基于视频帧RSD-HOG的人体及随身行李检测与分类

Tahmina Khanam, K. Deb
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引用次数: 4

摘要

在21世纪,公共场所的犯罪行为正在破坏性地增加。此外,不经意的人类活动有时会给它们埋下死亡陷阱。这些问题逐渐引起了计算机视觉研究者对自动视频监控与预警系统的关注。作为AVSWS的一个新兴分支,人员及随身行李检测与分类具有广泛的应用领域,如公共场所人员可疑活动的监控,核电站等人员禁区的人员警告,机场行李中携带武器、黄金等非法物品的检测,以及行李限制超市的行李检测。然而,本文提出了一种准确的人体和随身行李检测与分类框架。首先,通过背景减法来提高系统的速度,并利用HSI模型来应对不同的光照条件。然后提取旋转信号描述子(RSD-HOG),提高检测精度;最后,动态人体参数设置使系统能够检测和分类单个或多个行李,即使人体的某些部分被遮挡或从窗口消失。实验结果表明,该系统具有较好的精度和速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human and carried baggage detection & classification based on RSD-HOG in video frame
In the twenty-first century, crimes are destructively increased in public spaces. Besides, oblivious human movement sometimes dug a death trap for them. These issues are gradually dragging the attention of the computer vision researchers' to automatic video surveillance and warning system (AVSWS). As a fresh branch of AVSWS, human and carried baggage detection and classification has a wide area of applications that are, monitoring suspicious movement of human in public places, warn human in human restricted areas like in atomic power station, detect carriage of illegal materials like weapons, gold into baggage in airport and detect baggage in baggage restricted super shop. However, in this paper an accurate detection & classification framework of human and carried baggage is proposed. Initially, background subtraction is performed to speed up the system and use HSI model to cope up with different illumination condition. Then, rotational signal descriptor (RSD-HOG) is extracted which make the detection accurate. Finally, dynamic human body parameter setting enables the system to detect & classify single or multiple baggage even if some portions of human are occluded or disappear from window. The experimental results discover the system has satisfactory accuracy and faster comparative to others.
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