Study of a Method for Effective Noise Suppression in Passive Personnel Screening Systems

A. Zhuravlev
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Abstract

The paper discusses approaches to increase the sensitivity of passive personnel screening systems by integrating sequential frames with a moving subject. Several state-of-the-art methods of computer vision are considered for this purpose, which can be used to track moving subjects even on very different frames. The results of experiments using the computer vision method DensePose, based on the use of artificial neural networks, are presented. Using DensePose, the segmentation of a moving subject and textural UV-coordinates for the surface model of the human body are found on frames, which are used in the described frame-by-frame integration method. Considering obtained results, the shortcomings of the proposed frame integration method are identified and listed. The directions of further research are suggested.
被动人员筛选系统中有效噪声抑制方法的研究
本文讨论了通过将连续帧与运动对象相结合来提高被动人员筛选系统灵敏度的方法。为此目的考虑了几种最先进的计算机视觉方法,即使在非常不同的帧上也可以用于跟踪移动的对象。介绍了基于人工神经网络的计算机视觉方法DensePose的实验结果。利用DensePose,在帧上找到运动主体的分割和人体表面模型的纹理uv坐标,并将其用于所描述的逐帧积分方法。结合已有的结果,指出了框架集成方法存在的不足。提出了进一步研究的方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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