论文标题
范围 - 最大增强的超宽带微型多个签名在墙壁后面的人类活动
Range-Max Enhanced Ultra-Wideband Micro-Doppler Signatures of Behind Wall Indoor Human Activities
论文作者
论文摘要
近年来,自智能监视以来,在进行操作之前,可以利用适当的决策,从而引起了社会保障和紧急服务部门的渗透检测和认可,从而引起了社会保障和紧急服务部门的极大关注。但是,由于墙壁效应的影响,获得的微型多个签名将被零频率的DC组件严重退化,这将不可避免地涂抹时间频率(TF)壁背后的详细特征(TF)映射的详细特征,并进一步阻碍了运动识别和分类。在本文中,首先采用超宽带(UWB)雷达系统通过不透明的壁进行探测,以检测后面的壁运动,该壁运动通常跨越一定数量的范围bin单元。通过采用这样的系统,可以获得高分辨率范围图,其中预计嵌入式丰富范围信息将被充分利用以提高随后的识别和分类性能。其次,应用高通滤波器以消除原始范围图中墙的效果。然后,为了增强TF地图中壁运动背后运动的特征特征,提出了一种新型的范围 - 最大增强策略,以提取每个TF单元沿所有范围箱中每个TF单元的最重要的微型多普勒特征,以进行特定运动。最后,通过现场实验和比较分类研究了提出的微型多普勒标志增强策略的有效性。功能增强的TF地图和分类结果都表明,所提出的方法的表现优于其他最新的短时傅立叶变换(STFT)TF特征提取方法。
Penetrating detection and recognition of behind wall indoor human activities has drawn great attentions from social security and emergency service department in recent years since intelligent surveillance aforehand could avail the proper decision making before operations being carried out. However, due to the influence of the wall effects, the obtained micro-Doppler signatures would be severely degenerated by strong near zero-frequency DC components, which would inevitably smear the detailed characteristic features of different behind wall motions in time-frequency (TF) map and further hinder the motion recognition and classification. In this paper, an ultra-wideband (UWB) radar system is first employed to probe through the opaque wall to detect the behind wall motions, which often span a certain number of range bin cells. By employing such a system, a high resolution range map can be obtained, in which the embedded rich range information is expected to be fully exploited to improve the subsequent recognition and classification performance. Secondly, a high-pass filter is applied to remove the effect of the wall in the raw range map. Then, with the aim of enhancing the characteristic features of different behind wall motions in TF maps, a novel range-max enhancement strategy is proposed to extract the most significant micro-Doppler feature of each TF cell along all range bins for a specific motion. Lastly, the effectiveness of the proposed micro-Doppler signature enhancement strategy is investigated by means of onsite experiments and comparative classification. Both the feature enhanced TF maps and classification results show that the proposed approach outperforms other state-of-art Short-Time Fourier Transform (STFT) based TF feature extraction methods.