趣的对象或放大成千上万个视频帧的可疑活动时,SAW非常具有挑战性。这项工作旨在开发一个可查询系统以立即选择有趣的内容。尽管面部识别技术已经成熟,但在许多情况下,例如公共安全监控,感兴趣的对象的特征可能比面部功能要复杂得多。此外,人类操作员可能永远无法提供描述性,简单和准确的查询。实际上,更常见的是,只有对某些可疑物体或事故的粗略描述。本文提出了基于无监督功能查询的边缘服务(I-Wise)的交互式视频监视。 I-Vise方案采用无监督的方法,它利用了人体的一般特征和衣服的颜色。在边缘计算范式下建立了I-Vise原型,并且实验结果验证了I-Con-wise方案在不到两秒钟内符合场景识别的设计目标。
Situation AWareness (SAW) is essential for many mission critical applications. However, SAW is very challenging when trying to immediately identify objects of interest or zoom in on suspicious activities from thousands of video frames. This work aims at developing a queryable system to instantly select interesting content. While face recognition technology is mature, in many scenarios like public safety monitoring, the features of objects of interest may be much more complicated than face features. In addition, human operators may not be always able to provide a descriptive, simple, and accurate query. Actually, it is more often that there are only rough, general descriptions of certain suspicious objects or accidents. This paper proposes an Interactive Video Surveillance as an Edge service (I-ViSE) based on unsupervised feature queries. Adopting unsupervised methods that do not reveal any private information, the I-ViSE scheme utilizes general features of a human body and color of clothes. An I-ViSE prototype is built following the edge-fog computing paradigm and the experimental results verified the I-ViSE scheme meets the design goal of scene recognition in less than two seconds.