拥挤场景下行人群体属性检测

Nuhu Aliyu Shuaibu, A. Malik, I. Faye, Y. Ali
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引用次数: 1

摘要

近年来,传统的人群场景视频监控系统已经部署在各个领域的应用;健康监控、安全等。监控人群并识别他们的行为是视觉监控最有趣的应用之一,因为人类专家很难对人群进行评估。本文给出了人群场景的群间和群内特性;即研究群体的集体性、稳定性、均匀性和冲突性。在人群场景检测和分割中,采用了一种集体过渡算法。在此基础上,提取了一组可视化描述符来量化组的属性。该描述符传递了更深入的场景信息,可以有效地部署在大人群场景中。对数百个人群场景视频的实验是在公开的数据集上进行的。定量评价表明,与k近邻(kNN)和决策树(DT)分类器相比,线性支持向量机在分类人类行为方面具有更高的准确性、精密度、召回率和f测度。
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Pedestrian group attributes detection in crowded scenes
Recently the traditional video surveillance systems of crowd scenes have been deployed in various areas of applications; health monitoring, security etc. Monitoring crowds and identifying their behaviors is one of the most interesting applications of visual surveillance as it is very difficult to assess crowds by human experts. In this paper, we present inter-group and intra-group properties of crowd scene; namely, we investigated collectiveness, stability, uniformity and conflict properties of crowds. A collective transition algorithm is used for crowd scene detection and segmentation. Based on this algorithm, a set of visual descriptors are extracted to quantify the group properties. The descriptors convey deeper scene information and can be effectively deploy in large crowd scene. Experiments on hundreds of crowd scenes videos were carried out on publicly available datasets. Quantitative evaluation shows that linear SVM display superior accuracy, precision, recall and F-measure in classifying human behaviors when compared to a k-nearest neighbor (kNN), and Decision Tree (DT) classifiers.
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