Incremental Learning with Soft-Biometric Features for People Re-Identification in Multi-Camera Environments

Daniela Moctezuma, C. Conde, Isaac Martín de Diego, E. Cabello
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引用次数: 5

Abstract

In this paper, a solution for the appearance based people re-identification problem in a non-overlapping multicamera surveillance environment is presented. For this purpose, an incremental learning approach and a SVM classifier have been considered. The proposed methods update the appearance model across different camera conditions in three different ways: based on time lapses, on change of camera and on the automatic selection of the most representative samples. In order to test the proposed methods, a complete database was acquired at Barajas international airport (the MUBA proposed database). Further the well known PETS 2006 and PETS 2009 databases were considered. The system has been designed for video surveillance security. The main idea of this system is that, in an initial point, the suspect is manually identified by the user. Then, from that moment, the system is able to identify the selected subject across the different cameras in the surveillance area. The results obtained show the importance of the model update and the huge potential of the incremental learning approach.
基于软生物特征的增量学习在多相机环境下对人的再识别
针对非重叠多摄像机监控环境下基于外观的人员再识别问题,提出了一种解决方案。为此,考虑了增量学习方法和支持向量机分类器。提出的方法通过三种不同的方式在不同的相机条件下更新外观模型:基于时间间隔、基于相机的变化和基于自动选择最具代表性的样本。为了测试提议的方法,在巴拉哈斯国际机场获得了一个完整的数据库(MUBA提议的数据库)。此外,我们还考虑了著名的PETS 2006和PETS 2009数据库。该系统是为视频监控安全而设计的。该系统的主要思想是,在初始点,由用户手动识别嫌疑人。然后,从那一刻起,系统就能够在监控区域的不同摄像机中识别选定的对象。结果表明了模型更新的重要性和增量学习方法的巨大潜力。
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