Silhouette classification by using manifold learning for automated threat detection

Johanna Carvajal-González, J. Valencia-Aguirre, G. Castellanos-Domínguez
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引用次数: 1

Abstract

Video surveillance systems have become an essential tool to enhance security in both public and private places, especially to prevent potentially dangerous situations. However, these systems usually have a high number of nuisance alarms, when they are aimed at detecting automatically abandoned objects. It was found that people waiting (sitting or standing still) in airports, train stations and bus stops are the main cause of false alarms, as available video surveillance technologies are not focused on recognizing the abandoned objects. In this paper, we present a methodology to recognize abandoned objects. The goal is to determinate if the alarm is caused by an unattended baggage or a stationery person, as the former may pose potential security threats. The R transform, which is a geometric invariant feature descriptor and has low computational complexity, is applied to each of the four patches in which the silhouette of the object to be recognized is divided. Afterwards a covariance matrix representation is calculated from both the original high dimensional space and a low dimensional space obtained with Laplacian Egienmaps, being this matrix a point in a Riemannian Manifold. The proposed methodology is evaluated in a single person dataset and a baggage dataset (gathered from the web) and good performance was obtained.
基于流形学习的轮廓分类自动威胁检测
视频监控系统已成为加强公共和私人场所安全的重要工具,特别是防止潜在的危险情况。然而,这些系统通常有大量的滋扰警报,当他们的目的是自动检测被遗弃的物体。研究发现,在机场、火车站和汽车站等着(坐着或站着不动)的人是误报的主要原因,因为现有的视频监控技术并没有专注于识别被遗弃的物体。本文提出了一种识别废弃物体的方法。目的是确定警报是由无人看管的行李还是文具人员引起的,因为前者可能构成潜在的安全威胁。R变换是一种几何不变的特征描述符,计算复杂度低,它应用于分割待识别物体轮廓的四个小块。然后从原始的高维空间和由拉普拉斯艾根图得到的低维空间计算协方差矩阵表示,将该矩阵作为黎曼流形中的一个点。在个人数据集和行李数据集(从网络收集)中对所提出的方法进行了评估,并获得了良好的性能。
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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