Towards autonomous surveillance in real world environments

Gayatri M. Behara, V. Chodavarapu
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引用次数: 1

Abstract

We present a portable system that is capable of providing autonomous surveillance in real-world environments. We aim to expand the functionality of surveillance systems by combining autonomous object recognition along with depth perception to identify the object and its distance from the camera. Such capability would prove invaluable to autonomous surveillance applications, where persons carrying any forbidden and/or dangerous objects are detected in real-time and appropriate warnings are signaled. We have selected Microsoft Kinect V2 system which includes built-in hardware implementation of algorithms to identify humzans in a complex real-world setting. In addition, the system can simultaneously track 6 people at any time and provide their skeletal joint diagrams for motion tracking. The current work deals with using the skeletal joint diagrams and depth maps to create a focus around the hand area of the people. Our developed algorithm deals with object detection after the segmentation of hands. We use machine learning techniques with establishment of training datasets that include the library of objects that we aim to detect. Finally, the complete signal processing software is implemented within a single board computer.
在现实环境中实现自主监控
我们提出了一种便携式系统,能够在现实环境中提供自主监视。我们的目标是通过结合自主物体识别和深度感知来识别物体及其与相机的距离来扩展监视系统的功能。这种能力对于自动监视应用来说是非常宝贵的,在自动监视应用中,可以实时检测携带任何违禁和/或危险物品的人,并发出适当的警告信号。我们选择了微软Kinect V2系统,它包括内置的硬件实现算法,可以在复杂的现实世界环境中识别人类。此外,系统可以同时跟踪6个人,并提供他们的骨骼关节图进行运动跟踪。目前的工作是使用骨骼关节图和深度图来创建人们手部区域的焦点。我们开发的算法处理手分割后的目标检测。我们使用机器学习技术来建立训练数据集,其中包括我们要检测的对象库。最后,在单板机上实现了完整的信号处理软件。
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