使用MPEG-7描述符的高召回率人类异常行为检测

Yanqing Huang, Yuzhuo Fu, Ting Liu
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引用次数: 0

摘要

人类异常行为的自动检测和识别是监控系统的关键问题。我们构建了一个完整的系统,能够在相机视图中看到手中的刀时提醒人类操作员。我们使用RealSense 3D相机跟踪手部,使用改进的MPEG-7 EHD作为特征向量,使用非线性支持向量机作为分类器。本文通过旋转特征向量和加入MGES特征方法进一步改进了特征提取算法,并在公共刀具检测数据库上进行了验证。与同类研究相比,我们的手刀检测算法的识别准确率达到92%,召回率达到94.7%,分别提高了1%和17%。这种改进在要求高召回率和低误报率的严格安全应用程序中非常重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High-recall human abnormal behavior detection using MPEG-7 descriptor
Automated detection and recognition of human abnormal behavior is the key problem of monitoring systems. We construct a complete system that is able to alert the human operator when a knife in hand is visible in camera views. We use RealSense 3D camera to track hands, modified MPEG-7 EHD as feature vector and none-linear SVM as classifier. In this paper, we improve the feature extraction algorithm further by rotating feature vector and adding MGES feature methods, which are validated on the public knife detection database. Our hand knife detection algorithm achieves a considerable recognition accuracy of 92% and recall rate of 94.7%, increasing by 1% and 17% respectively, compared with similar studies. This improvement is pretty significant in strict security applications, which requires high recall and low false negative rate.
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