People and luggage recognition in airport surveillance under real-time constraints

V. Atienza-Vanacloig, J. Rosell-Ortega, G. Andreu-García, J. Valiente-González
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引用次数: 13

Abstract

This paper describes an approach to classify people, groups of people and luggage in the halls of an airport. The algorithm is included into a surveillance system which tracks and classifies objects and transmits this information to a higher computational level which fuses the information of several cameras covering overlapping areas. Two kind of features are used: foreground density features and features related to real-size of objects, obtained by applying a homographic model. A classification schema based on k-nn classifiers and a voting system makes the classification process highly robust. On-line and off-line experiments are introduced.
在机场监控实时约束下的人员和行李识别
本文介绍了一种对机场大厅里的人、人群和行李进行分类的方法。该算法用于跟踪和分类目标的监控系统,并将这些信息传递到更高的计算层,该计算层融合了覆盖重叠区域的多个摄像机的信息。采用了两种特征:前景密度特征和与物体实际尺寸相关的特征,这两种特征是通过应用同形模型获得的。基于k-nn分类器和投票系统的分类模式使分类过程具有高度鲁棒性。介绍了在线和离线实验。
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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CiteScore
3.70
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0.00%
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